From Spatial Data Infrastructures to Data Spaces—A Technological Perspective on the Evolution of European SDIs
"> Figure 1
<p>Data availability in the European INSPIRE Geoportal as of October 2019. Source: [<a href="#B32-ijgi-09-00176" class="html-bibr">32</a>].</p> "> Figure 2
<p>Trends in the availability of web-resources related to the terms ’big data’ (red) and ’IoT’ (blue) since 2007. Values on the vertical axis represent the search interest, expressed between 0 and 100 where the maximum search interest is set to 100. Source: Google Trends.</p> "> Figure 3
<p>Density of smartphone subscribers in Belgium obtained through data from cellular network operators. Such data are characterised by a very high temporal resolution and can be used as a proxy to population density.</p> "> Figure 4
<p>Modernised architecture of a Spatial Data Infrastructure (SDI). Adapted from [<a href="#B8-ijgi-09-00176" class="html-bibr">8</a>].</p> ">
Abstract
:1. Introduction
Materials and Methods
2. Background
2.1. Spatial Data Infrastructures
2.2. The European Geospatial Data Landscape
2.2.1. Legislative Context
2.2.2. Availability of INSPIRE Data
3. Technological enablers
3.1. New Data Sources
3.1.1. Internet of Things (IoT)
3.1.2. Crowdsourced Geographic Information and Citizen Science
3.1.3. Data from Earth Observation Platforms
3.1.4. Private Sector Data
3.1.5. Open Research Data
3.2. New Architectures
3.2.1. Simple APIs
3.2.2. Data Streaming
3.2.3. Eventing and Asynchronous Data Transactions
3.2.4. Edge, Fog and Cloud Computing
3.3. Grassroots Standardisation
3.4. Growing Ecosystem of Software Tools
4. Europe’s SDI Post-2020
4.1. From Data Infrastructures to Data Spaces
4.2. Organisational Principles
4.2.1. Co-Design by Default
4.2.2. Simple Licensing Framework
4.3. Technical and Semantic Principles
4.3.1. Data Structures Based on Spatial Features
4.3.2. Encoding-Agnostic Approach
4.3.3. Mainstreaming IT-Related Developments
5. Conclusions
- Being able to understand the requirements of users in terms of content, data encodings and semantics and granularity is critically important. Harmonising and making data available that is of little interest to users, while not focusing on those datasets that are highly desired makes little sense. A mantra that is often heard at geospatial conferences is related to following the user. However, the concrete pragmatic approach for doing so is still missing. Within the emerging data space we see an opportunity for a more prominent role of users but also of data intermediaries that help bridge the gap between the provision and use of the data. In addition, the rise of AI, if combined with data mined from web access logs and other sources might provide valuable insights in resolving this issue. Once the data are used, it is essential that the concrete feedback of users is fed back into the data space thus improving and ensuring its sustainability.
- The governance of data in an increasingly complex setting is challenging. How to make the most out of the scattered resources while retaining sovereignty from big software platforms is to be addressed. Whatever the possible solution, the public sector has an important role to play. In addition, the organisational approaches for the establishment of operational data sharing arrangements, reflecting appropriate incentives that would guarantee stakeholder participation, are to be investigated. Numerous data-related novelties are successful at the urban and regional levels. How to scale and spread data-driven innovation is still not fully understood. While there is evidence on the success of data-related developments at the urban level, the higher the territorial level is, the weaker the evidence for success is, as is the sustainability of good practices.
- Regulatory aspects that would ensure that all involved actors such as the private sector and citizens can contribute, but also benefit from the emerging data spaces should be clarified.
- Finally, it is important to highlight that multiple data spaces can occur and co-exist at different territorial levels, which in turn would require the elaboration of organisational and technological approaches for coupling the different data spaces in a loose and flexible manner. The role of well-documented APIs can play a central role in this setting.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Kotsev, A.; Minghini, M.; Tomas, R.; Cetl, V.; Lutz, M. From Spatial Data Infrastructures to Data Spaces—A Technological Perspective on the Evolution of European SDIs. ISPRS Int. J. Geo-Inf. 2020, 9, 176. https://doi.org/10.3390/ijgi9030176
Kotsev A, Minghini M, Tomas R, Cetl V, Lutz M. From Spatial Data Infrastructures to Data Spaces—A Technological Perspective on the Evolution of European SDIs. ISPRS International Journal of Geo-Information. 2020; 9(3):176. https://doi.org/10.3390/ijgi9030176
Chicago/Turabian StyleKotsev, Alexander, Marco Minghini, Robert Tomas, Vlado Cetl, and Michael Lutz. 2020. "From Spatial Data Infrastructures to Data Spaces—A Technological Perspective on the Evolution of European SDIs" ISPRS International Journal of Geo-Information 9, no. 3: 176. https://doi.org/10.3390/ijgi9030176
APA StyleKotsev, A., Minghini, M., Tomas, R., Cetl, V., & Lutz, M. (2020). From Spatial Data Infrastructures to Data Spaces—A Technological Perspective on the Evolution of European SDIs. ISPRS International Journal of Geo-Information, 9(3), 176. https://doi.org/10.3390/ijgi9030176