2023
DOI: 10.1017/dce.2023.20
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Incomplete to complete multiphysics forecasting: a hybrid approach for learning unknown phenomena

Nilam N. Tathawadekar,
Nguyen Anh Khoa Doan,
Camilo F. Silva
et al.

Abstract: Modeling complex dynamical systems with only partial knowledge of their physical mechanisms is a crucial problem across all scientific and engineering disciplines. Purely data-driven approaches, which only make use of an artificial neural network and data, often fail to accurately simulate the evolution of the system dynamics over a sufficiently long time and in a physically consistent manner. Therefore, we propose a hybrid approach that uses a neural network model in combination with an incomplete partial dif… Show more

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