In this paper, we study deep neural networks (DNNs) for solving high-dimensional evolution equations with oscillatory solutions. Different from deep least-squares methods that deal with time and space variables simultaneously, we propose a deep adaptive basis Galerkin (DABG) method which employs the spectral-Galerkin method for time variable by tensor-product basis for oscillatory solutions and the deep neural network method for high-dimensional space variables. The proposed method can lead to a linear system of differential equations having unknown DNNs that can be trained via the loss function. We establish a posterior estimates of the solution error which is bounded by the minimal loss function and the term $O(N^{-m})$, where $N$ is the number of basis functions and $m$ characterizes the regularity of the equation, and show that if the true solution is a Barron-type function, the error bound converges to zero as $M=O(N^p)$ approaches to infinity where $M$ is the width of the used networks and $p$ is a positive constant. Numerical examples including high-dimensional linear parabolic and hyperbolic equations, and nonlinear Allen-Cahn equation are presented to demonstrate the performance of the proposed DABG method is better than that of existing DNNs.
翻译:在本文中,我们研究深神经网络(DNNS),以解决高维进化方程式,并采用血管解决方案和高维空间变量的深神经网络(DNNS),与同时处理时间和空间变量的深最小方程方法不同,我们建议采用深度适应基Galerkin(DABG)方法,利用光谱-Galerkin(DABG)方法,根据光谱-Galerkin(Caler-Galerkin)方法进行时间变异,以光谱-Galerkin(DNNNNNNN)为基础,并使用高神经网络的线性格系统(DNNNP),通过损失函数来培训。我们为解决方案错误的线性方程设置了一个线性方程系统,即用$M(DNNNNNNN)是使用网络的宽度,用$G-M(NG-M)来显示当前正等式的平方程式,包括高正式的NA-NAB(NA-NB)的正等式方法。