Improving Physics-Informed Neural Networks via Quasiclassical Loss Functionals

Abstract: We develop loss functionals for training physics–informed neural networks using variational principles for nonpotential operators. Generally, a quasiclassical variational functional is bounded from above or below, contains derivatives of lower order compared to the order of derivatives in partial differential equation and some boundary conditions are integrated into the functional, which results in lower computational costs when evaluating the functional via Monte Carlo integration. Quasiclassical loss functional of boundary value problem for hyperbolic equation is obtained using the symmetrizing operator by V.M. Shalov. We demonstrate convergence of the neural network training and advantages of quasiclassical loss functional over conventional residual loss functional of boundary value problems for hyperbolic equation. © Allerton Press, Inc. 2024.

Авторы
Shorokhov
Издательство
Pleiades Publishing
Номер выпуска
Suppl 2
Язык
Английский
Страницы
S914-S921
Статус
Опубликовано
Том
79
Год
2024
Организации
  • 1 RUDN University, Moscow, Moscow Oblast, Russian Federation
Ключевые слова
loss functional; partial differential equations; physics-informed neural networks; variational principle
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