Deep Reinforcement Learning-Based Beam Tracking for Low-Latency Services in Vehicular Networks

ICC 2020 - 2020 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS (ICC)(2020)

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摘要
Ultra-Reliable and Low-Latency Communications (URLLC) services in vehicular networks on millimeter-wave bands present a significant challenge, considering the necessity of constantly adjusting the beam directions. Conventional methods are mostly based on classical control theory, e.g., Kalman filter and its variations, which mainly deal with stationary scenarios. Therefore, severe application limitations exist, especially with complicated, dynamic Vehicle-to-Everything (V2X) channels. This paper gives a thorough study of this subject, by first modifying the classical approaches, e.g., Extended Kalman Filter (EKF) and Particle Filter (PF), for non-stationary scenarios, and then proposing a Reinforcement Learning (RL)-based approach that can achieve the URLLC requirements in a typical intersection scenario. Simulation results based on a commercial ray-tracing simulator show that enhanced EKF and PF methods achieve packet delay more than $10$ ms, whereas the proposed deep RL-based method can reduce the latency to about $6$ ms, by extracting context information from the training data.
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关键词
low-latency services,vehicular networks,ultrareliable and low-latency communications,millimeter-wave bands,beam directions,stationary scenarios,severe application limitations,extended Kalman filter,particle filter,nonstationary scenarios,URLLC requirements,intersection scenario,PF methods,deep RL-based method,beam tracking,dynamic vehicle-to-everything channels,ray-tracing simulator show
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