基于q学习的覆盖、回程和QoS约束下的UAV-BS轨迹优化

Melih Doğanay Sazak, A. Demirtas
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引用次数: 2

摘要

在本研究中,为了增加对用户的服务,对无人机(UAV)进行了三维最优轨迹规划,并附带基站(BS)。考虑了不同用户的异构服务质量(QoS)需求。在规划弹道时,无人机- bs的覆盖区域和无人机- bs与地面基站(GBS)之间的回程容量是有限的。在这些约束条件下,目标是利用强化学习为无人机- bs找到一个轨迹,使飞行过程中提供给用户的总数据速率最大化。在我们的问题中,通过q学习的应用,无人机- bs学会采取行动来达到预期的目标。通过不同学习参数的试错过程,确定合适的参数并训练强化学习模型。通过对不同通信场景的比较,分析了约束条件的影响。根据上述约束和异构QoS需求的影响,研究了UAV-BS的轨迹偏好和总传输速率变化。三个突出的结果显示了覆盖、回程和异构QoS的影响。随着覆盖约束的增加,无人机- bs有增加高度的趋势。此外,回程约束迫使无人机- bs的轨迹更接近GBS。最后,UAV-BS尽可能地考虑到用户的不同QoS需求。UAV-BS通过确定最合适的轨迹来满足这些约束,从而使总传输速率最大化。
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UAV-BS Trajectory Optimization Under Coverage, Backhaul and QoS Constraints Using Q-Learning
In this study, three-dimensional optimal trajectory planning is performed for the Unmanned Aerial Vehicle (UAV) with the base station (BS) attached to it to increase the service provided to the users. The case that heterogeneous quality of service (QoS) requirements for different users are considered. While planning the trajectory, the coverage area of the UAV-BS and backhaul capacity between the UAV-BS and Ground Base Station (GBS) are limited. Under these constraints, the aim is to find a trajectory for the UAV-BS that maximizes the total data rate provided to the users during the flight using reinforcement learning. With the application of Q-learning in our problem, the UAV-BS learns to take action to achieve the desired goal. As a result of trial and error processes with different learning parameters, appropriate parameters are determined and a reinforcement learning model is trained. Different communication scenarios are compared for analyzing the effects of the constraints. According to the effects of the mentioned constraints and heterogeneous QoS demands, UAV-BS’s trajectory preferences and total transmission rate changes are examined. Three prominent results shows the effects of coverage, backhaul, and heterogeneous QoS. The UAV-BS tends to increase its altitude as the coverage constraint increases. Moreover, the backhaul constraint forces the UAV-BS’s trajectory closer to the GBS. Lastly, UAV-BS takes into account different QoS requirements of users as much as possible. UAV-BS maximizes the total transmission rate by determining the most suitable trajectory to meet these constraints.
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