On the Convergence of Multi-robot Constrained Navigation: A Parametric Control Lyapunov Function Approach

Bowen Weng, Hua Chen, W. Zhang
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Abstract

This paper studies the distributed multi-robot constrained navigation problem. While the multi-robot collision avoidance has been extensively studied in the literature with safety being the primary focus, the individual robot's destination convergence is not necessarily guaranteed. In particular, robots may get stuck in the local equilibria or periodic orbits of the multi-robot system, some of which are practically known as the deadlock and the livelock behaviors. Inspired by the combination of Control Lyapunov Function (CLF) and Control Barrier Function (CBF) for the nonlinear system's constrained stabilization, the authors present a guaranteed safe feedback control policy with improved convergence performance. The proposed Parametric CLF (PCLF) scheme adaptively determines the appropriate CLF parameterization within the in-stantaneous feasible action space. The algorithm also induces a conditional global asymptotic convergence guarantee for multi-robot system of single-integrator dynamics, and is empirically effective for nonlinear nonholonomic vehicle model. Empiri-cally, the proposed PCLF-CBF framework exhibits superior performance than state-of-the-art methods, including its de-generated counterpart of various CLF-CBF solutions.
多机器人约束导航的收敛性:一种参数控制Lyapunov函数方法
研究了分布式多机器人约束导航问题。多机器人避碰问题以安全为主要着眼点,在文献中得到了广泛的研究,但个体机器人的目的地收敛性并不一定得到保证。特别是,机器人可能陷入多机器人系统的局部平衡或周期轨道,其中一些实际上被称为死锁和活锁行为。将控制Lyapunov函数(CLF)和控制Barrier函数(CBF)结合用于非线性系统的约束镇定,提出了一种收敛性能提高的保证安全反馈控制策略。提出的参数化CLF (PCLF)方案在瞬时可行动作空间内自适应地确定合适的CLF参数化。该算法对单积分器动力学的多机器人系统给出了条件全局渐近收敛保证,对非线性非完整车辆模型具有经验有效性。从经验上看,所提出的PCLF-CBF框架比最先进的方法表现出更好的性能,包括各种CLF-CBF解决方案的退化对应。
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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