FIWARE-Compatible Smart Data Models for Satellite Imagery and Flood Risk Assessment to Enhance Data Management
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Published:2024-05-02
Issue:5
Volume:15
Page:257
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ISSN:2078-2489
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Container-title:Information
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language:en
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Short-container-title:Information
Author:
Kouloglou Ioannis-Omiros1ORCID, Antzoulatos Gerasimos1ORCID, Vosinakis Georgios2ORCID, Lombardo Francesca3, Abella Alberto4ORCID, Bakratsas Marios1ORCID, Moumtzidou Anastasia1ORCID, Maltezos Evangelos2ORCID, Gialampoukidis Ilias1ORCID, Ouzounoglou Eleftherios2ORCID, Vrochidis Stefanos1ORCID, Amditis Angelos2ORCID, Kompatsiaris Ioannis1ORCID, Ferri Michele3
Affiliation:
1. Information Technologies Institute (ITI)—Centre for Research and Technology Hellas (CERTH), 57001 Thermi-Thessaloniki, Greece 2. Institute of Communication and Computer Systems (ICCS), 15773 Zografou, Greece 3. Eastern Alps River Basin District Authority (AAWA), Cannaregio 4314, 30121 Venice, Italy 4. FIWARE Foundation, Franklinstrasse 13, 10587 Berlin, Germany
Abstract
The increasing rate of adoption of innovative technological achievements along with the penetration of the Next Generation Internet (NGI) technologies and Artificial Intelligence (AI) in the water sector are leading to a shift to a Water-Smart Society. New challenges have emerged in terms of data interoperability, sharing, and trustworthiness due to the rapidly increasing volume of heterogeneous data generated by multiple technologies. Hence, there is a need for efficient harmonization and smart modeling of the data to foster advanced AI analytical processes, which will lead to efficient water data management. The main objective of this work is to propose two Smart Data Models focusing on the modeling of the satellite imagery data and the flood risk assessment processes. The utilization of those models reinforces the fusion and homogenization of diverse information and data, facilitating the adoption of AI technologies for flood mapping and monitoring. Furthermore, a holistic framework is developed and evaluated via qualitative and quantitative performance indicators revealing the efficacy of the proposed models concerning the usage of the models in real cases. The framework is based on the well-known and compatible technologies on NGSI-LD standards which are customized and applicable easily to support the water data management processes effectively.
Funder
European Union Horizon 2020
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