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Adaptive Beamforming Based on Linearly Constrained Maximum Correntropy Learning Algorithm

نویسنده:
مجتبی حاجی آبادی
,
حسین خوش بین قماش
,
قوشه عابدهدتنی
,
Mojtaba Hajiabadi
,
Hossein Khoshbin Ghomash
,
Ghosheh Abed Hodtani
سال
: 2017
چکیده: 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.
یو آر آی: https://libsearch.um.ac.ir:443/fum/handle/fum/3396806
کلیدواژه(گان): Adaptive filter,beamforming,constrained optimization,

correntropy criterion
کالکشن :
  • ProfDoc
  • نمایش متادیتا پنهان کردن متادیتا
  • آمار بازدید

    Adaptive Beamforming Based on Linearly Constrained Maximum Correntropy Learning Algorithm

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contributor authorمجتبی حاجی آبادیen
contributor authorحسین خوش بین قماشen
contributor authorقوشه عابدهدتنیen
contributor authorMojtaba Hajiabadifa
contributor authorHossein Khoshbin Ghomashfa
contributor authorGhosheh Abed Hodtanifa
date accessioned2020-06-06T14:26:32Z
date available2020-06-06T14:26:32Z
date copyright10/26/2017
date issued2017
identifier urihttps://libsearch.um.ac.ir:443/fum/handle/fum/3396806?locale-attribute=fa
description abstractThe 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.
en
languageEnglish
titleAdaptive Beamforming Based on Linearly Constrained Maximum Correntropy Learning Algorithmen
typeConference Paper
contenttypeExternal Fulltext
subject keywordsAdaptive filteren
subject keywordsbeamformingen
subject keywordsconstrained optimizationen
subject keywords

correntropy criterion
en
identifier linkhttps://profdoc.um.ac.ir/paper-abstract-1065037.html
conference title(2017 7th International Conference on Computer and Knowledge Engineering (ICCKEen
conference locationمشهدfa
identifier articleid1065037
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