Decentralized cooperative mean approach to collision avoidance for nonholonomic mobile robots

IEEE International Conference on Robotics and Automation(2015)

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摘要
This paper presents a novel, decentralized, control-theoretic approach to address collision avoidance for multi-robot systems. We create a virtual obstacle at the mean position of the robots. A control is be designed such that each robot will avoid the closest obstacle when a collision is possible. The closest obstacle can be the virtual obstacle or the nearest robot. We present two such control laws. The first assumes perfect knowledge of the velocities of all nearby robots and can allow a saturated velocity input for each robot. In practice, the velocities of the other robots are hard to measure or estimate precisely. Therefore, the second control law removes the assumption of known velocities based on a high-gain, robust control scheme. We prove the first control scheme is globally asymptotically stable, and the robust control law is globally uniformly ultimately bounded. To verify the effectiveness of the proposed approach, Monte Carlo simulations and experiments have been conducted.
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关键词
Monte Carlo methods,asymptotic stability,collision avoidance,decentralised control,mobile robots,multi-robot systems,robust control,Monte Carlo simulations,collision avoidance,decentralized cooperative mean approach,global asymptotic stability,mean position,multi-robot systems,nonholonomic mobile robots,robust control scheme,virtual obstacle,
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