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Department of Mathematics and Computer Science, Fayetteville State University, Fayetteville, NC, USA

机译:法发州立大学法数学与计算机科学系,美国北卡州法发州Fayetteville

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While there already exists many analytical and numerical techniques for solving PDEs, this paper introduces an approach using artificial neural networks. The approach consists of a technique developed by combining the standard numerical method, finite-difference, with the Hopfield neural network. The method is denoted Hopfield-finite-difference (HFD). The architecture of the nets, energy function, updating equations. and algorithms are developed for the method. The HFD method has been used successfully to approximate the solution of classical PDEs, such as the Wave, Heat, Poisson and the Diffusion equations, and on a system of PDEs. The software Matlab is used to obtain the results in both tabular and graphical form. The results are similar in terms of accuracy to those obtained by standard numerical methods. In terms of speed, the parallel nature of the Hopfield nets methods makes them easier to implement on fast parallel computers while some numerical methods need extra effort for parallelization.
机译:虽然已经存在许多用于求解PDE的分析和数值技术,但本文介绍了一种使用人工神经网络的方法。该方法包括通过将标准数值方法,有限差异与Hopfield神经网络组合开发的技术。该方法表示Hopfield-有限差异(HFD)。网,能量函数,更新方程的架构。和算法是为该方法开发的。 HFD方法已成功使用以近似古典PDE的解决方案,例如波,热,泊松和扩散方程,以及PDES的系统。软件MATLAB用于以表格和图形形式获得结果。结果在对通过标准数值方法获得的准确性方面类似的结果。在速度方面,Hopfield网络方法的并行性质使得它们更容易在快速并行计算机上实现,而一些数值方法需要额外的并行化。

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