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Observer-based decentralized fuzzy neural sliding mode control for interconnected unknown chaotic systems via network structure adaptation

机译:通过网络结构自适应对未知混沌系统进行基于观测器的分散模糊神经滑模控制

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摘要

In this paper, an observer-based fuzzy neural sliding mode control (OFNSMC) scheme for interconnected unknown chaotic systems is developed. The OFNSMC system is composed of a computation controller and a robust controller. The computation controller containing a self-structuring fuzzy neural network (SFNN) identifier is the principle controller, and the robust controller is designed to achieve L_2 tracking performance. The SFNN identifier uses the structure and parameter learning phases to perform the estimation of the interconnected unknown chaotic system dynamics. The structure learning phase consists of the growing of membership functions, the splitting of fuzzy rules and the pruning of fuzzy rules, and thus the SFNN identifier can avoid the time-consuming trial-and-error tuning procedure for determining the network structure of fuzzy neural network. The total states of the interconnected chaotic systems are not assumed to be available for measurement. Also, the unknown nonlinearities of the interconnected chaotic systems are not restricted to the systems output only. To demonstrate the effectiveness of the proposed method, simulation results are illustrated in this paper.
机译:本文提出了一种基于未知观测器的互连未知混沌系统模糊神经滑模控制方案。 OFNSMC系统由计算控制器和鲁棒控制器组成。包含自构造模糊神经网络(SFNN)标识符的计算控制器是原理控制器,并且设计了鲁棒控制器以实现L_2跟踪性能。 SFNN标识符使用结构和参数学习阶段来执行互连未知混沌系统动力学的估计。结构学习阶段包括隶属函数的增长,模糊规则的分裂和模糊规则的修剪,因此SFNN标识符可以避免费时的反复试验来确定模糊神经网络的结构。网络。互连混沌系统的总状态不假定可用于测量。而且,互连混沌系统的未知非线性不仅限于系统输出。为了证明该方法的有效性,本文给出了仿真结果。

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