Title :
Load balancing in heterogeneous networks using an evolutionary algorithm
Author :
Fenton, Michael ; Lynch, David ; Kucera, Stepan ; Claussen, Holger ; O´Neill, Michael
Author_Institution :
Natural Computing Research & Applications Group, Complex & Adaptive Systems Laboratory, School of Business, University College Dublin
Abstract :
Grammatical Evolution (GE) is applied to the problem of load balancing in heterogeneous cellular network deployments (HetNets). HetNets are multi-tiered cellular networks for which load balancing is a scalable means to maximise network capacity, assuming similar traffic from all users. This paper describes a proof of concept study in which GE is used in a genetic algorithm-like way to evolve constants which represent cell power and selection bias in order to achieve load balancing in HetNets. A fitness metric is derived to achieve load balancing both locally in sectors and globally across tiers. Initial results show promise for GE as a heuristic for load balancing. This finding motivates a more sophisticated grammar to bring enhanced Inter-Cell Interference Coordination optimisation into an evolutionary framework.
Keywords :
Bandwidth; Grammar; Heating; Noise; Optimization; Sociology; Statistics;
Conference_Titel :
Evolutionary Computation (CEC), 2015 IEEE Congress on
Conference_Location :
Sendai, Japan
DOI :
10.1109/CEC.2015.7256876