广义H -导数下求解模糊微分方程的人工神经网络

M. H. Suhhiem
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引用次数: 3

摘要

本文的目的是提出一种基于人工神经网络的一阶模糊微分方程广义h -导数数值解的新方法。本文所使用的可微性概念是广义可微性,因为在这种可微性下的模糊微分方程可以有两个解。模糊初值问题的模糊试解可以写成两部分的和。第一部分满足模糊条件,不包含可调参数。第二部分涉及包含可调参数的前馈神经网络。在一定条件下,该方法能提供高精度的数值解。
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Artificial Neural Network for Solving Fuzzy Differential Equations under Generalized H – Derivation
The aim of this work is to present a novel approach based on the artificial neural network for finding the numerical solution of first order fuzzy differential equations under generalized H-derivation. The differentiability concept used in this paper is the generalized differentiability since a fuzzy differential equation under this differentiability can have two solutions. The fuzzy trial solution of fuzzy initial value problem is written as a sum of two parts. The first part satisfies the fuzzy condition, it contains no adjustable parameters. The second part involves feed-forward neural networks containing adjustable parameters. Under some conditions the proposed method provides numerical solutions with high accuracy.
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