Real-Time Remote Monitoring of Correlated Markovian Sources
Mehrdad Salimnejad, Marios Kountouris, and Nikolaos Pappas

TL;DR
This paper proposes an error-aware joint sampling and transmission policy for real-time remote monitoring of correlated Markovian sources, optimizing reconstruction accuracy under sampling constraints.
Contribution
It introduces a probabilistic sampling strategy tailored for correlated Markov processes, with closed-form error expressions and an optimization framework for minimal reconstruction error.
Findings
The proposed policy outperforms existing schemes in minimizing average reconstruction error.
Analytical expressions enable efficient evaluation of sampling strategies.
Performance improvements are significant in highly correlated and strict tracking scenarios.
Abstract
We investigate real-time tracking of two correlated stochastic processes over a shared wireless channel. The joint evolution of the processes is modeled as a two-dimensional discrete-time Markov chain. Each process is observed by a dedicated sampler and independently reconstructed at a remote monitor according to a task-specific objective. Although both processes originate from a common underlying phenomenon (e.g., distinct features of the same source), each monitor is interested only in its corresponding feature. A reconstruction error is incurred when the true and reconstructed states mismatch at one or both monitors. To address this problem, we propose an error-aware joint sampling and transmission policy, under which each sampler probabilistically generates samples only when the current process state differs from the most recently reconstructed state at its corresponding monitor. We…
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Taxonomy
TopicsAge of Information Optimization · Distributed Sensor Networks and Detection Algorithms · Advanced Bandit Algorithms Research
