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The Optimal Solution of a Non-Convex State-Dependent LQR Problem and Its Applications

机译:非凸状态相关LQR问题的最优解及其应用

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摘要

This paper studies a Non-convex State-dependent Linear Quadratic Regulator (NSLQR) problem, in which the control penalty weighting matrix in the performance index is state-dependent. A necessary and sufficient condition for the optimal solution is established with a rigorous proof by Euler-Lagrange Equation. It is found that the optimal solution of the NSLQR problem can be obtained by solving a Pseudo-Differential-Riccati-Equation (PDRE) simultaneously with the closed-loop system equation. A Comparison Theorem for the PDRE is given to facilitate solution methods for the PDRE. A linear time-variant system is employed as an example in simulation to verify the proposed optimal solution. As a non-trivial application, a goal pursuit process in psychology is modeled as a NSLQR problem and two typical goal pursuit behaviors found in human and animals are reproduced using different control weighting . It is found that these two behaviors save control energy and cause less stress over Conventional Control Behavior typified by the LQR control with a constant control weighting , in situations where only the goal discrepancy at the terminal time is of concern, such as in Marathon races and target hitting missions.
机译:本文研究了非凸状态依赖线性二次调节器(NSLQR)问题,其中性能指标中的控制权重加权矩阵与状态有关。通过欧拉-拉格朗日方程的严格证明,建立了最优解的充要条件。发现通过与闭环系统方程同时求解伪微分里卡提方程(PDRE),可以获得NSLQR问题的最优解。给出了PDRE的比较定理,以简化PDRE的求解方法。以线性时变系统为例,验证了所提出的最优解。作为非平凡的应用,将心理学中的目标追求过程建模为NSLQR问题,并使用不同的控制权重来复制在人和动物中发现的两种典型的目标追求行为。发现这两种行为节省了控制能量,并且与常规控制行为(以具有恒定控制权重的LQR控制为代表的常规控制行为)相比,在仅关注终端时间目标差异的情况下(例如在马拉松比赛和目标打击任务。

著录项

  • 期刊名称 other
  • 作者

    Xudan Xu; J. Jim Zhu; Ping Zhang;

  • 作者单位
  • 年(卷),期 -1(9),4
  • 年度 -1
  • 页码 e94925
  • 总页数 14
  • 原文格式 PDF
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