4.7 Article

Distributed Federated Learning for Ultra-Reliable Low-Latency Vehicular Communications

Journal

IEEE TRANSACTIONS ON COMMUNICATIONS
Volume 68, Issue 2, Pages 1146-1159

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCOMM.2019.2956472

Keywords

Delays; Reliability; Wireless communication; Data models; Resource management; Power demand; Probabilistic logic; Vehicular communication; ultra-reliable low-latency communication (URLLC); federated learning (FL); extreme value theory (EVT)

Funding

  1. Kvantum Institute Strategic Project SAFARI
  2. Kvantum Institute Strategic Project CARMA
  3. Kvantum Institute Strategic Project MISSION
  4. Kvantum Institute Strategic Project NOOR
  5. Kvantum Institute Strategic Project SMARTER
  6. Academy of Finland 6Genesis Flagship Project [318927]
  7. U.S. National Science Foundation [CNS-1836802]

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In this paper, the problem of joint power and resource allocation (JPRA) for ultra-reliable low-latency communication (URLLC) in vehicular networks is studied. Therein, the network-wide power consumption of vehicular users (VUEs) is minimized subject to high reliability in terms of probabilistic queuing delays. Using extreme value theory (EVT), a new reliability measure is defined to characterize extreme events pertaining to vehicles' queue lengths exceeding a predefined threshold. To learn these extreme events, assuming they are independently and identically distributed over VUEs, a novel distributed approach based on federated learning (FL) is proposed to estimate the tail distribution of the queue lengths. Considering the communication delays incurred by FL over wireless links, Lyapunov optimization is used to derive the JPRA policies enabling URLLC for each VUE in a distributed manner. The proposed solution is then validated via extensive simulations using a Manhattan mobility model. Simulation results show that FL enables the proposed method to estimate the tail distribution of queues with an accuracy that is close to a centralized solution with up to 79% reductions in the amount of exchanged data. Furthermore, the proposed method yields up to 60% reductions of VUEs with large queue lengths, while reducing the average power consumption by two folds, compared to an average queue-based baseline.

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