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首页> 外文期刊>IEEE Transactions on Industrial Electronics >Robust Petri Fuzzy-Neural-Network Control for Linear Induction Motor Drive
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Robust Petri Fuzzy-Neural-Network Control for Linear Induction Motor Drive

机译:线性感应电动机驱动的鲁棒Petri模糊神经网络控制

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摘要

This study focuses on the development of a robust Petri-fuzzy-neural-network (PFNN) control strategy applied to a linear induction motor (LIM) drive for periodic motion. Based on the concept of the nonlinear state feedback theory, a feedback linearization control (FLC) system is first adopted in order to decouple the thrust force and the flux amplitude of the LIM. However, particular system information is required in the FLC system so that the corresponding control performance is influenced seriously by system uncertainties. Hence, to increase the robustness of the LIM drive for high-performance applications, a robust PFNN control system is investigated based on the model-free control design to retain the decoupled control characteristic of the FLC system. The adaptive tuning algorithms for network parameters are derived in the sense of the Lyapunov stability theorem, such that the stability of the control system can be guaranteed under the occurrence of system uncertainties. The effectiveness of the proposed control scheme is verified by both numerical simulations and experimental results, and the salient merits are indicated in comparison with the FLC system
机译:这项研究的重点是将鲁棒的Petri-模糊神经网络(PFNN)控制策略应用于周期性运动的线性感应电动机(LIM)驱动器。基于非线性状态反馈理论的概念,首先采用反馈线性化控制(FLC)系统,以使LIM的推力和通量幅度解耦。但是,FLC系统需要特定的系统信息,因此相应的控制性能会受到系统不确定性的严重影响。因此,为了提高LIM驱动器在高性能应用中的鲁棒性,基于无模型控制设计研究了一种鲁棒的PFNN控制系统,以保留FLC系统的去耦控制特性。在Lyapunov稳定性定理的意义上推导了网络参数的自适应调整算法,从而可以在系统不确定性发生的情况下保证控制系统的稳定性。通过数值仿真和实验结果验证了所提控制方案的有效性,并与FLC系统进行了比较,表明了其显着优点。

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