基于强化学习的异步确定性网络流调度

Jonathan Prados-Garzon, T. Taleb, Miloud Bagaa
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引用次数: 29

摘要

时间敏感网络(TSN)和确定性网络(DetNet)标准满足了许多行业对确定性网络服务的需求。这是在IP网络上为给定流建立多跳路径的能力,在延迟、抖动、数据包丢失和可靠性方面具有确定的服务质量(QoS)保证。在这项工作中,我们提出了一种基于强化学习的解决方案,称为LEARNET,用于确定性异步网络中的流量调度。该解决方案利用预测数据分析和强化学习来最大限度地提高网络运营商的收入。我们通过在第五代(5G)异步确定性回程网络中的仿真来评估LEARNET的性能,其中传入流具有与第三代合作伙伴计划(3GPP) TS 23.501 V16.1.0中定义的四个关键5G qos标识符(5qi)相似的特征。此外,我们将LEARNET的性能与尊重5qi优先级的基线解决方案进行了比较,以分配传入流。所获得的结果表明,对于所考虑的场景,与基线解决方案相比,LEARNET实现了高达45%的收入增益。
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LEARNET: Reinforcement Learning Based Flow Scheduling for Asynchronous Deterministic Networks
Time-Sensitive Networking (TSN) and Deterministic Networking (DetNet) standards come to satisfy the needs of many industries for deterministic network services. That is the ability to establish a multi-hop path over an IP network for a given flow with deterministic Quality of Service (QoS) guarantees in terms of latency, jitter, packet loss, and reliability. In this work, we propose a reinforcement learning-based solution, which is dubbed LEARNET, for the flow scheduling in deterministic asynchronous networks. The solution leverages predictive data analytics and reinforcement learning to maximize the network operator’s revenue. We evaluate the performance of LEARNET through simulation in a fifth-generation (5G) asynchronous deterministic backhaul network where incoming flows have characteristics similar to the four critical 5GQoS Identifiers (5QIs) defined in Third Generation Partnership Project (3GPP) TS 23.501 V16.1.0. Also, we compared the performance of LEARNET with a baseline solution that respects the 5QIs priorities for allocating the incoming flows. The obtained results show that, for the scenario considered, LEARNET achieves a gain in the revenue of up to 45% compared to the baseline solution.
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