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Convergence and stability results of Zhang neural network solving systems of time-varying nonlinear equations

机译:张神经网络时变非线性方程组的收敛性和稳定性结果

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摘要

For solving systems of time-varying nonlinear equations, this paper generalizes a special kind of recurrent neural network by using a design method proposed by Zhang et al. Such a recurrent neural network (termed Zhang neural network, ZNN) is designed based on an indefinite error-function instead of a norm-based energy function. Theoretical analysis and results of convergence and stability are presented to show the desirable properties (e.g., large-scale exponential convergence) of ZNN via two different activation-function arrays for solving systems of time-varying nonlinear equations. Computer-simulation results substantiate further the theoretical analysis and efficacy of ZNN for solving systems of time-varying nonlinear equations.
机译:为了求解时变非线性方程组,本文采用Zhang等人提出的一种设计方法,归纳出一种特殊的递归神经网络。这样的递归神经网络(称为张神经网络,ZNN)是基于不确定的误差函数而不是基于范数的能量函数而设计的。给出了理论分析以及收敛和稳定性的结果,以通过两个不同的激活函数数组显示ZNN的理想特性(例如,大规模指数收敛),以求解时变非线性方程组。计算机仿真结果进一步证实了ZNN求解时变非线性方程组的理论分析和有效性。

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