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Use of a quantum genetic algorithm for coalition formation in large-scale UAV networks

机译:大规模UAV网络中联盟形成量子遗传算法的使用

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Task allocation among a network of heterogeneous resource-constrained Unmanned Aerial Vehicles (UAVs) in an unknown and remote environment is still a challenging problem noting the limited available information about highly dynamic environment, lack of continuous and reliable communication network, and the limited energy and resources available at the UAVs. One solution for this such allocation problem is to form several efficient coalitions of the UAVs, where a complex task is assigned to a group of agents (i.e., a coalition) carrying the required resources/capabilities to perform this task. In this paper, inspired by Quantum Evolutionary Algorithms, we propose a leader-follower coalition formation algorithm in a large-scale UAV network to form the best possible coalitions of agents to accomplish the detected tasks in an unknown environment. Three main objectives have been considered in this coalition formation: (i) minimizing resource consumption in completing the assigned tasks on time; (ii) enhancing the reliability of the coalitions; and (iii) considering the most trustworthy UAVs amid the self-interested UAVs in forming the coalitions. The simulation results demonstrate the superior performances of the proposed model in different scenarios with large number of UAVs compared to existing coalition formation algorithms such as merge-and-split and a famous multi-objective genetic algorithm called NSGA-II.(12) (C) 2018 Elsevier B.V. All rights reserved.
机译:在未知和远程环境中的异构资源受限的无人驾驶飞行器(UAV)网络中的任务分配仍然是一个具有挑战性的问题,记录了关于高度动态环境的有限的可用信息,缺乏连续可靠的通信网络以及有限的能量和有限的能量在无人机上提供的资源。此类分配问题的一个解决方案是形成UAV的几个高效联盟,其中复杂的任务被分配给携带所需资源/能力的一组代理(即,联盟)来执行此任务。在本文中,由量子进化算法的启发,我们提出了一种大规模的UAV网络中的领导者联盟形成算法,以形成最佳的代理联盟,以完成未知环境中的检测到的任务。在本联盟的形成中被考虑了三个主要目标:(i)最大限度地减少按时完成分配的任务的资源消耗; (ii)加强联盟的可靠性; (iii)考虑到在形成联盟的自私无人机中,考虑到最值得信赖的无人机。仿真结果表明,与现有联盟形成算法相比,诸如诸如合并和分裂的着名的多目标遗传算法,以及称为NSGA-II的着名的多目标遗传算法,展示了大量无人机的不同场景中所提出的模型的优越性。(12)(C )2018年Elsevier BV保留所有权利。

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