A new penalty-free neural network method, PFNN-2, is presented for solving partial differential equations, which is a subsequent improvement of our previously proposed PFNN method [1]. PFNN-2 inherits all advantages of PFNN in handling the smoothness constraints and essential boundary conditions of self-adjoint problems with complex geometries, and extends the application to a broader range of non-self-adjoint time-dependent differential equations. In addition, PFNN-2 introduces an overlapping domain decomposition strategy to substantially improve the training efficiency without sacrificing accuracy. Experiments results on a series of partial differential equations are reported, which demonstrate that PFNN-2 can outperform state-of-the-art neural network methods in various aspects such as numerical accuracy, convergence speed, and parallel scalability.
翻译:新的无惩罚神经网络方法PFNN-2用于解决部分差异方程式,这是后来对我们先前提议的PFNNN方法[1]的改进。 PFNN-2继承了PFNNN在处理与复杂地理特征自相矛盾的问题的顺畅限制和基本边界条件方面的一切优势,并将这一应用扩大到更广泛的非自相矛盾的时间依赖差异方程式。此外,PFNN-2还引入了重叠的域分解战略,以大幅度提高培训效率,同时又不牺牲准确性。 报告对一系列部分差异方程式的实验结果,这表明PFNNN2在数字精度、趋同速度和平行可扩展性等方面可以超越最新神经网络方法。