Feasible Region-Based System Identification Using Duality

J. Grover, Changliu Liu, K. Sycara
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Abstract

We consider the problem of estimating bounds on parameters that represent tasks being performed by robots in a multirobot system. In our previous work, we derived necessary conditions based on persistency of excitation analysis for exact parameter inference to be possible. We concluded that depending on the robot’s task, the dynamics of individual robots may fail to satisfy these conditions, thereby preventing exact inference. As an extension to that work, this paper focuses on estimating bounds on task parameters when such conditions are not satisfied. Each robot in the team uses optimization-based controllers for mediating between task satisfaction and collision avoidance. We use KKT conditions of this control synthesis optimization and SVD of active collision avoidance constraints to derive explicit relations between Lagrange multipliers, robot dynamics and task parameters. Using these relations, we are able to derive bounds on the task parameters of each robot. Through numerical simulations we show how our proposed region based identification approach generates feasible regions for parameters when a conventional estimator such as a UKF fails. Additionally, empirical evidence shows that this approach generates contracting sets which converge to the true parameters much faster than the rate at which a UKF based estimate converges. Videos of these results are available at https://bit.ly/2JDMgeJ
基于可行区域的系统对偶识别
研究了多机器人系统中机器人所执行任务的参数界估计问题。在我们以前的工作中,我们推导了基于激励分析的持久性的必要条件,使精确的参数推断成为可能。我们的结论是,根据机器人的任务,单个机器人的动力学可能无法满足这些条件,从而阻碍了精确的推理。作为该工作的扩展,本文重点研究了在不满足这些条件时任务参数界的估计问题。团队中的每个机器人都使用基于优化的控制器来协调任务满意度和避免碰撞。利用该控制综合优化的KKT条件和主动避碰约束的SVD,导出了拉格朗日乘子、机器人动力学和任务参数之间的显式关系。利用这些关系,我们可以推导出每个机器人的任务参数的边界。通过数值模拟,我们展示了当传统的估计器(如UKF)失效时,我们提出的基于区域的识别方法如何为参数生成可行区域。此外,经验证据表明,这种方法生成的收缩集收敛到真实参数的速度要比基于UKF的估计收敛的速度快得多。这些结果的视频可以在https://bit.ly/2JDMgeJ上找到
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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