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Load Balancing using Backpropagation in Mobile Networks


Affiliations
1 Department of MCA, R.V. College of Engineering, Bangalore, India
2 Jayawant Institute of Computer Applications, Pune, India
3 Electronic Science Department, University of Pune, India
     

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Mobile traffic is increasing rapidly as the number of mobile subscribers are increasing everyday. This results in uneven traffic in certain areas. Load balancing is a complex problem with dynamically varying inputs and outputs. This complex system is difficult to be modeled with conventional mathematical tools/methods.We use a multilayer recurrent neural network to model this problem. Backpropagation algorithm is used to train this multilayer recurrent neural network. Initially, the network is trained with previous mobile traffic data and tested for different traffic conditions.It is found to predict the loads in the base stations. This information helps in balancing the load on the base station by borrowing channels from an appropriate base station.


Keywords

Artificial Neural Networks, Backpropagation Algorithm, Base Station, New Calls, Handoff Calls, Retry Calls.
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  • Load Balancing using Backpropagation in Mobile Networks

Abstract Views: 150  |  PDF Views: 1

Authors

J. Usha
Department of MCA, R.V. College of Engineering, Bangalore, India
Ajay Kumar
Jayawant Institute of Computer Applications, Pune, India
A. D. Shaligram
Electronic Science Department, University of Pune, India

Abstract


Mobile traffic is increasing rapidly as the number of mobile subscribers are increasing everyday. This results in uneven traffic in certain areas. Load balancing is a complex problem with dynamically varying inputs and outputs. This complex system is difficult to be modeled with conventional mathematical tools/methods.We use a multilayer recurrent neural network to model this problem. Backpropagation algorithm is used to train this multilayer recurrent neural network. Initially, the network is trained with previous mobile traffic data and tested for different traffic conditions.It is found to predict the loads in the base stations. This information helps in balancing the load on the base station by borrowing channels from an appropriate base station.


Keywords


Artificial Neural Networks, Backpropagation Algorithm, Base Station, New Calls, Handoff Calls, Retry Calls.