The stability of Cohen–Grossberg neural networks with time dependent delays

Background. The study is devoted to the analysis of stability in the sense Lyapunov Cohen-Grossberg neural networks with time-dependent delays. To do this, we study the stability of the steady-state solutions of systems of linear differential equations with coefficients depending on time and with d...

Full description

Bibliographic Details
Main Authors: Il'ya V. Boykov, Vladimir A. Rudnev, Alla I. Boykova
Format: Article
Language:English
Published: Penza State University Publishing House 2023-09-01
Series:Известия высших учебных заведений. Поволжский регион: Физико-математические науки
Subjects:
_version_ 1797737557031649280
author Il'ya V. Boykov
Vladimir A. Rudnev
Alla I. Boykova
author_facet Il'ya V. Boykov
Vladimir A. Rudnev
Alla I. Boykova
author_sort Il'ya V. Boykov
collection DOAJ
description Background. The study is devoted to the analysis of stability in the sense Lyapunov Cohen-Grossberg neural networks with time-dependent delays. To do this, we study the stability of the steady-state solutions of systems of linear differential equations with coefficients depending on time and with delays, time dependent. The cases of continuous and impulsive perturbations are considered. The relevance of the study is due to two circumstances. Firstly, Cohen-Grossberg neural networks find numerous applications in various fields of mathematics, physics, technology, and it is necessary to determine the boundaries of their possible application. Secondly, the currently known conditions for the stability of the Cohen-Grossberg neural networks are rather cumbersome. The article is devoted to finding the conditions for the stability of the Cohen-Grossberg neural networks, expressed in terms of the coefficients of the systems of differential equations modeling the networks. Materials and methods. The study of stability is based on the application of the method of “freezing” time-dependent coefficients and the subsequent analysis of the stability of the solution of the system in the vicinity of the “freezing” point. In the analysis of systems of differential equations transformed in this way, the properties of logarithmic norms are used. Results. A method is proposed that makes it possible to obtain sufficient stability conditions for solutions of finite systems of linear differential equations with coefficients and with time-dependent delays. The algorithms are effective both in the case of continuous and impulsive disturbances. Conclusions. The proposed method can be used in the study nonstationary dynamical systems described by systems of ordinary linear differential equations with delays depending from time. The method can be used as the basis for studying the stability of Cohen-Grossberg neural networks with discontinuous coefficients and discontinuous activation functions. Similar results were previously obtained for Hopfield neural networks in the work: Boykov I., Roudnev V., Boykova A. Stability of solutions to systems of nonlinear differential equations with discontinuous right-hand sides. Applications to Hopfield artificial neural networks. Mathematics. 2022:1.
first_indexed 2024-03-12T13:31:01Z
format Article
id doaj.art-00c0fd7c98354a318fcdb8a076e9a71f
institution Directory Open Access Journal
issn 2072-3040
language English
last_indexed 2024-03-12T13:31:01Z
publishDate 2023-09-01
publisher Penza State University Publishing House
record_format Article
series Известия высших учебных заведений. Поволжский регион: Физико-математические науки
spelling doaj.art-00c0fd7c98354a318fcdb8a076e9a71f2023-08-24T11:08:00ZengPenza State University Publishing HouseИзвестия высших учебных заведений. Поволжский регион: Физико-математические науки2072-30402023-09-01210.21685/2072-3040-2023-2-5The stability of Cohen–Grossberg neural networks with time dependent delays Il'ya V. Boykov0Vladimir A. Rudnev1Alla I. Boykova2Penza State UniversitySaint Petersburg State UniversityPenza State UniversityBackground. The study is devoted to the analysis of stability in the sense Lyapunov Cohen-Grossberg neural networks with time-dependent delays. To do this, we study the stability of the steady-state solutions of systems of linear differential equations with coefficients depending on time and with delays, time dependent. The cases of continuous and impulsive perturbations are considered. The relevance of the study is due to two circumstances. Firstly, Cohen-Grossberg neural networks find numerous applications in various fields of mathematics, physics, technology, and it is necessary to determine the boundaries of their possible application. Secondly, the currently known conditions for the stability of the Cohen-Grossberg neural networks are rather cumbersome. The article is devoted to finding the conditions for the stability of the Cohen-Grossberg neural networks, expressed in terms of the coefficients of the systems of differential equations modeling the networks. Materials and methods. The study of stability is based on the application of the method of “freezing” time-dependent coefficients and the subsequent analysis of the stability of the solution of the system in the vicinity of the “freezing” point. In the analysis of systems of differential equations transformed in this way, the properties of logarithmic norms are used. Results. A method is proposed that makes it possible to obtain sufficient stability conditions for solutions of finite systems of linear differential equations with coefficients and with time-dependent delays. The algorithms are effective both in the case of continuous and impulsive disturbances. Conclusions. The proposed method can be used in the study nonstationary dynamical systems described by systems of ordinary linear differential equations with delays depending from time. The method can be used as the basis for studying the stability of Cohen-Grossberg neural networks with discontinuous coefficients and discontinuous activation functions. Similar results were previously obtained for Hopfield neural networks in the work: Boykov I., Roudnev V., Boykova A. Stability of solutions to systems of nonlinear differential equations with discontinuous right-hand sides. Applications to Hopfield artificial neural networks. Mathematics. 2022:1.cohen-grossberg neural networksdelaysstabilityasymptotic stability
spellingShingle Il'ya V. Boykov
Vladimir A. Rudnev
Alla I. Boykova
The stability of Cohen–Grossberg neural networks with time dependent delays
Известия высших учебных заведений. Поволжский регион: Физико-математические науки
cohen-grossberg neural networks
delays
stability
asymptotic stability
title The stability of Cohen–Grossberg neural networks with time dependent delays
title_full The stability of Cohen–Grossberg neural networks with time dependent delays
title_fullStr The stability of Cohen–Grossberg neural networks with time dependent delays
title_full_unstemmed The stability of Cohen–Grossberg neural networks with time dependent delays
title_short The stability of Cohen–Grossberg neural networks with time dependent delays
title_sort stability of cohen grossberg neural networks with time dependent delays
topic cohen-grossberg neural networks
delays
stability
asymptotic stability
work_keys_str_mv AT ilyavboykov thestabilityofcohengrossbergneuralnetworkswithtimedependentdelays
AT vladimirarudnev thestabilityofcohengrossbergneuralnetworkswithtimedependentdelays
AT allaiboykova thestabilityofcohengrossbergneuralnetworkswithtimedependentdelays
AT ilyavboykov stabilityofcohengrossbergneuralnetworkswithtimedependentdelays
AT vladimirarudnev stabilityofcohengrossbergneuralnetworkswithtimedependentdelays
AT allaiboykova stabilityofcohengrossbergneuralnetworkswithtimedependentdelays