Minimum-energy switching geometric filter on lie groups for differential-drive wheeled mobile robots

IF 2.5 3区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS European Journal of Control Pub Date : 2024-08-31 DOI:10.1016/j.ejcon.2024.101101
Federico Vesentini , Damiano Rigo , Nicola Sansonetto , Luca Di Persio , Riccardo Muradore
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Abstract

Accurate state estimation plays a critical role in various applications, such as tracking, regulation, and fault detection in robotic and mechanical systems. Typically, the Kalman–Bucy filter is used as a linear state observer for this purpose. However, real-world robots often exhibit complex behavior, characterized by a combination of dynamics, making it essential to employ hybrid filters. In this context, the Switching Kalman filter stands out as a well-established solution. In this article we aim to generalize the Brownian-Markov Stochastic Model, a hybrid dynamic model for differential-drive wheeled mobile robots, to the case of a mobile robot whose center of mass is not aligned to the wheels axle middle point, and to design a geometric hybrid state estimator by exploiting the Lie groups theory. The Brownian-Markov Stochastic Model features two modes: “grip” and “slip”. These modes correspond to ideal grip and lateral slippage, with transitions governed by a state-dependent Markov chain. To validate the proposed switching filter, we conduct MATLAB® simulations of the robot’s motion in a scenario prone to lateral grip loss, comparing the state estimates produced by the switching geometric filter with those obtained using the switching Kalman filter.

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用于差速驱动轮式移动机器人的最小能量切换几何滤波器
在机器人和机械系统的跟踪、调节和故障检测等各种应用中,精确的状态估计起着至关重要的作用。通常情况下,卡尔曼-布西滤波器被用作实现这一目的的线性状态观测器。然而,现实世界中的机器人往往表现出复杂的行为,其特征是多种动态的结合,因此必须采用混合滤波器。在这种情况下,切换卡尔曼滤波器是一种行之有效的解决方案。本文旨在将用于差速驱动轮式移动机器人的混合动力学模型--布朗-马尔科夫随机模型,推广到质心与轮轴中间点不一致的移动机器人的情况,并利用李群理论设计一种几何混合状态估计器。布朗-马尔科夫随机模型有两种模式:"抓地 "和 "滑移"。这两种模式分别对应于理想抓地力和横向滑移,其转换由依赖于状态的马尔可夫链控制。为了验证所提出的切换滤波器,我们在 MATLAB® 中模拟了机器人在容易发生横向抓地力下降的情况下的运动,并比较了切换几何滤波器和切换卡尔曼滤波器得出的状态估计值。
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来源期刊
European Journal of Control
European Journal of Control 工程技术-自动化与控制系统
CiteScore
5.80
自引率
5.90%
发文量
131
审稿时长
1 months
期刊介绍: The European Control Association (EUCA) has among its objectives to promote the development of the discipline. Apart from the European Control Conferences, the European Journal of Control is the Association''s main channel for the dissemination of important contributions in the field. The aim of the Journal is to publish high quality papers on the theory and practice of control and systems engineering. The scope of the Journal will be wide and cover all aspects of the discipline including methodologies, techniques and applications. Research in control and systems engineering is necessary to develop new concepts and tools which enhance our understanding and improve our ability to design and implement high performance control systems. Submitted papers should stress the practical motivations and relevance of their results. The design and implementation of a successful control system requires the use of a range of techniques: Modelling Robustness Analysis Identification Optimization Control Law Design Numerical analysis Fault Detection, and so on.
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