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在协同无人机团队中平衡搜索与目标响应

Balancing search and target response in cooperative unmanned aerial vehicle (UAV) teams.

作者信息

Jin Yan, Liao Yan, Minai Ali A, Polycarpou Marios M

机构信息

Department of Electrical and Computer Engineering and Computer Science, University of Cincinnati, Cincinnati, OH 45221-0030, USA.

出版信息

IEEE Trans Syst Man Cybern B Cybern. 2006 Jun;36(3):571-87. doi: 10.1109/tsmcb.2005.861881.

Abstract

This paper considers a heterogeneous team of cooperating unmanned aerial vehicles (UAVs) drawn from several distinct classes and engaged in a search and action mission over a spatially extended battlefield with targets of several types. During the mission, the UAVs seek to confirm and verifiably destroy suspected targets and discover, confirm, and verifiably destroy unknown targets. The locations of some (or all) targets are unknown a priori, requiring them to be located using cooperative search. In addition, the tasks to be performed at each target location by the team of cooperative UAVs need to be coordinated. The tasks must, therefore, be allocated to UAVs in real time as they arise, while ensuring that appropriate vehicles are assigned to each task. Each class of UAVs has its own sensing and attack capabilities, so the need for appropriate assignment is paramount. In this paper, an extensive dynamic model that captures the stochastic nature of the cooperative search and task assignment problems is developed, and algorithms for achieving a high level of performance are designed. The paper focuses on investigating the value of predictive task assignment as a function of the number of unknown targets and number of UAVs. In particular, it is shown that there is a tradeoff between search and task response in the context of prediction. Based on the results, a hybrid algorithm for switching the use of prediction is proposed, which balances the search and task response. The performance of the proposed algorithms is evaluated through Monte Carlo simulations.

摘要

本文考虑了一个由来自几个不同类别的协作无人驾驶飞行器(UAV)组成的异构团队,它们在空间扩展的战场上执行搜索和行动任务,战场上存在多种类型的目标。在任务期间,无人机试图确认并可验证地摧毁可疑目标,并发现、确认并可验证地摧毁未知目标。一些(或全部)目标的位置事先未知,需要通过协作搜索来定位它们。此外,协作无人机团队在每个目标位置要执行的任务需要进行协调。因此,必须在任务出现时实时将任务分配给无人机,同时确保为每个任务分配合适的飞行器。每类无人机都有其自身的传感和攻击能力,所以进行适当分配至关重要。本文建立了一个广泛的动态模型,该模型捕捉了协作搜索和任务分配问题的随机性,并设计了实现高水平性能的算法。本文重点研究预测任务分配的价值与未知目标数量和无人机数量的函数关系。特别地,研究表明在预测的背景下,搜索和任务响应之间存在权衡。基于这些结果,提出了一种用于切换预测使用的混合算法,该算法平衡了搜索和任务响应。通过蒙特卡罗模拟对所提出算法的性能进行了评估。

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