Null steering of adaptive beamforming using linear constraint minimum variance assisted by particle swarm optimization, dynamic mutated artificial immune system, and gravitational search algorithm

Linear constraint minimum variance (LCMV) is one of the adaptive beamforming techniques that is commonly applied to cancel interfering signals and steer or produce a strong beam to the desired signal through its computed weight vectors. However, weights computed by LCMV usually are not able to form...

Full description

Saved in:
Bibliographic Details
Main Authors: Darzi S., Sieh Kiong T., Tariqul Islam M., Ismail M., Kibria S., Salem B.
Other Authors: 55651612500
Format: Article
Published: Hindawi Publishing Corporation 2023
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.uniten.dspace-21981
record_format dspace
spelling my.uniten.dspace-219812023-05-16T10:46:26Z Null steering of adaptive beamforming using linear constraint minimum variance assisted by particle swarm optimization, dynamic mutated artificial immune system, and gravitational search algorithm Darzi S. Sieh Kiong T. Tariqul Islam M. Ismail M. Kibria S. Salem B. 55651612500 15128307800 55328836300 7401908770 55637259500 57769851500 Linear constraint minimum variance (LCMV) is one of the adaptive beamforming techniques that is commonly applied to cancel interfering signals and steer or produce a strong beam to the desired signal through its computed weight vectors. However, weights computed by LCMV usually are not able to form the radiation beam towards the target user precisely and not good enough to reduce the interference by placing null at the interference sources. It is difficult to improve and optimize the LCMV beamforming technique through conventional empirical approach. To provide a solution to this problem, artificial intelligence (AI) technique is explored in order to enhance the LCMV beamforming ability. In this paper, particle swarm optimization (PSO), dynamic mutated artificial immune system (DM-AIS), and gravitational search algorithm (GSA) are incorporated into the existing LCMV technique in order to improve the weights of LCMV. The simulation result demonstrates that received signal to interference and noise ratio (SINR) of target user can be significantly improved by the integration of PSO, DM-AIS, and GSA in LCMV through the suppression of interference in undesired direction. Furthermore, the proposed GSA can be applied as a more effective technique in LCMV beamforming optimization as compared to the PSO technique. The algorithms were implemented using Matlab program. © 2014 Soodabeh Darzi et al. Final 2023-05-16T02:46:26Z 2023-05-16T02:46:26Z 2014 Article 10.1155/2014/724639 2-s2.0-84934889577 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84934889577&doi=10.1155%2f2014%2f724639&partnerID=40&md5=d519cc9819b446894810210094e45f07 https://irepository.uniten.edu.my/handle/123456789/21981 2014 724639 All Open Access, Gold, Green Hindawi Publishing Corporation Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
description Linear constraint minimum variance (LCMV) is one of the adaptive beamforming techniques that is commonly applied to cancel interfering signals and steer or produce a strong beam to the desired signal through its computed weight vectors. However, weights computed by LCMV usually are not able to form the radiation beam towards the target user precisely and not good enough to reduce the interference by placing null at the interference sources. It is difficult to improve and optimize the LCMV beamforming technique through conventional empirical approach. To provide a solution to this problem, artificial intelligence (AI) technique is explored in order to enhance the LCMV beamforming ability. In this paper, particle swarm optimization (PSO), dynamic mutated artificial immune system (DM-AIS), and gravitational search algorithm (GSA) are incorporated into the existing LCMV technique in order to improve the weights of LCMV. The simulation result demonstrates that received signal to interference and noise ratio (SINR) of target user can be significantly improved by the integration of PSO, DM-AIS, and GSA in LCMV through the suppression of interference in undesired direction. Furthermore, the proposed GSA can be applied as a more effective technique in LCMV beamforming optimization as compared to the PSO technique. The algorithms were implemented using Matlab program. © 2014 Soodabeh Darzi et al.
author2 55651612500
author_facet 55651612500
Darzi S.
Sieh Kiong T.
Tariqul Islam M.
Ismail M.
Kibria S.
Salem B.
format Article
author Darzi S.
Sieh Kiong T.
Tariqul Islam M.
Ismail M.
Kibria S.
Salem B.
spellingShingle Darzi S.
Sieh Kiong T.
Tariqul Islam M.
Ismail M.
Kibria S.
Salem B.
Null steering of adaptive beamforming using linear constraint minimum variance assisted by particle swarm optimization, dynamic mutated artificial immune system, and gravitational search algorithm
author_sort Darzi S.
title Null steering of adaptive beamforming using linear constraint minimum variance assisted by particle swarm optimization, dynamic mutated artificial immune system, and gravitational search algorithm
title_short Null steering of adaptive beamforming using linear constraint minimum variance assisted by particle swarm optimization, dynamic mutated artificial immune system, and gravitational search algorithm
title_full Null steering of adaptive beamforming using linear constraint minimum variance assisted by particle swarm optimization, dynamic mutated artificial immune system, and gravitational search algorithm
title_fullStr Null steering of adaptive beamforming using linear constraint minimum variance assisted by particle swarm optimization, dynamic mutated artificial immune system, and gravitational search algorithm
title_full_unstemmed Null steering of adaptive beamforming using linear constraint minimum variance assisted by particle swarm optimization, dynamic mutated artificial immune system, and gravitational search algorithm
title_sort null steering of adaptive beamforming using linear constraint minimum variance assisted by particle swarm optimization, dynamic mutated artificial immune system, and gravitational search algorithm
publisher Hindawi Publishing Corporation
publishDate 2023
_version_ 1806428166284115968
score 13.18916