(2017 7th International Conference on Computer and Knowledge Engineering (ICCKE , 2017-10-26

Title : ( Adaptive Beamforming Based on Linearly Constrained Maximum Correntropy Learning Algorithm )

Authors: Mojtaba Hajiabadi , Hossein Khoshbin Ghomash , Ghosheh Abed Hodtani ,

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Abstract

The Gaussian noise profile has been demonstrated to be an inaccurate model in several antenna beamforming problems. Many available beamformers are based on secondorder statistics and their efficiency degrades significantly due to impulsive noise existed in the received signal. Hence, a demand exists for attention to address beamforming problems under nonGaussian noise environments. According to the robust performance of information theoretic learning (ITL) criteria in nonGaussian environments, we propose a linearly constrained version of maximum correntropy learning algorithm in order to solve beamforming problem in presence of nonGaussian and impulsive noises. Simulation results of the proposed adaptive beamformer are provided to illustrate its accurate and resistant performance in comparison with conventional second-ordermoment- based beamformers.

Keywords

, Adaptive filter, beamforming, constrained optimization, correntropy criterion.
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@inproceedings{paperid:1065037,
author = {Hajiabadi, Mojtaba and Khoshbin Ghomash, Hossein and Abed Hodtani, Ghosheh},
title = {Adaptive Beamforming Based on Linearly Constrained Maximum Correntropy Learning Algorithm},
booktitle = {(2017 7th International Conference on Computer and Knowledge Engineering (ICCKE},
year = {2017},
location = {مشهد, IRAN},
keywords = {Adaptive filter; beamforming; constrained optimization; correntropy criterion.},
}

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%0 Conference Proceedings
%T Adaptive Beamforming Based on Linearly Constrained Maximum Correntropy Learning Algorithm
%A Hajiabadi, Mojtaba
%A Khoshbin Ghomash, Hossein
%A Abed Hodtani, Ghosheh
%J (2017 7th International Conference on Computer and Knowledge Engineering (ICCKE
%D 2017

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