4.6 Article

UNDERSTANDING AND MITIGATING GRADIENT FLOW PATHOLOGIES IN PHYSICS-INFORMED NEURAL NETWORKS

期刊

SIAM JOURNAL ON SCIENTIFIC COMPUTING
卷 43, 期 5, 页码 A3055-A3081

出版社

SIAM PUBLICATIONS
DOI: 10.1137/20M1318043

关键词

deep learning; differential equations; optimization; stiff dynamics; computational physics

资金

  1. U.S. Department of Energy under the Advanced Scientific Computing Research program [DE-SC0019116]
  2. Defense Advanced Research Projects Agency under the Physics of Artificial Intelligence program [HR00111890034]

向作者/读者索取更多资源

The study reviews recent advances in scientific machine learning, focusing specifically on the effectiveness of physics-informed neural networks in predicting outcomes of physical systems and discovering hidden physics from noisy data. It also proposes a learning rate annealing algorithm and a novel neural network architecture to address numerical stiffness issues in training constrained neural networks.
The widespread use of neural networks across different scientific domains often involves constraining them to satisfy certain symmetries, conservation laws, or other domain knowledge. Such constraints are often imposed as soft penalties during model training and effectively act as domain-specific regularizers of the empirical risk loss. Physics-informed neural networks is an example of this philosophy in which the outputs of deep neural networks are constrained to approximately satisfy a given set of partial differential equations. In this work we review recent advances in scientific machine learning with a specific focus on the effectiveness of physics-informed neural networks in predicting outcomes of physical systems and discovering hidden physics from noisy data. We also identify and analyze a fundamental mode of failure of such approaches that is related to numerical stiffness leading to unbalanced back-propagated gradients during model training. To address this limitation we present a learning rate annealing algorithm that utilizes gradient statistics during model training to balance the interplay between different terms in composite loss functions. We also propose a novel neural network architecture that is more resilient to such gradient pathologies. Taken together, our developments provide new insights into the training of constrained neural networks and consistently improve the predictive accuracy of physics-informed neural networks by a factor of 50-100x across a range of problems in computational physics.

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