Persistent monitoring in discrete environments: Minimizing the maximum weighted latency between observations

I. J. Robotic Res.(2014)

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摘要
In this paper, we consider the problem of planning a path for a robot to monitor a known set of features of interest in an environment. We represent the environment as a graph with vertex weights and edge lengths. The vertices represent regions of interest, edge lengths give travel times between regions and the vertex weights give the importance of each region. As the robot repeatedly performs a closed walk on the graph, we define the weighted latency of a vertex to be the maximum time between visits to that vertex, weighted by the importance (vertex weight) of that vertex. Our goal is to find a closed walk that minimizes the maximum weighted latency of any vertex. We show that there does not exist a polynomial time algorithm for the problem. We then provide two approximation algorithms; an O(logn)-approximation algorithm and an O(log脧聛G)-approximation algorithm, where 脧聛G is the ratio between the maximum and minimum vertex weights. We provide simulation results which demonstrate that our algorithms can be applied to problems consisting of thousands of vertices and a case study for patrolling a city for crime.
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关键词
closed walk,travel time,edge length,weighted latency,maximum weighted latency,discrete environment,polynomial time algorithm,approximation algorithm,persistent monitoring,vertex weight,minimum vertex weight,maximum time
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