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Collaborative Mission Planning for UAV Cluster to Optimize Relay Distance

机译:UAV集群的协作任务规划优化继电器距离

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Unmanned Aerial Vehicles (UAVs) coordinated path planning and intercommunication for visual exploration of a geographical region has recently become crucial. Multiple UAVs cover larger area than a single UAV and eliminate blind spots. To improve the surveillance, survivability and quality of the communication, we propose two algorithms for the route planning of UAV cluster operated in obstacle rich environment: (i) Multiple Population Genetic Algorithm (MPGA) (ii) Relay Selection Criteria (RSC). The main objective of MPGA is to minimize the total mission time while maintaining an optimal distance for communication between the neighboring nodes. MPGA utilizes evolutionary speciation techniques with a novel Feasible Population Creation Method (FPCM) and enhanced Inter-species Crossover Mechanism (ISCM) to obtain diversified routes in remarkably short time. In obtaining collisionfree optimum paths, UAVs are subjected to constraints such as limited communication range, maximum maneuverability and fuel capacity. In addition to the path planning, RSC is developed for selection of UAVs relay nodes that is based on the location of the relay relative to source and destination. It is crucial since the Bit Error Rate (BER) performance of the link significantly depends on the location of the selected relay. In this paper, path planning and relay allocation algorithms are combined to have a seamless high quality monitoring of the region and to provide superior Quality of Service (QoS) for audio-video applications. Also, simulations in different operation zones with a cluster of up to six UAVs are performed to verify the feasibility of the proposed algorithms both in optimality and computation time.
机译:无人驾驶航空公司(无人机)协调探索地理区域视觉勘探的协调路径规划和相互通信最近变得至关重要。多个无人机覆盖比单个无人机更大的区域,并消除盲点。为了提高沟通的监视,生存能力和质量,我们提出了两种用于在障碍环境中运行的UAV集群的路线规划算法:(i)多种群体遗传算法(MPGA)(II)继电器选择标准(RSC)。 MPGA的主要目标是最小化总任务时间,同时保持相邻节点之间的通信的最佳距离。 MPGA利用进化形态技术具有新颖的可行性种群创建方法(FPCM),并增强了物种间交叉机制(ISCM),以在显着短的时间内获得多样化的路线。在获得ColliSionFREE最佳路径时,将UAV受到限制,例如有限的通信范围,最大机动性和燃料能力。除了路径规划外,还开发RSC以选择基于继电器的位置相对于源和目的地的UAV可继电器节点。它至关重要,因为链接的误码率(BER)性能显着取决于所选中继的位置。在本文中,组合路径规划和继电器分配算法以具有对该区域的无缝高质量监测,并为音频视频应用提供卓越的服务质量(QoS)。此外,执行具有多达六个无人机的群集的不同操作区域的模拟,以验证所提出的算法在最优性和计算时间中的可行性。

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