Timely Trajectory Reconstruction in Finite Buffer Remote Tracking Systems
Journal:
arXiv
Published Date:
Apr 1, 2025
Abstract
Remote tracking systems play a critical role in applications such as IoT,
monitoring, surveillance and healthcare. In such systems, maintaining both
real-time state awareness (for online decision making) and accurate
reconstruction of historical trajectories (for offline post-processing) are
essential. While the Age of Information (AoI) metric has been extensively
studied as a measure of freshness, it does not capture the accuracy with which
past trajectories can be reconstructed. In this work, we investigate
reconstruction error as a complementary metric to AoI, addressing the trade-off
between timely updates and historical accuracy. Specifically, we consider three
policies, each prioritizing different aspects of information management:
Keep-Old, Keep-Fresh, and our proposed Inter-arrival-Aware dropping policy. We
compare these policies in terms of impact on both AoI and reconstruction error
in a remote tracking system with a finite buffer. Through theoretical analysis
and numerical simulations of queueing behavior, we demonstrate that while the
Keep-Fresh policy minimizes AoI, it does not necessarily minimize
reconstruction error. In contrast, our proposed Inter-arrival-Aware dropping
policy dynamically adjusts packet retention decisions based on generation
times, achieving a balance between AoI and reconstruction error. Our results
provide key insights into the design of efficient buffer management policies
for resource-constrained IoT networks.