Lingxiao Guo, Haoxuan Pan, Xiaoming Duan, Jianping He
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Balancing Efficiency and Unpredictability in Multi-robot Patrolling: A MARL-Based Approach
Patrolling with multiple robots is a challenging task. While the robots collaboratively and repeatedly cover the regions of interest in the environment, their routes should satisfy two often conflicting properties: i) (efficiency) the time intervals between two consecutive visits to the regions are small; ii) (unpredictability) the patrolling trajectories are random and unpredictable. We manage to strike a balance between the two goals by i) recasting the original patrolling problem as a Graph Deep Learning problem; ii) directly solving this problem on the graph in the framework of cooperative multi-agent reinforcement learning. Treating the decisions of a team of agents as a sequence input, our model outputs the agents' actions in order by an autoregressive mechanism. Extensive simulation studies show that our approach has comparable performance with existing algorithms in terms of efficiency and outperforms them in terms of unpredictability. To our knowledge, this is the first work that successfully solves the patrolling problem with reinforcement learning on a graph.