DocumentCode
266764
Title
Low complexity SON coordination using reinforcement learning
Author
Iacoboaiea, Ovidiu ; Sayrac, Bema ; Ben Jemaa, Sana ; Bianchi, Pascal
Author_Institution
Orange Labs., Issy-les-Moulineaux, France
fYear
2014
fDate
8-12 Dec. 2014
Firstpage
4406
Lastpage
4411
Abstract
The continuously increasing traffic demand faces us with increased CAPital Expenditures (CAPEX) and Operational Expenditure (OPEX). Self Organizing Network (SON) functions aim to lower these costs by automating the network tuning. A SON instance is a realization of a SON function which can tune one or a set of cells. Having several uncoordinated SON functions in the network creates a risk for conflicts and instability. This raises the need for a SON Coordinator (SONCO) meant to deal with these issues. In this work we consider that on each cell we have one SON instance of each SON function. We present the design of a SONCO which arbitrates conflicts based on weights attributed to the SON functions. The design makes use of Reinforcement Learning (RL) with function approximation. We provide a low complexity approximation of the action-value function based on a number of parameters that scales linearly with the number of cells. We present a study case with the Mobility Load Balancing (tuning the Cell Individual Offset (CIO)) and Mobility Robustness Optimization (tuning the CIO and the handover hysteresis) functions, where the SONCO deals with the conflicts on the CIOs. Numerical results prove that we can orchestrate the SON functions through SONCO configurations that reflect different operator policies.
Keywords
computational complexity; function approximation; learning (artificial intelligence); mobility management (mobile radio); optimisation; resource allocation; telecommunication computing; telecommunication traffic; CAPEX; CIO; OPEX; SON coordinator; SONCO; capital expenditures; cell individual offset; function approximation; handover hysteresis; low complexity SON coordination; low complexity approximation; mobility load balancing; mobility robustness optimization; network tuning automation; operational expenditure; reinforcement learning; self organizing network functions; traffic demand; Artificial neural networks; Complexity theory; Function approximation; Hysteresis; Kernel; Learning (artificial intelligence); Wireless communication; LTE; MLB; MRO; SON Coordination; SON instances; function approximation; reinforcement learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Global Communications Conference (GLOBECOM), 2014 IEEE
Conference_Location
Austin, TX
Type
conf
DOI
10.1109/GLOCOM.2014.7037501
Filename
7037501
Link To Document