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Two-mode Indirect Adaptive Control Approach for the Synchronization of Uncertain Chaotic Systems by the Use of a Hierarchical Interval Type-2 Fuzzy Neural Network

机译:不确定区间混沌系统的二阶模糊神经网络同步双模间接自适应控制方法

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摘要

Two-mode adaptive controllers have two phases of operation: a learning phase and an operation phase. This paper presents a two-mode indirect adaptive control approach for the synchronization of chaotic systems, using a hierarchical interval type-2 fuzzy neural network (HT2FNN). Its contribution to the existing literature is the adaptation laws derived for the parameters of the membership functions, based on Lyapunov stability analysis. Since, in hierarchical case, each T2FNN has only two inputs, the computing of the derivatives is much simpler than the case in classical interval type-2 FNN. Moreover, a novel approach is presented for the compensation of the approximation error. The tuning of the parameters of the membership functions (MF) and the use of an interval type-2 FNN ensures that the estimation error is very small so that it can be negligible. Furthermore, the number of MF required is seen to be less than that needed with type-1 fuzzy sets. The simulation results confirm the efficacy of the proposed scheme in the synchronization of a uncertain nonidentical chaotic systems.
机译:两模式自适应控制器具有两个操作阶段:学习阶段和操作阶段。本文提出了一种使用分层区间2型模糊神经网络(HT2FNN)的混沌混沌同步的双模式间接自适应控制方法。它对现有文献的贡献是基于Lyapunov稳定性分析得出的隶属函数参数的自适应定律。由于在分层情况下,每个T2FNN仅具有两个输入,因此导数的计算比经典间隔2型FNN的情况简单得多。此外,提出了一种新颖的方法来补偿近似误差。隶属度函数(MF)的参数调整和间隔类型2 FNN的使用可确保估计误差非常小,因此可以忽略不计。此外,所需的MF数量比类型1模糊集所需的MF数量要少。仿真结果证实了该方案在不确定的非相同混沌系统同步中的有效性。

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