Self-Organized Energy Management in Energy Harvesting Small Cell Networks

  • Qin, Meng
  • Li, Jinglei
  • Yang, Qinghai
  • Cheng, Nan
  • Kwak, KyungSup
  • 외 1명
Citations

WEB OF SCIENCE

1
Citations

SCOPUS

2

초록

Small cell networks (SCNs) are envisioned as a promising solution to increase the network capacity and coverage. The densely deployments of SCNs in SG networks pose new challenges for energy-efficient network management. Energy harvesting technique is put forward as a relatively new energy saving concept. However, due to the opportunistic nature of energy harvesting, the uncertainty and complexity will be introduced in energy harvesting SCNs (EH-SCNs) network management. In this paper, we study the self-organized cell operation management problem with different quality of service (QoS) requirements of users, in which the EH-SCNs needs to perform cell activation operation in a distributed manner with the uncertainty of harvested energy. With the assumption of Markovian energy harvesting process, multi-armed bandit game (MAB) based Thompson Sampling algorithm is developed to solve the small cell activation problem with a self-organized manner in EH-SCNs. Simulation results show that our proposed approach is particularly suitable to manage the large-scale EH-SCNs more efficiently under uncertain environment with incomplete information.

키워드

Self-organizationsmall cell networksenergy harvestingmulti-armed bandits
제목
Self-Organized Energy Management in Energy Harvesting Small Cell Networks
저자
Qin, MengLi, JingleiYang, QinghaiCheng, NanKwak, KyungSupShen, Xuemin (Sherman)
발행일
2018
유형
Proceedings Paper
저널명
2018 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM)