000908016 001__ 908016
000908016 005__ 20220607185847.0
000908016 0247_ $$aG:(DE-Juel-1)ESDE$$dESDE
000908016 035__ $$aG:(DE-Juel-1)ESDE
000908016 150__ $$aEarth System Data Exploration$$y2017-07-01 -
000908016 371__ $$aSchultz, Martin$$mm.schultz@fz-juelich.de$$oID:P:(DE-Juel1)6952
000908016 450__ $$aESDE$$y2017-07-01 -
000908016 5101_ $$0I:(DE-588b)5008462-8$$aForschungszentrum Jülich GmbH$$gFZJ
000908016 680__ $$aEN: The ESDE group explores the use of state-of-the-art deep learning methods for analysing and forecasting atmospheric data with a focus on air quality and weather and a dedication to open data and open science. Our ability to analyse air quality, weather and climate data is fundamentally important to save lives, for example during extreme weather events, to protect nature and biodiversity and to create and preserve economic value through science-based decision making on mitigation and protection measures. Modern machine learning can play an important role to complement or even substitute traditional simulation models and to extract more information from the huge amount of environmental monitoring data that has become available in recent years. We see the handling, processing and distribution of such data with modern high-performance computing technology abiding to open, federated and FAIR principles as a necessary requirement for building sustainable tools for the analysis of the environment, but also as an interesting research topic in itself.
000908016 909CO $$ooai:juser.fz-juelich.de:908016$$pauthority:GRANT$$pauthority
000908016 980__ $$aG
000908016 980__ $$aAUTHORITY