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AgriEngineering, Volume 6, Issue 2 (June 2024) – 61 articles

Cover Story (view full-size image): The Fruit Harvest Helper, a mobile application developed by Northwest Nazarene University’s (NNU) Robotics Vision Lab, aims to assist farmers in estimating fruit yield for apple orchards. Currently, farmers manually estimate the fruit yield for an orchard, which is a laborious task. The Fruit Harvest Helper seeks to simplify their process by detecting apples on images of apple trees. Once the number of apples is detected, a correlation can then be applied to this value to obtain a usable yield estimate for an apple tree. While prior research efforts at NNU concentrated on developing an iOS app for blossom detection, this current research aims to adapt that smart farming application for apple detection across multiple platforms, iOS and Android. View this paper
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12 pages, 1128 KiB  
Article
Performance of a UHF RFID Detection System to Assess Activity Levels and Lying Behaviour in Fattening Bulls
by Kay Fromm, Julia Heinicke, Christian Ammon, Thomas Amon and Gundula Hoffmann
AgriEngineering 2024, 6(2), 1886-1897; https://doi.org/10.3390/agriengineering6020110 - 20 Jun 2024
Viewed by 790
Abstract
Animal welfare strongly influences the health and performance of cattle and is an important factor for consumer acceptance. One parameter for the quantification of health status is the lying duration, which can be deployed for the early detection of possible production-related illnesses. Usually, [...] Read more.
Animal welfare strongly influences the health and performance of cattle and is an important factor for consumer acceptance. One parameter for the quantification of health status is the lying duration, which can be deployed for the early detection of possible production-related illnesses. Usually, 3D-accelerometers are the tool to detect lying duration in cattle, but the handling of bulls sometimes has special requirements because frequent manipulation in daily farming routines is often not possible. An ultrahigh-frequency (UHF) radio-frequency identification (RFID) system was installed in a beef cattle barn in Germany to measure the activity and lying time of bulls. Such UHF RFID systems are typically used for estrus detection in dairy cows via activity level, but can also be considered, for instance, as an early detection for lameness or other diseases. The aim of the study was to determine whether the estimations of activity level and lying duration can also be traced in husbandry systems for fattening bulls. Two groups of bulls (Uckermärker cattle, n = 10 and n = 13) of the same age were equipped with passive UHF RFID ear transponders. Three cameras were installed to proof the system and to observe the behaviour of the animals (standing, lying, and moving). Furthermore, accelerometers were attached to the hind legs of the bulls to validate their activity and lying durations measured by the RFID system in the recorded area. Over a period of 20 days, position (UHF RFID) and accelerometer data were recorded. Videos were recorded over a period of five days. The UHF RFID system showed an overall specificity of 95.9%, a sensitivity of 97.05%, and an accuracy of 98.45%. However, the comparison of the RFID and accelerometer data revealed residuals (ԑ) of median lying time (in minutes per day) for each group of ԑGroup1 = 51.78 min/d (p < 0.001), ԑGroup2 = −120.63 min/d (p < 0.001), and ԑGroup1+2 = −34.43 min/d (p < 0.001). In conclusion, UHF RFID systems can provide reliable activity and lying durations in 60 min intervals, but accelerometer data are more accurate. Full article
(This article belongs to the Section Livestock Farming Technology)
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<p>Floor plan and dimensions of the pens of Group 1 (<b>a</b>) and Group 2 (<b>b</b>), including the elliptical range (blue area) of the activity antennas (A); f = feeding antenna, FS = concentrate feeding station, TB = drinking bowl.</p>
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<p>Correlation of median lying durations (in min/d) between accelerometer and RFID data from Group 1 (<b>a</b>) and Group 2 (<b>b</b>).</p>
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<p>Correlation of median lying durations (in min/d) between accelerometer and RFID data from Group 1 (<b>a</b>) and Group 2 (<b>b</b>).</p>
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<p>Boxplot of lying time (in min/d) in 10 bulls (five per group) over a period of 20 days according to continuous accelerometer and UHF RFID data in min/d. (<b>a</b>) Group 1, (<b>b</b>) Group 2, (<b>c</b>) both Groups.</p>
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<p>Boxplot of lying time (in min/d) in 10 bulls (five per group) over a period of 20 days according to continuous accelerometer and UHF RFID data in min/d. (<b>a</b>) Group 1, (<b>b</b>) Group 2, (<b>c</b>) both Groups.</p>
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16 pages, 1865 KiB  
Review
Variable Depth Tillage: Importance, Applicability, and Impact—An Overview
by Egidijus Šarauskis, Simas Sokas and Julija Rukaitė
AgriEngineering 2024, 6(2), 1870-1885; https://doi.org/10.3390/agriengineering6020109 - 20 Jun 2024
Viewed by 832
Abstract
Tillage, as a key agricultural operation, has an important influence on soil properties and crop productivity. However, tillage at the same depth is not always the best choice as differences in soil texture, compacted topsoil, or plow pan at different depths, crop rotation, [...] Read more.
Tillage, as a key agricultural operation, has an important influence on soil properties and crop productivity. However, tillage at the same depth is not always the best choice as differences in soil texture, compacted topsoil, or plow pan at different depths, crop rotation, and root penetration potential signal that the depth of tillage should take greater account of the factors involved. Variable depth tillage (VDT) is an important precision farming operation, linking soil, plants, tillage machinery, smart sensors, measuring devices, computer programs, algorithms, and variability maps. This topic is important from an agronomic, energy, and environmental perspective. However, the application of VDTs in practice is currently still very limited. The aim of this study was to carry out a detailed review of scientific work on variable depth tillage, highlighting the importance of soil compaction and VDT; the measurement methods and equipment used; and the impact on soil, crops, the environment, and the economy. Based on the reviewed studies, there is a lack of studies that use fully automated depth control of tillage systems based on input data obtained with on-the-go (also known as online) proximal soil sensing. In precision agriculture, rapidly developing Internet of Things technologies allow the adaptation of various farming operations—including tillage depth—to site-specific and temporal conditions. In this context, the use of proximal soil sensing technologies coupled with electromagnetic induction, gamma rays, and multi-sensor data fusion to provide input for recommended tillage depth would be beneficial in the future. The application of VTD in specific areas is promising as it helps to reduce the negative effects of soil compaction and avoid unnecessary use of this expensive and environmentally damaging technological operation. Full article
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<p>Network visualization map of main keywords created using the WoS database and the keyword “variable depth tillage”.</p>
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<p>Visualization map by country, created using the WoS database and the keyword “variable depth tillage”.</p>
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<p>Analysis of the number of publications in 2010–2024 based on the keyword “variable depth tillage” in the WoS database.</p>
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<p>Schematic diagram of the dependence and influence of variable depth tillage.</p>
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11 pages, 2778 KiB  
Article
Augmented Reality Glasses Applied to Livestock Farming: Potentials and Perspectives
by Gabriele Sara, Daniele Pinna, Giuseppe Todde and Maria Caria
AgriEngineering 2024, 6(2), 1859-1869; https://doi.org/10.3390/agriengineering6020108 - 20 Jun 2024
Viewed by 668
Abstract
In the last decade, Smart Glasses (SG) and augmented reality (AR) technology have gained considerable interest in all production sectors. In the agricultural field, an SG can be considered a valuable device to support farmers and agricultural operators. SGs can be distinguished by [...] Read more.
In the last decade, Smart Glasses (SG) and augmented reality (AR) technology have gained considerable interest in all production sectors. In the agricultural field, an SG can be considered a valuable device to support farmers and agricultural operators. SGs can be distinguished by technical specification, type of display, interaction system, and specific features. These aspects can affect their integration into farms, influencing users’ experience and the consequent level of performance. The aim of the study was to compare four SGs for AR with different technical characteristics to evaluate their potential integration in agricultural systems. This study analyzed the capability of QR code reading in terms of distance and time of visualization, the audio–video quality of image streaming during conference calls and, finally, the battery life. The results showed different levels of performance in QR code reading for the selected devices, while the audio–video quality in conference calls demonstrated similar results for all the devices. Moreover, the battery life of the SGs ranged from 2 to 7 h per charge cycle, and it was influenced by the type of usage. The findings also underlined the potential use and integration of SGs to support operators during farm management. Specifically, SGs might enable farmers to obtain fast and precise augmented information using markers placed at different points on the farm. In conclusion, the study highlights how the different technical characteristics of SG represent an important factor in the selection of the most appropriate device for a farm. Full article
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<p>The four models of smart glasses used in this study: (<b>a</b>) Microsoft HoloLens Mk.2; (<b>b</b>) Epson Moverio BT-300; (<b>c</b>) Vuzix M400; (<b>d</b>) GlassUp F4.</p>
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<p>The maximum scanning distance of the QR code types with increasing printed size for the four SG tested.</p>
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<p>Visual acuity test results show the percentage (%) of correct letters read on the laptop screen during a video call from the SG.</p>
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<p>Results of the operating hours of the tested devices (HL, BT300, M400, F4) for different types of operational use, i.e., repeated markers scanning (Scanning) and use of different applications (Mixed Use).</p>
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12 pages, 2995 KiB  
Article
Effect of Defoliation on Growth, Yield and Forage Quality in Maize, as a Simulation of the Impact of Fall Armyworm (Spodoptera frugiperda)
by Kouki Tashiro, Midori Ishitani, Saaya Murai, Mitsuhiro Niimi, Manabu Tobisa, Sachiko Idota, Tetsuya Adachi-Hagimori and Yasuyuki Ishii
AgriEngineering 2024, 6(2), 1847-1858; https://doi.org/10.3390/agriengineering6020107 - 19 Jun 2024
Viewed by 646
Abstract
This study assesses the impact of defoliation applied to three developmental stages across three cropping seasons from 2021 to 2023 on growth, yield and forage quality in maize. The experimental design included three treatments: defoliation of three expanded leaves at the 3rd–4th leaf [...] Read more.
This study assesses the impact of defoliation applied to three developmental stages across three cropping seasons from 2021 to 2023 on growth, yield and forage quality in maize. The experimental design included three treatments: defoliation of three expanded leaves at the 3rd–4th leaf stage (DF1), the 5th–6th expanded leaves by leaf punch (DF2) and expanding leaves with the DF2 treatment (DF3) at the 6th–7th leaf stages, compared with no defoliation (control). Over three years, the most significant decrease in dry matter (DM) yield occurred in DF1 during spring sowing, while in summer sowing, the largest reduction was in DF3, both of which were correlated with changes in the number of grains per ear. The DM yields at harvest were positively correlated with plant leaf areas at the silking stage. The digestibility of forage in in vitro DM decreased concomitantly with an increase in acid detergent fiber content, indicating a decrease in forage quality. Given the frequent severe damage observed in summer sown maize and the detrimental effects of early growth stage leaf feeding on quality and quantity of spring sown maize, the application of registered insecticides is advised to reduce pest damage to maize crops. Full article
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Graphical abstract
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<p>Daily mean temperature and precipitation for 10-day intervals in the maize growing seasons from 2021 to 2023, together with the 30-year average from 1991 to 2020 for Miyazaki Prefecture.</p>
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<p>Methods of defoliation treatments in (<b>a</b>) DF1 (defoliation of the 1st–3rd expanded leaves at the 3rd–4th leaf stage), (<b>b</b>) DF2 (defoliation of the 5th–6th expanded leaves by leaf punch at the 6th–7th leaf stage) and (<b>c</b>) DF3 (defoliation of the expanding leaves in addition to DF2 treatment at the 6th–7th leaf stage) and (<b>d</b>) the impact of FAW at the 6th–7th leaf stage in the field, and the experimental field in (<b>e</b>) DF1 plot (<b>Center</b>) at the 3rd–4th leaf stage, and (<b>f</b>) DF2 (<b>Left</b>) and DF3 (<b>Right</b>) plots at the 6th–7th leaf stage.</p>
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<p>Changes in plant height over time (days) after sowing and the logistic curve fitting (y = K/(1 + bexp(-ax))) between days after sowing (x) and plant height (y) across defoliation treatments (DF1, DF2 and DF3) and a no-treatment control (Cont) for three cropping seasons in 2022. Cropping seasons: spring sowing, planted in early April; late sowing, planted in early June; and summer sowing, planted in early August. Defoliation treatments: Cont (no treatment); DF1 (defoliation of the 1st–3rd expanded leaves at the 3rd–4th leaf stage); DF2 (defoliation of the 5th–6th expanded leaves by leaf punch at the 6th–7th leaf stage); and DF3 (defoliation of the expanding leaves in addition to DF2 treatment at the 6th–7th leaf stage).</p>
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<p>Dry matter yield and total digestible nutrient (TDN) content at harvest for defoliation treatments across three cropping seasons, 2021−2023. For details on cropping seasons and defoliation treatments, refer to the footnote of <a href="#agriengineering-06-00107-f003" class="html-fig">Figure 3</a>. Symbols followed by the same letter indicate no significant difference between the defoliation treatments within the same year at the 5% probability level according to Fisher’s least significant difference test. ns: not significant (<span class="html-italic">p</span> &gt; 0.05).</p>
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<p>Grain yield and grain yield components at harvest in the defoliation treatments for three cropping seasons, 2021–2023. For details on cropping seasons and defoliation treatments, refer to the footnote of <a href="#agriengineering-06-00107-f003" class="html-fig">Figure 3</a>. Symbols followed by the same letter indicate no significant difference between defoliation treatments in the same year at the 5% probability level, according to Fisher’s least significant difference test. ns: not significant (<span class="html-italic">p</span> &gt; 0.05).</p>
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<p>Relationship between leaf area index at the silking stage and plant dry matter yield (<b>a</b>) and total digestible nutrient (TDN) yield (<b>b</b>) in 2023. Defoliation treatments: Cont (○, ●); DF1 (△, ▲); DF2 (◇, ◆); and DF3 (□, ■). Cropping seasons: spring sowing (○, △, ◇, □) and summer sowing (●, ▲, ◆, ■). Note: plant leaf area measurements were not possible for the late sowing season due to plant lodging caused by typhoon damage.</p>
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<p>Relationship between acid detergent fiber (ADF) content and in vitro dry matter digestibility (IVDMD) at harvest in 2021 (<b>a</b>), 2022 (<b>b</b>) and 2023 (<b>c</b>). Defoliation treatments: Cont (○, ●, ●); DF1 (△, ▲, ▲); DF2 (◇, ◆, ◆) and DF3 (□, ■, ■). Cropping seasons: spring sowing (○, △, ◇, □); late sowing (●, ▲, ◆, ■); and summer sowing (●, ▲, ◆, ■).</p>
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20 pages, 3735 KiB  
Article
Interoperability Analysis of Tomato Fruit Detection Models for Images Taken at Different Facilities, Cultivation Methods, and Times of the Day
by Hiroki Naito, Kota Shimomoto, Tokihiro Fukatsu, Fumiki Hosoi and Tomohiko Ota
AgriEngineering 2024, 6(2), 1827-1846; https://doi.org/10.3390/agriengineering6020106 - 19 Jun 2024
Viewed by 623
Abstract
This study investigated the interoperability of a tomato fruit detection model trained using nighttime images from two greenhouses. The goal was to evaluate the performance of the models in different environmets, including different facilities, cultivation methods, and imaging times. An innovative imaging approach [...] Read more.
This study investigated the interoperability of a tomato fruit detection model trained using nighttime images from two greenhouses. The goal was to evaluate the performance of the models in different environmets, including different facilities, cultivation methods, and imaging times. An innovative imaging approach is introduced to eliminate the background, highlight the target plants, and test the adaptability of the model under diverse conditions. The results demonstrate that the tomato fruit detection accuracy improves when the domain of the training dataset contains the test environment. The quantitative results showed high interoperability, achieving an average accuracy (AP50) of 0.973 in the same greenhouse and a stable performance of 0.962 in another greenhouse. The imaging approach controlled the lighting conditions, effectively eliminating the domain-shift problem. However, training on a dataset with low diversity or inferring plant appearance images but not on the training dataset decreased the average accuracy to approximately 0.80, revealing the need for new approaches to overcome fruit occlusion. Importantly, these findings have practical implications for the application of automated tomato fruit set monitoring systems in greenhouses to enhance agricultural efficiency and productivity. Full article
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<p>The design of the fruit set monitoring system. (<b>a</b>) The system appearance and names of each part; (<b>b</b>) an image showing nighttime photography.</p>
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<p>Fruit set monitoring system diagram. (<b>a</b>) Side view: The plants facing the pipe rails are photographed; the opposite side’s plants are background. (<b>b</b>) Upward view: The shading plate angle creates different light intensities between the target and background plants, highlighted by the red frame. The images in this area are stitched together to remove background information.</p>
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<p>Differences in images using various methods. (<b>a</b>) Daytime image without light source, stitched. (<b>b</b>) Night image without shading plate. (<b>c</b>) Night image with shading plate. Background plants are visible in (<b>a</b>,<b>b</b>), but removed in (<b>c</b>), showing only target plants.</p>
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<p>Examples of the test images in the datasets. (<b>a’</b>) MIXED_TESTDS; (<b>b’</b>) DELEAFING_TESTDS; (<b>c’</b>) LEAFING_TESTDS; (<b>d’</b>) DAY_TESTDS.</p>
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<p>Results of the qualitative evaluation of the similarity between the datasets visualized using t-SNE. The clusters A, B, and C mainly consist of MIXED_DS and DELEAFING_DS. A is the largest cluster of images after the leaf-picking. B is the image that is not leaf-picked. C is a cluster of images that includes the growth bags. The smaller clusters D, E, and F consist primarily of the DAY_TESTDS images. D contains the sides of the house images. E and F contained relatively bright and dark images, respectively.</p>
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<p>Fruit detection model training results. (<b>a</b>) MIXED_DS; (<b>b</b>) DELEAFING_DS; (<b>c</b>) GLOBAL_DS.</p>
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<p>Comparison of fruit detection accuracy for the test data under different conditions. (<b>a</b>) Inference for the same greenhouse; (<b>b</b>) inference for the different greenhouse; (<b>c</b>) inference for the leafing plant images; (<b>d</b>) inference for the daytime images; (<b>e</b>) inference for the local dataset images; (<b>f</b>) inference for the leafing and daytime images.</p>
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<p>Confusion matrix results for the fruit detection models under different test datasets. (<b>a</b>) Inference for the same greenhouse; (<b>b</b>) inference for the different greenhouse; (<b>c</b>) inference for the leafing plant images; (<b>d</b>) inference for the daytime images; (<b>e</b>) inference for the local dataset images; (<b>f</b>) inference for the leafing and daytime images.</p>
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20 pages, 2171 KiB  
Article
Development of a Cross-Platform Mobile Application for Fruit Yield Estimation
by Brandon Duncan, Duke M. Bulanon, Joseph Ichiro Bulanon and Josh Nelson
AgriEngineering 2024, 6(2), 1807-1826; https://doi.org/10.3390/agriengineering6020105 - 19 Jun 2024
Viewed by 768
Abstract
The Fruit Harvest Helper, a mobile application developed by Northwest Nazarene University’s (NNU) Robotics Vision Lab, aims to assist farmers in estimating fruit yield for apple orchards. Currently, farmers manually estimate the fruit yield for an orchard, which is a laborious task. The [...] Read more.
The Fruit Harvest Helper, a mobile application developed by Northwest Nazarene University’s (NNU) Robotics Vision Lab, aims to assist farmers in estimating fruit yield for apple orchards. Currently, farmers manually estimate the fruit yield for an orchard, which is a laborious task. The Fruit Harvest Helper seeks to simplify their process by detecting apples on images of apple trees. Once the number of apples is detected, a correlation can then be applied to this value to obtain a usable yield estimate for an apple tree. While prior research efforts at NNU concentrated on developing an iOS app for blossom detection, this current research aims to adapt that smart farming application for apple detection across multiple platforms, iOS and Android. Borrowing ideas from the former iOS app, the new application was designed with an intuitive user interface that is easy for farmers to use, allowing for quick image selection and processing. Unlike before, the adapted app uses a color ratio-based image-segmentation algorithm written in C++ to detect apples. This algorithm detects apples within apple tree images that farmers select for processing by using OpenCV functions and C++ code. The results of testing the algorithm on a dataset of images indicate an 8.52% Mean Absolute Percentage Error (MAPE) and a Pearson correlation coefficient of 0.6 between detected and actual apples on the trees. These findings were obtained by evaluating the images from both the east and west sides of the trees, which was the best method to reduce the error of this algorithm. The algorithm’s processing time was tested for Android and iOS, yielding an average performance of 1.16 s on Android and 0.14 s on iOS. Although the Fruit Harvest Helper shows promise, there are many opportunities for improvement. These opportunities include exploring alternative machine-learning approaches for apple detection, conducting real-world testing without any human assistance, and expanding the app to detect various types of fruit. The Fruit Harvest Helper mobile application is among the many mobile applications contributing to precision agriculture. The app is nearing readiness for farmers to use for the purpose of yield monitoring and farm management within Pink Lady apple orchards. Full article
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<p>The Fruit Harvest Helper Android mobile application is being used to detect apples on a real apple tree.</p>
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<p>A process flow diagram illustrating the sequence of steps within the apple-detection algorithm. Only the key steps are shown.</p>
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<p>An original and processed image after they were used for counting to test the algorithm.</p>
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<p>A visualization of the three different stages of the Fruit Harvest Helper’s front-end or UI.</p>
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<p>A scatter plot of the relationship between the apples detected by the algorithm and those counted on the physical apple trees. Each red dot represents 1 of the 34 apple trees the algorithm was tested on. Since two images were used for each apple tree, the detected apple count combines the number of apples detected within the east and west images of an apple tree.</p>
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13 pages, 1825 KiB  
Article
Controlled Traffic Farm: Fuel Demand and Carbon Emissions in Soybean Sowing
by Murilo Battistuzzi Martins, Aldir Carpes Marques Filho, Cássio de Castro Seron, Wellingthon da Silva Guimarães Júnnyor, Eduardo Pradi Vendruscolo, Fernanda Pacheco de Almeida Prado Bortolheiro, Diego Miguel Blanco Bertolo, Arthur Gabriel Caldas Lopes and Lucas Santos Santana
AgriEngineering 2024, 6(2), 1794-1806; https://doi.org/10.3390/agriengineering6020104 - 18 Jun 2024
Cited by 1 | Viewed by 683
Abstract
Soil compaction between crop rows can increase a machine’s performance by reducing rolling resistance and fuel demand. Controlled Traffic Farm (CTF) stands out among modern techniques for increasing agricultural sustainability because the machines continuously travel along the same path in the field, reducing [...] Read more.
Soil compaction between crop rows can increase a machine’s performance by reducing rolling resistance and fuel demand. Controlled Traffic Farm (CTF) stands out among modern techniques for increasing agricultural sustainability because the machines continuously travel along the same path in the field, reducing plant crush and compacting the soil in the traffic line. This study evaluated fuel consumption and CO2 emissions at different CTF intensities in different soil management strategies for soybean crop. The experimental design involved randomized blocks in a split-plot scheme with four replications. The plots constituted the three types of soil management: conventional tillage, no-tillage with straw millet cover, and no-tillage with brachiária straw cover. The subplots constituted for agricultural tractors were passed over in traffic lines (2, 4, and 8 times). We evaluated agricultural tractor fuel consumption, CO2 emissions, and soybean productivity. The straw cover and tractor-pass significantly affected the fuel consumption and greenhouse gas emissions of the soybean cultivation. Fuel consumption and CO2 emissions were reduced due to the machine-pass increase, regardless of soil management. Thus, a CTF reduces rolling resistance and increases crop environmental efficiency. Bare-soil areas increased by 20.8% and 27.9% with respect to fuel consumption, compared to straw-cover systems. Brachiária straw and millet reduce CO2 emissions per hectare by 20% and 28% compared to bare soil. Lower traffic intensities (two passes) showed (13.72%) higher soybean yields (of 4.04 Mg ha−1). Investigating these effects in other types of soil and mechanized operations then becomes essential. Full article
(This article belongs to the Special Issue Research Progress of Agricultural Machinery Testing)
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<p>Details of the research scheme.</p>
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<p>Hourly fuel consumption in soybean sowing. Means associated with identical letters on the bars do not differ by the Tukey test (α = 5%).</p>
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<p>Operational fuel consumption in soybean sowing. Means associated with identical letters on the bars do not differ by the Tukey test (α = 5%).</p>
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<p>CO<sub>2</sub> hourly emissions in soybean sowing. Means associated with identical letters on the bars do not differ by the Tukey test (α = 5%).</p>
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<p>CO<sub>2</sub> per hectare emissions. Means associated with identical letters on the bars do not differ by the Tukey test (α = 5%).</p>
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<p>Soybean productivity. Means associated with identical letters on the bars do not differ by the Tukey test (α = 5%).</p>
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23 pages, 2316 KiB  
Article
A Data-Driven Method for Water Quality Analysis and Prediction for Localized Irrigation
by Roberto Fray da Silva, Marcos Roberto Benso, Fernando Elias Corrêa, Tamara Guindo Messias, Fernando Campos Mendonça, Patrícia Angelica Alves Marques, Sergio Nascimento Duarte, Eduardo Mario Mendiondo, Alexandre Cláudio Botazzo Delbem and Antonio Mauro Saraiva
AgriEngineering 2024, 6(2), 1771-1793; https://doi.org/10.3390/agriengineering6020103 - 18 Jun 2024
Viewed by 804
Abstract
Several factors contribute to the increase in irrigation demand: population growth, demand for higher value-added products, and the impacts of climate change, among others. High-quality water is essential for irrigation, so knowledge of water quality is critical. Additionally, water use in agriculture has [...] Read more.
Several factors contribute to the increase in irrigation demand: population growth, demand for higher value-added products, and the impacts of climate change, among others. High-quality water is essential for irrigation, so knowledge of water quality is critical. Additionally, water use in agriculture has been increasing in the last decades. Lack of water quality can cause drip clog, a lack of application uniformity, cross-contamination, and direct and indirect impacts on plants and soil. Currently, there is a need for more automated methods for evaluating and monitoring water quality for irrigation purposes, considering different aspects, from impacts on soil to impacts on irrigation systems. This work proposes a data-driven method to address this gap and implemented it in a case study in the PCJ river basin in Brazil. The methodology contains nine components and considers the main steps of the data lifecycle and the traditional machine learning workflow, allowing for automated knowledge extraction and providing important information for improving decision making. The case study illustrates the use of the methodology, highlighting its main advantages and challenges. Clustering different scenarios in three hydrological years (high, average, and lower streamflows) and considering different inputs (soil-related metrics, irrigation system-related metrics, and all metrics) helped generate new insights into the area that would not be easily obtained using traditional methods. Full article
(This article belongs to the Section Agricultural Irrigation Systems)
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<p>Proposed method’s main components.</p>
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<p>PCJ river basin. Source: PCJ, 2024.</p>
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<p>Data collection stations analyzed in the case study. The blue lines represent the drainage network and the red dots represent the stations.</p>
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<p>Standardized Streamflow Index (SSFI) calculated for the whole dataset. The blue color illustrates values of SSFI higher than 0, while the red color is related to values of SSFI lower than 0.</p>
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<p>KDE distributions of the iron total and TtC parameters for the different datasets.</p>
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<p>Iron concentrations in the different seasons and years, grouped by quantiles. The quantile of iron concentration is represented in red, and the drainage network is represented in light blue. Legend: the bigger the circle size, the higher the concentration.</p>
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<p>Original TtC in the different seasons and years, grouped by quantiles. The quantile of TtC is represented in dark blue, and the drainage network is represented in light blue. Legend: the bigger the circle size, the higher the concentration.</p>
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<p>Clustering results for all datasets and scenarios.</p>
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11 pages, 2090 KiB  
Article
Performance of Neural Networks in the Prediction of Nitrogen Nutrition in Strawberry Plants
by Jamile Raquel Regazzo, Thiago Lima da Silva, Marcos Silva Tavares, Edson José de Souza Sardinha, Caroline Goulart Figueiredo, Júlia Luna Couto, Tamara Maria Gomes, Adriano Rogério Bruno Tech and Murilo Mesquita Baesso
AgriEngineering 2024, 6(2), 1760-1770; https://doi.org/10.3390/agriengineering6020102 - 18 Jun 2024
Viewed by 964
Abstract
Among the technological tools used in precision agriculture, the convolutional neural network (CNN) has shown promise in determining the nutritional status of plants, reducing the time required to obtain results and optimizing the variable application rates of fertilizers. Not knowing the appropriate amount [...] Read more.
Among the technological tools used in precision agriculture, the convolutional neural network (CNN) has shown promise in determining the nutritional status of plants, reducing the time required to obtain results and optimizing the variable application rates of fertilizers. Not knowing the appropriate amount of nitrogen to apply can cause environmental damage and increase production costs; thus, technological tools are required that identify the plant’s real nutritional demands, and that are subject to evaluation and improvement, considering the variability of agricultural environments. The objective of this study was to evaluate and compare the performance of two convolutional neural networks in classifying leaf nitrogen in strawberry plants by using RGB images. The experiment was carried out in randomized blocks with three treatments (T1: 50%, T2: 100%, and T3: 150% of recommended nitrogen fertilization), two plots and five replications. The leaves were collected in the phenological phase of floral induction and digitized on a flatbed scanner; this was followed by processing and analysis of the models. ResNet-50 proved to be superior compared to the personalized CNN, achieving accuracy rates of 78% and 48% and AUC of 76%, respectively, increasing classification accuracy by 38.5%. The importance of this technique in different cultures and environments is highlighted to consolidate this approach. Full article
(This article belongs to the Special Issue Application of Artificial Neural Network in Agriculture)
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<p>Example of the image bank formed by strawberry leaf cleavage blocks.</p>
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<p>Foliar concentration of N in strawberry plants at the flower induction stage.</p>
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<p>Confusion matrix between neural network-based models for classification of nitrogen doses in strawberry floral induction. In green (main diagonal) are the true positives of each class. In salmon, horizontally there are false negatives, and vertically the false positives. In light and dark gray are accuracies and errors by classes and total respectively.</p>
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<p>The AUC curves show the comparisons of the performance of the models as to personalized CNN and ResNet-50.</p>
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13 pages, 1576 KiB  
Article
Enhancing Dust Control for Cage-Free Hens with Electrostatic Particle Charging Systems at Varying Installation Heights and Operation Durations
by Ramesh Bahadur Bist, Xiao Yang, Sachin Subedi, Bidur Paneru and Lilong Chai
AgriEngineering 2024, 6(2), 1747-1759; https://doi.org/10.3390/agriengineering6020101 - 17 Jun 2024
Cited by 1 | Viewed by 652
Abstract
The poultry industry is shifting towards more sustainable and ethical practices, including adopting cage-free (CF) housing to enhance hen behavior and welfare. However, ensuring optimal indoor air quality, particularly concerning particulate matter (PM), remains challenging in CF environments. This study explores the effectiveness [...] Read more.
The poultry industry is shifting towards more sustainable and ethical practices, including adopting cage-free (CF) housing to enhance hen behavior and welfare. However, ensuring optimal indoor air quality, particularly concerning particulate matter (PM), remains challenging in CF environments. This study explores the effectiveness of electrostatic particle ionization (EPI) technology in mitigating PM in CF hen houses while considering the height at which the technology is placed and the duration of the electric supply. The primary objectives are to analyze the impact of EPI in reducing PM and investigate its power consumption correlation with electric supply duration. The study was conducted in a laying hen facility with four identical rooms housing 720 laying hens. The study utilized a Latin Square Design method in two experiments to assess the impact of EPI height and electric supply durations on PM levels and electricity consumption. Experiment 1 tested four EPI heights: H1 (1.5 m or 5 ft), H2 (1.8 m or 6 ft), H3 (2.1 m or 7 ft), and H4 (2.4 m or 8 ft). Experiment 2 examined four electric supply durations: D1 (control), D2 (8 h), D3 (16 h), and D4 (24 h), through 32 feet corona pipes. Particulate matter levels were measured at three different locations within the rooms for a month, and statistical analysis was conducted using ANOVA with a significance level of ≤0.05. The study found no significant differences in PM concentrations among different EPI heights (p > 0.05). However, the duration of EPI system operation had significant effects on PM1, PM2.5, and PM4 concentrations (p < 0.05). Longer EPI durations resulted in more substantial reductions: D2—17.8% for PM1, 11.0% for PM2.5, 23.1% for PM4, 23.7% for PM10, and 22.7% for TSP; D3—37.6% for PM1, 30.4% for PM2.5, 39.7% for PM4, 40.2% for PM10, and 41.1% for TSP; D4—36.6% for PM1, 24.9% for PM2.5, 38.6% for PM4, 36.3% for PM10, and 37.9% for TSP compared to the D1. These findings highlight the importance of prolonged EPI system operation for enhancing PM reduction in CF hen houses. However, utilizing 16 h EPI systems during daylight may offer a more energy-efficient approach while maintaining effective PM reduction. Further research is needed to optimize PM reduction strategies, considering factors like animal activities, to improve air quality and environmental protection in CF hen houses. Full article
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<p>(<b>a</b>) Experimental cage-free hen room with (<b>b</b>) electrostatic particle ionization system.</p>
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<p>Influence of EPI heights on PM concentrations in for cage-free hens. EPI-electrostatic particle ionization; CF-cage-free; H1= 5ft (1.5 m), H2 = 6ft (1.8 m), H3 = 7ft (2.1 m), and H4 = 8ft (2.4 m) high above the litter. PM-particulate matter; PM<sub>1</sub>-PM with a diameter of ≤1 micrometer, PM<sub>2.5</sub>-PM with a diameter of ≤2.5 micrometers, PM<sub>4</sub>-PM with a diameter of ≤4 micrometers, PM<sub>10</sub>-PM with a diameter of ≤10 micrometers, TSP-Total Suspended Particles.</p>
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<p>Impact of EPI duration treatments on PM concentrations in CF rooms with varying hen’s weeks of age. EPI-electrostatic particle ionization; CF-cage-free; RH-relative humidity; LMC-litter moisture content; D1 = control (0 h), D2= 8 h, D3 = 16 h, and D4 = 24 h electric supply into EPI corona pipes; PM-particulate matter; PM<sub>1</sub>-PM with a diameter of ≤1 micrometer, PM<sub>2.5</sub>-PM with a diameter of ≤2.5 micrometers, PM<sub>4</sub>-PM with a diameter of ≤4 micrometers, PM<sub>10</sub>-PM with a diameter of ≤10 micrometers, TSP-Total Suspended Particles.</p>
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<p>Electricity consumption differences between EPI durations during the entire study. Different alphabets in the figure represent significantly different.</p>
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22 pages, 16931 KiB  
Article
Tractor Three-Point Hitch Control for an Independent Lower Arms System
by Yogesh M. Chukewad, Sidakdeep Chadha, Karan S. Jagdale, Nishant Elkunchwar, Uriel A. Rosa and Zachary Omohundro
AgriEngineering 2024, 6(2), 1725-1746; https://doi.org/10.3390/agriengineering6020100 - 14 Jun 2024
Viewed by 937
Abstract
The three-point hitch, found on agricultural tractors, facilitates the raising and lowering of an attached implement. Some tractors include a rock shaft that comprises a physical shaft that interconnects and facilitates the raising and lowering of the lower arms of the three-point hitch [...] Read more.
The three-point hitch, found on agricultural tractors, facilitates the raising and lowering of an attached implement. Some tractors include a rock shaft that comprises a physical shaft that interconnects and facilitates the raising and lowering of the lower arms of the three-point hitch in a synchronized manner. In this study, we deal with a hitch system with the lower arms actuated by two independent hydraulic cylinders. This innovative tractor hitch system design allows the implement to follow the terrain, instead of the tractor, about the fore–aft (roll) axis of the tractor. However, since the two lower arms are independent, a specialized controller is needed to move these arms in unison. First, we present a position controller for individual arms and a roll controller to move these arms together. Second, we present a unique algorithm to emulate a physical rock shaft while the implement is operating in float mode. The algorithm ensures that the implement does not roll around the fore–aft axis while making sure it moves up and down vertically to follow the terrain. We present experimental results from the step response of the hitch system’s height while tracking a velocity reference. With the roll of the implement defined as the difference between the left arm’s position in percentage and that of the right arm in percentage, we observe that the largest mean roll was 0.23% with a flail mower attached and 0.26% without any implement. We then present results from the implement’s position in the float mode when the software rock shaft was activated and compare them with the case without the software rock shaft. The experiments showed that, when the software rock shaft was turned on, the mean roll reduced from 4.64% to 0.58% with a seed drill implement and from −3.99% to −0.59% with a flail mower implement. The standard deviations in these two implement cases improved from 16.77% to 2.79% and 6.45% to 3.53%, respectively, proving the effectiveness of the software rock shaft and its potential to replace the physical rock shaft found on the traditional tractors. Full article
(This article belongs to the Section Agricultural Mechanization and Machinery)
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<p>Three-point hitch system of the Monarch Tractor’s MK-V platform, shown in the side-view (<b>left</b>) and the rear-view (<b>right</b>). The major components are one hydraulic top link cylinder and two independently controlled hydraulic cylinders for the lower arms. The coordinate axes are shown for reference. The roll is defined as the rotation of the implement, attached to the lower arms, around the X-axis.</p>
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<p>Schematic of the side-view of one of the hitch arms highlighting the involved geometry. The hitch arms are pivoted at point <span class="html-italic">O</span>, which lies on the tractor chassis. The hydraulic cylinder is attached to the tractor chassis and the hitch arm at pivot points <span class="html-italic">A</span> and <span class="html-italic">B</span>, respectively. <math display="inline"><semantics> <mi>δ</mi> </semantics></math> denotes the angle between the tractor chassis <math display="inline"><semantics> <mrow> <mi>O</mi> <mi>A</mi> </mrow> </semantics></math> and the vertical. <span class="html-italic">C</span> is the lift point of the hitch arms, and it is also a spherical joint.</p>
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<p>Plots demonstrating the variation in the lift point height <math display="inline"><semantics> <mrow> <mo>(</mo> <msub> <mi>z</mi> <mrow> <mi>l</mi> <mi>p</mi> </mrow> </msub> <mo>)</mo> </mrow> </semantics></math> with respect to angle <math display="inline"><semantics> <mi>θ</mi> </semantics></math> and cylinder length <math display="inline"><semantics> <mrow> <mo>(</mo> <mi>l</mi> <mo>)</mo> </mrow> </semantics></math>. <b>Left plot:</b> Variation in the lift point height (<math display="inline"><semantics> <msub> <mi>z</mi> <mrow> <mi>l</mi> <mi>p</mi> </mrow> </msub> </semantics></math>) with respect to <math display="inline"><semantics> <mi>θ</mi> </semantics></math> in degrees (upper X-axis) and in percentage (lower X-axis). <b>Right plot:</b> Variation in the lift point height (<math display="inline"><semantics> <msub> <mi>z</mi> <mrow> <mi>l</mi> <mi>p</mi> </mrow> </msub> </semantics></math>) as the hydraulic cylinder is extended, i.e., <span class="html-italic">l</span> is increased from its minimum to maximum value.</p>
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<p>The plant, in this case, is a set of two double-acting cylinders. One such cylinder is shown here. The top side of the cylinders is attached to the tractor chassis, and the bottom side is attached to the lower arms of the hitch system. The extend pressure tank valve and retract pressure tank valve are digital valves that are normally connected to the tank and can be controlled to connect the pressure side or the tank side to either cylinder port, while the extend enable valve and retract enable valve are normally closed proportional valves that can be controlled to allow varying amounts of flow to either port of the cylinder. In addition, mechanical relief valves are connected to both ports of the cylinder as an additional safety.</p>
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<p>The controller is designed to control the position and velocities of the lower arms. Two of these controllers operate in parallel on the two hydraulic lower arm cylinders. The outer loop controller runs on the position error, whereas the inner loop controller runs on the velocity error.</p>
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<p>The hitch control system includes a roll controller preceding individual position controllers of the two lower arms. The roll controller adjusts the set points for individual position controllers according to the roll in the implement, which is defined as the difference between the left arm position and the right arm position. In an ideal case of no roll in the implement, the individual controllers would work according to the system’s set point for the hitch height. However, for example, if there is a positive roll when the hitch is commanded to go up (the left arm is higher than the right), the left would slow down, and the right one would speed up. Similarly, the controller also takes care of situations when there is a case of a negative roll or the hitch is commanded to go down with positive or negative rolls.</p>
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<p><b>Top:</b> Geometry of a connected implement (blue) with off-center center of mass while the tractor (green) moves on uneven terrain (black). The tractor has a roll angle of <math display="inline"><semantics> <mi>β</mi> </semantics></math> with respect to the horizontal, and the implement has a roll angle of <math display="inline"><semantics> <mi>α</mi> </semantics></math> with respect to the tractor’s plane. The implement has an offset center of mass, which is distance <span class="html-italic">d</span> away from the center, and it has two wheels attached at a distance of <span class="html-italic">w</span> from the center. The height of the wheels’ contact from the ground to the implement’s plane is <span class="html-italic">p</span>. <b>Bottom:</b> free body diagram of the implement of mass <span class="html-italic">m</span>. The distance between the implement’s mount points is <span class="html-italic">L</span>, which varies with <math display="inline"><semantics> <mi>α</mi> </semantics></math>. The left and right three-point arms apply hydraulic forces whose components YZ plane are <math display="inline"><semantics> <msub> <mi>F</mi> <mrow> <mi>L</mi> <mo>,</mo> <mi>y</mi> <mi>z</mi> </mrow> </msub> </semantics></math> and <math display="inline"><semantics> <msub> <mi>F</mi> <mrow> <mi>R</mi> <mo>,</mo> <mi>y</mi> <mi>z</mi> </mrow> </msub> </semantics></math>, respectively, and they are perpendicular to the tractor’s roll plane. The reaction forces at the mount points are resolved into components along (<math display="inline"><semantics> <msub> <mi>R</mi> <mrow> <mi>L</mi> <mo>,</mo> <mi>a</mi> </mrow> </msub> </semantics></math>, <math display="inline"><semantics> <msub> <mi>R</mi> <mrow> <mi>R</mi> <mo>,</mo> <mi>a</mi> </mrow> </msub> </semantics></math>) and perpendicular (<math display="inline"><semantics> <msub> <mi>R</mi> <mrow> <mi>L</mi> <mo>,</mo> <mi>p</mi> </mrow> </msub> </semantics></math>, <math display="inline"><semantics> <msub> <mi>R</mi> <mrow> <mi>R</mi> <mo>,</mo> <mi>p</mi> </mrow> </msub> </semantics></math>) to the implement’s plane. The implement experiences normal reactions <math display="inline"><semantics> <msub> <mi>N</mi> <mi>L</mi> </msub> </semantics></math>, <math display="inline"><semantics> <msub> <mi>N</mi> <mi>R</mi> </msub> </semantics></math> and frictional forces <math display="inline"><semantics> <msub> <mi>F</mi> <mrow> <mi>L</mi> <mo>,</mo> <mi>f</mi> <mi>r</mi> <mi>i</mi> <mi>c</mi> </mrow> </msub> </semantics></math>, <math display="inline"><semantics> <msub> <mi>F</mi> <mrow> <mi>R</mi> <mo>,</mo> <mi>f</mi> <mi>r</mi> <mi>i</mi> <mi>c</mi> </mrow> </msub> </semantics></math> from the contact of its left and right wheels, respectively, with the ground.</p>
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<p>Roll of hitch arms in degrees compared to roll in % for two different hitch configurations. The narrow configuration corresponds to a distance of 86 cm between hitch arms, while the wide configuration corresponds to a distance of 123 cm between hitch arms. These configurations are usually adjusted manually using the stabilizers on the side of the lower arms.</p>
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<p>Results from 17 trials conducted on a tractor while moving the hitch up in position control without an implement attached. <b>Left plot:</b> Position of the hitch. The hitch was initially at 20% and a set point of 80% was commanded. <b>Center plot:</b> Velocity of the hitch. A velocity set point of 25%/s was commanded. <b>Right plot:</b> Roll of the hitch system. The roll controller aims to maintain zero roll of the hitch.</p>
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<p>Results from 17 trials conducted on a tractor while moving the hitch down in position control without an implement attached. <b>Left plot:</b> Position of the hitch. The hitch was initially at 80% and a set point of 20% was commanded. <b>Center plot:</b> Velocity of the hitch. A velocity set point of −25%/s was commanded. <b>Right plot:</b> Roll of the hitch system. The roll controller aims to maintain zero roll of the hitch.</p>
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<p>Results from 21 trials conducted on a tractor while moving the hitch up in position control with a flail mower attached. <b>Left plot:</b> Position of the hitch. The hitch was initially at 50% and a set point of 100% was commanded. <b>Center plot:</b> Velocity of the hitch. A velocity set point of 25%/s was commanded. <b>Right plot:</b> Roll of the hitch system. The roll controller aims to maintain zero roll of the hitch.</p>
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<p>Results from 21 trials conducted on a tractor while moving the hitch down in position control with a flail mower attached. <b>Left plot:</b> Position of the hitch. The hitch was initially at 100% and a set point of 50% was commanded. <b>Center plot:</b> Velocity of the hitch. A velocity set point of −33%/s was commanded. The overshoot in the velocity can be due to the sudden drop of the implement due to its weight. <b>Right plot:</b> Roll of the hitch system. The roll controller aims to maintain zero roll of the hitch.</p>
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<p>Positions of the left and right arms in % with software rock shaft off (<b>left</b>) and with software rock shaft turned on (<b>right</b>) while using a Schmeiser seed drill.</p>
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<p>Comparison of the roll (difference between the left and right hitch arms in %) while using a Schmeiser seed drill. It was observed that there was a large roll when the software rock shaft was turned off.</p>
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<p>A 4-foot Schmeiser seed drill attached to the tractor, driven around on rough terrain in float mode. <b>Left image:</b> The software rock shaft was turned off. It was observed that the implement followed the terrain but did not stay flat since each cylinder was in float mode. <b>Right image:</b> The software rock shaft was turned on. It was observed that the implement followed the terrain and stayed flat as well.</p>
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<p>Positions of the left and right arms in % with software rock shaft off (<b>left</b>) and with software rock shaft turned on (<b>right</b>) while using a Tierre Lupo flail mower.</p>
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<p>Comparison of the roll (difference between the left and right hitch arms in %) while using a Tierre Lupo flail mower. It was observed that there was noticeable roll when the software rock shaft was turned off.</p>
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<p>A flail mower attached to the tractor, driven around on rough terrain in float mode. <b>Left image:</b> The software rock shaft was turned off. Despite the subtle difference, it was observed that the implement followed the terrain around the roll axis. <b>Right image:</b> The software rock shaft was turned on. It was observed that the implement followed the tractor around the roll axis.</p>
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13 pages, 1138 KiB  
Article
Evaluation of the Use of Vacuum-Dehydrated Minced Meat in Beef Patty Production
by Mehmet Başlar, Barış Yalınkılıç, Kübra Feyza Erol and Mustafa Ü. İrkilmez
AgriEngineering 2024, 6(2), 1712-1724; https://doi.org/10.3390/agriengineering6020099 - 14 Jun 2024
Viewed by 655
Abstract
This study aimed to determine the usage potential of vacuum-dehydrated ground beef in beef patty production. First, the fresh ground beef was dehydrated in vacuum dryers at 25, 35, and 45 °C for dehydration kinetics and color change. Then, the vacuum-dehydrated ground beef [...] Read more.
This study aimed to determine the usage potential of vacuum-dehydrated ground beef in beef patty production. First, the fresh ground beef was dehydrated in vacuum dryers at 25, 35, and 45 °C for dehydration kinetics and color change. Then, the vacuum-dehydrated ground beef was rehydrated, and three different beef patties were separately produced using fresh ground beef, the rehydrated ground beef, and a mixture of the two (1:1). According to the results, the dehydration significantly decreased the L*, a*, and b* values of ground beef; however, after rehydration, the L* and b* values were not significantly different from the control values. The cooking loss for beef patties produced with rehydrated ground beef was higher than the control. However, there was no significant difference in the sensory of the beef patties among the treatments. In conclusion, there is potential for using vacuum-dehydrated ground beef in beef patty production. Full article
(This article belongs to the Special Issue Novel Methods for Food Product Preservation)
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<p>The vacuum drying equipment.</p>
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<p>The drying curves of ground beef dried at different temperatures.</p>
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<p><span class="html-italic">L</span>*, <span class="html-italic">a</span>*, <span class="html-italic">b</span>*, and ∆<span class="html-italic">E</span> color parameters of the ground beef during the dehydration process.</p>
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15 pages, 1703 KiB  
Article
Remote Monitoring of Coffee Leaf Miner Infestation Using Machine Learning
by Emerson Ferreira Vilela, Gabriel Dumbá Monteiro de Castro, Diego Bedin Marin, Charles Cardoso Santana, Daniel Henrique Leite, Christiano de Sousa Machado Matos, Cileimar Aparecida da Silva, Iza Paula de Carvalho Lopes, Daniel Marçal de Queiroz, Rogério Antonio Silva, Giuseppe Rossi, Gianluca Bambi, Leonardo Conti and Madelaine Venzon
AgriEngineering 2024, 6(2), 1697-1711; https://doi.org/10.3390/agriengineering6020098 - 13 Jun 2024
Viewed by 724
Abstract
The coffee leaf miner (Leucoptera coffeella) is a key pest in coffee-producing regions in Brazil. The objective of this work was to evaluate the potential of machine learning algorithms to identify coffee leaf miner infestation by considering the assessment period and [...] Read more.
The coffee leaf miner (Leucoptera coffeella) is a key pest in coffee-producing regions in Brazil. The objective of this work was to evaluate the potential of machine learning algorithms to identify coffee leaf miner infestation by considering the assessment period and Sentinel-2 satellite images generated on the Google Earth Engine platform. Coffee leaf miner infestation in the field was measured monthly from 2019 to 2023. Images were selected from the Sentinel-2 satellite to determine 13 vegetative indices. The selection of images and calculations of the vegetation indices were carried out using the Google Earth Engine platform. A database was generated with information on coffee leaf miner infestation, vegetation indices, and assessment times. The database was separated into training data and testing data. Nine machine learning algorithms were used, including Linear Discriminant Analysis, Random Forest, Support Vector Machine, k-nearest neighbors, and Logistic Regression, and a principal component analysis was conducted for each algorithm. After optimizing the hyperparameters, the testing data were used to validate the model. The best model to estimate miner infestation was RF, which had an accuracy of 0.86, a kappa index of 0.64, and a precision of 0.87. The developed models were capable of monitoring coffee leaf miner infestation. Full article
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<p>A flowchart of the study stages.</p>
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<p>Epamig experimental fields: Três Pontas (CETP), São Sebastião do Paraíso (CESP), Machado (CEMA), and Patrocínio (CEPC). Source: Esri, Maxar, Earthstar Geographics, and GIS User Community.</p>
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<p>Selection of most important variables for estimating coffee leaf miner infestation in coffee plantations. (<b>A</b>) Determination of number of variables. Lines represent average of 5-fold cross-validation. (<b>B</b>) Variable importance in percentage, with recursive feature elimination. Dashes indicate variables not selected in each model.</p>
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<p>The confusion matrices of machine learning algorithms to predict coffee leaf miner infestation (CLM—coffee plants with leaf miner infestation; healthy—plants without leaf miner infestation). The applied algorithms were Random Forest (RF), k-nearest neighbors (KNN), Support Vector Machine (SVM), Logistic Regression (LR), and PCA. The confusion matrices indicate the numbers of correct and incorrect predictions for each class as percentages.</p>
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<p>Validation of performance metrics (precision, kappa, AUC, recall, and F1 score) of machine learning algorithms: Random Forest (RF), Logistic Regression (LR), k-nearest neighbors (KNN), and Support Vector Machine (SVM). These algorithms were tested to predict coffee leaf miner infestation based on vegetation indices generated by satellite images.</p>
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<p>Validation of performance metrics (precision, kappa, AUC, recall, and F1 score) of machine learning algorithms: Random Forest (RF), Logistic Regression (LR), k-nearest neighbors (KNN), and Support Vector Machine (SVM). These algorithms were tested to predict coffee leaf miner infestation based on vegetation indices generated by satellite images.</p>
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<p>Decision boundaries of machine learning algorithms using principal component analysis (PCA). PCA was applied to vegetation index data, month, and days between assessment and satellite image, with principal components (PC1 and PC2) explaining 69.5% and 10.7% of total data variation, respectively. Applied algorithms were Random Forest (RF), k-nearest neighbors (KNN), Support Vector Machine (SVM), and Logistic Regression. Numbers 1 and 2 indicate coffee with coffee leaf miner infestation (red) and coffee without coffee leaf miner infestation (green), respectively.</p>
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<p>Decision boundaries of machine learning algorithms using principal component analysis (PCA). PCA was applied to vegetation index data, month, and days between assessment and satellite image, with principal components (PC1 and PC2) explaining 69.5% and 10.7% of total data variation, respectively. Applied algorithms were Random Forest (RF), k-nearest neighbors (KNN), Support Vector Machine (SVM), and Logistic Regression. Numbers 1 and 2 indicate coffee with coffee leaf miner infestation (red) and coffee without coffee leaf miner infestation (green), respectively.</p>
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14 pages, 10567 KiB  
Article
The Effect of Vortex Generators on Spray Deposition and Drift from an Agricultural Aircraft
by Daniel E. Martin and Mohamed A. Latheef
AgriEngineering 2024, 6(2), 1683-1696; https://doi.org/10.3390/agriengineering6020097 - 12 Jun 2024
Viewed by 704
Abstract
Vortex generators (VGs) attached to the leading edge of an agricultural aircraft are purported to control airflow over the upper surface of the wing by creating small vortices that delay boundary layer separation, thereby improving the performance of the aircraft. These devices are [...] Read more.
Vortex generators (VGs) attached to the leading edge of an agricultural aircraft are purported to control airflow over the upper surface of the wing by creating small vortices that delay boundary layer separation, thereby improving the performance of the aircraft. These devices are commercially available for use in the aviation industry, primarily to increase pilot control of the aircraft. The benefits attributed to VGs remain largely descriptive and anecdotal in nature without rigorous empirical assessment in the field. The intent of this study was to evaluate whether this aerodynamic device could improve deposition or reduce drift when mounted on an agricultural aircraft. Airborne drift and ground deposition were measured with monofilament lines and Mylar cards, respectively. Deposits were expressed as percent of fluorometric response using a spectrofluorophotometer. There were 46% fewer downwind drift deposits on monofilament lines when VGs were installed than when VGs were not installed. Whether or not VGs were installed on the aircraft was the predominant factor which influenced deposition on monofilament lines. Spray deposits on Mylar cards placed at ground level downwind of the applications at three different locations (5, 10, and 20 m) varied significantly (p < 0.0001) between treatments, with corresponding 31, 54, and 61% reductions in downwind deposits when VGs were installed. While these findings overall are positive, this is the first known study of its type, and more research is warranted to better understand the role of vortex generators in the reduction in drift relative to aerially applied sprays. Full article
(This article belongs to the Section Agricultural Mechanization and Machinery)
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<p>A Thrush 510G turbine-powered aircraft spraying a crop over a field (Photo courtesy of Thrush Aircraft).</p>
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<p>Nozzle set up in the aircraft.</p>
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<p>Vortex generators installed on the leading edge of a Thrush aircraft.</p>
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<p>Spray lines (A, B and C) showing in-swath and downwind sampling locations using Mylar cards and monofilament lines. The solid lines represent the upwind and downwind edges of the aircraft swath.</p>
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<p>Photograph of a Mylar plate placed in position in the field by affixing onto a metal rod for sampling spray deposition.</p>
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<p>Mean drift deposits on monofilament lines at varying wind speed (m/s). Deposition values for the different heights were pooled since no statistical difference between heights was established.</p>
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<p>In-swath and downwind deposition on Mylar cards averaged over 5 replications.</p>
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<p>In-swath and downwind deposition (arcsine transformed) of fluorescent dye on Mylar cards in each of 5 replications.</p>
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9 pages, 992 KiB  
Article
Bioremediation of Basil Pesto Sauce-Manufactured Wastewater by the Microalgae Chlorella vulgaris Beij. and Scenedesmus sp.
by Paolina Scarponi, Francesca Frongia, Maria Rita Cramarossa, Fabrizio Roncaglia, Laura Arru and Luca Forti
AgriEngineering 2024, 6(2), 1674-1682; https://doi.org/10.3390/agriengineering6020096 - 12 Jun 2024
Viewed by 928
Abstract
Chlorella vulgaris and Scenedesmus sp. are commonly used in wastewater treatment due to their fast growth rates and ability to tolerate a range of environmental conditions. This study explored the cultivation of Chlorella vulgaris and Scenedesmus sp. using wastewater from the food industry, [...] Read more.
Chlorella vulgaris and Scenedesmus sp. are commonly used in wastewater treatment due to their fast growth rates and ability to tolerate a range of environmental conditions. This study explored the cultivation of Chlorella vulgaris and Scenedesmus sp. using wastewater from the food industry, particularly from Italian basil pesto production tanks. The experiment involved different carbon dioxide concentrations and light conditions with a dilution rate of basil pesto wastewater at 1:2. Both microalgae strains were able to grow on pesto wastewater, and biomass characterization highlighted the influence of CO2 supply and light irradiation. The highest lipid storage was 79.3 ± 11.4 mg gdry biomass−1 and 75.5 ± 13.3 mg gdry biomass−1 for C. vulgaris and S. obliquus under red light (5% CO2 supply) and white light (0.04% CO2 supply), respectively. Protein storage was detected at 20.3 ± 1.0% and 24.8 ± 1.3% in C. vulgaris and S. obliquus biomasses under white light with a 5% CO2 and 0.04% CO2 supply, respectively. The removal of P, N, chemical oxygen demand, and biological oxygen demand resulted in 80–100%, 75–100%, 26–35%, and 0–20%, respectively. Full article
(This article belongs to the Special Issue Novel Methods for Food Product Preservation)
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<p>OD 720 nm data for experimental conditions: <span class="html-italic">Chlorella</span> 50% <span class="html-italic">v</span>/<span class="html-italic">v</span> wastewater with 0.04% CO<sub>2</sub> (<b>a</b>), 2% CO<sub>2</sub> (<b>b</b>,<b>c</b>), and 5% CO<sub>2</sub> (<b>c</b>); <span class="html-italic">Scenedesmus</span> 50% <span class="html-italic">v</span>/<span class="html-italic">v</span> wastewater with 0.04% CO<sub>2</sub> (<b>d</b>), 2% CO<sub>2</sub> (<b>e</b>), and 5% CO<sub>2</sub> (<b>f</b>).</p>
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<p>Dry weight productivity (mg L<sup>−1</sup> d<sup>−1</sup>) for (<b>a</b>) <span class="html-italic">Chlorella</span> 50% <span class="html-italic">v</span>/<span class="html-italic">v</span> wastewater and (<b>b</b>) <span class="html-italic">Scenedesmus</span> 50% <span class="html-italic">v</span>/<span class="html-italic">v</span> wastewater experimental conditions; PCO<sub>2</sub> (mg L<sup>−1</sup> d<sup>−1</sup>) for (<b>c</b>) <span class="html-italic">Chlorella</span> 50% <span class="html-italic">v</span>/<span class="html-italic">v</span> wastewater and (<b>d</b>) <span class="html-italic">Scenedesmus</span> 50% <span class="html-italic">v</span>/<span class="html-italic">v</span> wastewater experimental conditions; lipid storage (mg g<sub>dry biomass</sub><sup>−1</sup>) for (<b>e</b>) <span class="html-italic">Chlorella</span> 50% <span class="html-italic">v</span>/<span class="html-italic">v</span> wastewater and (<b>f</b>) <span class="html-italic">Scenedesmus</span> 50% <span class="html-italic">v</span>/<span class="html-italic">v</span> wastewater experimental conditions; and protein storage (%) for (<b>g</b>) <span class="html-italic">Chlorella</span> 50% <span class="html-italic">v</span>/<span class="html-italic">v</span> wastewater and (<b>h</b>) <span class="html-italic">Scenedesmus</span> 50% <span class="html-italic">v</span>/<span class="html-italic">v</span> wastewater experimental conditions.</p>
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14 pages, 2197 KiB  
Article
Usability Testing of Novel IoT-Infused Digital Services on Farm Equipment Reveals Farmer’s Requirements towards Future Human–Machine Interface Design Guidelines
by Christina Sebald, Maximilian Treiber, Esmahan Eryilmaz and Heinz Bernhardt
AgriEngineering 2024, 6(2), 1660-1673; https://doi.org/10.3390/agriengineering6020095 - 10 Jun 2024
Viewed by 685
Abstract
The application of digital technologies in the agricultural sector is increasing. One of the new key technologies is the Internet of Things (IoT), which can facilitate the everyday work of farmers. For the successful adoption of IoT-enabled digital products and to ensure improved [...] Read more.
The application of digital technologies in the agricultural sector is increasing. One of the new key technologies is the Internet of Things (IoT), which can facilitate the everyday work of farmers. For the successful adoption of IoT-enabled digital products and to ensure improved workflows, the usability of human–machine interfaces is highly important. Various design approaches of human–machine interfaces (HMIs) can currently be found in the monitoring of agricultural machinery. In this work, the most well-known HMIs are considered. Based on a usability test (participants n = 9), the user interface (UI) of a novel mobile application (NEVONEX Cockpit App) was chosen as an example of a design approach of an IoT ecosystem that is oriented towards the UI design of mobile applications. This work aims to identify the weak points of this UI. Conclusions about the needs, and thus an improvement of the user experience, are based on the suggestions for improvement and the information about the general requirements of farmers for a UI for agricultural machinery. Here, it was found that most farmers are satisfied with the UI design of their familiar tractor monitors. According to the survey, the three most important points to be considered in the UI design are intuitive operation and menu navigation, easy access to the essential functions and buttons, and sufficiently large control panels. The conducted usability tests can be considered a basis for developing HMIs for agriculture machinery. Through repeated execution of comparable usability tests, there is the possibility of developing future HMI guidelines for agriculture to improve the user experience (UX). For the NEVONEX ecosystem, feedback from the user interface testing was incorporated in a major revision of the Cockpit App’s design, where a lot more display space was given to the agronomic digital services by smartly arranging infrastructure functions in tiles. Full article
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<p>Usability test flow.</p>
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<p>Indication of satisfaction with familiar tractor screens.</p>
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<p>Most bothersome characteristics of familiar screens on agricultural machinery from farmers’ perspective.</p>
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<p>Most crucial characteristics of a user-friendly UI in agriculture from a farmer’s perspective.</p>
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<p>(<b>a</b>) Old UI design [<a href="#B31-agriengineering-06-00095" class="html-bibr">31</a>] and (<b>b</b>) redesigned UI [<a href="#B34-agriengineering-06-00095" class="html-bibr">34</a>] of the NEVONEX Cockpit App with highlighted safe area.</p>
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<p>(<b>a</b>) Old UI design [<a href="#B31-agriengineering-06-00095" class="html-bibr">31</a>] and (<b>b</b>) redesigned UI [<a href="#B34-agriengineering-06-00095" class="html-bibr">34</a>] of the NEVONEX Cockpit App with highlighted safe area.</p>
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<p>Safe area of the new UI design by NEVONEX for smartphones [<a href="#B34-agriengineering-06-00095" class="html-bibr">34</a>].</p>
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<p>Redesigned UI of the digital services overview of NEVONEX by Robert Bosch GmbH for smartphone and tablet [<a href="#B34-agriengineering-06-00095" class="html-bibr">34</a>].</p>
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11 pages, 1764 KiB  
Article
Improvement in Productivity and Quality of Soilless Saffron Crops by Implementing Fertigation
by Juan Luis Valenzuela, José Gregorio Díaz and María del Carmen Salas-Sanjuán
AgriEngineering 2024, 6(2), 1649-1659; https://doi.org/10.3390/agriengineering6020094 - 5 Jun 2024
Viewed by 999
Abstract
Saffron cultivation is important in global agriculture and is mainly flourishing in Mediterranean climates. Although it originated in Asia Minor, it is widely grown in regions such as Iran, India, Spain, Morocco, Greece, and Italy. Labour-intensive harvesting, mainly by hand, characterises its production [...] Read more.
Saffron cultivation is important in global agriculture and is mainly flourishing in Mediterranean climates. Although it originated in Asia Minor, it is widely grown in regions such as Iran, India, Spain, Morocco, Greece, and Italy. Labour-intensive harvesting, mainly by hand, characterises its production and offers substantial employment opportunities in cultivating areas. However, traditional saffron-producing countries such as Spain, Italy, and Greece have witnessed declining production due to labour demands and competition from low-wage countries. Mechanization remains unfeasible due to the delicate nature of the plant. To revitalise saffron cultivation, efforts have been focused on reducing labour costs, improving productivity, and improving quality through innovative techniques, such as soilless crops. In this study, the productivity and quality of saffron was evaluated in a soilless culture and three fertigation doses were evaluated: a control, consisting of Sonneveld and Voogt’s standard nutrient solution, and two treatments with two supplemented solutions, 30% K and 30% Ca. The results indicated that the solution with 30% K obtained higher corm productivity, as well as better quality saffron, as all the products of this treatment were included in Category I according to the ISO 3632 standard, while the quality of saffron grown with the control solution was lower. Full article
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<p>Images of the containers used in the experimental set-up (<b>left</b>), flower showing the style with red stigmas (<b>centre</b>), and corms obtained at harvest (<b>right</b>).</p>
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<p>Average drainage ionic concentration (mg·L<sup>−1</sup>) throughout the growing season. The vertical bars show the standard error (SE) (n = 4). The asterisks indicate significant differences within each day between treatments according to the LSD test, with <span class="html-italic">p</span> &lt; 0.05. The lack of a symbol indicates that there were no differences.</p>
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<p>Temporal evolution of electrical conductivity in the drainage, according to the treatment applied. The vertical bars show the standard error (SE) (n = 4). The asterisks indicate significant differences within each day between treatments according to the LSD test, with <span class="html-italic">p</span> &lt; 0.05. The lack of a symbol indicates that there were no differences.</p>
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<p>Saffron colouring, odour, and bittering strength by fertigation treatments. The horizontal lines indicate the thresholds of the different commercial categories according to the ISO 3632 norm. Category I: green line; category II: red line; category III: black line. For odour, the ISO 3632 norm only sets a range for all categories (blue line). The vertical bars show the standard error (SE) (<span class="html-italic">n</span> = 6).</p>
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10 pages, 1504 KiB  
Article
Chemical Control of Coffee Berry Borer Using Unmanned Aerial Vehicle under Different Operating Conditions
by João Paulo Arantes Rodrigues da Cunha, Luana de Lima Lopes and Cleyton Batista de Alvarenga
AgriEngineering 2024, 6(2), 1639-1648; https://doi.org/10.3390/agriengineering6020093 - 5 Jun 2024
Viewed by 955
Abstract
The application of pesticides using unmanned aerial vehicles (UAVs) has grown, but there is a lack of information to support more efficient applications. Using a DJI AGRAS-MG-1P octocopter equipped with different spray tips, this study sought to explore spray deposition (leaves and fruit) [...] Read more.
The application of pesticides using unmanned aerial vehicles (UAVs) has grown, but there is a lack of information to support more efficient applications. Using a DJI AGRAS-MG-1P octocopter equipped with different spray tips, this study sought to explore spray deposition (leaves and fruit) and efficacy of chlorpyrifos on control of coffee berry borer at different spray volumes and flight heights. The study was conducted in an Arabica coffee plantation. The study consisted of eight treatments and four replications in a 2 × 2 × 2 factorial scheme: two flight heights (1.5 and 3.0 m), two spray tips (hollow cone and flat fan), and two spray volumes (10 and 15 L ha−1). Deposition was assessed by detecting a tracer in the coffee leaves and fruit using spectrophotometry. The coffee berry borer-control efficacy trial was conducted in two areas by evaluating the percentage of damaged fruit 60 days after two insecticide applications. The flight height of 1.5 m promoted higher spray deposition on leaves and fruit and a lower incidence of damaged fruit. Flat fan spray tips resulted in higher spray deposition on the leaves, not interfering with the deposition on fruit or the coffee berry borer control. Increasing the spray volume from 10 to 15 L ha−1 did not increase spray deposition on coffee leaves and fruit. Chlorpyrifos applied via UAVs reduced the incidence of coffee berry borer. Full article
(This article belongs to the Special Issue Research Progress of Agricultural Machinery Testing)
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<p>Aircraft used in the tests.</p>
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<p>Spray tips used in the applications: flat fan XR 11001 (<b>left</b>) and hollow cone COAP 9001 (<b>right</b>).</p>
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<p>Coffee leaf and fruit collection positions.</p>
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<p>Detail of tracer deposition on coffee tree foliage by UAV application.</p>
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20 pages, 4222 KiB  
Article
Proposal of an Original Methodology to Evaluate the Performance of Chipper Machines
by Roberto Fanigliulo, Walter Stefanoni, Laura Fornaciari, Renato Grilli, Stefano Benigni, Daniela Scutaru, Giulio Sperandio and Daniele Pochi
AgriEngineering 2024, 6(2), 1619-1638; https://doi.org/10.3390/agriengineering6020092 - 4 Jun 2024
Viewed by 676
Abstract
Wood fuel from the agroforestry sector is one of the main strategies cited by the EU for reducing energetic dependance on foreign markets. Its sustainability, both economic and environmental, can be improved through the optimization of harvesting and chipping operations. This study was [...] Read more.
Wood fuel from the agroforestry sector is one of the main strategies cited by the EU for reducing energetic dependance on foreign markets. Its sustainability, both economic and environmental, can be improved through the optimization of harvesting and chipping operations. This study was focused on the dynamic and energetic balance of the chipping phase carried out by a chipper operated by the power-take-off (PTO) of a medium-power tractor. Both machines were equipped with sensors for real-time monitoring of fuel consumption, PTO torque and speed, trunk diameter and working time during the comminution of 61 poplar trees grown in a medium rotation coppice system. The data analysis was carried out on the entire dataset (about 29,000 records) without considering their belonging to different trees. By means of proper data ordinations, it has been possible to define all the intervals in which the chipping stopped (e.g., between two trees) and to exclude them from the intervals of actual chipping. This has allowed forcomputation of operative and actual working time, as well as of the basic power required to operate the chipper and the power for actual chipping. Subsequently, the parameter values observed during actual chipping were related to the cutting diameters measured at the same instant. Subsequently, the dataset was divided according to seven diameter classes, and, for each class, the descriptive statistical indices of working time, work productivity, CO2 emissions, energy requirement and fuel consumption were calculated. Eventually, the correlation between the variations in trunk diameter and other parameters was verified both on the whole dataset and based on the class average values. The analysis made it possible to identify the conditions of greatest efficiency for the chipper. More generally, the method could help to increase the accuracy of measurements aimed at characterizing the performance of chippers from the point of view of dynamic energy requirements as well as in relation to different wood species. Full article
(This article belongs to the Section Agricultural Mechanization and Machinery)
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<p>(<b>a</b>) Test field during the felling of trees; (<b>b</b>) chipping work site with the tractor−chipper coupling and a second tractor operating a hydraulic forestry crane used to feed the chipper.</p>
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<p>(<b>a</b>) Chipper coupled to the tractor PTO with torquemeter and photoelectric encoder installed between PTO and power shaft; (<b>b</b>) Volumetric fuel meter directly installed in the fuel circuit of the tractor.</p>
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<p>Potentiometric wire transducer applied at the chipper to measure the vertical movements of the upper infeed roller.</p>
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<p>Variations in some parameters during the chipping of 61 poplar trees: (<b>a</b>) Whole data set, including the data collected when the machine ran without chipping (between contiguous trunks, corresponding to diameter equal to 0 mm); (<b>b</b>) Data set resulting from the elimination of all data associated with diameter values &lt;10 mm. Net power and net energy, respectively, represent the power and energy actually required by the wood chipping. The gross power and the gross energy, beyond the net power and energy, respectively, also include the base power and energy required to operate the chipper without chipping. The levels of base power, energy and fuel consumption can be observed in the diagrams (<b>a</b>), in correspondence with the intervals with diameter values equal to zero.</p>
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<p>Results of the test with a tractor at the dynamometric brake. The solid lines refer to the test at maximum fuel delivery, according to the OECD tractor test Code 2 standard. The dashed lines refer to the test at partial fuel delivery, reproducing the engine working conditions of the chipping. The green lines connect the three diagrams in order to visualize the values of all parameters for a given engine speed.</p>
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<p>Frequency distribution of the values of the parameters directly measured by the sensor system: (<b>a</b>) Diameter; (<b>b</b>) Instant fuel consumption; (<b>c</b>) Gross torque.</p>
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<p>Boxplots of the distributions of the instantaneous values of the fundamental chipping parameters, grouped according to seven diametric classes. Top: Directly measured parameters. Bottom: Parameters calculated from the previous ones. (<b>a-top</b>) Trunk diameters measured in t<sub>i</sub>; (<b>b-top</b>) Volume of fuel requested in t<sub>i</sub>; (<b>c-top</b>) Instantaneous torque values; (<b>a-bottom</b>) Wood mass chipped in t<sub>i</sub>; (<b>b-bottom</b>) Instant power demand; (<b>c-bottom</b>) Instant hourly fuel consumption calculated from the instant volume of fuel.</p>
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<p>Boxplots of the distributions of the instantaneous values of some calculated specific parameters of <a href="#agriengineering-06-00092-t003" class="html-table">Table 3</a>, grouped according to seven diametric classes. (<b>a-top</b>) Instant values of energy required for chipping; (<b>b-top</b>) Instant values of specific energy; (<b>c-top</b>) Instant values of fuel consumption per mass unit of chipped wood; (<b>a-bottom</b>) Wood mass chipped per hour calculated from the values of mass chipped in t<sub>i</sub>; (<b>b-bottom</b>) Instant values of time per mass of chipped wood; (<b>c-bottom</b>) Instant values of the specific cost for the chipping of the wood mass unit.</p>
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<p>Diagrams of observed and predicted values provided by the MLR model for gross power, fuel hourly consumption and mass chipped. The matrices relating to each diagram show correlation among all parameters involved (dependent variables in green character). (<b>a</b>) Gross power; (<b>b</b>) Fuel hourly consumption; (<b>c</b>) Mass of chipped wood.</p>
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<p>Diagrams of observed and predicted values provided by the MLR model for gross energy, specific mass, and specific cost. The matrices relating to each diagram show correlation among all parameters involved (dependent variables in green character). (<b>a</b>) Gross energy required by the chipping; (<b>b</b>) Wood mass chipped per hour; (<b>c</b>) Cost per unit of chipped wood mass.</p>
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25 pages, 36709 KiB  
Article
Soqia-Advice: A Web-GIS Advisory Platform for Efficient Irrigation in Arboriculture
by Abdelkhalek Ezzahri, Soukaina Boujdi, Mourad Bouziani, Reda Yaagoubi and Lahcen Kenny
AgriEngineering 2024, 6(2), 1594-1618; https://doi.org/10.3390/agriengineering6020091 - 3 Jun 2024
Viewed by 715
Abstract
The determination of water requirements for crops holds a crucial role in optimizing irrigation and enhancing agricultural productivity. However, identifying these needs remains a significant challenge due to the variety of factors influencing this decision, such as meteorological conditions, soil structure, and the [...] Read more.
The determination of water requirements for crops holds a crucial role in optimizing irrigation and enhancing agricultural productivity. However, identifying these needs remains a significant challenge due to the variety of factors influencing this decision, such as meteorological conditions, soil structure, and the phenological stages of each crop. In this study, we propose the design and development of a dedicated web-based irrigation advisory platform for arboriculture named ‘Soqia-Advice’. This platform will provide services to farmers, advisors, and decision-makers. The proposed methodology is based on four main steps: (1) need assessments; (2) definition of functionalities to fulfill these needs; (3) design of the overall architecture and the conceptual data model; and (4) implementation of key features of the module dedicated to farmers. The prototype of the “Farmer” module was tested on a farm in Azrou city, Morocco, as a case study. Seven-day weather forecasts were seamlessly integrated using the Weatherbit API. Additionally, the irrigation schedule was accurately displayed, ensuring efficient water management. Functionality tests were conducted on each menu to ensure the seamless and reliable operation of all planned features. The results were rigorously assessed to ensure that each feature aligned with the identified needs. Full article
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<p>Use case diagram of the “Farmer”.</p>
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<p>Use case diagram of the “Advisor”.</p>
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<p>Use case diagram of the “Decision-maker”.</p>
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<p>Architecture of the proposed Web-GIS platform ‘Soqia-Advice’.</p>
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<p>Conceptual model of our web platform database.</p>
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<p>Map of the study area—Azrou agricultural farm.</p>
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<p>Presentation of the platform registration interface.</p>
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<p>Displaying the contents of the ‘Geographical view’ button.</p>
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<p>Descriptive form to be completed for the delimited parcel.</p>
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<p>Display a list of registered plots and their corresponding sectors.</p>
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<p>Display of parcels and sectors on the leaflet’s geographical background (Plot in red and Sector in green).</p>
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<p>The information to be provided is in the form of the second menu, “crop management”.</p>
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<p>Display of the crop list registered using the form.</p>
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<p>Weather forecast for the next 7 days.</p>
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<p>Graphs showing soil moisture at two depths.</p>
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<p>Pointing tool for a new device on the map.</p>
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<p>New device labeling form.</p>
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<p>Display of added devices in “Geographical view”.</p>
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<p>Display of daily dose and duration in the “irrigation management” menu.</p>
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<p>Display of the irrigation schedule spread over the next 5 days.</p>
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<p>Form to fill in to be accompanied by an advisor.</p>
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13 pages, 1156 KiB  
Article
Classification of Soybean Genotypes as to Calcium, Magnesium, and Sulfur Content Using Machine Learning Models and UAV–Multispectral Sensor
by Dthenifer Cordeiro Santana, Izabela Cristina de Oliveira, Sâmela Beutinger Cavalheiro, Paulo Henrique Menezes das Chagas, Marcelo Carvalho Minhoto Teixeira Filho, João Lucas Della-Silva, Larissa Pereira Ribeiro Teodoro, Cid Naudi Silva Campos, Fábio Henrique Rojo Baio, Carlos Antonio da Silva Junior and Paulo Eduardo Teodoro
AgriEngineering 2024, 6(2), 1581-1593; https://doi.org/10.3390/agriengineering6020090 - 1 Jun 2024
Viewed by 860
Abstract
Making plant breeding programs less expensive, fast, practical, and accurate, especially for soybeans, promotes the selection of new soybean genotypes and contributes to the emergence of new varieties that are more efficient in absorbing and metabolizing nutrients. Using spectral information from soybean genotypes [...] Read more.
Making plant breeding programs less expensive, fast, practical, and accurate, especially for soybeans, promotes the selection of new soybean genotypes and contributes to the emergence of new varieties that are more efficient in absorbing and metabolizing nutrients. Using spectral information from soybean genotypes combined with nutritional information on secondary macronutrients can help genetic improvement programs select populations that are efficient in absorbing and metabolizing these nutrients. In addition, using machine learning algorithms to process this information makes the acquisition of superior genotypes more accurate. Therefore, the objective of the work was to verify the classification performance of soybean genotypes regarding secondary macronutrients by ML algorithms and different inputs. The experiment was conducted in the experimental area of the Federal University of Mato Grosso do Sul, municipality of Chapadão do Sul, Brazil. Soybean was sown in the 2019/20 crop season, with the planting of 103 F2 soybean populations. The experimental design used was randomized blocks, with two replications. At 60 days after crop emergence (DAE), spectral images were collected with a Sensifly eBee RTK fixed-wing remotely piloted aircraft (RPA), with autonomous takeoff control, flight plan, and landing. At the reproductive stage (R1), three leaves were collected per plant to determine the macronutrients calcium (Ca), magnesium (Mg), and sulfur (S) levels. The data obtained from the spectral information and the nutritional values of the genotypes in relation to Ca, Mg, and S were subjected to a Pearson correlation analysis; a PC analysis was carried out with a k-means algorithm to divide the genotypes into clusters. The clusters were taken as output variables, while the spectral data were used as input variables for the classification models in the machine learning analyses. The configurations tested in the models were spectral bands (SBs), vegetation indices (VIs), and a combination of both. The combination of machine learning algorithms with spectral data can provide important biological information about soybean plants. The classification of soybean genotypes according to calcium, magnesium, and sulfur content can maximize time, effort, and labor in field evaluations in genetic improvement programs. Therefore, the use of spectral bands as input data in random forest algorithms makes the process of classifying soybean genotypes in terms of secondary macronutrients efficient and important for researchers in the field. Full article
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<p>Location of the experimental area in Chapadão do Sul-MS, Brazil; photographic area of the experimental area.</p>
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<p>Pearson correlation scatterplot with spectral and secondary macronutrients.</p>
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<p>Principal Component (PC) for clusters based on Ca, M, and S contents of soybean genotypes based on k-means.</p>
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<p>Boxplot with Ca, Mg, and S means for clustered data. Means followed by the same letters do not differ for the cluster by the Scott–Knott test at 5% probability.</p>
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<p>Boxplot with clustering means for percent correct classification regarding the machine learning models. Means followed by the same uppercase letters do not differ for the inputs tested by the Scott–Knott test at 5% probability; means followed by the same lowercase letters do not differ for the algorithms tested by the Scott–Knott test at 5% probability.</p>
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<p>Boxplot with clustering means for kappa regarding machine learning models. Means followed by the same uppercase letters do not differ for the inputs tested by the Scott–Knott test at 5% probability; means followed by the same lowercase letters do not differ for the algorithms tested by the Scott–Knott test at 5% probability.</p>
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<p>Boxplot with clustering means for F-score regarding the machine learning models tested. Means followed by the same uppercase letters do not differ for the inputs tested by the Scott–Knott test at 5% probability; means followed by the same lowercase letters do not differ for the algorithms tested by the Scott–Knott test at 5% probability.</p>
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13 pages, 2410 KiB  
Article
Effects of Biochar Type on the Growth and Harvest Index of Onion (Allium cepa L.)
by Ángel Cedeño, Veris Saldarriaga, Galo Cedeño, Geoconda López and José Mendoza
AgriEngineering 2024, 6(2), 1568-1580; https://doi.org/10.3390/agriengineering6020089 - 30 May 2024
Viewed by 797
Abstract
This study examined using peanut shells, rice husks, and cocoa husks as soil conditioners to boost yields in Allium cepa var. Alvara onions. Three types of biochar and four application rates (1%, 1.5%, 3%, and 5%) were compared to a control with no [...] Read more.
This study examined using peanut shells, rice husks, and cocoa husks as soil conditioners to boost yields in Allium cepa var. Alvara onions. Three types of biochar and four application rates (1%, 1.5%, 3%, and 5%) were compared to a control with no biochar. The biochars had different nutrient makeups, with cocoa husk biochar (CHB) containing the most essential elements. While overall plant growth (height, leaves, and roots) was not significantly affected (p > 0.05) by any biochar type compared to the control, some plant parts responded differently. CHB (5%) and peanut husk biochar (PHB) (1%) yielded the tallest onion plants (71 and 65 cm), while 1% rice and cocoa biochar resulted in the shortest (below 42 cm). PHB (3% and 5%) produced the longest roots (9 cm), while 1.5% rice husk biochar (RHB) had the shortest. Biochar application had no significant effect on leaf count. However, specific application rates of RHB and PHB increased the harvest index (HI), indicating more efficient yield allocation. HI values > 0.85 were obtained with specific biochar rates (e.g., 1.0–1.5% PHB, 1.5–5% RHB, or 5.0% CHB). Full article
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<p>Boxplot and barplot of cocoa, peanut, and rice biochar treatments on plant and root length (cm) and number of onion leaves. Black dots represent outliers, while white dots represent measurements.</p>
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<p>Scatterplot of the effect of (<b>a</b>) CHB, (<b>b</b>) PHB, and (<b>c</b>) RHB on TBW and TDP, and (<b>d</b>) HI.</p>
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<p>Effect of CHB, PHB, and RHB treatments on the average data of (<b>a</b>) TBW, (<b>b</b>) TDP, and (<b>c</b>) HI.</p>
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<p>Onion images of (<b>a</b>) PHB, (<b>b</b>) CHB, and (<b>c</b>) RHB treatments.</p>
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19 pages, 2497 KiB  
Article
Cost Comparison for Emerging Technologies to Haul Round Bales for the Biorefinery Industry
by John S. Cundiff, Robert D. Grisso and Erin G. Webb
AgriEngineering 2024, 6(2), 1549-1567; https://doi.org/10.3390/agriengineering6020088 - 30 May 2024
Viewed by 696
Abstract
Between 20 and 30% of the feedstock delivered cost is the highway hauling. In order to achieve maximum truck productivity, and thus minimize hauling cost, the hauling technology needs to provide for rapid loading and unloading. Three prototype technologies have been proposed to [...] Read more.
Between 20 and 30% of the feedstock delivered cost is the highway hauling. In order to achieve maximum truck productivity, and thus minimize hauling cost, the hauling technology needs to provide for rapid loading and unloading. Three prototype technologies have been proposed to address the hauling issue. The first was developed by Stinger to secure a load of large rectangular bales, and it is identified as the Advanced Load Securing System (ALSS). For this study, the ALSS technology is applied on two trailers hooked in tandem (ALSS-2) loaded with 20 bales each. The second technology (Cable), is a cable system for securing a load of bales (round or rectangular) on a standard flatbed trailer. With the third technology (Rack), bales are loaded into a 20-bale rack at an SSL, and this rack is unloaded as a unit at the biorefinery. Bales remain in the rack until processed, thus avoiding single-bale handling at the receiving facility. A cost comparison, which begins with bales in single-layer ambient storage in SSLs and ends with bales in single file on a conveyor into the biorefinery, was done for the three hauling technologies paired with three load-out technologies. Cost for the nine options ranged from 48.56 USD/Mg (11 load-outs, Cable hauling) to 34.90 USD/Mg (8 loads-outs, ALSS-2 hauling). The most significant cost issue was the reduction in truck cost; 25.54 USD/Mg (20 trucks, Cable) and 15.15 USD/Mg (10 trucks, Rack). Full article
(This article belongs to the Section Agricultural Mechanization and Machinery)
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<p>Load of large rectangular bales (1 m × 1.2 m × 2.4 m) secured with Stinger ALSS. (Photo reprinted with permission from Stinger Incorporated.).</p>
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<p>Concept for adaptation of ALSS for tandem trailers, identified as ALSS-2.</p>
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<p>Subareas defined for simulation of 11 load-outs. “Crosses” show locations of 199 SSLs. (Load-outs are operations at the SSLs to load round bales onto trailers. The L1–L11 designations define the subareas assigned to the 11 load-outs operating simultaneously.).</p>
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<p>Required truck operating hours each week over 48-week season calculated for all three hauling systems using the 9-load-out simulation database.</p>
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<p>Design of at-plant storage for Cable and ALSS systems.</p>
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<p>Design of at-plant storage for Rack system.</p>
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24 pages, 13812 KiB  
Article
A CFD Methodology for the Modelling of Animal Thermal Welfare in Hybrid Ventilated Livestock Buildings
by Dario Colombari, Francesco Masoero and Augusto Della Torre
AgriEngineering 2024, 6(2), 1525-1548; https://doi.org/10.3390/agriengineering6020087 - 29 May 2024
Viewed by 846
Abstract
Computational fluid dynamics (CFD) may aid the design of barn ventilation systems by simulating indoor cattle thermal welfare. In the literature, CFD models of mechanically and naturally ventilated barns are proposed separately. Hybrid ventilation relies on cross effects between air change mechanisms that [...] Read more.
Computational fluid dynamics (CFD) may aid the design of barn ventilation systems by simulating indoor cattle thermal welfare. In the literature, CFD models of mechanically and naturally ventilated barns are proposed separately. Hybrid ventilation relies on cross effects between air change mechanisms that cannot be studied using existing models. The objective of this study was to develop a CFD methodology for modelling animal thermal comfort in hybrid ventilated barns. To check the capability of CFD as a design evaluation tool, a real case study (with exhaust blowers) and an alternative roof layout (with ridge gaps) were simulated in summer and winter weather. Typical phenomena of natural and mechanical ventilation were considered: buoyancy, solar radiation, and wind together with high-speed fans and exhaust blowers. Cattle thermal load was determined from a daily animal energy balance, and the assessment of thermal welfare was performed using thermohygrometric indexes. Results highlight that the current ventilation layout ensures adequate thermal welfare on average, despite large nonuniformity between stalls. The predicted intensity of heat stress was successfully compared with experimental measurements of heavy breathing duration. Results show strong interactions between natural and mechanical ventilation, underlining the need for an integrated simulation methodology. Full article
(This article belongs to the Section Livestock Farming Technology)
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<p>Positions of recirculation fans and rooftop blowers.</p>
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<p>Geometry of closed-roof configuration.</p>
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<p>Geometry of open-roof configuration.</p>
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<p>Position of energy and water source terms. Stalls are highlighted in grey, feeding lines in blue, prepartum paddock in green and postpartum paddock in red.</p>
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<p>Intensity of simulated solar heat flux on building roof on 1 August at 14:00.</p>
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<p>Mesh and computational domain for summer weather simulation.</p>
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<p>Mesh and computational domain for winter weather simulation.</p>
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<p>Velocity field and streamlines for the closed-roof configuration in winter weather.</p>
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<p>Temperature field for the closed-roof configuration in winter weather.</p>
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<p>Humidity field for the closed-roof configuration in winter weather.</p>
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<p>Velocity field and streamlines for the open-roof configuration in winter weather.</p>
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<p>Temperature field for the open-roof configuration in winter weather.</p>
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<p>Humidity field for the open-roof configuration in winter weather.</p>
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<p>Velocity field for the closed-roof configuration in summer weather.</p>
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<p>Temperature field for the closed-roof configuration in summer weather.</p>
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<p>Humidity field for the closed-roof configuration in summer weather.</p>
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<p>Velocity field for closed-roof configuration in summer weather from top view.</p>
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<p>Computed equivalent temperature index for cattle (ETIC) for closed-roof configuration in summer weather.</p>
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<p>Computed temperature humidity index (THI) for closed-roof configuration in summer weather.</p>
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<p>Velocity field for the open-roof configuration in summer weather.</p>
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<p>Temperature field for the open-roof configuration in summer weather.</p>
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<p>Humidity field for the open-roof configuration in summer weather.</p>
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<p>Comparison of computed hourly air change rate in summer and winter weather for the two analysed geometries.</p>
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14 pages, 3778 KiB  
Article
Plant Growth Regulator from the Essential Oil of Syzygium aromaticum L. for Inhibition of Secondary Growth of Garlic Cultivated under Tropical Conditions
by Vinícius Guimarães Nasser, Willian Rodrigues Macedo, Frederico Garcia Pinto, Junio Henrique da Silva, Marcelo Coelho Sekita and Geraldo Humberto Silva
AgriEngineering 2024, 6(2), 1511-1524; https://doi.org/10.3390/agriengineering6020086 - 29 May 2024
Cited by 1 | Viewed by 710
Abstract
Garlic cultivation in tropical regions, such as the Brazilian Cerrado, faces the problem of secondary growth in the field induced by climatic conditions, which affects bulb quality and value. Clove essential oil (CEO) contains high levels of eugenol, which has the potential as [...] Read more.
Garlic cultivation in tropical regions, such as the Brazilian Cerrado, faces the problem of secondary growth in the field induced by climatic conditions, which affects bulb quality and value. Clove essential oil (CEO) contains high levels of eugenol, which has the potential as an eco-friendly plant growth retardant (PGR) capable of reducing or inhibiting the secondary growth of bulbs in garlic cultivation. In this study, field experiments were carried out in two consecutive years (winter 2021 and 2022), spraying garlic plants with different concentrations of emulsion of CEO (0.0, 0.2, and 0.4%) in the differentiation phase; for comparison, the effects of water deficit, a prevalent agricultural technique in the region, were also evaluated. At a dose of 0.4%, the CEO reduced the prevalence of secondary growth and split bulbs without affecting yield. The mode of action of PGR was investigated by analyzing photosynthetic, enzymatic, and metabolomic parameters. The plants reduced amylolytic activity, and the photosynthetic parameters, after 7 days, were restored in both treatments. The analysis of the metabolomic profile of garlic leaves revealed changes in the pathways associated with the biosynthesis of fatty acids, wax, cutin, and suberin in plants treated with CEO, indicating possible damage to the surface coating of the leaf. Full article
(This article belongs to the Special Issue Recent Trends and Advances in Agricultural Engineering)
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<p>The chromatogram showing the main components of clove essential oil (<span class="html-italic">S. aromaticum</span>) used in the experiments.</p>
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<p>Germination inhibition of garlic bulbils treated with clove oil at different concentrations (0.0-control, 0.10, 0.25, 0.50, 1.00, 2.00, and 2.50%) after 5 days in a BOD-type growth chamber at 25 °C.</p>
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<p>Quality of garlic bulbs from plants sprayed with different concentrations of clove oil solution (0.00-control, 0.20, and 0.40%) in the 2021 harvest. Mean values of bulb weight (<b>a</b>), classification (<b>b</b>), and the number of bulbils per bulb (<b>c</b>). The data represent the mean value of 30 plants; the standard error is indicated by bars and similar letters, showing no statistical difference by the 5% <span class="html-italic">t</span>-test.</p>
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<p>Presence of anomalies in garlic bulbs of plants sprayed with different concentrations of clove oil solution (0-control, 0.20%, and 0.40%) in the 2021 harvest. The data represent the mean value of 30 plants, standard error is indicated by bars and similar letters indicate no statistical difference by the <span class="html-italic">t</span>-test at 5% probability: super sprouting content (<b>a</b>), crooked bulb (<b>b</b>), and split bulb (<b>c</b>).</p>
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<p>Effect of clove oil application via spraying at different concentrations (0-control, 0.20% and 0.40%) and 21 days of water deficit (DH) on garlic plants at the beginning of differentiation in the 2022 harvest. Mean values of bulb weight (<b>a</b>), mean diameter (<b>b</b>), number of bulbs (<b>c</b>), overshoot (<b>d</b>), crooked bulb (<b>e</b>), and split bulb (<b>f</b>). The data represent the mean (n = 50 plants), the standard error is indicated by bars, and similar letters show no statistical difference by the <span class="html-italic">t</span>-test at 5% probability.</p>
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<p>Effect on the amylolytic activity of developing leaves and bulbs of garlic plants sprayed with different concentrations of clove oil solution (0-control, 0.20 and 0.40%) after 3 (<b>a</b>,<b>b</b>) and 7 (<b>c</b>,<b>d</b>) days of spraying. The data represent the mean value of five repetitions, and bars indicate the standard deviation; similar letters indicate no statistical difference by the <span class="html-italic">t</span>-test at 5% probability.</p>
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<p>Partial least square–discriminant analyses (PLS–DA) referring to the 41 metabolites detected in the extract of garlic plant leaves treated with clove oil solution. Control Treatment (red), treatment with 0.20% (green) clove oil solution, and 0.40% (blue) clove oil solution (<b>a</b>). Variable Importance in Projection score analysis (VIP) reveals key components contributing to the discrimination model (<b>b</b>).</p>
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<p>Leaf extracts showed 10 significantly different metabolites (<span class="html-italic">p</span>-value &lt; 0.05) indicated on the heat map and grouped by Euclidean distance measurement, control treatment (red), and treatments with 0.20% (green) and 0.40% (blue) clove oil after 3 days of spraying.</p>
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14 pages, 1342 KiB  
Article
Non-Herbivore-Induced Plant Organic Volatiles of Tomato Cultivars and Their Effect on Pest Biological Control
by Tomas Cabello, Manuel Gamez, Juan Ramón Gallego, Inmaculada Lopez, Carolina Sanchez and Jozsef Garay
AgriEngineering 2024, 6(2), 1497-1510; https://doi.org/10.3390/agriengineering6020085 - 29 May 2024
Viewed by 728
Abstract
Herbivore-induced plant organic volatiles (HIPVs) have recently been studied to improve biological pest control. In contrast, the effects of volatile organic compounds (VOCs) that are not induced by herbivory (non-HIPVs) have received less attention. The latter are essential in the first stages of [...] Read more.
Herbivore-induced plant organic volatiles (HIPVs) have recently been studied to improve biological pest control. In contrast, the effects of volatile organic compounds (VOCs) that are not induced by herbivory (non-HIPVs) have received less attention. The latter are essential in the first stages of crop colonization by entomophagous insects (predators and parasitoids) used in biological pest control programs. Furthermore, the effects on entomophagous insects of different cultivars of a cultivated botanical species have not been studied. The aim of this work was to study the different non-HIPVs found in 10 tomato cultivars used in tomato greenhouses on two entomophages: the egg parasitoid Trichogramma achaeae (Hymenoptera, Trichogrammatidae) and the zoo-phytophagous predator Nesidiocoris tenuis (Hemiptera, Miridae). The results indicate that although there is considerable quantitative and qualitative variation in the emission of VOCs in the 10 tomato cultivars analysed, this variability made it difficult to determine the influence of the volatiles on the attraction of the predatory species N. tenuis, with only one cultivar (Rebelion) exhibiting a significantly higher attractiveness than the rest of the cultivars. For the parasitoid T. achaeae, these same volatiles had a significant effect (in part) on parasitoid behaviour. However, this attraction was not reflected in the discriminant analysis, at least for the volatiles analysed. The analysis showed four groups of well-differentiated cultivars, according to the non-HIPV composition, and this bore no relation to the levels of attractiveness registered in the different cultivars, with the exception again of the Rebelion cultivar, which seems not to be very attractive for the parasitoid and its parasitism activity. The implications of non-herbivore-induced (non-HPV) VOCs in the biological control of greenhouse pest species are described and discussed. Full article
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<p>The relative values (percentage ± SE) of each of the 6 chemical compounds emitted by the leaves, according to each of the 10 tomato cultivars studied.</p>
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<p>A principal component analysis (PCA) of the volatiles presents in ten tomato cultivars based on the principal component values (Dimension 1 and Dimension 2) (numbers in squares: midpoint coordinates for each cultivar).</p>
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<p>Mean values (±SE) per plant for the number of <span class="html-italic">Ephestia kuehniella</span> eggs parasitized by <span class="html-italic">Trichogramma achaeae</span>, according to cultivar, in the trial conducted in cages under laboratory conditions (values followed by the same letter do not present significant differences at <span class="html-italic">p</span> = 0.05).</p>
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<p>The mean values (±SE) per plant of the number of <span class="html-italic">Nesidiocoris tenuis</span> nymphs and adults according to the cultivar, in the trial conducted in cages under laboratory conditions (values followed by the same letter do not present significant differences at <span class="html-italic">p</span> = 0.05).</p>
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18 pages, 590 KiB  
Review
Advancing Livestock Technology: Intelligent Systemization for Enhanced Productivity, Welfare, and Sustainability
by Petru Alexandru Vlaicu, Mihail Alexandru Gras, Arabela Elena Untea, Nicoleta Aurelia Lefter and Mircea Catalin Rotar
AgriEngineering 2024, 6(2), 1479-1496; https://doi.org/10.3390/agriengineering6020084 - 28 May 2024
Cited by 4 | Viewed by 2573
Abstract
The livestock industry is undergoing significant transformation with the integration of intelligent technologies aimed at enhancing productivity, welfare, and sustainability. This review explores the latest advancements in intelligent systemization (IS), including real-time monitoring, machine learning (ML), and the Internet of Things (IoT), and [...] Read more.
The livestock industry is undergoing significant transformation with the integration of intelligent technologies aimed at enhancing productivity, welfare, and sustainability. This review explores the latest advancements in intelligent systemization (IS), including real-time monitoring, machine learning (ML), and the Internet of Things (IoT), and their impacts on livestock farming. The aim of this study is to provide a comprehensive overview of how these technologies can address industry challenges by improving animal health, optimizing resource use, and promoting sustainable practices. The methods involve an extensive review of the current literature and case studies on intelligent monitoring, data analytics, automation in feeding and climate control, and renewable energy integration. The results indicate that IS enhances livestock well-being through real-time health monitoring and early disease detection, optimizes feeding efficiency, and reduces operational costs through automation. Furthermore, these technologies contribute to environmental sustainability by minimizing waste and reducing the ecological footprint of livestock farming. This study highlights the transformative potential of intelligent technologies in creating a more efficient, humane, and sustainable livestock industry. Full article
(This article belongs to the Section Livestock Farming Technology)
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<p>Graphical representation of the improvements of integrating artificial intelligence (AI), machine learning (ML), and automation to optimize various aspects of farming operations.</p>
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29 pages, 10931 KiB  
Article
Theoretical Substantiation of the Dependence of Spring Deformation of an Improved Opener
by Amangeldy Sarsenov, Zhanna Kubasheva, Adil Ibrayev and Adilet Sugirbay
AgriEngineering 2024, 6(2), 1450-1478; https://doi.org/10.3390/agriengineering6020083 - 24 May 2024
Viewed by 756
Abstract
The article presents factors influencing the germination and development of plants after seeding with disk seeders. Schemes of improved two-disk seeders are proposed, forces acting on the improved seeder during operation, determination of the maximum distance between the seeder disks at the field [...] Read more.
The article presents factors influencing the germination and development of plants after seeding with disk seeders. Schemes of improved two-disk seeders are proposed, forces acting on the improved seeder during operation, determination of the maximum distance between the seeder disks at the field surface level, and calculation schemes for determining the draft resistance of the serial and improved seeders, the area of the flat disk segment of the seeder, determination of the deformer, and tailstock area of the pressing plate. During the theoretical study of the seeding process, the following parameters and observations were obtained: analytical dependencies of soil density created by the pressing plate; geometric parameters of the pressing plate with a curvature radius r = 52…57 mm, plate section thickness of 2.5 mm; installation of the pressing plate insignificantly increases the draft resistance of the seeder; and the depth of the seeder’s travel has the greatest influence on spring deformation. Experimental studies reveal that the stiffness of the pressing plate is 7500…7600 N/m, ensuring an optimal furrow bottom density of 1.1–1.3 g/cm3; in the range of seed embedding depth of 0.05…0.07 m, 89% of the total number of seeds are placed compared to 76% of seeds embedded by the serial seeder. Full article
(This article belongs to the Section Agricultural Mechanization and Machinery)
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<p>Improved opener: 1. housing; 2. two flat disks; 3. ball bearings placed in the housings; 4. driver bracket; 5. seed guide; 6. pressure plate; 7. pressure plate upper part; 8. pressure plate curved section; 9. pressure plate direct inclined section; 10. pressure plate horizontal shank; 11. pressure plate protruding beyond the inter-disk space part; 12. longitudinal holes; 13. bolts; 14. flat platform; 15. scraper.</p>
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<p>Diagram of a disk coulter with a pressure plate: 1. disks; 2. pressure plate; 3. deformer; 4. shank.</p>
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<p>Forces acting on the pressure plate: (<b>a</b>) general diagram of forces; (<b>b</b>) soil pressure on the plate.</p>
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<p>Calculation diagram for determining the moment of inertia of the cross-section of the pressure plate: ν<sub>0</sub>—distance from the center of the circumscribed and inscribed circles to the center of gravity; u—center of circumscribed and inscribed circles.</p>
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<p>Diagram of forces acting on the improved coulter during operation.</p>
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<p>Scheme for determining the maximum distance between the coulter discs at the level of the field surface.</p>
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<p>Calculation diagram for determining the traction force of a serial and improved opener: 1—flat disks; 2—pressure plate; L—distance to the point of application of force F<sub>тд</sub>.</p>
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<p>Calculation diagram for determining the area opener flat disc segment.</p>
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<p>Calculation diagram for determining the area: (<b>a</b>) deformer; (<b>b</b>) shank.</p>
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<p>To determine the rigidity of the clamping plates: (<b>a</b>) diagram of the experimental setup; (<b>b</b>) measuring deflection.</p>
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<p>Determination of spring deformation: (<b>a</b>) without load; (<b>b</b>) under load.</p>
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<p>Standard DOSM-3-0.05 dynamometer: (<b>a</b>) diagram of the experimental setup for determining the physical properties of soil; (<b>b</b>,<b>c</b>) experimental setup for determining the physical properties of soil; (<b>d</b>) soil sample placed in a soil channel.</p>
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<p>Measuring tools, special devices, and equipment: (<b>a</b>) calipers, metal ruler, cutting cylinders, weighing bottles; (<b>b</b>) electronic scales VK-1500; (<b>c</b>) drying cabinet SU-2M with electronic scales.</p>
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<p>Calibration graph of the standard dynamometer DOSM-3-0.05.</p>
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<p>Measuring immersion depth metal stamp.</p>
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<p>Cutting cylinders: (<b>a</b>) before immersion; (<b>b</b>) after immersion in the soil.</p>
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<p>Dependence of the moment of resistance of the plate section on geometric parameters: (<b>a</b>) radius of curvature r; (<b>b</b>) thickness δ<sub>п</sub>.</p>
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<p>Deformation of the coulter spring with a short shank during operation of the seeding unit.</p>
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<p>Deformation of the coulter spring with a long shank during operation of the seeding unit.</p>
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<p>Dependence of the compression force of a cylindrical spring on deformation.</p>
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<p>Dependence of the magnitude of deformation of the pressure plate on the applied load.</p>
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<p>Dependence of soil density on its hardness.</p>
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<p>Uniformity of seed placement in depth.</p>
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<p>Deformation of the groove bottom as a function of applied pressure.</p>
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<p>Dependence of the increase in density of the groove bottom from applied pressure.</p>
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<p>Dependence of groove bottom density from the depth of the coulter stroke.</p>
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14 pages, 5427 KiB  
Technical Note
Technological Upgrade of a Vicon RS-EDW Spreader: Development of a Microcontroller for Variable Rate Application
by João Serrano, Alexandre Amaral, Shakib Shahidian, José Marques da Silva, Francisco J. Moral and Carlos Escribano
AgriEngineering 2024, 6(2), 1436-1449; https://doi.org/10.3390/agriengineering6020082 - 22 May 2024
Viewed by 1084
Abstract
Over the last two decades, a considerable amount of equipment has been acquired (spreaders, seeders, sprayers, among others) to respond to the challenges of the precision agriculture (PA) concept. Most of this equipment has been purchased at a high cost. However, many of [...] Read more.
Over the last two decades, a considerable amount of equipment has been acquired (spreaders, seeders, sprayers, among others) to respond to the challenges of the precision agriculture (PA) concept. Most of this equipment has been purchased at a high cost. However, many of them, despite still being functional and equipped with sensors, actuators, and electronic processing units capable of adjusting to variations in speed, have become obsolete in terms of communication and incompatible with new monitoring and control systems based on the “Isobus” protocol. This work aims to present a solution for updating the control system (“Ferticontrol”) of a “Vicon RS-EDW” spreader with variable rate application (VRA), making it compatible with the “InCommand” system from “Ag Leader”. The solution includes serial protocol mediation using low-cost tools such as “Arduino” and “Raspberry Pi” microcontrollers and open-source software. The development shows that it is possible to implement a solution that is accessible to farmers in general. It also provides a niche business opportunity for young researchers to set up small technology-based enterprises associated with universities and research centers. These partnerships guarantee permanent innovation and represent a decisive step towards modern, technological, competitive, and sustainable agriculture. Full article
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<p>Structure of this article: from the problem posed to the proposed solution.</p>
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<p>“Vicon RS-EDW” spreader: details of electronic components (microprocessor, sensors, actuators, and connector).</p>
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<p>“Vicon RS-EDW” spreader: details of actuator linear LINAK (<b>b</b>) and dosing plates: closed (<b>a</b>) and open (<b>c</b>).</p>
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<p>Previous solution to variable rate technology (VRT) control of “Vicon RS-EDW” spreader with the “Massey-Ferguson 6130” tractor: details of GNSS antenna “Garmin 16” and “Ferticontrol” and “Fieldstar” controllers (this with the memory card type “PCMCIA”).</p>
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<p>Proposed solution for variable rate technology (VRT) control of “Vicon RS-EDW” spreader based on “Arduino” microcontroller board and open-source software to make “InCommand” (Ag Leader) and “Ferticontrol” compatible with each other.</p>
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<p>Proposed solution as actual variable rate technology (VRT) control of “Vicon RS-EDW” spreader based on microcontroller; SP—serial port; PC—personal computer.</p>
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<p>Solution proposed to communication between “InCommand” and “Ferticontrol”; detail of the microcontroller “Arduino” with liquid crystal display (LCD: top line—message received from “InCommand”; bottom line—message sent and executed by “Ferticontrol”).</p>
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<p>Electronic circuit boards and case used in the device (microcontroller “Arduino”, liquid crystal display, LCD, and serial ports 1 and 2).</p>
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<p>Main algorithm of the proposed solution.</p>
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<p>Complementary algorithms of the proposed solution.</p>
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<p>Proposed solution (“InCommand”–“Arduino”–”Ferticontrol”) installed on the tractor.</p>
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19 pages, 1688 KiB  
Article
Machine Learning-Based Control of Autonomous Vehicles for Solar Panel Cleaning Systems in Agricultural Solar Farms
by Farima Hajiahmadi, Mohammad Jafari and Mahmut Reyhanoglu
AgriEngineering 2024, 6(2), 1417-1435; https://doi.org/10.3390/agriengineering6020081 - 20 May 2024
Viewed by 1041
Abstract
This paper presents a machine learning (ML)-based approach for the intelligent control of Autonomous Vehicles (AVs) utilized in solar panel cleaning systems, aiming to mitigate challenges arising from uncertainties, disturbances, and dynamic environments. Solar panels, predominantly situated in dedicated lands for solar energy [...] Read more.
This paper presents a machine learning (ML)-based approach for the intelligent control of Autonomous Vehicles (AVs) utilized in solar panel cleaning systems, aiming to mitigate challenges arising from uncertainties, disturbances, and dynamic environments. Solar panels, predominantly situated in dedicated lands for solar energy production (e.g., agricultural solar farms), are susceptible to dust and debris accumulation, leading to diminished energy absorption. Instead of labor-intensive manual cleaning, robotic cleaners offer a viable solution. AVs equipped to transport and precisely position these cleaning robots are indispensable for the efficient navigation among solar panel arrays. However, environmental obstacles (e.g., rough terrain), variations in solar panel installation (e.g., height disparities, different angles), and uncertainties (e.g., AV and environmental modeling) may degrade the performance of traditional controllers. In this study, a biologically inspired method based on Brain Emotional Learning (BEL) is developed to tackle the aforementioned challenges. The developed controller is implemented numerically using MATLAB-SIMULINK. The paper concludes with a comparative analysis of the AVs’ performance using both PID and developed controllers across various scenarios, highlighting the efficacy and advantages of the intelligent control approach for AVs deployed in solar panel cleaning systems within agricultural solar farms. Simulation results demonstrate the superior performance of the ML-based controller, showcasing significant improvements over the PID controller. Full article
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<p>Autonomous Vehicle utilized for carrying and positioning cleaning robots in solar panel cleaning systems.</p>
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<p>Graphical schematic depicting the mathematical model of Brain Emotional Learning (BEL) in the mammalian limbic system.</p>
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<p>Brain Emotional Learning controller architecture for closed-loop control of Autonomous Vehicles.</p>
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<p>The desired and actual outputs of the system [the displacement (<span class="html-italic">x</span>) and the angles of the front and rear scissors (<math display="inline"><semantics> <msub> <mi>θ</mi> <mn>1</mn> </msub> </semantics></math> and <math display="inline"><semantics> <msub> <mi>θ</mi> <mn>2</mn> </msub> </semantics></math>)] in constant trajectory tracking (see Scenario I: Maintaining constant trajectories for AV angles and displacement). The developed BEL-based controller is in red (dashed line), the PID is in blue (dashed–dotted line), and the desired trajectories are in green (solid line).</p>
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<p>The generated forces and torques by both controllers in constant trajectory tracking (see Scenario I: Maintaining constant trajectories for AV angles and displacement). The developed BEL-based controller is in magenta (dashed line), and the PID is in cyan (dashed–dotted line).</p>
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<p>The tracking errors in constant trajectory tracking (see Scenario I: Maintaining constant trajectories for AV angles and displacement). The developed BEL-based controller is in orange (dashed line), and the PID is in purple (dashed–dotted line).</p>
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<p>The desired and actual outputs of the system [the displacement (<span class="html-italic">x</span>) and the angles of the front and rear scissors (<math display="inline"><semantics> <msub> <mi>θ</mi> <mn>1</mn> </msub> </semantics></math> and <math display="inline"><semantics> <msub> <mi>θ</mi> <mn>2</mn> </msub> </semantics></math>)] in tracking constant/time-varying sinusoidal trajectories (see Scenario II: Tracking sinusoidal trajectories to maintain AV angles). The developed BEL-based controller is in red (dashed line), the PID is in blue (dashed–dotted line), and the desired trajectories are in green (solid line).</p>
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<p>The generated forces and torques by both controllers in tracking constant/time-varying sinusoidal trajectories (see Scenario II: Tracking sinusoidal trajectories to maintain AV angles). The developed BEL-based controller is in magenta (dashed line) and the PID is in cyan (dashed–dotted line).</p>
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<p>The tracking errors in tracking constant/time-varying sinusoidal trajectories (see Scenario II: Tracking sinusoidal trajectories to maintain AV angles). The developed BEL-based controller is in orange (dashed line), and the PID is in purple (dashed–dotted line).</p>
Full article ">Figure 10
<p>The desired and actual outputs of the system [the displacement (<span class="html-italic">x</span>) and the angles of the front and rear scissors (<math display="inline"><semantics> <msub> <mi>θ</mi> <mn>1</mn> </msub> </semantics></math> and <math display="inline"><semantics> <msub> <mi>θ</mi> <mn>2</mn> </msub> </semantics></math>)] in tracking trajectories in the presence of substantial external disturbances (see Scenario III: Preserving AV angles and displacement in the presence of substantial external disturbances). External disturbances are introduced to perturb the angles of the front and rear scissors within the time intervals of [8–9] and [14–15] seconds, respectively. The developed BEL-based controller is in red (dashed line), the PID is in blue (dashed–dotted line), and the desired trajectories are in green (solid line).</p>
Full article ">Figure 11
<p>The generated forces and torques by both controllers in tracking trajectories in the presence of substantial external disturbances (see Scenario III: Preserving AV angles and displacement in the presence of substantial external disturbances). The developed BEL-based controller is in magenta (dashed line), and the PID is in cyan (dashed–dotted line).</p>
Full article ">Figure 12
<p>The tracking errors in tracking trajectories in the presence of substantial external disturbances (see Scenario III: Preserving AV angles and displacement in the presence of substantial external disturbances). The developed BEL-based controller is in orange (dashed line), and the PID is in purple (dashed–dotted line).</p>
Full article ">
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