超可靠低延迟工业物联网中数据驱动的预测调度:生成对抗网络方法

Chen-Feng Liu, M. Bennis
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引用次数: 5

摘要

迄今为止,基于模型的低延迟可靠通信对于时间紧迫的无线控制系统至关重要。在本工作中,我们研究了无线工业网络中使中断概率最小化的下行链路(DL)控制器到执行器的调度问题。与现有文献基于众所周知的平稳衰落信道模型不同,我们假设了一个任意且未知的信道衰落模型,该模型只能通过样本获得。为了克服数据样本有限的问题,我们调用了生成对抗网络框架,并提出了一种在线数据驱动的方法来联合调度DL传输并在线学习信道分布。数值结果表明,该方法可以有效地学习任意信道分布,并利用预测的中断概率进一步达到最优性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Predictive Scheduling in Ultra-Reliable Low-Latency Industrial IoT: A Generative Adversarial Network Approach
To date, model-based reliable communication with low latency is of paramount importance for time-critical wireless control systems. In this work, we study the downlink (DL) controller-to-actuator scheduling problem in a wireless industrial network such that the outage probability is minimized. In contrast to the existing literature based on well-known stationary fading channel models, we assume an arbitrary and unknown channel fading model, which is available only via samples. To overcome the issue of limited data samples, we invoke the generative adversarial network framework and propose an online data-driven approach to jointly schedule the DL transmissions and learn the channel distributions in an online manner. Numerical results show that the proposed approach can effectively learn any arbitrary channel distribution and further achieve the optimal performance by using the predicted outage probability.
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