Hoogsteen et al., 2012 - Google Patents
Non-intrusive appliance recognitionHoogsteen et al., 2012
- Document ID
- 16273430947061672816
- Author
- Hoogsteen G
- Krist J
- Bakker V
- Smit G
- Publication year
- Publication venue
- 2012 3rd IEEE PES Innovative Smart Grid Technologies Europe (ISGT Europe)
External Links
Snippet
Energy conservation becomes more important nowadays. The use of smart meters and, in the near future, smart appliances, are the key to achieve reduction in energy consumption. This research proposes a non-intrusive appliance monitor and recognition system for …
- 238000011160 research 0 abstract description 17
Similar Documents
| Publication | Publication Date | Title |
|---|---|---|
| Mengistu et al. | A cloud-based on-line disaggregation algorithm for home appliance loads | |
| US8156055B2 (en) | System and method for utility usage, monitoring and management | |
| Figueiredo et al. | An experimental study on electrical signature identification of non-intrusive load monitoring (nilm) systems | |
| Reinhardt et al. | On the accuracy of appliance identification based on distributed load metering data | |
| He et al. | Non-intrusive load disaggregation using graph signal processing | |
| Altrabalsi et al. | Low-complexity energy disaggregation using appliance load modelling | |
| Anderson et al. | Event detection for non intrusive load monitoring | |
| Klemenjak et al. | Non-intrusive load monitoring: A review and outlook | |
| Ma et al. | Toward energy-awareness smart building: Discover the fingerprint of your electrical appliances | |
| Yu et al. | Nonintrusive appliance load monitoring for smart homes: Recent advances and future issues | |
| de Diego-Otón et al. | Recurrent LSTM architecture for appliance identification in non-intrusive load monitoring | |
| Sun et al. | Non-intrusive load monitoring system framework and load disaggregation algorithms: A survey | |
| CN110569876A (en) | Non-invasive load identification method and device and computing equipment | |
| Li et al. | An enhanced ISODATA algorithm for recognizing multiple electric appliances from the aggregated power consumption dataset | |
| Athanasiadis et al. | Real-time non-intrusive load monitoring: A machine-learning approach for home appliance identification | |
| Tabanelli et al. | A feature reduction strategy for enabling lightweight non-intrusive load monitoring on edge devices | |
| Nardello et al. | A low-cost smart sensor for non intrusive load monitoring applications | |
| Jazizadeh et al. | Spatiotemporal lighting load disaggregation using light intensity signal | |
| Hoogsteen et al. | Non-intrusive appliance recognition | |
| Jorde et al. | Event detection for energy consumption monitoring | |
| Jazizadeh et al. | Unsupervised clustering of residential electricity consumption measurements for facilitated user-centric non-intrusive load monitoring | |
| Klein et al. | Test bench and quality measures for non-intrusive load monitoring algorithms | |
| TW201530959A (en) | Non-invasive load monitoring system and method thereof | |
| Liu et al. | Nonintrusive load disaggregation combining with external attention mechanism and seq2piont | |
| Yang et al. | Mining the big data of residential appliances in the smart grid environment |