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.
翻译:物理知情神经网络(PINNs)要求基础PDE(PINNs)的解决方案具有规律性,以保证准确近似性。 因此,这些解决方案在接近PDE(如非线性双曲方程式)的不连续解决方案方面可能失败。 为了改善这一点,我们提出了一个新的PINNs变种,称为弱 PINNs(WPINNs),以准确接近标价保护法的加密解决方案。 WPINNs的基础是近似以克鲁兹科夫元素为定义的残余物的微量最大优化问题解决方案,以确定接近英特罗本解决方案和测试功能的神经网络参数。 我们证明对WPINNs(WPINNs)的错误存在严格的约束,并通过数字实验来说明其性能,以证明WPINNs能够准确接近英特罗本解决方案。