Control of Synchronous Reluctance Machines using Differential Flatness Theory

G. Rigatos, P. Siano, P. Wira, M. Jovanović
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Abstract

The article uses differential flatness theory to solve the nonlinear control and estimation problems of synchronous reluctance machines. By exploiting the differential flatness properties of the state-space model of the synchronous reluctance machine it is shown that a state-variables transformation (diffeomorphism) can be applied to it. This finally brings the model to an input-output linearized form, or equivalently to the so-called linear canonical Brunovsky state-space form. For the the transformed state-space description of the model the solution of the feedback control problem becomes possible after applying a linear feedback controller and the pole placement concept. Moreover, to solve the state-estimation problem and to implement state estimation-based feedback control through the measurement of specific state variables, the Derivative-free nonlinear Kalman Filter is used as a state observer. This is a new nonlinear filtering method, which consists of (i) the Kalman Filter recursion applied on the aforementioned linearized model of the synchronous reluctance machine, (ii) an inverse transformation based again on differential flatness theory which allows for computation of estimates of the state variables of the initial nonlinear model. Furthermore, to improve the robustness of the flatness-based control scheme and to compensate for model uncertainty or additive input disturbances that affect its dynamics, the Derivative-free nonlinear Kalman Filter is redesigned as a disturbance observer. The proposed control method is of proven global asymptotic stability and its efficiency is further confirmed through simulation experiments.
基于差分平面理论的同步磁阻电机控制
本文利用微分平面理论解决同步磁阻电机的非线性控制和估计问题。利用同步磁阻电机状态空间模型的微分平坦性,证明了对同步磁阻电机进行状态变量变换(微分同构)是可行的。这最终使模型达到输入-输出线性化形式,或等价于所谓的线性规范布鲁诺夫斯基状态空间形式。对于模型变换后的状态空间描述,在应用线性反馈控制器和极点放置概念后,反馈控制问题的求解成为可能。此外,为了解决状态估计问题,并通过测量特定的状态变量来实现基于状态估计的反馈控制,使用无导数非线性卡尔曼滤波器作为状态观测器。这是一种新的非线性滤波方法,它包括(i)将卡尔曼滤波递推应用于上述同步磁阻电机的线性化模型,(ii)基于微分平坦度理论的逆变换,允许计算初始非线性模型的状态变量的估计。此外,为了提高基于平面度的控制方案的鲁棒性,并补偿影响其动力学的模型不确定性或附加输入干扰,将无导数非线性卡尔曼滤波器重新设计为扰动观测器。所提出的控制方法具有全局渐近稳定性,并通过仿真实验进一步验证了其有效性。
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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