English

Learning Aided Optimization for Energy Harvesting Devices with Outdated State Information

Optimization and Control 2019-08-27 v2 Performance Systems and Control

Abstract

This paper considers utility optimal power control for energy harvesting wireless devices with a finite capacity battery. The distribution information of the underlying wireless environment and harvestable energy is unknown and only outdated system state information is known at the device controller. This scenario shares similarity with Lyapunov opportunistic optimization and online learning but is different from both. By a novel combination of Zinkevich's online gradient learning technique and the drift-plus-penalty technique from Lyapunov opportunistic optimization, this paper proposes a learning-aided algorithm that achieves utility within O(ϵ)O(\epsilon) of the optimal, for any desired ϵ>0\epsilon>0, by using a battery with an O(1/ϵ)O(1/\epsilon) capacity. The proposed algorithm has low complexity and makes power investment decisions based on system history, without requiring knowledge of the system state or its probability distribution.

Keywords

Cite

@article{arxiv.1801.03572,
  title  = {Learning Aided Optimization for Energy Harvesting Devices with Outdated State Information},
  author = {Hao Yu and Michael J. Neely},
  journal= {arXiv preprint arXiv:1801.03572},
  year   = {2019}
}

Comments

This version extends v1 (our INFOCOM 2018 paper): (1) add a new section (Section V) to study the case where utility functions are non-i.i.d. arbitrarily varying (2) add more simulation experiments. The current version is published in IEEE/ACM Transactions on Networking

R2 v1 2026-06-22T23:42:09.120Z