Distributed Reinforcement Learning for Age of Information Minimization in Real-Time IoT Systems
Sihua Wang, Mingzhe Chen, Zhaohui Yang, Changchuan Yin, Walid Saad,, Shuguang Cui, H. Vincent Poor

TL;DR
This paper introduces a distributed reinforcement learning method to optimize sampling and device selection in IoT systems, effectively reducing age of information and energy use under resource constraints.
Contribution
It proposes a novel distributed RL algorithm for joint sampling and device selection, improving AoI and energy efficiency in real-time IoT monitoring.
Findings
Reduces AoI by up to 17.8% compared to baseline methods.
Decreases energy consumption by up to 35.1%.
Demonstrates effectiveness on real PM 2.5 pollution data.
Abstract
In this paper, the problem of minimizing the weighted sum of age of information (AoI) and total energy consumption of Internet of Things (IoT) devices is studied. In the considered model, each IoT device monitors a physical process that follows nonlinear dynamics. As the dynamics of the physical process vary over time, each device must find an optimal sampling frequency to sample the real-time dynamics of the physical system and send sampled information to a base station (BS). Due to limited wireless resources, the BS can only select a subset of devices to transmit their sampled information. Thus, edge devices must cooperatively sample their monitored dynamics based on the local observations and the BS must collect the sampled information from the devices immediately, hence avoiding the additional time and energy used for sampling and information transmission. To this end, it is…
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Taxonomy
TopicsAge of Information Optimization · IoT Networks and Protocols · Congenital Heart Disease Studies
