4.8 Article

Deep-Reinforcement-Learning-Based Resource Allocation for Content Distribution in Fog Radio Access Networks

期刊

IEEE INTERNET OF THINGS JOURNAL
卷 9, 期 18, 页码 16874-16883

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JIOT.2022.3146239

关键词

Content distribution; deep reinforcement learning (DRL); fog radio access network (FRAN); in-network caching; resource allocation

资金

  1. Scientific Research Plan of Beijing Municipal Commission of Education [KM201910005026]
  2. Beijing Nova Program of Science and Technology [Z191100001119094]
  3. Beijing Natural Science Foundation [L202016]
  4. National Science Foundation [CNS-2128368, CNS-2107216]
  5. Toyota
  6. Amazon
  7. JSPS KAKENHI [JP19K20250, JP20F20080, JP20H04174]
  8. Leading Initiative for Excellent Young Researchers (LEADER)
  9. MEXT, Japan
  10. JST, PRESTO, Japan [JPMJPR21P3]

向作者/读者索取更多资源

This article proposes a resource allocation scheme based on deep reinforcement learning to improve content distribution in a layered fog radio access network (FRAN).
With the rapid development of wireless communication technologies, the emerging multimedia applications make mobile Internet traffic grow explosively while putting forward higher service requirements for the next-generation wireless networks. Therefore, how to achieve low-latency content transmission by effectively allocating heterogeneous network resources to improve the network quality of service and end-user quality of experience is a key issue to be solved urgently in the current Internet. In this article, we propose a deep reinforcement learning (DRL)-based resource allocation scheme to improve content distribution in a layered fog radio access network (FRAN). We formulate the optimal resource allocation problem as a minimal delay model, where in-network caching is deployed and the same content requests from mobile users can be aggregated in the queue of each base station. To cope with the increasing user requests and overcome capacity constraints of the FRAN, moreover, a cloud-edge cooperation offloading scheme is utilized in our model, where the integrated allocation of caching, computing, and communication resources and joint optimization between innetwork caching and routing are considered to promote resource utilization and content delivery. In our solution, a new DRL policy is designed to make cross-layer cooperative caching and routing decisions for the arriving content requests according to request history information and available network resources in the system. Simulation results demonstrate that our proposed model can performs much better than the existing cloud-edge cooperation schemes in the FRAN.

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