Ultra-reliable communication (URC) is a key enabler for supporting immersive and mission-critical 5G applications. Meeting the strict reliability requirements of these applications is challenging due to the absence of accurate statistical models tailored to URC systems. In this letter, the wireless connectivity over dynamic channels is characterized via statistical learning methods. In particular, model-based and data-driven learning approaches are proposed to estimate the non-blocking connectivity statistics over a set of training samples with no knowledge on the dynamic channel statistics. Using principles of survival analysis, the reliability of wireless connectivity is measured in terms of the probability of channel blocking events. Moreover, the maximum transmission duration for a given reliable non-blocking connectivity is predicted in conjunction with the confidence of the inferred transmission duration. Results show that the accuracy of detecting channel blocking events is higher using the model-based method for low to moderate reliability targets requiring low sample complexity. In contrast, the data-driven method shows higher detection accuracy for higher reliability targets at the cost of 100$\times$ sample complexity.
翻译:超可靠通信(URC)是支持浸泡式和任务关键5G应用的关键促进因素。满足这些应用的严格可靠性要求具有挑战性,因为没有为URC系统量身定制的准确统计模型。在本信,动态频道的无线连接通过统计学习方法具有特征,特别是提议采用基于模型和数据驱动的学习方法来估计一组对动态频道统计数据不知情的培训样本的无阻连接统计数据。利用生存分析原则,以频道阻塞事件的概率来衡量无线连接的可靠性。此外,在预测可靠、无阻塞连接的最大传输时间时,还考虑到推断传输时间的可信度。结果显示,使用基于模型的方法来测量频道阻塞事件,对于低密度至中度的可靠目标,需要低样本复杂性。相比之下,数据驱动方法显示较高可靠性目标的检测准确性较高,成本为100美元/倍的样本复杂度。