A Layered Grouping Random Access Scheme Based on Dynamic Preamble Selection for Massive Machine Type Communications
Gaofeng Cheng, Huan Chen, Pingzhi Fan, Li Li, Li Hao

TL;DR
This paper proposes a layered grouping random access scheme with dynamic preamble selection for massive IoT communications, significantly reducing preamble length and improving efficiency in dense device scenarios.
Contribution
It introduces a novel layered grouping architecture combined with a dynamic preamble selection strategy, optimizing random access in massive IoT networks.
Findings
Significant reduction in preamble length achieved.
Enhanced energy and spectrum efficiency demonstrated.
Improved detection accuracy in simulations.
Abstract
Massive machine type communication (mMTC) has been identified as an important use case in Beyond 5G networks and future massive Internet of Things (IoT). However, for the massive multiple access in mMTC, there is a serious access preamble collision problem if the conventional 4-step random access (RA) scheme is employed. Consequently, a range of grantfree (GF) RA schemes were proposed. Nevertheless, if the number of cellular users (devices) significantly increases, both the energy and spectrum efficiency of the existing GF schemes still rapidly degrade owing to the much longer preambles required. In order to overcome this dilemma, a layered grouping strategy is proposed, where the cellular users are firstly divided into clusters based on their geographical locations, and then the users of the same cluster autonomously join in different groups by using optimum energy consumption (Opt-EC)…
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Taxonomy
TopicsIoT Networks and Protocols · Advanced Wireless Communication Technologies · Wireless Body Area Networks
