A nonlinear convergence consensus: extreme doubly stochastic quadratic operators for multi-agent systems

We investigate a novel nonlinear consensus from the extreme points of doubly stochastic quadratic operators (EDSQO), based on majorization theory and Markov chains for time-varying multi-agent distributed systems. We describe a dynamic system that has a local interaction network among agents. EDSQO...

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Main Authors: Rawad, Abdulghafor, Almotairi, Sultan, Almohamedh, Hamad, Almutairi, Badr, Bajhzar, Abdullah, Almutairi, d Sulaiman Sulmi
Format: Article
Language:English
English
Published: MDPI 2020
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Online Access:http://irep.iium.edu.my/84595/7/84595%20A%20Nonlinear%20Convergence%20Consensus.pdf
http://irep.iium.edu.my/84595/8/84595%20A%20Nonlinear%20Convergence%20Consensus%20SCOPUS.pdf
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Institution: Universiti Islam Antarabangsa Malaysia
Language: English
English
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spelling my.iium.irep.845952020-11-12T07:51:14Z http://irep.iium.edu.my/84595/ A nonlinear convergence consensus: extreme doubly stochastic quadratic operators for multi-agent systems Rawad, Abdulghafor Almotairi, Sultan Almohamedh, Hamad Almutairi, Badr Bajhzar, Abdullah Almutairi, d Sulaiman Sulmi T10.5 Communication of technical information We investigate a novel nonlinear consensus from the extreme points of doubly stochastic quadratic operators (EDSQO), based on majorization theory and Markov chains for time-varying multi-agent distributed systems. We describe a dynamic system that has a local interaction network among agents. EDSQO has been applied for distributed agent systems, on a finite dimensional stochastic matrix. We prove that multi-agent systems converge at a center (common value) via the extreme waited value of doubly stochastic quadratic operators (DSQO), which are only 1 or 0 or 1/2 1 2 if the exchanges of each agent member has no selfish communication. Applying this rule means that the consensus is nonlinear and low-complexity computational for fast time convergence. The investigated nonlinear model of EDSQO follows the structure of the DeGroot linear (DGL) consensus model. However, EDSQO is nonlinear and faster convergent than the DGL model and is of lower complexity than DSQO and cubic stochastic quadratic operators (CSQO). The simulation result and theoretical proof are illustrated. MDPI 2020-04 Article PeerReviewed application/pdf en http://irep.iium.edu.my/84595/7/84595%20A%20Nonlinear%20Convergence%20Consensus.pdf application/pdf en http://irep.iium.edu.my/84595/8/84595%20A%20Nonlinear%20Convergence%20Consensus%20SCOPUS.pdf Rawad, Abdulghafor and Almotairi, Sultan and Almohamedh, Hamad and Almutairi, Badr and Bajhzar, Abdullah and Almutairi, d Sulaiman Sulmi (2020) A nonlinear convergence consensus: extreme doubly stochastic quadratic operators for multi-agent systems. Symmetry, 12 (4). pp. 1-19. ISSN 2073-8994 https://www.mdpi.com/2073-8994/12/4/540/htm 10.3390/sym12040540
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
English
topic T10.5 Communication of technical information
spellingShingle T10.5 Communication of technical information
Rawad, Abdulghafor
Almotairi, Sultan
Almohamedh, Hamad
Almutairi, Badr
Bajhzar, Abdullah
Almutairi, d Sulaiman Sulmi
A nonlinear convergence consensus: extreme doubly stochastic quadratic operators for multi-agent systems
description We investigate a novel nonlinear consensus from the extreme points of doubly stochastic quadratic operators (EDSQO), based on majorization theory and Markov chains for time-varying multi-agent distributed systems. We describe a dynamic system that has a local interaction network among agents. EDSQO has been applied for distributed agent systems, on a finite dimensional stochastic matrix. We prove that multi-agent systems converge at a center (common value) via the extreme waited value of doubly stochastic quadratic operators (DSQO), which are only 1 or 0 or 1/2 1 2 if the exchanges of each agent member has no selfish communication. Applying this rule means that the consensus is nonlinear and low-complexity computational for fast time convergence. The investigated nonlinear model of EDSQO follows the structure of the DeGroot linear (DGL) consensus model. However, EDSQO is nonlinear and faster convergent than the DGL model and is of lower complexity than DSQO and cubic stochastic quadratic operators (CSQO). The simulation result and theoretical proof are illustrated.
format Article
author Rawad, Abdulghafor
Almotairi, Sultan
Almohamedh, Hamad
Almutairi, Badr
Bajhzar, Abdullah
Almutairi, d Sulaiman Sulmi
author_facet Rawad, Abdulghafor
Almotairi, Sultan
Almohamedh, Hamad
Almutairi, Badr
Bajhzar, Abdullah
Almutairi, d Sulaiman Sulmi
author_sort Rawad, Abdulghafor
title A nonlinear convergence consensus: extreme doubly stochastic quadratic operators for multi-agent systems
title_short A nonlinear convergence consensus: extreme doubly stochastic quadratic operators for multi-agent systems
title_full A nonlinear convergence consensus: extreme doubly stochastic quadratic operators for multi-agent systems
title_fullStr A nonlinear convergence consensus: extreme doubly stochastic quadratic operators for multi-agent systems
title_full_unstemmed A nonlinear convergence consensus: extreme doubly stochastic quadratic operators for multi-agent systems
title_sort nonlinear convergence consensus: extreme doubly stochastic quadratic operators for multi-agent systems
publisher MDPI
publishDate 2020
url http://irep.iium.edu.my/84595/7/84595%20A%20Nonlinear%20Convergence%20Consensus.pdf
http://irep.iium.edu.my/84595/8/84595%20A%20Nonlinear%20Convergence%20Consensus%20SCOPUS.pdf
http://irep.iium.edu.my/84595/
https://www.mdpi.com/2073-8994/12/4/540/htm
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