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Augmenting Physical Models with Deep Networks for Complex Dynamics Forecasting
[article]
2021
arXiv
pre-print
Forecasting complex dynamical phenomena in settings where only partial knowledge of their dynamics is available is a prevalent problem across various scientific fields. While purely data-driven approaches are arguably insufficient in this context, standard physical modeling based approaches tend to be over-simplistic, inducing non-negligible errors. In this work, we introduce the APHYNITY framework, a principled approach for augmenting incomplete physical dynamics described by differential
arXiv:2010.04456v5
fatcat:bdct4vuywndi7mpnchx732usle