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Actor-critic learning-based energy optimization for UAV access and backhaul networks.
Yuan, Yaxiong; Lei, Lei; Vu, Thang X; Chatzinotas, Symeon; Sun, Sumei; Ottersten, Björn.
Afiliação
  • Yuan Y; Interdisciplinary Center for Security, Reliability and Trust, University of Luxembourg, 1855 Kirchberg, Luxembourg, Luxembourg.
  • Lei L; Interdisciplinary Center for Security, Reliability and Trust, University of Luxembourg, 1855 Kirchberg, Luxembourg, Luxembourg.
  • Vu TX; Interdisciplinary Center for Security, Reliability and Trust, University of Luxembourg, 1855 Kirchberg, Luxembourg, Luxembourg.
  • Chatzinotas S; Interdisciplinary Center for Security, Reliability and Trust, University of Luxembourg, 1855 Kirchberg, Luxembourg, Luxembourg.
  • Sun S; Institute for Infocomm Research, Agency for Science, Technology, and Research, Singapore , 138632 Singapore.
  • Ottersten B; Interdisciplinary Center for Security, Reliability and Trust, University of Luxembourg, 1855 Kirchberg, Luxembourg, Luxembourg.
EURASIP J Wirel Commun Netw ; 2021(1): 78, 2021.
Article em En | MEDLINE | ID: mdl-34777489
ABSTRACT
In unmanned aerial vehicle (UAV)-assisted networks, UAV acts as an aerial base station which acquires the requested data via backhaul link and then serves ground users (GUs) through an access network. In this paper, we investigate an energy minimization problem with a limited power supply for both backhaul and access links. The difficulties for solving such a non-convex and combinatorial problem lie at the high computational complexity/time. In solution development, we consider the approaches from both actor-critic deep reinforcement learning (AC-DRL) and optimization perspectives. First, two offline non-learning algorithms, i.e., an optimal and a heuristic algorithms, based on piecewise linear approximation and relaxation are developed as benchmarks. Second, toward real-time decision-making, we improve the conventional AC-DRL and propose two learning schemes AC-based user group scheduling and backhaul power allocation (ACGP), and joint AC-based user group scheduling and optimization-based backhaul power allocation (ACGOP). Numerical results show that the computation time of both ACGP and ACGOP is reduced tenfold to hundredfold compared to the offline approaches, and ACGOP is better than ACGP in energy savings. The results also verify the superiority of proposed learning solutions in terms of guaranteeing the feasibility and minimizing the system energy compared to the conventional AC-DRL.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2021 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2021 Tipo de documento: Article