4.8 Article

Deep Reinforcement Learning-Based Mode Selection and Resource Management for Green Fog Radio Access Networks

期刊

IEEE INTERNET OF THINGS JOURNAL
卷 6, 期 2, 页码 1960-1971

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JIOT.2018.2871020

关键词

Artificial intelligence; communication mode selection; deep reinforcement learning (DRL); fog radio access networks (F-RANs); resource management

资金

  1. State Major Science and Technology Special Project [2017ZX03001025-006, 2018ZX03001023-005]
  2. National Natural Science Foundation of China [61831002]
  3. National Program for Special Support of Eminent Professionals
  4. U.S. National Science Foundation [CNS-1702957]

向作者/读者索取更多资源

Fog radio access networks (F-RANs) are seen as potential architectures to support services of Internet of Things by leveraging edge caching and edge computing. However, current works studying resource management in F-RANs mainly consider a static system with only one communication mode. Given network dynamics, resource diversity, and the coupling of resource management with mode selection, resource management in F-RANs becomes very challenging. Motivated by the recent development of artificial intelligence, a deep reinforcement learning (DRL)-based joint mode selection and resource management approach is proposed. Each user equipment (UE) can operate either in cloud RAN (C-RAN) mode or in device-to-device mode, and the resource managed includes both radio resource and computing resource. The core idea is that the network controller makes intelligent decisions on UE communication modes and processors' on-off states with precoding for UEs in C-RAN mode optimized subsequently, aiming at minimizing long-term system power consumption under the dynamics of edge cache states. By simulations, the impacts of several parameters, such as learning rate and edge caching service capability, on system performance are demonstrated, and meanwhile the proposal is compared with other different schemes to show its effectiveness. Moreover, transfer learning is integrated with DRL to accelerate learning process.

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