基于残差梯度的物理信息神经网络自适应采样方法

Yanbing Liu, Liping Chen, J. Ding
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引用次数: 0

摘要

PINNs作为求解偏微分方程的一种新方法,可以将偏微分方程作为先验嵌入到神经网络中进行训练。样本残差点的分布对pin的求解精度有很大的影响。本文提出了一种基于残差及其梯度特征的自适应采样算法(Grad-RAR),该算法利用样本点的残差获取其梯度信息,保留具有特殊梯度的样本残差点,并将其与概率采样模型(RAR-D)相结合,在计算域内实现有效采样。我们对两个正问题和一个逆问题进行了多采样方法的性能测试,研究表明,与现有的采样方法相比,我们提出的自适应采样方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grad-RAR: An Adaptive Sampling Method Based on Residual Gradient for Physical-Informed Neural Networks
PINNs, as a new method for solving PDEs, can embed PDEs as a prior into neural networks for training. The distribution of sample residual points has a strong influence on the solution accuracy of PINNs. In this paper, we propose an adaptive sampling algorithm based on the residuals and its gradient characters (Grad-RAR), which utilizes the residuals of sample points to obtain their gradient information and retain sample residual points with special gradients, and combines it with a probabilistic sampling model (RAR-D) to achieve effective sampling in the computational domain. We test the performance of multiple sampling methods for two forward problems and one inverse problem, and the study shows that our proposed adaptive sampling method performs better compared to existing sampling methods.
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