Exploiting Temporal Side Information in Massive IoT Connectivity
Qipeng Wang, Liang Liu, Shuowen Zhang, Francis C.M. Lau

TL;DR
This paper introduces a novel SI-aided MMV-AMP framework that leverages temporal correlation in device activity to significantly improve detection and estimation in massive IoT connectivity systems.
Contribution
It develops a new framework that explicitly quantifies and embeds temporal side information into device activity detection and channel estimation algorithms.
Findings
Significant performance gains in device detection accuracy.
Enhanced channel estimation accuracy with temporal side information.
Effective integration of imperfect prior activity estimates.
Abstract
This paper considers the joint device activity detection and channel estimation problem in a massive Internet of Things (IoT) connectivity system, where a large number of IoT devices exist but merely a random subset of them become active for short-packet transmission in each coherence block. In particular, we propose to leverage the temporal correlation in device activity, e.g., a device active in the previous coherence block is more likely to be still active in the current coherence block, to improve the detection and estimation performance. However, it is challenging to utilize this temporal correlation as side information (SI), which relies on the knowledge about the exact statistical relation between the estimated activity pattern for the previous coherence block (which may be imperfect with unknown error) and the true activity pattern in the current coherence block. To tackle this…
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Taxonomy
TopicsAge of Information Optimization · Sparse and Compressive Sensing Techniques · Distributed Sensor Networks and Detection Algorithms
