论文标题

前馈神经网络的计算特征,用于求解僵硬的微分方程

Computational characteristics of feedforward neural networks for solving a stiff differential equation

论文作者

Schneidereit, Toni, Breuß, Michael

论文摘要

前馈神经网络为解决微分方程提供了有希望的方法。但是,近似值的可靠性和准确性仍然代表了当前文献中无法完全解决的微妙问题。一般而言,计算方法高度依赖于各种计算参数以及优化方法的选择,这一点必须与成本函数的结构一起观察。本文的目的是朝着解决这些开放问题迈出一步。为此,我们在这里研究了简单但基本的僵硬的普通微分方程对阻尼系统建模的解决方案。我们考虑了两种通过神经形式求解微分方程的计算方法。这些是定义成本函数的经典但仍然是实际的试验解决方案方法,也是与试验解决方案方法相关的成本函数的最新直接构建。让我们注意,我们研究的设置可以更普遍地应用,包括偏微分方程的解决方案。通过一项非常详细的计算研究,我们表明可以识别为参数和方法做出的优选选择。我们还阐明了神经网络模拟中可观察到的一些有趣的效果。总体而言,我们通过展示可以完成的操作以通过神经网络方法获得可靠,准确的结果来扩展现场的当前文献。通过这样做,我们说明了仔细选择计算设置的重要性。

Feedforward neural networks offer a promising approach for solving differential equations. However, the reliability and accuracy of the approximation still represent delicate issues that are not fully resolved in the current literature. Computational approaches are in general highly dependent on a variety of computational parameters as well as on the choice of optimisation methods, a point that has to be seen together with the structure of the cost function. The intention of this paper is to make a step towards resolving these open issues. To this end we study here the solution of a simple but fundamental stiff ordinary differential equation modelling a damped system. We consider two computational approaches for solving differential equations by neural forms. These are the classic but still actual method of trial solutions defining the cost function, and a recent direct construction of the cost function related to the trial solution method. Let us note that the settings we study can easily be applied more generally, including solution of partial differential equations. By a very detailed computational study we show that it is possible to identify preferable choices to be made for parameters and methods. We also illuminate some interesting effects that are observable in the neural network simulations. Overall we extend the current literature in the field by showing what can be done in order to obtain reliable and accurate results by the neural network approach. By doing this we illustrate the importance of a careful choice of the computational setup.

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