An Approach to reduce Non-linearity of HIPERLAN/2 system using Neural Network
Journal Title: International Journal of Research in Computer and Communication Technology - Year 2013, Vol 2, Issue 2
Abstract
Simulation of ETSI’s High Performance Local Area Network Type 2(HIPERLAN/2) is presented. In this paper we present performance of HIPERLAN/2 model via a MATLAB/Simulink simulation with the original MATLAB/Simulink model and the model using Neural Networks LVQ (Linear Vector Quantization) algorithm. MATLAB/Simulink modeling demonstrates that the performance of HIPERLAN/2 with Neural Network reduces the Nonlinearity of the original model to a great extent.
Authors and Affiliations
Roshni pandurangi Bhokare, Shubhangi Rathkanthiwar
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