DocumentCode
2077026
Title
Improving energy efficiency in Green femtocell networks: A hierarchical reinforcement learning framework
Author
Xianfu Chen ; Honggang Zhang ; Tao Chen ; Lasanen, Mika
Author_Institution
VTT Tech. Res. Centre of Finland, Oulu, Finland
fYear
2013
fDate
9-13 June 2013
Firstpage
2241
Lastpage
2245
Abstract
This paper investigates energy efficiency for the two-tier femtocell networks through combining game theory and stochastic learning. With the Stackelberg game formulation, a hierarchical reinforcement learning framework is developed to study the joint expected utility maximization of macrocells and femtocells. The macrocells behave as the leaders and the femtocells are followers during the learning procedure. At each time step, the leaders commit to dynamic strategies based on the best responses of the followers, while the followers compete against each other with no further information but the leaders´ strategy information. In this paper, two learning algorithms are proposed to schedule each cell´s transmission power. Numerical results are presented to validate the proposed studies and show that the two learning algorithms substantially improve the energy efficiency of the femtocell networks.
Keywords
energy conservation; femtocellular radio; game theory; learning (artificial intelligence); mobile computing; Stackelberg game formulation; dynamic strategies; energy efficiency improvement; green femtocell networks; hierarchical reinforcement learning framework; joint expected utility maximization; leaders strategy information; macrocells; stochastic learning; transmission power; two-tier femtocell networks; Femtocell networks; Games; Green products; Interference; Learning (artificial intelligence); Macrocell networks; Signal to noise ratio;
fLanguage
English
Publisher
ieee
Conference_Titel
Communications (ICC), 2013 IEEE International Conference on
Conference_Location
Budapest
ISSN
1550-3607
Type
conf
DOI
10.1109/ICC.2013.6654861
Filename
6654861
Link To Document