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Learning rate functions in CMAC neural network based control for torque ripple reduction of switched reluctance motors

机译:基于CMAC神经网络的学习速率函数控制,用于降低开关磁阻电机的转矩脉动

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This paper presents a novel approach to adapting the weights of a CMAC neural network-based controllers for torque ripple reduction in switched reluctance motors. The proposed method modifies the conventional LMS algorithm using a varying learning rate which, for the present application, is defined as a function of the rotor angle of the motor under control. Simulation results demonstrate that developing CMAC network based adaptive controllers following this approach affords lower torque ripple with high power efficiency, whilst offering rapid learning convergence in system adaptation.
机译:本文提出了一种新颖的方法来适应基于CMAC神经网络的控制器的权重,以减少开关磁阻电机的转矩脉动。所提出的方法使用变化的学习速率来修改传统的LMS算法,对于本申请,该学习速率被定义为受控电机的转子角的函数。仿真结果表明,采用这种方法开发基于CMAC网络的自适应控制器可提供较低的转矩脉动和较高的功率效率,同时在系统自适应中提供快速的学习收敛性。

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