Title :
Harmonized Q-Learning for radio resource management in LTE based networks
Author :
Kumar, Dinesh ; Kanagaraj, N.N. ; Srilakshmi, R.
Author_Institution :
Dept. of Inf. Technol., Anna Univ., Chennai, India
Abstract :
The efficient management of radio resource is highly imperative so as to meet the vast application requirements in future high speed wireless networks such as Long Term Evolution-Advanced (LTE-A). The current research on applying machine learning algorithms either focuses on packet scheduling in infrastructure network or in cognitive radio in ad-hoc environment. Our study on spectrum usage indicates that there is a lot of room for optimization of spectrum in a multi-operator scenario of LTE systems which covers large customer over a vast geographical area. In this paper, we introduce the concept of Harmonized Q-Learning (HQL) for the radio resource management in LTE based networks that efficiently manage its resource pool dynamically. The multi-operator system is modeled on the game theory based Q-Learning. Our system level simulation of the proposed algorithm shows higher throughput while meeting the real-time resource requirement of each player.
Keywords :
Long Term Evolution; ad hoc networks; cognitive radio; telecommunication network management; LTE based networks; LTE systems; Long Term Evolution-Advanced; ad-hoc environment; cognitive radio; game theory based Q-Learning; geographical area; harmonized Q-learning; high speed wireless networks; infrastructure network; machine learning algorithms; multi-operator scenario; multioperator system; packet scheduling; radio resource management; real-time resource requirement; Cognitive radio; Computer architecture; Games; Joints; Learning (artificial intelligence); Long Term Evolution; Resource management; Cognitive radio; LTE; Q-Learning;
Conference_Titel :
ITU Kaleidoscope: Building Sustainable Communities (K-2013), 2013 Proceedings of
Conference_Location :
Kyoto
Print_ISBN :
978-1-4673-4676-4