Pu Ruilong, Feng Xinlong
College of Mathematics and System Sciences, Xinjiang University, Urumqi 830017, China.
Entropy (Basel). 2022 Aug 11;24(8):1106. doi: 10.3390/e24081106.
In this paper, a grid-free deep learning method based on a physics-informed neural network is proposed for solving coupled Stokes-Darcy equations with Bever-Joseph-Saffman interface conditions. This method has the advantage of avoiding grid generation and can greatly reduce the amount of computation when solving complex problems. Although original physical neural network algorithms have been used to solve many differential equations, we find that the direct use of physical neural networks to solve coupled Stokes-Darcy equations does not provide accurate solutions in some cases, such as rigid terms due to small parameters and interface discontinuity problems. In order to improve the approximation ability of a physics-informed neural network, we propose a loss-function-weighted function strategy, a parallel network structure strategy, and a local adaptive activation function strategy. In addition, the physical information neural network with an added strategy provides inspiration for solving other more complicated problems of multi-physical field coupling. Finally, the effectiveness of the proposed strategy is verified by numerical experiments.
本文提出了一种基于物理信息神经网络的无网格深度学习方法,用于求解具有贝弗-约瑟夫-萨夫曼界面条件的斯托克斯-达西耦合方程。该方法具有避免网格生成的优点,在解决复杂问题时可以大大减少计算量。虽然原始的物理神经网络算法已被用于求解许多微分方程,但我们发现直接使用物理神经网络求解斯托克斯-达西耦合方程在某些情况下不能提供准确的解,例如由于小参数导致的刚性项和界面不连续问题。为了提高物理信息神经网络的逼近能力,我们提出了一种损失函数加权函数策略、一种并行网络结构策略和一种局部自适应激活函数策略。此外,添加策略后的物理信息神经网络为解决其他更复杂的多物理场耦合问题提供了启示。最后,通过数值实验验证了所提策略的有效性。