Chebyshev neural network model with linear and nonlinear active functions

S. S. Chaharborj, Y. Mahmoudi
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引用次数: 3

Abstract

In this paper the second order non-linear ordinary differential equations of Lane-Emden type as singular initial value problems using Chebyshev Neural Network (ChNN) with linear and nonlinear active functions has been studied. Active functions as, \(\texttt{F(z)=z}, \texttt{sinh(x)}, \texttt{tanh(z)}\) are considered to find the numerical results with high accuracy. Numerical results from Chebyshev Neural Network shows that linear active function has more accuracy and is more convenient compare to other functions.
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具有线性和非线性主动函数的切比雪夫神经网络模型
本文利用具有线性和非线性主动函数的切比雪夫神经网络研究了二阶非线性Lane-Emden型常微分方程的奇异初值问题。为了得到精度较高的数值结果,考虑了\(\texttt{F(z)=z}, \texttt{sinh(x)}, \texttt{tanh(z)}\)等主动函数。切比雪夫神经网络的数值结果表明,与其他函数相比,线性主动函数具有更高的精度和方便性。
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