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Collaborative Distributed Sensor Management and Information Exchange Flow Control for Multitarget TrackingUsing Markov Decision Processes

机译:马尔可夫决策过程的多目标协作分布式传感器管理和信息交换流控制

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In this paper, we consider the problem of collaborative management of uninhabited aerial vehicles (UAVs) for multitarget tracking. In addition to providing a solution to the problem of controlling individual UAVs, we present a method for controlling the information flow among them. The latter provides a solution to one of the main problems in decentralized tracking, namely, distributed information transfer and fusion among the participating platforms. The problem of decentralized cooperative control considered in this paper is an optimization of the information obtained by a number of UAVs, carrying out surveillance over a region, which includes a number of confirmed and suspected moving targets with the goal to track confirmed targets and detects new targets in the area. Each UAV has to decide on the most optimal path with the objective to track as many targets as possible, maximizing the information obtained during its operation with the maximum possible accuracy at the lowest possible cost. Limited communication between UAVs and uncertainty in the information obtained by each UAV regarding the location of the ground targets are addressed in the problem formulation. In order to handle these issues, the problem is presented as an operation of a group of decision makers. Markov Decision Processes (MDPs) are incorporated into the solution. A decision mechanism for collaborative distributed data fusion provides each UAV with the required data for the fusion process while substantially reducing redundancy in the information flow in the overall system. We consider a distributed data fusion system consisting of UAVs that are decentralized, heterogenous, and potentially unreliable. Simulation results are presented on a representative multisensor-multitarget tracking problem.
机译:在本文中,我们考虑了用于多目标跟踪的无人飞行器(UAV)的协同管理问题。除了提供控制单个无人机的问题的解决方案外,我们还提供了一种控制它们之间信息流的方法。后者为分散跟踪中的主要问题之一(即参与平台之间的分布式信息传递和融合)提供了解决方案。本文考虑的分散合作控制问题是对许多无人机进行的信息优化,对一个区域进行监视,其中包括许多已确认和可疑的移动目标,目的是跟踪已确认目标并检测新目标。目标在该地区。每个无人飞行器都必须确定最佳路径,目的是跟踪尽可能多的目标,以尽可能低的成本以最大可能的精度最大化其运行过程中获得的信息。问题制定解决了无人机之间的通信受限以及每个无人机获取的有关地面目标位置的信息的不确定性。为了处理这些问题,将这个问题作为一组决策者的操作提出。马尔可夫决策过程(MDP)被合并到解决方案中。用于协作式分布式数据融合的决策机制为每个UAV提供融合过程所需的数据,同时实质上减少了整个系统中信息流的冗余。我们考虑一种分布式数据融合系统,该系统由分散,异构且可能不可靠的无人机组成。仿真结果是针对代表性的多传感器多目标跟踪问题提出的。

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