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A Robust Torque and Flux Prediction Model by a Modified Disturbance Rejection Method for Finite-Set Model-Predictive Control of Induction Motor

机译:一种鲁棒扭矩和磁通预测模型,通过改进的扰动抑制方法,用于电动机的有限型模型预测控制

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摘要

The extended state observer (ESO) has been found as an efficient solution for the model sensitivity in the model-predictive control (MPC). Generally, the ESO is used for disturbance rejection when the voltage reference is the output of the control law. The observed disturbance is subtracted from the control law. Thus, using disturbance rejection for finite-set MPC is a challenge when it is utilized by a cost function consisting of the errors of the torque and the flux. In this research, a modified disturbance rejection method is used in a feedforward shape to improve the robustness of the finite-set model-predictive torque control. In this regard, the motor parameters have not appeared in the torque prediction algorithm. Only a rough approximation of the motor parameters is needed to design the ESO, which means that the proposed method has a very low dependence on the motor parameters. Besides, a thorough tuning guideline is proposed to tune the local parameters based on the convergence analysis of the ESO by using the self-stable region approach and the Lyapunov function. The performance of the proposed MPC scheme is evaluated through simulations and experimental tests. The results of the proposed method are compared with the classic MPC results.
机译:已发现扩展状态观察(ESO)作为模型预测控制(MPC)中的模型灵敏度的有效解决方案。通常,当电压参考是控制法的输出时,ESO用于干扰抑制。从对照法中减去了观察到的干扰。因此,当通过由扭矩和通量的误差组成的成本函数来利用时,使用对有限设定的MPC的扰动抑制是挑战。在该研究中,改进的扰动抑制方法用于前馈形状,以改善有限组模型预测扭矩控制的鲁棒性。在这方面,电动机参数尚未出现在扭矩预测算法中。仅需要电动机参数的粗略近似来设计ESO,这意味着所提出的方法对电动机参数具有非常低的依赖性。此外,提出了一种彻底的调整指南,通过使用自稳地区方法和Lyapunov函数来基于ESO的收敛分析来调整本地参数。通过模拟和实验测试评估所提出的MPC方案的性能。将所提出的方法的结果与经典的MPC结果进行比较。

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