通过离散时间 LTI 系统的静态输出反馈实现 LQR 的算法

Y. Peretz
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引用次数: 0

摘要

本章提出了离散时间系统通过静态输出反馈(SOF)进行 LQR 优化控制问题的随机算法和确定性算法。随机算法基于最近推出的一种名为 "射线射击法 "的随机优化方法,该方法能有效解决紧凑非凸非连接区域上连续函数的全局最小化问题。这里介绍的随机算法在概率上证明了对全局最优的收敛。建议的确定性算法基于梯度法,因此只能证明收敛到局部最优。本文对两种算法以及混合算法的性能进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithms for LQR via Static Output Feedback for Discrete-Time LTI Systems
Randomized and deterministic algorithms for the problem of LQR optimal control via static-output-feedback (SOF) for discrete-time systems are suggested in this chapter. The randomized algorithm is based on a recently introduced randomized optimization method named the Ray-Shooting Method that efficiently solves the global minimization problem of continuous functions over compact non-convex unconnected regions. The randomized algorithm presented here has a proof of convergence in probability to the global optimum. The suggested deterministic algorithm is based on the gradient method and thus can be proved to converge to local optimum only. A comparison between the algorithms is provided as well as the performance of the hybrid algorithm.
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