Finite-Control-Set Model Predictive Control for a Permanent Magnet Synchronous Motor Application with Online Least Squares System Identification

S. Hanke, Sebastian Peitz, O. Wallscheid, J. Böcker, M. Dellnitz
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引用次数: 18

Abstract

In comparison to classical control approaches in the field of electrical drives like the field-oriented control (FOC), model predictive control (MPC) approaches are able to provide a higher control performance. This refers to shorter settling times, lower overshoots, and a better decoupling of control variables in case of multi-variable controls. However, this can only be achieved if the used prediction model covers the actual behavior of the plant sufficiently well. In case of model deviations, the performance utilizing MPC remains below its potential. This results in effects like increased current ripple or steady state setpoint deviations. In order to achieve a high control performance, it is therefore necessary to adapt the model to the real plant behavior. When using an online system identification, a less accurate model is sufficient for commissioning of the drive system. In this paper, the combination of a finite-control-set MPC (FCS-MPC) with a system identification is proposed. The method does not require high-frequency signal injection, but uses the measured values already required for the FCS-MPC. An evaluation of the least squares-based identification on a laboratory test bench showed that the model accuracy and thus the control performance could be improved by an online update of the prediction models.
基于在线最小二乘辨识的永磁同步电机有限控制集模型预测控制
与电驱动领域的经典控制方法(如场定向控制(FOC))相比,模型预测控制(MPC)方法能够提供更高的控制性能。这指的是更短的稳定时间,更低的超调,以及在多变量控制情况下更好的控制变量解耦。然而,这只能在使用的预测模型足够好地覆盖工厂的实际行为时才能实现。在模型偏差的情况下,使用MPC的性能仍然低于其潜力。这会导致电流纹波增加或稳态设定值偏差。因此,为了获得较高的控制性能,有必要使模型适应真实的植物行为。当使用在线系统识别时,一个不太精确的模型对于驱动系统的调试就足够了。本文提出了有限控制集MPC (FCS-MPC)与系统辨识相结合的方法。该方法不需要高频信号注入,而是使用FCS-MPC已经需要的测量值。在实验室测试台上对基于最小二乘的辨识进行了评估,结果表明,通过在线更新预测模型可以提高模型的精度,从而提高控制性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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