Model-Aided Learning for URLLC Transmission in Unlicensed Spectrum

A. Hindi, S. Elayoubi, T. Chahed
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Abstract

We focus in this paper on the transport of critical services in unlicensed spectrum, where stringent constraints on latency and reliability are to be met, in the context of Ultra-Reliable Low Latency Communication (URLLC). Since contention-based medium access performs poorly in the case of high traffic load, we propose a new transmission scheme where the transmitter can increase its transmission power when the delay of the packet approaches the delay constraint, increasing by that its chance of being decoded even in case of collision with other lower-power packets. We are however interested in minimizing the usage of high power transmissions, mainly to conserve energy for battery-powered devices and to limit the range of interference. Therefore, we define a transmission policy that makes use of a delay threshold after which the high-power transmission starts, and propose a new online-learning approach based on Multi-Armed Bandit (MAB) in order to identify the policy which achieves minimum energy consumption while guaranteeing reliability. However, we observe that the MAB converges slowly to the optimal policy because the loss event is rare in the load regime of interest. We then propose a model-aided learning approach where a simple analytical model helps estimating the longterm reliability resulting from an action and thus its reward. Our results show a significant enhancement of the convergence towards the optimal policy.
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非授权频谱中URLLC传输的模型辅助学习
在本文中,我们重点研究了在超可靠低延迟通信(URLLC)的背景下,在无许可频谱中传输关键业务,其中需要满足对延迟和可靠性的严格限制。由于基于竞争的介质访问在高流量负载情况下表现不佳,我们提出了一种新的传输方案,当数据包的延迟接近延迟约束时,发射机可以增加其传输功率,即使在与其他低功率数据包碰撞的情况下,也可以增加其被解码的机会。然而,我们感兴趣的是尽量减少高功率传输的使用,主要是为了为电池供电的设备节省能量,并限制干扰的范围。因此,我们定义了一种利用延迟阈值开始大功率传输的传输策略,并提出了一种新的基于多臂班迪(MAB)的在线学习方法,以确定在保证可靠性的同时实现最小能耗的策略。然而,我们观察到MAB收敛到最优策略的速度很慢,因为在感兴趣的负载范围内损失事件很少。然后,我们提出了一种模型辅助学习方法,其中一个简单的分析模型有助于估计一个行动及其回报的长期可靠性。我们的结果表明,向最优策略的收敛性显著增强。
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