QoS-Aware 3D Coverage Deployment of UAVs for Internet of Vehicles in Intelligent Transportation
engfei Du, Tingyue Xiao, Haotong Cao, Daosen Zhai

TL;DR
This paper presents a novel QoS-aware 3D UAV deployment algorithm for Internet of Vehicles, optimizing coverage and communication quality in urban scenarios using advanced clustering and evolutionary algorithms.
Contribution
It introduces a hybrid clustering and optimization approach combining K-means, grey wolf optimization, and genetic algorithms for effective UAV deployment considering QoS constraints.
Findings
Enhanced vehicle coverage in urban scenarios.
Improved communication QoS and system reliability.
Effective optimization of UAV positions using the proposed algorithm.
Abstract
It is a challenging problem to characterize the air-to-ground (A2G) channel and identify the best deployment location for 3D UAVs with the QoS awareness. To address this problem, we propose a QoS-aware UAV 3D coverage deployment algorithm, which simulates the three-dimensional urban road scenario, considers the UAV communication resource capacity and vehicle communication QoS requirements comprehensively, and then obtains the optimal UAV deployment position by improving the genetic algorithm. Specifically, the K-means clustering algorithm is used to cluster the vehicles, and the center locations of these clusters serve as the initial UAV positions to generate the initial population. Subsequently, we employ the K-means initialized grey wolf optimization (KIGWO) algorithm to achieve the UAV location with an optimal fitness value by performing an optimal search within the grey wolf…
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Taxonomy
TopicsUAV Applications and Optimization · Vehicular Ad Hoc Networks (VANETs) · IoT and Edge/Fog Computing
Methodsk-Means Clustering
