DocumentCode
2292318
Title
Reinforcement learning strategies for self-organized coverage and capacity optimization
Author
Islam, Muhammad Naseer Ul ; Mitschele-Thiel, Andreas
Author_Institution
Ilmenau Univ. of Technol., Ilmenau, Germany
fYear
2012
fDate
1-4 April 2012
Firstpage
2818
Lastpage
2823
Abstract
Traditional manual procedures for Coverage and Capacity Optimization are complex and time consuming due to the increasing complexity of cellular networks. This paper presents reinforcement learning strategies for self-organized coverage and capacity optimization through antenna downtilt adaptation. We analyze different learning strategies for a Fuzzy Q-Learning based solution in order to have a fully autonomous optimization process. The learning behavior of these strategies is presented in terms of their learning speed and convergence to the optimal settings. Simultaneous actions by different cells of the network have a great impact on this learning behavior. Therefore, we study a stable strategy where only one cell can take an action per network snapshot as well as a more dynamic strategy where all the cells take simultaneous actions in every snapshot. We also propose a cluster based strategy that tries to combine the benefits of both. The performance is evaluated in all three different network states, i.e. deployment, normal operation and cell outage. The simulation results show that the proposed cluster based strategy is much faster to learn the optimal configuration than one-cell-per-snapshot and can also perform better than the all-cells-per-snapshot strategy due to better convergence capabilities.
Keywords
antennas; cellular radio; communication complexity; fuzzy reasoning; learning (artificial intelligence); optimisation; telecommunication computing; all-cells-per-snapshot strategy; antenna downtilt adaptation; cell outage; cellular network; cluster based strategy; complexity; convergence capability; deployment; fully autonomous optimization process; fuzzy Q-learning based solution; learning behavior; learning speed; network snapshot; network states; normal operation; one-cell-per-snapshot strategy; reinforcement learning strategy; self-organized coverage and capacity optimization; Convergence; Fuzzy logic; Interference; Learning; Optimization; Receiving antennas; LTE; antenna downtilt; fuzzy logic; fuzzy q-learning; reinforcement learning; self-organization;
fLanguage
English
Publisher
ieee
Conference_Titel
Wireless Communications and Networking Conference (WCNC), 2012 IEEE
Conference_Location
Shanghai
ISSN
1525-3511
Print_ISBN
978-1-4673-0436-8
Type
conf
DOI
10.1109/WCNC.2012.6214281
Filename
6214281
Link To Document