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Toward Massive Machine Type Communications in Ultra-Dense Cellular IoT Networks: Current Issues and Machine Learning-Assisted Solutions

机译:朝着超密集蜂窝IOT网络中的大量机床类型通信:当前问题和机器学习辅助解决方案

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摘要

The ever-increasing number of resource-constrained machine-type communication (MTC) devices is leading to the critical challenge of fulfilling diverse communication requirements in dynamic and ultra-dense wireless environments. Among different application scenarios that the upcoming 5G and beyond cellular networks are expected to support, such as enhanced mobile broadband (eMBB), massive machine type communications (mMTCs), and ultra-reliable and low latency communications (URLLCs), the mMTC brings the unique technical challenge of supporting a huge number of MTC devices in cellular networks, which is the main focus of this paper. The related challenges include quality of service (QoS) provisioning, handling highly dynamic and sporadic MTC traffic, huge signalling overhead, and radio access network (RAN) congestion. In this regard, this paper aims to identify and analyze the involved technical issues, to review recent advances, to highlight potential solutions and to propose new research directions. First, starting with an overview of mMTC features and QoS provisioning issues, we present the key enablers for mMTC in cellular networks. Along with the highlights on the inefficiency of the legacy random access (RA) procedure in the mMTC scenario, we then present the key features and channel access mechanisms in the emerging cellular IoT standards, namely, LTE-M and narrowband IoT (NB-IoT). Subsequently, we present a framework for the performance analysis of transmission scheduling with the QoS support along with the issues involved in short data packet transmission. Next, we provide a detailed overview of the existing and emerging solutions toward addressing RAN congestion problem, and then identify potential advantages, challenges, and use cases for the applications of emerging machine learning (ML) techniques in ultra-dense cellular networks. Out of several ML techniques, we focus on the application of low-complexity $Q$ -learning approach in the mMTC scenario along with the recent advances toward enhancing its learning performance and convergence. Finally, we discuss some open research challenges and promising future research directions.
机译:越来越多的资源受限机器类型通信(MTC)设备导致满足动态和超密集无线环境中的多样化通信需求的临界挑战。在预期即将到来的5G和超出蜂窝网络的不同应用方案中,例如增强的移动宽带(embb),大量机器型通信(MMTC)和超可靠和低延迟通信(URLLC),MMTC带来了在蜂窝网络中支持大量MTC设备的独特技术挑战,这是本文的主要焦点。相关挑战包括服务质量(QoS)供应,处理高度动态和零星MTC流量,巨大的信令开销和无线电接入网络(RAN)拥塞。在这方面,本文旨在识别和分析涉及的技术问题,以审查最近的进展,以突出潜在的解决方案并提出新的研究方向。首先,从MMTC功能和QoS供应问题的概述开始,我们为MMTC介绍了蜂窝网络中的关键支持者。随着MMTC场景中的遗留随机访问(RA)程序(RA)程序的亮点,我们在新出现的蜂窝IOT标准中介绍了关键特征和通道访问机制,即LTE-M和窄带IOT(NB-IOT )。随后,我们提出了一种框架,用于使用QoS支持的传输调度的性能分析以及短数据包传输中所涉及的问题。接下来,我们详细概述了寻址运行拥塞问题的现有和新兴解决方案,然后识别出新的机器学习(ML)技术在超密集蜂窝网络中的应用的潜在优势,挑战和用例。出于几种ML技术中,我们专注于在MMTC情景中的低复杂性$ Q $ Q $ Q $的应用以及提高其学习性能和融合的进步。最后,我们讨论了一些开放的研究挑战和未来的未来研究方向。

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