模型预测控制最优控制器的综合

Wang Jianhong, R. Ramírez-Mendoza, Zhang Yunfeng
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引用次数: 1

摘要

本文研究了鲁棒二次规划问题的综合分析,该问题的数据是未知的,而是在不确定集合中,如椭球体。综合分析是理论与实践的结合。给定一个二次规划问题,其数据并不总是精确地已知,但通常在一个域,i,e,一个不确定性集合中已知,通过我们自己的推导,这个鲁棒二次规划问题变成了一个二次规划问题。将半定松弛和线性矩阵不等式应用于该鲁棒二次规划,将鲁棒最优可行存在的一个充要条件表述为一个线性矩阵不等式。并给出了一种特殊的仿射可调鲁棒二次规划方法来求解另外两个决策变量。为了从理论和实践的角度完成对鲁棒二次规划的综合分析,利用直接数据驱动的思想,将得到的所有理论结果应用于不确定集的状态估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthesis of optimal controllers for model predictive control
This paper studies the synthesis analysis for robust quadratic programming, whose data are not known, but in the uncertainty set, such as ellipsoids. Synthesis analysis means both the combination with the theory and practice. Given one quadratic programming problem, whose data are not always known exactly, but in typically known in a domain, i,e, one uncertainty set, this robust quadratic programming problem becomes one conic quadratic programming through our own derivations. After applying semidefinite relaxation and linear matrix inequality on this robust quadratic programming, one necessary and sufficient condition of the existence of the optimal robust feasible is formulated as one linear matrix inequality. And one special affinely adjustable robust counterpart of quadratic programming is shown to solve other two decision variables. To complete the synthesis analysis for robust quadratic programming from the points of theory and practice, all our derived theoretical results are applied in state estimation with uncertainty set through using the idea of direct data driven.
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