Hausdorff metric based training of kernels to learn attractors with application to 133 chaotic dynamical systems
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Publication:6558876
DOI10.1016/j.physd.2024.134192MaRDI QIDQ6558876
Nai-ming Xie, Xiuwen Sun, Houman Owhadi, I. G. Kevrekidis, Lu Yang, B. Hamzi
Publication date: 21 June 2024
Published in: Physica D (Search for Journal in Brave)
chaotic dynamical systemsattractor reconstructionlearning kernelsHausdorff metric based kernel flowssparse Hausdorff metric based kernel flows
Artificial intelligence (68Txx) Approximation methods and numerical treatment of dynamical systems (37Mxx) Qualitative theory for ordinary differential equations (34Cxx)
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