Publication | Closed Access
Power Allocation in Multi-User Cellular Networks: Deep Reinforcement Learning Approaches
275
Citations
36
References
2020
Year
Multi-agent Drl FrameworkEngineeringDeep Reinforcement LearningPower AllocationEnergy ManagementEdge ComputingDynamic Resource AllocationComputer EngineeringPower ControlMobile ComputingDistributed LearningComputer ScienceHeterogeneous NetworkWireless Cooperative NetworkMulti-agent LearningDevice-to-deviceMathematical Models
The model-based power allocation has been investigated for decades, but this approach requires mathematical models to be analytically tractable and it has high computational complexity. Recently, the data-driven model-free approaches have been rapidly developed to achieve near-optimal performance with affordable computational complexity, and deep reinforcement learning (DRL) is regarded as one such approach having great potential for future intelligent networks. In this paper, a dynamic downlink power control problem is considered for maximizing the sum-rate in a multi-user wireless cellular network. Using cross-cell coordinations, the proposed multi-agent DRL framework includes off-line and on-line centralized training and distributed execution, and a mathematical analysis is presented for the top-level design of the near-static problem. Policy-based REINFORCE, value-based deep Q-learning (DQL), actor-critic deep deterministic policy gradient (DDPG) algorithms are proposed for this sum-rate problem. Simulation results show that the data-driven approaches outperform the state-of-art model-based methods on sum-rate performance. Furthermore, the DDPG outperforms the REINFORCE and DQL in terms of both sum-rate performance and robustness.
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