Feb. 6, 2024, 5:41 a.m. | Pratik Rathore Weimu Lei Zachary Frangella Lu Lu Madeleine Udell

cs.LG updates on arXiv.org arxiv.org

This paper explores challenges in training Physics-Informed Neural Networks (PINNs), emphasizing the role of the loss landscape in the training process. We examine difficulties in minimizing the PINN loss function, particularly due to ill-conditioning caused by differential operators in the residual term. We compare gradient-based optimizers Adam, L-BFGS, and their combination Adam+L-BFGS, showing the superiority of Adam+L-BFGS, and introduce a novel second-order optimizer, NysNewton-CG (NNCG), which significantly improves PINN performance. Theoretically, our work elucidates the connection between ill-conditioned differential operators …

adam challenges combination cs.lg differential function gradient landscape loss math.oc networks neural networks operators paper perspective physics physics-informed pinn process residual role stat.ml training

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