Adaptive Learning Rate Residual Network Based on Physics-Informed for Solving Partial Differential Equations
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Publication:6173072
DOI10.1142/s0219876222500499WikidataQ114072350 ScholiaQ114072350MaRDI QIDQ6173072
Ming Li, Rui-Ping Niu, Miaomiao Chen, Junhong Yue
Publication date: 21 July 2023
Published in: International Journal of Computational Methods (Search for Journal in Brave)
partial differential equationsadaptive learning ratephysics-informed neural networksdeep residual neural network
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