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Fuzzy-identification-based adaptive controller design via backstepping approach

机译:基于模糊识别的基于模糊识别的自适应控制器设计

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This paper proposes a fuzzy-identification-based adaptive control scheme for the chaotic dynamic systems using backstepping control approach, which is referenced as adaptive fuzzy backstepping control (AFBC). The proposed AFBC offers a design approach to drive the chaotic trajectory to track a desired trajectory, and it is comprised of a fuzzy backstepping controller and a robust controller. The fuzzy backstepping controller containing a fuzzy estimation system is the principal controller, and the robust controller is designed to dispel the effect of minimum approximation error introduced by the fuzzy estimation system. Moreover, the Taylor linearization technique is employed to derive the linearized model of the fuzzy estimation system so that all the parameters in the fuzzy system could be updated according. The adaptation laws of the control system are derived in the sense of Lyapunov function and Barbalat's lemma, thus the stability of the system can be guaranteed. For comparison, the partial- and full-tuned cases for the parameters in the fuzzy system are simulated. Finally, simulation results verify that the proposed AFBC system can achieve favorable tracking performance for the chaotic system with regard to parameter variations and unknown dynamic function.
机译:本文提出了一种基于模糊识别的混沌控制的混沌控制方法,该方法被称为自适应模糊反步控制(AFBC)。提出的AFBC提供了一种驱动混沌轨迹以跟踪所需轨迹的设计方法,它由模糊反步控制器和鲁棒控制器组成。包含模糊估计系统的模糊反推控制器是主要控制器,鲁棒控制器旨在消除模糊估计系统引入的最小逼近误差的影响。此外,采用泰勒线性化技术来推导模糊估计系统的线性化模型,以便可以更新模糊系统中的所有参数。从Lyapunov函数和Barbalat引理的意义上推导控制系统的自适应律,从而可以保证系统的稳定性。为了进行比较,模拟了模糊系统中参数的部分和完全调整的情况。最后,仿真结果验证了所提出的AFBC系统在参数变化和未知动态函数方面可以实现混沌系统的良好跟踪性能。

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