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Main Authors: Chen, Jinyong, Zhou, Rui, Wang, Zhaozong, Zhang, Yunjie, Sun, Guibin
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.23586
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author Chen, Jinyong
Zhou, Rui
Wang, Zhaozong
Zhang, Yunjie
Sun, Guibin
author_facet Chen, Jinyong
Zhou, Rui
Wang, Zhaozong
Zhang, Yunjie
Sun, Guibin
contents This paper studies the problem of multi-robot pursuit of how to coordinate a group of defending robots to capture a faster attacker before it enters a protected area. Such operation for defending robots is challenging due to the unknown avoidance strategy and higher speed of the attacker, coupled with the limited communication capabilities of defenders. To solve this problem, we propose a parameterized formation controller that allows defending robots to adapt their formation shape using five adjustable parameters. Moreover, we develop an imitation-learning based approach integrated with model predictive control to optimize these shape parameters. We make full use of these two techniques to enhance the capture capabilities of defending robots through ongoing training. Both simulation and experiment are provided to verify the effectiveness and robustness of our proposed controller. Simulation results show that defending robots can rapidly learn an effective strategy for capturing the attacker, and moreover the learned strategy remains effective across varying numbers of defenders. Experiment results on real robot platforms further validated these findings.
format Preprint
id arxiv_https___arxiv_org_abs_2410_23586
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-Robot Pursuit in Parameterized Formation via Imitation Learning
Chen, Jinyong
Zhou, Rui
Wang, Zhaozong
Zhang, Yunjie
Sun, Guibin
Robotics
This paper studies the problem of multi-robot pursuit of how to coordinate a group of defending robots to capture a faster attacker before it enters a protected area. Such operation for defending robots is challenging due to the unknown avoidance strategy and higher speed of the attacker, coupled with the limited communication capabilities of defenders. To solve this problem, we propose a parameterized formation controller that allows defending robots to adapt their formation shape using five adjustable parameters. Moreover, we develop an imitation-learning based approach integrated with model predictive control to optimize these shape parameters. We make full use of these two techniques to enhance the capture capabilities of defending robots through ongoing training. Both simulation and experiment are provided to verify the effectiveness and robustness of our proposed controller. Simulation results show that defending robots can rapidly learn an effective strategy for capturing the attacker, and moreover the learned strategy remains effective across varying numbers of defenders. Experiment results on real robot platforms further validated these findings.
title Multi-Robot Pursuit in Parameterized Formation via Imitation Learning
topic Robotics
url https://arxiv.org/abs/2410.23586