AoI-Driven Statistical Delay and Error-Rate Bounded QoS Provisioning for URLLC in the Finite Blocklength Regime

Xi Zhang, Jingqing Wang, H. Poor
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引用次数: 1

Abstract

Inspired by the new and dominating traffic services - ultra-reliable and low latency communications (URLLC), finite blocklength coding (FBC) has been developed to support delay and error-rate bounded quality-of-services (QoS) provisioning for time-sensitive wireless applications by using short-packet data communications. On the other hand, the age of information (AoI) has recently emerged as a new dimension of QoS performance metric in terms of the freshness of updated information. Since the status updates normally consist only of a small number of information bits but warrant ultra-low latency, exploring AoI in the finite blocklength regime creates another promising solution for supporting URLLC services. However, how to efficiently integrate and implement the above new techniques for statistical delay and error-rate bounded QoS provisioning in the finite blocklength regime has neither been well understood nor thoroughly studied. To overcome these challenges, we propose the AoI-driven statistical delay and error-rate bounded QoS provisioning schemes which leverage the AoI technique as a key QoS performance metric to efficiently support URLLC in the finite blocklength regime. First, we build up the AoI-metric based modeling frameworks in the finite blocklength regime. Second, we apply the stochastic network calculus (SNC) to characterize the upper-bounded peak AoI violation probability. Third, we jointly optimize the peak AoI violation probability and ∊-effective capacity and characterize their tradeoff in supporting statistical delay and error-rate bounded QoS provisioning for URLLC. Finally, we conduct the extensive simulations to validate and evaluate our developed schemes in the finite blocklength regime.
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有限块长度下URLLC的aoi驱动统计延迟和错误率有界QoS提供
受新的主流流量服务——超可靠和低延迟通信(URLLC)的启发,有限块长度编码(FBC)已经被开发出来,通过使用短包数据通信来支持延迟和错误率有限的服务质量(QoS),为时间敏感的无线应用提供服务。另一方面,信息时代(AoI)最近作为QoS性能度量的一个新维度出现,即更新信息的新鲜度。由于状态更新通常只包含少量信息位,但保证超低延迟,因此在有限块长度的机制中探索AoI为支持URLLC服务创建了另一个有前途的解决方案。然而,如何有效地集成和实现上述新技术,以在有限块长度制度下提供统计延迟和错误率有限的QoS,目前还没有得到很好的理解和深入的研究。为了克服这些挑战,我们提出了AoI驱动的统计延迟和错误率有界的QoS提供方案,利用AoI技术作为关键的QoS性能指标,在有限块长度制度下有效地支持URLLC。首先,我们在有限块长度的情况下建立了基于aoi度量的建模框架。其次,我们应用随机网络演算(SNC)来表征AoI的上界峰值违反概率。第三,我们共同优化了峰值AoI违规概率和有效容量,并描述了它们在支持URLLC的统计延迟和错误率有界QoS提供方面的权衡。最后,我们进行了广泛的模拟,以验证和评估我们在有限块长度制度下开发的方案。
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