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Persistent Monitoring of Events With Stochastic Arrivals at Multiple Stations

机译:持续监视具有多个站的随机到达事件

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This paper introduces a new mobile sensor scheduling problem involving a single robot tasked to monitor several events of interest that are occurring at different locations (stations). Of particular interest is the monitoring of transient events of a stochastic nature, with applications ranging from natural phenomena (e.g., monitoring abnormal seismic activity around a volcano using a ground robot) to urban activities (e.g., monitoring early formations of traffic congestion using an aerial robot). Motivated by examples like these, this paper focuses on problems in which the precise occurrence times of the events are unknown , but statistics for their interarrival times are available. In monitoring such events, the robot seeks to: 1) maximize the number of events observed and 2) minimize the delay between two consecutive observations of events occurring at the same location. This paper considers the case when a robot is tasked with optimizing the event observations in a balanced manner, following a cyclic patrolling route. To tackle this problem, first, assuming that the cyclic ordering of stations is known, we prove the existence and uniqueness of the optimal solution and show that the solution has desirable convergence rate and robustness. Our constructive proof also yields an efficient algorithm for computing the unique optimal solution with time complexity, in which is the number of stations, with time complexity for incrementally adding or removing stations. Except for the algorithm, our analysis remains valid when the cyclic order is unknown. We then provide a polynomial-time approximation scheme that computes for any
机译:本文介绍了一个新的移动传感器调度问题,该问题涉及一个机器人,该机器人负责监视在不同位置(站点)发生的多个关注事件。特别有趣的是监视随机性质的瞬态事件,其应用范围从自然现象(例如,使用地面机器人监视火山周围的异常地震活动)到城市活动(例如,使用天线监视交通拥堵的早期形成)机器人)。受此类示例的启发,本文着重研究了事件的精确发生时间未知的问题,但可以提供事件到达时间的统计信息。在监视此类事件时,机器人试图:1)最大化观察到的事件数量,以及2)最小化两次连续观察同一位置发生的事件之间的延迟。本文考虑了一种情况,当机器人被分配执行循序巡逻路线时,以平衡的方式优化事件观察的任务。为了解决这个问题,首先,假设站的循环顺序是已知的,我们证明了最优解的存在性和唯一性,并表明该解决方案具有理想的收敛速度和鲁棒性。我们的建设性证明还产生了一种高效的算法,用于计算具有时间复杂度的唯一最佳解决方案,该算法的复杂度为站点数,具有时间复杂度的增量添加或删除站点。除算法外,当循环顺序未知时,我们的分析仍然有效。然后,我们提供多项式时间近似方案,该方案可以计算

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