A new method to compute the blood flow equations using the physics-informed neural operator
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Publication:6639295
DOI10.1016/j.jcp.2024.113380MaRDI QIDQ6639295
Ling-Feng Li, Raymond H. Chan, Xue-Cheng Tai
Publication date: 15 November 2024
Published in: Journal of Computational Physics (Search for Journal in Brave)
Navier-Stokes equationblood flow simulationphysics-informed neural networkcuffless blood pressure estimation
Artificial intelligence (68Txx) Biological fluid mechanics (76Zxx) Physiological, cellular and medical topics (92Cxx)
Cites Work
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