SPLGMar 13, 2025

Robust Learning-Based Sparse Recovery for Device Activity Detection in Grant-Free Random Access Cell-Free Massive MIMO: Enhancing Resilience to Impairments

arXiv:2503.10280v12 citationsh-index: 162025 IEEE International Conference on Communications Workshops (ICC Workshops)
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This addresses activity detection for massive IoT devices in distributed antenna systems, representing an incremental improvement over existing co-located massive MIMO approaches.

The paper tackles device activity detection in grant-free random access for massive machine-type communication within cell-free massive MIMO systems, proposing a data-driven algorithm that achieves robust performance against input perturbations and fixed-point representation effects.

Massive MIMO is considered a key enabler to support massive machine-type communication (mMTC). While massive access schemes have been extensively analyzed for co-located massive MIMO arrays, this paper explores activity detection in grant-free random access for mMTC within the context of cell-free massive MIMO systems, employing distributed antenna arrays. This sparse support recovery of device activity status is performed by a finite cluster of access points (APs) from a large number of geographically distributed APs collaborating to serve a larger number of devices. Active devices transmit non-orthogonal pilot sequences to APs, which forward the received signals to a central processing unit (CPU) for collaborative activity detection. This paper proposes a simple and efficient data-driven algorithm tailored for device activity detection, implemented centrally at the CPU. Furthermore, the study assesses the algorithm's robustness to input perturbations and examines the effects of adopting fixed-point representation on its performance.

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