Blind Goal-Oriented Massive Access for Future Wireless Networks
Sajad Daei, Marios Kountouris

TL;DR
This paper introduces a novel blind goal-oriented massive access method for future wireless networks that leverages angular sparsity to efficiently identify active devices with high reliability and low latency, regardless of device count.
Contribution
It proposes a reconstruction-free optimization and clustering approach exploiting angular sparsity for device activity detection in massive access scenarios.
Findings
Significant improvements in active user detection accuracy.
Reduced false alarm probabilities compared to existing schemes.
Performance independent of the total number of devices.
Abstract
Emerging communication networks are envisioned to support massive wireless connectivity of heterogeneous devices with sporadic traffic and diverse requirements in terms of latency, reliability, and bandwidth. Providing multiple access to an increasing number of uncoordinated users and sharing the limited resources become essential in this context. In this work, we revisit the random access (RA) problem and exploit the continuous angular group sparsity feature of wireless channels to propose a novel RA strategy that provides low latency, high reliability, and massive access with limited bandwidth resources in an all-in-one package. To this end, we first design a reconstruction-free goal-oriented optimization problem, which only preserves the angular information required to identify the active devices. To solve this, we propose an alternating direction method of multipliers (ADMM) and…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Microwave Imaging and Scattering Analysis · Sparse and Compressive Sensing Techniques
