Publication | Open Access
Optimal Resource Allocation Considering Non-Uniform Spatial Traffic Distribution in Ultra-Dense Networks: A Multi-Agent Reinforcement Learning Approach
17
Citations
21
References
2022
Year
EngineeringEnergy EfficiencyNetwork PlanningNetwork AnalysisUltra-dense NetworksMulti-agent LearningMobile Data TrafficInternet Of ThingsNetwork OptimizationCombinatorial OptimizationEnergy ConsumptionMobile Data OffloadingMobile ComputingDistributed LearningSmall CellNetwork ScienceEdge ComputingNetwork Traffic ControlBusinessCongestion ManagementEnergy-efficient Networking
Recently, the demand for small cell base stations (SBSs) has been exploding to accommodate the explosive increase in mobile data traffic. In ultra-dense small cell networks (UDSCNs), because the spatial and temporal traffic distributions are significantly disproportionate, the efficient management of the energy consumption of SBSs is crucial. Therefore, we herein propose a multi-agent distributed Q-learning algorithm that maximizes energy efficiency (EE) while minimizing the number of outage users. Through intensive simulations, we demonstrate that the proposed algorithm outperforms conventional algorithms in terms of EE and the number of outage users. Even though the proposed reinforcement learning algorithm has significantly lower computational complexity than the centralized approach, it is shown that it can converge to the optimal solution.
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