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Machine Learning based Network Planning in Drone Aided Emergency Communications

机译:无人机辅助应急通信中基于机器学习的网络规划

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Rapid deployment is crucial for building up drone aided emergency communications to ensure the coverage and service support after the disaster. The chaos in the post-disaster area, such as the number of ground users and scattered locations, makes difficult on the decision of drone deployment. In this paper, an unsupervised machine learning method is conducted for drone deployment in drone aided emergency communications. Considering the importance of sustainable services for drones, the drone deployment problem is formulated with the aim of minimizing the total power of drones with all users’ coverage while maintaining their rate requirements, with constraints on drones’ coverage area, capacity and limited power. The problem is solved by two steps. A modified k-means clustering algorithm is proposed to obtain the number of drones and an optimal altitude and minimum transmit power algorithm is then derived. Simulation results show that although the number of drones obtained by the modified algorithm is more than that of the original k-means algorithm, all users are served and the minimum power of drones is guaranteed by proposed algorithms.
机译:快速部署对于建立无人机辅助紧急通信以确保灾难发生后的覆盖范围和服务支持至关重要。灾后地区的混乱情况,例如地面用户的数量和分散的地点,使决定无人机部署变得困难。本文针对无人机辅助应急通信中的无人机部署进行了无监督的机器学习方法。考虑到无人机可持续服务的重要性,制定无人机部署问题的目的是在满足所有用户覆盖率的同时,将无人机的总功率降至最低,同时保持其速率要求,并限制无人机的覆盖范围,容量和受限功率。这个问题可以通过两个步骤解决。提出了一种改进的k均值聚类算法,以获取无人机数量,并推导了最优高度和最小发射功率算法。仿真结果表明,尽管改进算法获得的无人机数量比原始k-means算法要多,但可以为所有用户提供服务,并且所提算法保证了无人机的最小功率。

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