DocumentCode
2116984
Title
Distributed Q-learning for energy harvesting Heterogeneous Networks
Author
Miozzo, Marco ; Giupponi, Lorenza ; Rossi, Michele ; Dini, Paolo
Author_Institution
CTTC, Av. Carl Friedrich Gauss, 7, 08860, Castelldefels, Barcelona, Spain
fYear
2015
fDate
8-12 June 2015
Firstpage
2006
Lastpage
2011
Abstract
We consider a two-tier urban Heterogeneous Network where small cells powered with renewable energy are deployed in order to provide capacity extension and to offload macro base stations. We use reinforcement learning techniques to concoct an algorithm that autonomously learns energy inflow and traffic demand patterns. This algorithm is based on a decentralized multi-agent Q-learning technique that, by interacting with the environment, obtains optimal policies aimed at improving the system performance in terms of drop rate, throughput and energy efficiency. Simulation results show that our solution effectively adapts to changing environmental conditions and meets most of our performance objectives. At the end of the paper we identify areas for improvement.
Keywords
Algorithm design and analysis; Batteries; Bismuth; Energy harvesting; Renewable energy sources; Switches; Throughput; Energy Efficiency; HetNet; Mobile Networks; Q-Learning; Renewable Energy; Sustainability;
fLanguage
English
Publisher
ieee
Conference_Titel
Communication Workshop (ICCW), 2015 IEEE International Conference on
Conference_Location
London, United Kingdom
Type
conf
DOI
10.1109/ICCW.2015.7247475
Filename
7247475
Link To Document