Drone Base Station Trajectory Planning for Optimal Resource Scheduling in LTE Sparse M2M Networks

Z. Sayed, Y. Gadallah
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引用次数: 1

Abstract

Providing communication services connectivity in areas out of reach of the cellular infrastructure is a very active area of research. This connectivity is particularly needed in case of deploying machine type communication devices (MTCDs) for critical purposes such as homeland security. In such applications, MTCDs may be deployed in areas that are hard to reach through regular communications infrastructure while the collected data are timely critical. Drone-supported communications constitute a new trend in complementing the reach of the terrestrial communication infrastructure. In this study, drones are used as complementary base stations to provide real-time communication services to gather critical data out of a group of MTCDs that are sparsely deployed in a marine environment. Therefore, the drone movements among the different MTCDs are to be optimized to minimize data deadline missing. We therefore compare between an ant colony-based technique that aims at optimizing the drone movements among the different MTCDs to achieve this goal, with a genetic algorithm based one. We present the results of several simulation experiments that validate the different performance aspects of both techniques.
LTE稀疏M2M网络中无人机基站轨迹规划最优资源调度
在蜂窝基础设施无法到达的区域提供通信服务连接是一个非常活跃的研究领域。在为国土安全等关键目的部署机器类型通信设备(mtcd)时,特别需要这种连接。在这种应用中,mtcd可能部署在常规通信基础设施难以到达的地区,而收集的数据是及时的关键。无人机支持的通信构成了补充地面通信基础设施覆盖范围的新趋势。在这项研究中,无人机被用作补充基站,提供实时通信服务,从一组稀疏部署在海洋环境中的mtcd中收集关键数据。因此,需要优化无人机在不同mtcd之间的运动,以最大限度地减少数据截止日期丢失。因此,我们比较了基于蚁群的技术,该技术旨在优化不同mtcd之间的无人机运动,以实现这一目标,与基于遗传算法的技术。我们提出了几个模拟实验的结果,验证了这两种技术的不同性能方面。
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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