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首页> 外文期刊>Systems, Man and Cybernetics, IEEE Transactions on >A Noise-Enduring and Finite-Time Zeroing Neural Network for Equality-Constrained Time-Varying Nonlinear Optimization
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A Noise-Enduring and Finite-Time Zeroing Neural Network for Equality-Constrained Time-Varying Nonlinear Optimization

机译:一种噪声持久和有限时间归零神经网络,用于平等约束时变非线性优化

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摘要

This article focuses on the research of a general time-varying nonlinear optimization (TVNO) problem solving especially in a noise-disturbance environment. For addressing this problem more efficiently, a new noise-enduring and finite-time convergent design formula is suggested to establish a novel zeroing neural network (NZNN). In contrast to the initial zeroing neural network or the noising-enduring zeroing neural network, which either only achieves finite-time convergence or only suppresses external disturbances, the merit of the proposed NZNN model is able to find an error-free optimal solution in a finite time under various different types of external noises. In addition, the detailed mathematical analyses about finite-time convergence and noise endurance are given to prove the excellent characteristics of the NZNN model. Numerical comparative results are provided to demonstrate the accuracy, efficiency, and advantages of the NZNN model for TVNO under various types of external disturbances. Robotic tracking example further validates the applicability of the NZNN model especially in a noise-disturbance environment.
机译:本文重点介绍了一般时变非线性优化(TVNO)问题的研究,尤其是在噪声干扰环境中解决。为了更有效地解决这个问题,建议建立新的噪声持久和有限时间收敛设计公式来建立一种新型归零神经网络(NZNN)。与初始归零神经网络或通知持久的归零神经网络相比,只能实现有限时间收敛或仅抑制外部干扰,所提出的NZNN模型的优点是能够在a中找到无错误的最佳解决方案各种不同类型的外部噪声下的有限时间。此外,对有限时间收敛和噪声耐久性的详细数学分析是为了证明NZNN模型的优异特性。提供了数值比较结果,以证明在各种类型的外部干扰下的TVNO模型的准确性,效率和优点。机器人跟踪示例进一步验证了NZNN模型的适用性,尤其是在噪声干扰环境中。

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