Sparse Activity Discovery in Energy Constrained Multi-Cluster IoT Networks Using Group Testing
Jyotish Robin, Elza Erkip

TL;DR
This paper proposes a non-adaptive group testing strategy for energy-constrained multi-cluster IoT networks, improving active device detection efficiency and extending sensor battery life.
Contribution
It extends randomized group testing to multiple sensor clusters with energy constraints, providing theoretical constraints for optimal sampling parameters.
Findings
The proposed method effectively detects active sensors in energy-limited clusters.
Theoretical analysis matches Monte-Carlo simulation results.
The approach can extend battery life in massive sensor networks.
Abstract
Current IoT networks are characterized by an ultra-high density of devices with different energy budget constraints, typically having sparse and sporadic activity patterns. Access points require an efficient strategy to identify the active devices for a timely allocation of resources to enable massive machine-type communication. Recently, group testing based approaches have been studied to handle sparse activity detection in massive random access problems. In this paper, a non-adaptive group testing strategy is proposed which can take into account the energy constraints on different sensor clusters. A theoretical extension of the existing randomized group testing strategies to the case of multiple clusters is presented and the necessary constraints that the optimal sampling parameters should satisfy in order to improve the efficiency of group tests is established. The cases of fixed…
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