Locally Adaptive Scheduling Policy for Optimizing Information Freshness in Wireless Networks
Preprint 2019 en
Authors
HY
Howard H. Yang
AA
Ahmed Arafa
TQ
Tony Q. S. Quek
Abstract
1 min read
Optimization of information freshness in wireless networks has usually been performed based on queueing analysis that captures only the temporal traffic dynamics associated with the transmitters and receivers. However, the effect of interference, which is mainly dominated by the interferersa geographic locations, is not well understood. In this paper, we leverage a spatiotemporal model, which allows one to characterize the age of information (AoI) from a joint queueing-geometry perspective, and design a decentralized scheduling policy that exploits local observation to make transmission decisions that minimize the AoI. Simulation results reveal that the proposed scheme not only largely reduces the peak AoI but also scales well with the network size.
Discussion(0)
No comments yet. Be the first to comment.