Configuring Transmission Thresholds in IIoT Alarm Scenarios for Energy-Efficient Event Reporting
David E. Ru\'iz-Guirola, Onel L. A. L\'opez, and Samuel, Montejo-S\'anchez

TL;DR
This paper presents a novel threshold-based transmission policy for IIoT devices that significantly reduces energy consumption by minimizing unnecessary transmissions, using various optimization and machine learning techniques.
Contribution
It introduces a new adaptive threshold optimization framework, including a Q-learning approach, to enhance energy efficiency in IIoT alarm scenarios.
Findings
Q-learning outperforms other optimization methods.
Up to 94% power reduction in low-density environments.
Up to 60% power reduction in high-density environments.
Abstract
Industrial Internet of Things (IIoT) applications involve real-time monitoring, detection, and data analysis. This is challenged by the intermittent activity of IIoT devices (IIoTDs) and their limited battery capacity. Indeed, the former issue makes resource scheduling and random access difficult, while the latter constrains IIoTDs' lifetime and efficient operation. In this paper, we address interconnected aspects of these issues. Specifically, we focus on extending the battery life of IIoTDs sensing events/alarms by minimizing the number of unnecessary transmissions. Note that when multiple devices access the channel simultaneously, there are collisions, potentially leading to retransmissions, thus reducing energy efficiency. We propose a threshold-based transmission-decision policy based on the sensing quality and the network spatial deployment. We optimize the transmission thresholds…
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Taxonomy
TopicsFault Detection and Control Systems · Smart Grid Security and Resilience · Healthcare Technology and Patient Monitoring
MethodsQ-Learning · Focus
