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首页> 外文期刊>Annals of the West University of Timisoara: Mathematics and Computer Science >A Single Layer Functional Link Artificial Neural Network based on Chebyshev Polynomials for Neural Evaluations of Nonlinear Nth Order Fuzzy Differential Equations
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A Single Layer Functional Link Artificial Neural Network based on Chebyshev Polynomials for Neural Evaluations of Nonlinear Nth Order Fuzzy Differential Equations

机译:基于Chebyshev多项式的单层功能链接人工神经网络用于非线性N阶模糊微分方程的神经评价。

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Bearing in mind the considerable importance of fuzzy differential equations (FDEs) in different fields of science and engineering, in this paper, nonlinear nth order FDEs are approximated, heuristically. The analysis is carried out on using Chebyshev neural network (ChNN), which is a type of single layer functional link artificial neural network (FLANN). Besides, explication of generalized Hukuhara differentiability (gH-differentiability) is also added for the nth order differentiability of fuzzy-valued functions. Moreover, general formulation of the structure of ChNN for the governing problem is described and assessed on some examples of nonlinear FDEs. In addition, comparison analysis of the proposed method with Runge-Kutta method is added and also portrayed the error bars that clarify the feasibility of attained solutions and validity of the method.
机译:考虑到模糊微分方程(FDE)在科学和工程学的不同领域中的重要性,在本文中,启发式近似了非线性n阶FDE。使用Chebyshev神经网络(ChNN)进行分析,它是一种单层功能链接人工神经网络(FLANN)。此外,还为模糊值函数的n阶可微性添加了广义Hukuhara可微性(gH-可微性)的说明。此外,在非线性FDE的一些示例中描述并评估了用于控制问题的ChNN结构的一般公式。此外,还对所提出的方法与Runge-Kutta方法进行了比较分析,并描绘了误差线,从而阐明了该方法的可行性和有效性。

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