On the l1 Optimal State Estimator with Applications to Bipedal Robots

H. Park, Jung Hoon Kim
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Abstract

Motivated by the fact that a number of present state estimations require some presumed conditions and could not lead to a desired accuracy when they are applied to real systems, this paper is concerned with providing a new framework for the state estimation. We first introduce some existing methods of state estimations and describe their weaknesses for unknown bounded persistent elements. Aiming at taking into account more practical situations of real systems, which cannot be treated by the existing methods, this paper provides a new state estimation method by using the l1 optimal control theory. More precisely, the new state estimation method called the l1 optimal state estimation considers unknown bounded persistent elements such as external disturbances and measurement noises, which often occur in the systems and make the estimation difficult. The problem of minimizing the effect of the bounded persistent elements on the corresponding state estimation error could be mathematically formulated by using the arguments on l1 optimal state estimation introduced in this paper. Finally, the effectiveness of the l1 optimal state estimation is demonstrated through some simulation results associated with the center of mass (CoM) estimation for a bipedal robot on its linear inverted pendulum model (LIPM).
双足机器人l1最优状态估计器的应用
摘要针对现有的一些状态估计需要一定的假定条件,应用于实际系统时不能达到预期的精度的问题,提出了一种新的状态估计框架。首先介绍了现有的一些状态估计方法,并描述了它们对未知有界持久元素状态估计的不足。针对现有方法无法处理的真实系统的更实际情况,本文提出了一种利用l1最优控制理论的状态估计新方法。更准确地说,这种新的状态估计方法被称为l1最优状态估计,它考虑了系统中经常出现的未知有界持久因素,如外部干扰和测量噪声,使估计变得困难。利用本文引入的关于l1最优状态估计的论证,可以用数学形式表达有界持久元素对相应状态估计误差影响的最小化问题。最后,通过双足机器人在线性倒立摆模型(LIPM)上的质心估计的仿真结果,验证了l1最优状态估计的有效性。
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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