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Fault-Tolerant Control of a Six-Phase Motor Drive System Using a Takagi–Sugeno–Kang Type Fuzzy Neural Network With Asymmetric Membership Function

机译:使用具有不对称隶属度函数的Takagi-Sugeno-Kang型模糊神经网络的六相电机驱动系统的容错控制

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A Takagi–Sugeno–Kang type fuzzy neural network with asymmetric membership function (TSKFNN-AMF) is proposed in this study for the fault-tolerant control of a six-phase permanent-magnet synchronous motor (PMSM) drive system. First, the dynamics of the six-phase PMSM drive system is described in detail. Then, the fault detection and operating decision method is briefly introduced. Moreover, to achieve the required control performance and to maintain the stability of a six-phase PMSM drive system under faulty condition, the TSKFNN-AMF control, which combines the advantages of a Takagi–Sugeno–Kang type fuzzy logic system and an asymmetric membership function, is developed. The network structure, online learning algorithm using a delta adaptation law, and convergence analysis of the TSKFNN-AMF are described in detail. Furthermore, to enhance the control performance of the proposed intelligent fault-tolerant control, a 32-bit floating-point digital signal processor TMS320F28335 is adopted for the implementation of the proposed fault-tolerant control system. Finally, some experimental results are illustrated to show the validity of the proposed TSKFNN-AMF fault-tolerant control for the six-phase PMSM drive system.
机译:本研究提出了具有不对称隶属函数的Takagi-Sugeno-Kang型模糊神经网络(TSKFNN-AMF),用于六相永磁同步电动机(PMSM)驱动系统的容错控制。首先,详细描述六相PMSM驱动系统的动力学。然后,简要介绍了故障检测与操作决策方法。此外,为实现所需的控制性能并在故障条件下保持六相PMSM驱动系统的稳定性,TSKFNN-AMF控制结合了Takagi–Sugeno–Kang型模糊逻辑系统的优势和不对称隶属关系功能,得到发展。详细介绍了网络结构,使用增量自适应律的在线学习算法以及TSKFNN-AMF的收敛性分析。此外,为了提高所提出的智能容错控制的控制性能,采用了32位浮点数字信号处理器TMS320F28335来实现所提出的容错控制系统。最后,通过一些实验结果说明了所提出的TSKFNN-AMF容错控制对于六相PMSM驱动系统的有效性。

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