With the recent study of deep learning in scientific computation, the Physics-Informed Neural Networks (PINNs) method has drawn widespread attention for solving Partial Differential Equations (PDEs). Compared to traditional methods, PINNs can efficiently handle high-dimensional problems, but the accuracy is relatively low, especially for highly irregular problems. Inspired by the idea of adaptive finite element methods and incremental learning, we propose GAS, a Gaussian mixture distribution-based adaptive sampling method for PINNs. During the training procedure, GAS uses the current residual information to generate a Gaussian mixture distribution for the sampling of additional points, which are then trained together with historical data to speed up the convergence of the loss and achieve higher accuracy. Several numerical simulations on 2D and 10D problems show that GAS is a promising method that achieves state-of-the-art accuracy among deep solvers, while being comparable with traditional numerical solvers.
翻译:随着深度学习在科学计算中的应用,基于物理知识的神经网络(PINNs)方法因其高效处理高维问题而受到广泛关注,但对于高度不规则问题,其精度相对较低。受适应有限元方法和增量学习思想的启发,我们提出高斯混合分布自适应采样法(GAS)用于PINNs。在训练过程中,GAS使用当前残差信息为附加采样点生成高斯混合分布,这些采样点与历史数据一起训练以加速损失收敛并实现更高的精度。对于2D和10D问题的多个数值模拟表明,GAS是一种有前途的方法,在深度求解器中实现了最先进的精度,同时与传统数值求解器相当。