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Hierarchical Multi-Objective Deep Reinforcement Learning for Packet Duplication in Multi-Connectivity for URLLC

机译:用于URLLC的多连接中数据包重复的分层多目标深度加强学习

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In this paper, machine learning solutions have been investigated to improve the decision of packet duplication in a multi-connectivity cellular network to optimize the satisfaction of delay and reliability in 5G. A multi-agent deep reinforcement learning scheme with sequential actor-critic model has been developed to improve the decision of packet duplication from observations of radio environment including channel state, interference and load. A multi-objective reward function has been developed to minimize the transmission delay, error rate and maximize satisfaction of the URLLC targets. System-level simulations have been carried out in a heterogeneous network by utilizing dual connectivity between macro and small cells. Our deep reinforcement learning scheme is shown to prioritize packet duplication to the UE where it gains from lower queueing and interference. Comparing with standard 5G multi-connectivity, it reduces the overall packet error rate and delay, with increased satisfaction rate of URLLC targets. Furthermore, it improves the network throughput and resource efficiency in dynamic user traffic with lower redundancy.
机译:在本文中,已经研究了机器学习解决方案,以改善多连接蜂窝网络中的数据包重复决定,以优化5G中的延迟和可靠性的满足。已经开发了一种具有顺序演员 - 评论家模型的多代理深度加强学习方案,以改善数据包重复从包括信道状态,干扰和负载的观测的决定。已经开发了一种多目标奖励功能,以最大限度地减少传输延迟,错误率并最大限度地满足Urllc目标。通过利用宏观和小单元之间的双连接,在异构网络中进行了系统级模拟。我们的深度加强学习方案被证明将数据包重复优先考虑到UE,从而从降低排队和干扰。与标准5G多连接相比,它降低了整体包错误率和延迟,提高了URIFC目标的满意度。此外,它提高了具有较低冗余的动态用户流量的网络吞吐量和资源效率。

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