State-aware Real-time Tracking and Remote Reconstruction of a Markov Source
Mehrdad Salimnejad, Marios Kountouris, Nikolaos Pappas

TL;DR
This paper introduces a state-aware sampling and transmission policy for real-time remote tracking of a two-state Markov source over unreliable channels, optimizing various error metrics and outperforming existing policies under certain conditions.
Contribution
It proposes a novel state-aware randomized policy that accounts for source importance, and analyzes its performance compared to existing goal-oriented policies.
Findings
Outperforms existing policies for fast-evolving sources.
Optimal policy minimizes actuation error cost.
Semantics-aware policy better for slowly varying sources.
Abstract
The problem of real-time remote tracking and reconstruction of a two-state Markov process is considered here. A transmitter sends samples from an observed information source to a remote monitor over an unreliable wireless channel. The receiver, in turn, performs an action according to the state of the reconstructed source. We propose a state-aware randomized stationary sampling and transmission policy which accounts for the importance of different states of the information source, and their impact on the goal of the communication process. We then analyze the performance of the proposed policy, and compare it with existing goal-oriented joint sampling and transmission policies, with respect to a set of performance metrics. Specifically, we study the real-time reconstruction error, the cost of actuation error, the consecutive error, and a new metric, coined importance-aware consecutive…
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Taxonomy
TopicsAge of Information Optimization · Distributed Sensor Networks and Detection Algorithms · Energy Efficient Wireless Sensor Networks
