Revealing Much While Saying Less: Predictive Wireless for Status Update
Abstract
Wireless communications for status update are becoming increasingly important, especially for machine-type control applications. Existing work has been mainly focused on Age of Information (AoI) optimizations. In this paper, a status-aware predictive wireless interface design, networking and implementation are presented which aim to minimize the status recovery error of a wireless networked system by leveraging online status model predictions. Two critical issues of predictive status update are addressed: practicality and usefulness. Link-level experiments on a Software-Defined-Radio (SDR) testbed are conducted and test results show that the proposed design can significantly reduce the number of wireless transmissions while maintaining a low status recovery error. A Status-aware Multi-Agent Reinforcement learning neTworking solution (SMART) is proposed to dynamically and autonomously control the transmit decisions of devices in an ad hoc network based on their individual statuses. System-level simulations of a multi dense platooning scenario are carried out on a road traffic simulator. Results show that the proposed schemes can greatly improve the platooning control performance in terms of the minimum safe distance between successive vehicles, in comparison with the AoI-optimized status-unaware and communication latency-optimized schemes---this demonstrates the usefulness of our proposed status update schemes in a real-world application.
Cite
@article{arxiv.2002.01255,
title = {Revealing Much While Saying Less: Predictive Wireless for Status Update},
author = {Zhiyuan Jiang and Zixu Cao and Siyu Fu and Fei Peng and Shan Cao and Shunqing Zhang and Shugong Xu},
journal= {arXiv preprint arXiv:2002.01255},
year = {2020}
}
Comments
To appear in IEEE INFOCOM 2020