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Personalized federated learning for improving radar based precipitation nowcasting on heterogeneous areas

Sáinz-Pardo Díaz, Judith ; Castrillo, María; Bartok, Juraj; Cachá, Ignacio Heredia; Ondík, Irina Malkin; Martynovskyi, Ivan; Alibabaei, Khadijeh ORCID iD icon 1; Berberi, Lisana ORCID iD icon 1; Kozlov, Valentin ORCID iD icon 1; López García, Álvaro
1 Scientific Computing Center (SCC), Karlsruher Institut für Technologie (KIT)

Abstract:

The increasing generation of data in different areas of life, such as the environment, highlights the need to explore new techniques for processing and exploiting data for useful purposes. In this context, artificial intelligence techniques, especially through deep learning models, are key tools to be used on the large amount of data that can be obtained, for example, from weather radars. In many cases, the information collected by these radars is not open, or belongs to different institutions, thus needing to deal with the distributed nature of this data. In this work, the applicability of a personalized federated learning architecture, which has been called adapFL, on distributed weather radar images is addressed. To this end, given a single available radar covering 400 km in diameter, the captured images are divided in such a way that they are disjointly distributed into four different federated clients. The results obtained with adapFL are analyzed in each zone, as well as in a central area covering part of the surface of each of the previously distributed areas. The ultimate goal of this work is to study the generalization capability of this type of learning technique for its extrapolation to use cases in which a representative number of radars is available, whose data can not be centralized due to technical, legal or administrative concerns. ... mehr


Verlagsausgabe §
DOI: 10.5445/IR/1000174167
Veröffentlicht am 13.09.2024
Cover der Publikation
Zugehörige Institution(en) am KIT Scientific Computing Center (SCC)
Publikationstyp Zeitschriftenaufsatz
Publikationsjahr 2024
Sprache Englisch
Identifikator ISSN: 1865-0473, 1865-0481
KITopen-ID: 1000174167
HGF-Programm 46.21.02 (POF IV, LK 01) Cross-Domain ATMLs and Research Groups
Erschienen in Earth Science Informatics
Verlag Springer
Projektinformation AI4EOSC (EU, EU 9. RP, 101058593)
Vorab online veröffentlicht am 02.09.2024
Nachgewiesen in Scopus
Web of Science
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