To ensure safety in teleoperated driving scenarios, communication between vehicles and remote drivers must satisfy strict latency and reliability requirements. In this context, Predictive Quality of Service (PQoS) was investigated as a tool to predict unanticipated degradation of the Quality of Service (QoS), and allow the network to react accordingly. In this work, we design a reinforcement learning (RL) agent to implement PQoS in vehicular networks. To do so, based on data gathered at the Radio Access Network (RAN) and/or the end vehicles, as well as QoS predictions, our framework is able to identify the optimal level of compression to send automotive data under low latency and reliability constraints. We consider different learning schemes, including centralized, fully-distributed, and federated learning. We demonstrate via ns-3 simulations that, while centralized learning generally outperforms any other solution, decentralized learning, and especially federated learning, offers a good trade-off between convergence time and reliability, with positive implications in terms of privacy and complexity.
翻译:为确保远程驾驶方案的安全,车辆和远程驾驶员之间的通信必须符合严格的隐蔽性和可靠性要求,在这方面,对服务的预测质量进行了调查,作为预测服务质量意外下降的工具,并允许网络作出相应反应。在这项工作中,我们设计了一个强化学习(RL)代理,在车辆网络中实施PQS;为此,根据无线电接入网和(或)终端车辆收集的数据以及QoS预测,我们的框架能够确定最佳压缩水平,以便在低隐蔽性和可靠性限制下发送汽车数据。我们考虑不同的学习计划,包括集中、完全分散和联合学习。我们通过ns-3模拟来证明,虽然集中学习通常比任何其他解决办法、分散学习,特别是联合学习,但在隐私和复杂性方面有着积极的影响。