Access Delay Constrained Activity Detection in Massive Random Access
Jyotish Robin, Elza Erkip

TL;DR
This paper proposes a frequency-multiplexed group testing approach for rapid activity detection in massive IoT networks, optimizing resource use and latency in 5G systems.
Contribution
It introduces a novel frequency-multiplexed group testing scheme that reduces access delay and resource consumption for activity detection in massive IoT networks.
Findings
Achieves order-optimal resource scaling with network size
Reduces detection delay by leveraging frequency multiplexing
Demonstrates robustness to estimation errors in active device count
Abstract
In 5G and future generation wireless systems, massive IoT networks with bursty traffic are expected to co-exist with cellular systems to serve several latency-critical applications. Thus, it is important for the access points to identify the active devices promptly with minimal resource consumption to enable massive machine-type communication without disrupting the conventional traffic. In this paper, a frequency-multiplexed strategy based on group testing is proposed for activity detection which can take into account the constraints on network latency while minimizing the overall resource utilization. The core idea is that during each time-slot of active device discovery, multiple subcarriers in frequency domain can be used to launch group tests in parallel to reduce delay. Our proposed scheme is functional in the asymptotic and non-asymptotic regime of the total number of devices…
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