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Adaptive Dynamic Sliding-Mode Fuzzy CMAC for Voice Coil Motor Using Asymmetric Gaussian Membership Function

机译:基于非对称高斯隶属函数的音圈电机自适应动态滑模模糊CMAC

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摘要

When the precise model of a controlled system is difficult to obtain, a model-free control method is suitable for control system design. The design goal of this paper is to propose a more efficient control method to deal with control systems with unknown system dynamic models and to achieve favorable chattering-free trajectory tracking performance. The cerebellar model articulation controller (CMAC) is an efficient neural network that can be applied for model-free control systems. This study proposes an adaptive dynamic sliding-mode fuzzy CMAC (ADSFC) system, which is comprised of a fuzzy CMAC and a fuzzy compensator. A fuzzy CMAC using an asymmetric Gaussian membership function is the main controller and the fuzzy compensator can compensate the approximation error introduced by a fuzzy CMAC. Moreover, a proportional–integral-type adaptation learning algorithm is developed to speed up the parameter learning. Finally, the proposed ADSFC system is applied to control a voice coil motor (VCM). Finally, the experimental results demonstrate the effectiveness of the proposed ADSFC scheme.
机译:当难以获得受控系统的精确模型时,无模型控制方法适用于控制系统设计。本文的设计目标是提出一种更有效的控制方法,以处理具有未知系统动态模型的控制系统,并实现良好的无颤动轨迹跟踪性能。小脑模型关节控制器(CMAC)是可用于无模型控制系统的高效神经网络。本研究提出了一种自适应动态滑模模糊CMAC(ADSFC)系统,该系统由模糊CMAC和模糊补偿器组成。使用非对称高斯隶属度函数的模糊CMAC是主要控制器,并且模糊补偿器可以补偿由模糊CMAC引入的近似误差。此外,还开发了比例积分型自适应学习算法以加快参数学习。最后,提出的ADSFC系统被应用于控制音圈电动机(VCM)。最后,实验结果证明了所提出的ADSFC方案的有效性。

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