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首页> 外文期刊>Journal of communications and networks >Optimal 3D UAV base station placement by considering autonomous coverage hole detection, wireless backhaul and user demand
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Optimal 3D UAV base station placement by considering autonomous coverage hole detection, wireless backhaul and user demand

机译:通过考虑自动覆盖孔检测,无线回程和用户需求,优化3D UAV基站放置

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摘要

The rising number of technological advanced devices making network coverage planning very challenging tasks for network operators. The transmission quality between the transmitter and the end users has to be optimum for the best performance out of any device. Besides, the presence of coverage hole is also an ongoing issue for operators which cannot be ignored throughout the whole operational stage. Any coverage hole in network operators' coverage region will hamper the communication applications and degrade the reputation of the operator's services. Presently, there are techniques to detect coverage holes such as drive test or minimization of drive test. However, these approaches have many limitations. The extreme costs, outdated information about the radio environment and high time consumption do not allow to meet the requirement competently. To overcome these problems, we take advantage of Unmanned aerial vehicle (UAV) and Q-learning to autonomously detect coverage hole in a given area and then deploy UAV based base station (UAV-BS) by considering wireless back-haul with the core network and users demand. This machine learning mechanism will help the UAV to eliminate human-in-the-loop (HiTL) model. Later, we formulate an optimisation problem for 3D UAV-BS placement at various angular positions to maximise the number of users associated with the UAV-BS. In summary, we have illustrated a cost-effective as well as time saving approach of detecting coverage hole and providing on-demand coverage in this article.
机译:制作网络覆盖范围的技术先进器件数量,规划网络运营商的挑战性任务。发射器和最终用户之间的传输质量必须最佳地用于任何设备的最佳性能。此外,覆盖孔的存在也是在整个运营阶段无法忽视的操作员的持续问题。网络运营商覆盖区域中的任何覆盖孔都将妨碍通信应用并降低操作员服务的声誉。目前,有技术可以检测覆盖孔,例如驱动测试或驱动测试的最小化。但是,这些方法有很多限制。极端成本,有关无线电环境和高时间消耗的过时的信息不允许竞争地满足要求。为了克服这些问题,我们利用无人驾驶飞行器(UAV)和Q-Learning在给定区域中自动检测覆盖孔,然后通过考虑使用核心网络的无线返回运输来部署基于UV-BS的基站(UAV-BS)和用户需求。该机器学习机制将帮助UAV消除LOOP(HITL)模型。稍后,我们在各种角度位置制定用于3D UAV-BS放置的优化问题,以最大化与UAV-BS相关联的用户数。总之,我们已经说明了一种成本效益的以及检测覆盖孔的节省时间,并在本文中提供按需覆盖。

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