A Reinforcement Learning Framework for PQoS in a Teleoperated Driving Scenario
In recent years, autonomous networks have been designed with Predictive Quality of Service (PQoS) in mind, as a means for applications operating in the industrial and/or automotive sectors to predict unanticipated Quality of Service (QoS) changes and react accordingly. In this context, Reinforcement...
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Zusammenfassung: | In recent years, autonomous networks have been designed with Predictive
Quality of Service (PQoS) in mind, as a means for applications operating in the
industrial and/or automotive sectors to predict unanticipated Quality of
Service (QoS) changes and react accordingly. In this context, Reinforcement
Learning (RL) has come out as a promising approach to perform accurate
predictions, and optimize the efficiency and adaptability of wireless networks.
Along these lines, in this paper we propose the design of a new entity,
implemented at the RAN-level that, with the support of an RL framework,
implements PQoS functionalities. Specifically, we focus on the design of the
reward function of the learning agent, able to convert QoS estimates into
appropriate countermeasures if QoS requirements are not satisfied. We
demonstrate via ns-3 simulations that our approach achieves the best trade-off
in terms of QoS and Quality of Experience (QoE) performance of end users in a
teleoperated-driving-like scenario, compared to other baseline solutions. |
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DOI: | 10.48550/arxiv.2202.01949 |