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Federated Deep Q-Learning and 5G load balancing

Hsin Lin, Yi-Kang Su, Hong-Qi Chen, La-Fei Ko

TL;DR

This research studies how federated deep Q learning can be used to inform each user equipment (UE) of the each BS's load conditions, and results indicate that compared to the maximum Signal-To-Noise-Ratio method currently used by UEs, the proposed deep Q learning model can consistently provide better High average UE quality of service.

Abstract

Despite advances in cellular network technology, base station (BS) load balancing remains a persistent problem. Although centralized resource allocation methods can address the load balancing problem, it still remains an NP-hard problem. In this research, we study how federated deep Q learning can be used to inform each user equipment (UE) of the each BS's load conditions. Federated deep Q learning's load balancing enables intelligent UEs to independently select the best BS while also limiting the amount of private information exposed to the network. In this study, we propose and analyze a federated deep Q learning load balancing system, which is implemented using the Open-RAN xAPP framework and the near-Real Time Radio Interface Controller (near-RT RIC). Our simulation results indicate that compared to the maximum Signal-To-Noise-Ratio (MAX-SINR) method currently used by UEs, our proposed deep Q learning model can consistently provide better High average UE quality of service

Federated Deep Q-Learning and 5G load balancing

TL;DR

This research studies how federated deep Q learning can be used to inform each user equipment (UE) of the each BS's load conditions, and results indicate that compared to the maximum Signal-To-Noise-Ratio method currently used by UEs, the proposed deep Q learning model can consistently provide better High average UE quality of service.

Abstract

Despite advances in cellular network technology, base station (BS) load balancing remains a persistent problem. Although centralized resource allocation methods can address the load balancing problem, it still remains an NP-hard problem. In this research, we study how federated deep Q learning can be used to inform each user equipment (UE) of the each BS's load conditions. Federated deep Q learning's load balancing enables intelligent UEs to independently select the best BS while also limiting the amount of private information exposed to the network. In this study, we propose and analyze a federated deep Q learning load balancing system, which is implemented using the Open-RAN xAPP framework and the near-Real Time Radio Interface Controller (near-RT RIC). Our simulation results indicate that compared to the maximum Signal-To-Noise-Ratio (MAX-SINR) method currently used by UEs, our proposed deep Q learning model can consistently provide better High average UE quality of service
Paper Structure (7 sections, 7 figures, 2 tables)

This paper contains 7 sections, 7 figures, 2 tables.

Figures (7)

  • Figure 1: O-RAN架構
  • Figure 2: 提出之架構
  • Figure 4: 環境示意圖
  • Figure 5: 固定UE數量為100,不同頻寬之流量變化
  • Figure 6: 固定頻寬為50RB,不同人數之流量變化
  • ...and 2 more figures