基于LQ控制的交流驱动器预测限流器

V. Šmídl, V. Mácha, Š. Janouš, Z. Peroutka
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引用次数: 0

摘要

线性二次控制(LQ)是一种流行的控制策略设计技术。它的主要优点是能够在很长的范围内(可能是无限的)优化二次成本函数。在其基本形式中,它要求线性系统,这在许多交流传动控制问题中是不存在的。然而,各种近似,如增益调度或状态相关的Riccatti方程(SDRE)方法,被提出并应用于该任务。它们都有一定的优势,但是,它们都存在LQ方法的本质问题,即无法尊重系统状态变量的硬约束。在本文中,我们将LQ控制器解释为约束问题的近似解,并使用近似动态规划的有限前瞻方法来引入对驱动电流振幅的约束。这产生了一个受限的二次优化问题,我们为此设计了一个迭代解。在10.7 kW永磁同步电机的实验室样机上对算法的性能进行了仿真和实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive current limiter for LQ based control of AC drives
Linear quadratic control (LQ) is a popular technique for design of control strategy. Its main advantage is the ability to optimize a quadratic cost function on a very long horizon (potentially infinite). In its basic form, it requires linear system which is not the case in many AC drive control problem. However, various approximations, such as gain scheduling or state dependent Riccatti Equation (SDRE) approach, were proposed and applied to this task. They have certain advantages, however, they all still suffer from the essential problem of LQ approaches, namely its inability to respect hard constraints on the system state variable. In this paper, we interpret the LQ controller as an approximate solution of the constrained problem and use the limited lookahead approach of approximate dynamic programming to introduce the constraint on the amplitude of the drive currents. This yields a constrained quadratic optimization problem, for which we design an iterative solution. Performance of the algorithm is tested in simulation and experimentally on a laboratory prototype of a 10.7 kW PMSM drive.
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