Learning nonlinear reduced models from data with operator inference
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Publication:6619517
DOI10.1146/ANNUREV-FLUID-121021-025220MaRDI QIDQ6619517
Benjamin Peherstorfer, Boris Kramer, Karen Willcox
Publication date: 15 October 2024
nonlinear model reductionoperator inferencedata-driven modelingcientific machine learningtructure preservation
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