Physics-based active learning for design space exploration and surrogate construction for multiparametric optimization
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Publication:6593783
DOI10.1007/s42967-023-00329-yMaRDI QIDQ6593783
Amine Ammar, Sergio Torregrosa, Victor Champaney, F. Chinesta, Vincent Herbert
Publication date: 27 August 2024
Published in: Communications on Applied Mathematics and Computation (Search for Journal in Brave)
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