We propose a conservative energy method based on neural networks with subdomains (CENN), where the admissible function satisfying the essential boundary condition without boundary penalty is constructed by the radial basis function (RBF), particular solution neural network, and general neural network. The loss term at the interfaces has the lower order derivative compared to the strong form PINN with subdomains. The advantage of the proposed method is higher efficiency, more accurate, and less hyperparameters than the strong form PINN with subdomains. Another advantage of the proposed method is that it can apply to complex geometries based on the special construction of the admissible function. To analyze its performance, the proposed method CENN is used to model representative PDEs, the examples include strong discontinuity, singularity, complex boundary, non-linear, and heterogeneous problems. Furthermore, it outperforms other methods when dealing with heterogeneous problems.
翻译:我们建议一种基于有子域的神经网络(CENN)的保守能源方法,在这个方法中,可受理的功能满足基本边界条件而不受边界处罚的功能是由辐射基函数(RBF)、特定溶液神经网络和一般神经网络构建的。界面损失期的分级衍生值低于带有子域的强型PINN。拟议方法的优点是效率更高、更准确,而且比具有子域的强型PINN的超强参数要低。拟议方法的另一个优点是,它可以适用于基于特殊构建可受理功能的复杂地理结构。为分析其性能,拟议的CENN方法用于模拟具有代表性的PDEs,例子包括强烈的不连续性、独一性、复杂的边界、非线性和多式问题。此外,它比处理多式问题的其他方法要强。