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Adaptive RBF neural network controller design for SRM drives

机译:SRM驱动器的自适应RBF神经网络控制器设计

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In order to solve the problems of the unknown parameters variations, the external load disturbances and the torque ripple of the Switched reluctance motor drives, a combined control strategy of speed and torque is developed. Firstly, a nonlinear speed-loop controller is designed based on error compensated by adaptive radial basis function (RBF) neural network. An adaptive RBF neural network is employed to compensate the controlling errors induced by external load disturbances and parameters variations. The adaptive learning law of RBF neural network weights was developed based on Lyapunov stability theory, so that the stability of the control system can be guaranteed. Secondly, the direct instantaneous torque control method is used in the inner loop to adjust the torque directly to minimize the torque ripple. Finally, comparative studies are carried out among the proposed control scheme, fuzzy control and PI control on a 60KW-6/4 pole SRM, and the results show that the proposed control scheme has a good performance.
机译:为了解决开关磁阻电机驱动器参数未知,外部负载扰动和转矩脉动等问题,提出了速度和转矩的组合控制策略。首先,基于自适应径向基函数神经网络对误差进行补偿,设计了一种非线性速度环控制器。自适应RBF神经网络用于补偿由外部负载干扰和参数变化引起的控制误差。基于Lyapunov稳定性理论,建立了RBF神经网络权重的自适应学习规律,从而可以保证控制系统的稳定性。其次,内环采用直接瞬时转矩控制方法直接调节转矩,以最小化转矩波动。最后,对60KW-6 / 4极SRM的控制方案,模糊控制和PI控制进行了比较研究,结果表明该控制方案具有良好的性能。

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