Physics-Informed Probabilistic Learning of Linear Embeddings of Nonlinear Dynamics with Guaranteed Stability

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Publication:5109771

DOI10.1137/19M1267246zbMath1442.37090arXiv1906.03663MaRDI QIDQ5109771

Karthik Duraisamy, Shaowu Pan

Publication date: 13 May 2020

Published in: SIAM Journal on Applied Dynamical Systems (Search for Journal in Brave)

Full work available at URL: https://arxiv.org/abs/1906.03663




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