wPINNs: Weak Physics Informed Neural Networks for Approximating Entropy Solutions of Hyperbolic Conservation Laws

IF 2.8 2区 数学 Q1 MATHEMATICS, APPLIED
Tim De Ryck, Siddhartha Mishra, Roberto Molinaro
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引用次数: 0

Abstract

SIAM Journal on Numerical Analysis, Volume 62, Issue 2, Page 811-841, April 2024.
Abstract. Physics informed neural networks (PINNs) require regularity of solutions of the underlying PDE to guarantee accurate approximation. Consequently, they may fail at approximating discontinuous solutions of PDEs such as nonlinear hyperbolic equations. To ameliorate this, we propose a novel variant of PINNs, termed as weak PINNs (wPINNs) for accurate approximation of entropy solutions of scalar conservation laws. wPINNs are based on approximating the solution of a min-max optimization problem for a residual, defined in terms of Kruzkhov entropies, to determine parameters for the neural networks approximating the entropy solution as well as test functions. We prove rigorous bounds on the error incurred by wPINNs and illustrate their performance through numerical experiments to demonstrate that wPINNs can approximate entropy solutions accurately.
wPINNs:用于逼近双曲守恒定律熵解的弱物理信息神经网络
SIAM 数值分析期刊》第 62 卷第 2 期第 811-841 页,2024 年 4 月。 摘要。物理信息神经网络(PINNs)需要基础 PDE 解的正则性来保证精确逼近。因此,它们可能无法近似非线性双曲方程等 PDE 的不连续解。为了改善这种情况,我们提出了一种新的 PINNs 变体,称为弱 PINNs(wPINNs),用于精确逼近标量守恒定律的熵解。wPINNs 基于逼近残差的最小最大优化问题的解,以克鲁兹霍夫熵定义,从而确定逼近熵解的神经网络的参数以及测试函数。我们证明了 wPINN 所产生误差的严格界限,并通过数值实验说明了它们的性能,从而证明 wPINN 可以准确逼近熵解。
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来源期刊
CiteScore
4.80
自引率
6.90%
发文量
110
审稿时长
4-8 weeks
期刊介绍: SIAM Journal on Numerical Analysis (SINUM) contains research articles on the development and analysis of numerical methods. Topics include the rigorous study of convergence of algorithms, their accuracy, their stability, and their computational complexity. Also included are results in mathematical analysis that contribute to algorithm analysis, and computational results that demonstrate algorithm behavior and applicability.
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