多无人机无线传感器网络能量约束数据采集研究

Guang Yang, Y. Liu, Xiaolong Lan, Qingchun Chen
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引用次数: 1

摘要

本文研究了基于大量能量约束地面传感器数据采集的多无人机能量约束路径规划,以实现大面积远程监控。为了延长所有部署的地面传感器的使用寿命,假设无人机从给定的起点飞行,遍历所有传感器节点,直到到达预定的目的地位置,卸载收集的数据进行处理。利用这些约束条件,提出了每架无人机在能量消耗约束下的多无人机轨迹优化问题,并证明了该问题是一个多旅行商问题(mTSP)。为了简化分析,提出了节点划分策略,将mTSP问题简化为传统的TSP问题。分析表明,所提出的节点划分策略为我们提供了一种高效的分析框架,无论是否存在均衡负载要求,都可以让每架无人机以均衡的飞行距离完成数据采集任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Energy Constrained Data Collection in Multi-UAV-enabled Wireless Sensor Networks
In this paper, we studied the energy constrained path planning of the multiple unmanned aerial vehicle (UAV) based data collection from massive energy constrained ground sensors to fulfill the remote monitoring of large area. In order to prolong the lifetime of all deployed ground sensors, UAVs are assumed to fly from a given starting point to traverse all sensor node till they arrive at a predefined destination location to offload the collected data for processing. With these constraints we formulate the multi-UAV trajectory optimization problem subject to energy consumption constraint by every UAV and show that it is a multiple traveling salesman problem (mTSP) problem. In order to simplify the analysis, node partitioning strategy was presented to simplify the mTSP problem into conventional TSP problem. Our analysis unveils that, the proposed node partitioning strategy provides us an efficient analysis framework to fulfill the data collection job with balanced flight distance by every single UAV, regardless of whether the balanced load requirement presents or not.
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