Computer Science Department, Northern Border University, Arar 91431, Saudi Arabia.
Remote Sensing Unit, Northern Border University, Arar 91431, Saudi Arabia.
Sensors (Basel). 2021 Dec 29;22(1):223. doi: 10.3390/s22010223.
Unmanned aerial vehicles (UAVs) can be deployed as backup aerial base stations due to cellular outage either during or post natural disaster. In this paper, an approach involving multi-UAV three-dimensional (3D) deployment with power-efficient planning was proposed with the objective of minimizing the number of UAVs used to provide wireless coverage to all outdoor and indoor users that minimizes the required UAV transmit power and satisfies users' required data rate. More specifically, the proposed algorithm iteratively invoked a clustering algorithm and an efficient UAV 3D placement algorithm, which aimed for maximum wireless coverage using the minimum number of UAVs while minimizing the required UAV transmit power. Two scenarios where users are uniformly and non-uniformly distributed were considered. The proposed algorithm that employed a Particle Swarm Optimization (PSO)-based clustering algorithm resulted in a lower number of UAVs needed to serve all users compared with that when a -means clustering algorithm was employed. Furthermore, the proposed algorithm that iteratively invoked a PSO-based clustering algorithm and PSO-based efficient UAV 3D placement algorithms reduced the execution time by a factor of ≈1/17 and ≈1/79, respectively, compared to that when the Genetic Algorithm (GA)-based and Artificial Bees Colony (ABC)-based efficient UAV 3D placement algorithms were employed. For the uniform distribution scenario, it was observed that the proposed algorithm required six UAVs to ensure 100% user coverage, whilst the benchmarker algorithm that utilized Circle Packing Theory (CPT) required five UAVs but at the expense of 67% of coverage density.
无人机 (UAV) 可以在自然灾害期间或之后由于蜂窝网络中断而部署为备用空中基站。在本文中,提出了一种涉及多架无人机三维 (3D) 部署和节能规划的方法,旨在使用最少数量的无人机来为所有户外和室内用户提供无线覆盖,同时最小化所需的无人机发射功率并满足用户所需的数据速率。更具体地说,所提出的算法迭代地调用了聚类算法和高效的无人机 3D 放置算法,旨在使用最少数量的无人机实现最大的无线覆盖范围,同时最小化所需的无人机发射功率。考虑了用户均匀和非均匀分布的两种情况。与使用均值聚类算法相比,采用基于粒子群优化 (PSO) 的聚类算法的所提出的算法可以为所有用户提供服务所需的无人机数量更少。此外,与使用基于遗传算法 (GA) 和基于人工蜂群算法 (ABC) 的高效无人机 3D 放置算法相比,迭代调用基于 PSO 的聚类算法和基于 PSO 的高效无人机 3D 放置算法的所提出的算法分别将执行时间缩短了约 1/17 和 1/79。对于均匀分布的情况,观察到所提出的算法需要六架无人机来确保 100%的用户覆盖,而使用圆包理论 (CPT) 的基准算法则需要五架无人机,但覆盖密度降低了 67%。