Learning fluid physics from highly turbulent data using sparse physics-informed discovery of empirical relations (SPIDER)
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Publication:6621776
DOI10.1017/jfm.2024.813MaRDI QIDQ6621776
Roman O. Grigoriev, Daniel R. Gurevich, Patrick A. K. Reinbold, Matthew R. Golden
Publication date: 21 October 2024
Published in: Journal of Fluid Mechanics (Search for Journal in Brave)
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