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Title Uavs Joint Optimization Problems And Machine Learning To Improve The 5G And Beyond Communication
ID_Doc 59311
Authors Ullah Z.; Al-Turjman F.; Moatasim U.; Mostarda L.; Gagliardi R.
Year 2020
Published Computer Networks, 182
DOI http://dx.doi.org/10.1016/j.comnet.2020.107478
Abstract Recently, unmanned aerial vehicles (UAVs) have gained notable interest in various applications such as wireless coverage, aerial surveillance, precision agriculture, construction, power lines monitoring and blood delivery, etc. The UAVs implicit attributes e.g., rapid deployment, quick mobility, increase in flight duration, improvements in payload capacities, etc., place it as an effective candidate for many applications in 5G and Beyond communications. The UAVs-assisted next-generation communications are determined to be highly influenced by various techniques and technologies like artificial intelligence (AI), machine learning (ML), deep reinforcement learning (DRL), mobile edge computing (MEC), and software-defined networks (SDN). In this article, we develop a review to investigate the UAVs joint optimization problems to enhance system efficiency. We classify the joint optimization problems based on the number of parameters used in proposed optimization problems. Moreover, we explore the impact of AI, ML, DRL, MEC, and SDN over UAVs joint optimization problems and present future research challenges and directions. © 2020 Elsevier B.V.
Author Keywords 5G and B5G communication; Artificial intelligence; Internet of Things; Joint optimization; Machine learning; mmWave communication; Mobile edge computing; Smart city; Software-defined networks; UAVs


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