CGNSDE: conditional Gaussian neural stochastic differential equation for modeling complex systems and data assimilation
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Publication:6592766
DOI10.1016/j.cpc.2024.109302zbMATH Open1546.60135MaRDI QIDQ6592766
Nan Chen, Chuanqi Chen, Jin-Long Wu
Publication date: 26 August 2024
Published in: Computer Physics Communications (Search for Journal in Brave)
machine learningdata assimilationcausal inferenceuncertainty quantificationcomplex dynamical systemsanalytically solvable statistics
Applications of stochastic analysis (to PDEs, etc.) (60H30) Meteorology and atmospheric physics (86A10)
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