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Artificial neural networks for solving ordinary and partial differential equations

机译:人工神经网络用于求解常微分方程和偏微分方程

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摘要

We present a method to solve initial and boundary value problems using artificial neural networks. A trial solution of the differential equation is written as a sum of two parts. The first part satisfies the initial/boundary conditions and contains no adjustable parameters. The second part is constructed so as not to affect the initial/boundary conditions. This part involves a feedforward neural network containing adjustable parameters (the weights). Hence by construction the initial/boundary conditions are satisfied and the network is trained to satisfy the differential equation. The applicability of this approach ranges from single ordinary differential equations (ODE), to systems of coupled ODE and also to partial differential equations (PDE). In this article, we illustrate the method by solving a variety of model problems and present comparisons with solutions obtained using the Galerkin finite element method for several cases of partial differential equations. With the advent of neuroprocessors and digital signal processors the method becomes particularly interesting due to the expected essential gains in the execution speed.
机译:我们提出了一种使用人工神经网络解决初始值和边值问题的方法。将微分方程的试验解写为两个部分的总和。第一部分满足初始/边界条件,并且不包含可调整的参数。第二部分被构造为不影响初始/边界条件。这部分涉及包含可调整参数(权重)的前馈神经网络。因此,通过构造,满足初始/边界条件,并训练网络以满足微分方程。这种方法的适用范围包括单个常微分方程(ODE),耦合ODE系统以及偏微分方程(PDE)。在本文中,我们将通过解决各种模型问题来说明该方法,并与几种情况下使用Galerkin有限元方法获得的解决方案进行比较。随着神经处理器和数字信号处理器的出现,该方法变得特别有趣,这归因于预期的执行速度的实质性提高。

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