Novel determination of differential-equation solutions: universal approximation method

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摘要

In a conventional approach to numerical computation, finite difference and finite element methods are usually implemented to determine the solution of a set of differential equations (DEs). This paper presents a novel approach to solve DEs by applying the universal approximation method through an artificial intelligence utility in a simple way. In this proposed method, neural network model (NNM) and fuzzy linguistic model (FLM) are applied as universal approximators for any nonlinear continuous functions. With this outstanding capability, the solutions of DEs can be approximated by the appropriate NNM or FLM within an arbitrary accuracy. The adjustable parameters of such NNM and FLM are determined by implementing the optimization algorithm. This systematic search yields sub-optimal adjustable parameters of NNM and FLM with the satisfactory conditions and with the minimum residual errors of the governing equations subject to the constraints of boundary conditions of DEs. The simulation results are investigated for the viability of efficiently determining the solutions of the ordinary and partial nonlinear DEs.

论文关键词:Finite difference,Finite element,Universal approximation,Neural network model,Fuzzy linguistic model,Solving differential equations

论文评审过程:Received 30 October 2000, Revised 5 January 2002, Available online 9 April 2002.

论文官网地址:https://doi.org/10.1016/S0377-0427(02)00397-7