Data Collection Strategy Based on Drone Technology in Wireless Sensor Networks

Bofu Yang, Xiangyu Bai
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引用次数: 2

Abstract

In recent years, drone technology has developed rapidly. Drone’s low cost, fast and flexible deployment, as well as strong mobility have made it possible to use drone-assisted sensor networks for data collection tasks. In this way, data collection nodes can break through the movement path restriction of traditional nodes, broaden the spatial movement range of nodes, and it is more suitable for data collection in complex environments. In this paper, we proposed a data collection strategy based on drone technology in Wireless Sensor Networks. Kmeans++ clustering method is used for auxiliary clustering and cluster head election in the initial state, which significantly improves the final error of the clustering result. Then, we used drone to assist cluster head election and data collection, which comprehensively considering the relative distance of every sensor node in the cluster and their relative remaining energy. In addition, for some nodes that have not been elected in the previous specified round, a reasonable priority is set to make the energy consumption of sensor nodes in the entire network more balanced. At the same time, we excluded the influence of dead nodes. Compared with many new methods proposed in recent years, the data collection strategy proposed delays the death time of the sensor nodes, reduces the overall energy consumption of the sensor nodes, and has a better performance. This work provides new ideas for the future work.
基于无人机技术的无线传感器网络数据采集策略
近年来,无人机技术发展迅速。无人机的低成本、快速灵活的部署以及强大的机动性使得使用无人机辅助传感器网络进行数据收集任务成为可能。这样,数据采集节点可以突破传统节点的运动路径限制,拓宽节点的空间运动范围,更适合复杂环境下的数据采集。本文提出了一种基于无人机技术的无线传感器网络数据采集策略。在初始状态下采用kmeans++聚类方法进行辅助聚类和簇头选举,显著提高了聚类结果的最终误差。然后,综合考虑集群中每个传感器节点的相对距离和相对剩余能量,利用无人机辅助簇首选举和数据采集;此外,对于一些在前一轮指定的节点中没有当选的节点,设置合理的优先级,使整个网络中传感器节点的能耗更加均衡。同时,我们排除了死节点的影响。与近年来提出的许多新方法相比,所提出的数据收集策略延迟了传感器节点的死亡时间,降低了传感器节点的整体能耗,具有更好的性能。本工作为今后的工作提供了新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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