DocumentCode :
3595441
Title :
Coordinating SON instances: Reinforcement learning with distributed value function
Author :
Iacoboaiea, Ovidiu ; Sayrac, Berna ; Ben Jemaa, Sana ; Bianchi, Pascal
Author_Institution :
Orange Labs., Issy-les-Moulineaux, France
fYear :
2014
Firstpage :
1642
Lastpage :
1646
Abstract :
With the emergence of Self-Organizing Network (SON) functions network operators are faced with a practical problem: coordination of SON instances. The SON functions are usually designed in a standalone manner, i.e. they do not take into account the possibility that other instances of the same or different SON functions may be running in the network. This creates the risk of conflicts and network instability. Therefore a SON COordinator (SONCO) is needed. In this paper we design an operator centric SONCO that sees the SON instances as black-boxes, i.e. it does not know the algorithm inside the SON functions. Our aim is to improve the network stability (i.e. number of parameter changes) for SON instances of the same SON function. We employ Reinforcement Learning (RL) in order to profit from the information on the past SONCO decisions. We simplify the expression of the action-value function and we use state aggregation to further reduce the required state space, making it scale linearly with the number of coordinated cells. We provide a study case with the Mobility Load Balancing (MLB) function independently instantiated on every cell. The results show that the proposed SONCO improves the network stability.
Keywords :
Long Term Evolution; cellular radio; learning (artificial intelligence); resource allocation; telecommunication computing; LTE; MLB; RL; SON instance coordination; SONCO operator centric design; action-value function; black-boxes; mobility load balancing coordinated cells; network stability; reinforcement learning; self-organizing network functions; state aggregation; state space; Algorithm design and analysis; Conferences; Heuristic algorithms; Kernel; Learning (artificial intelligence); Markov processes; Optimization; Coordination; LTE; MLB; SON; SON instances; reinforcement learning; state aggregation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Personal, Indoor, and Mobile Radio Communication (PIMRC), 2014 IEEE 25th Annual International Symposium on
Type :
conf
DOI :
10.1109/PIMRC.2014.7136431
Filename :
7136431
Link To Document :
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