Flatness-based Adaptive Control of Synchronous Reluctance Machines with Output Feedback

G. Rigatos, P. Siano, P. Wira, A. Moreno-Muñoz
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引用次数: 2

Abstract

The present article proposes an adaptive neurofuzzy control method that is capable of compensating for model uncertainty and parametric changes of Synchronous Reluctance Machines (SRMs), as well as for lack of measurements for the SRMs state vector elements. First it is proven that the SRM's model is a differentially flat one. This means that all its state variables and its control inputs can be written as differential functions of key state variables which are the so-called flat outputs. Moreover, this implies that the flat output and its derivatives are linearly independent. By exploiting differential flatness properties it is shown that the 4-th order SRM model can be transformed into the linear canonical form. For the latter description, the new control inputs comprise unknown nonlinear functions which can be identified with the use of neurofuzzy approximators. The estimated dynamics of the electric machine is used by a feedback controller thus establishing an indirect adaptive control scheme. Moreover, to improve the robustness of the control loop a supplementary control term is computed using H-infinity control theory. Another problem that has to be dealt with comes from the inability to measure the complete state vector of the SRM. Thus, a state-observer is implemented in the control loop. The stability of the considered observer-based adaptive control approach is proven using Lyapunov analysis.
输出反馈同步磁阻电机平面度自适应控制
本文提出了一种自适应神经模糊控制方法,该方法能够补偿同步磁阻电机(SRMs)的模型不确定性和参数变化,以及SRMs状态向量元素缺乏测量。首先证明了SRM模型是一个差平模型。这意味着它的所有状态变量和控制输入都可以写成关键状态变量的微分函数,也就是所谓的平坦输出。此外,这意味着平坦输出及其导数是线性无关的。利用微分平坦性,证明了四阶SRM模型可以转化为线性标准形式。对于后一种描述,新的控制输入包含未知的非线性函数,可以使用神经模糊逼近器进行识别。电机的估计动态被反馈控制器利用,从而建立了间接自适应控制方案。此外,为了提高控制回路的鲁棒性,利用h∞控制理论计算了一个补充控制项。必须处理的另一个问题来自无法度量SRM的完整状态向量。因此,在控制回路中实现了状态观测器。利用李雅普诺夫分析证明了所考虑的基于观测器的自适应控制方法的稳定性。
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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