A Study on the 3D Hopfield Neural Network Model via Nonlocal Atangana–Baleanu Operators

Hopfield neural network (HNN) is considered as an artificial model derived from the brain structures and it is an important model that admits an adequate performance in neurocomputing. In this article, we solve a dynamical model of 3D HNNs via Atangana–Baleanu (AB) fractional derivatives. To find th...

Full description

Saved in:
Bibliographic Details
Main Authors: Shahram Rezapour, Pushpendra Kumar, Vedat Suat Erturk, Sina Etemad
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2022/6784886
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832549034292674560
author Shahram Rezapour
Pushpendra Kumar
Vedat Suat Erturk
Sina Etemad
author_facet Shahram Rezapour
Pushpendra Kumar
Vedat Suat Erturk
Sina Etemad
author_sort Shahram Rezapour
collection DOAJ
description Hopfield neural network (HNN) is considered as an artificial model derived from the brain structures and it is an important model that admits an adequate performance in neurocomputing. In this article, we solve a dynamical model of 3D HNNs via Atangana–Baleanu (AB) fractional derivatives. To find the numerical solution of the considered dynamical model, the well-known Predictor-Corrector (PC) method is used. A number of cases are taken by using two different sets of values of the activation gradient of the neurons as well as six different initial conditions. The given results have been perfectly established using the different fractional-order values on the given derivative operator. The objective of this research is to investigate the dynamics of the proposed HNN model at various values of fractional orders. Nonlocal characteristic of the AB derivative contains the memory in the system which is the main motivation behind the proposal of this research.
format Article
id doaj-art-6ba6b4f795db4f469d1b27dc1871581e
institution Kabale University
issn 1099-0526
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Complexity
spelling doaj-art-6ba6b4f795db4f469d1b27dc1871581e2025-02-03T06:12:25ZengWileyComplexity1099-05262022-01-01202210.1155/2022/6784886A Study on the 3D Hopfield Neural Network Model via Nonlocal Atangana–Baleanu OperatorsShahram Rezapour0Pushpendra Kumar1Vedat Suat Erturk2Sina Etemad3Department of MathematicsDepartment of Mathematics and StatisticsDepartment of MathematicsDepartment of MathematicsHopfield neural network (HNN) is considered as an artificial model derived from the brain structures and it is an important model that admits an adequate performance in neurocomputing. In this article, we solve a dynamical model of 3D HNNs via Atangana–Baleanu (AB) fractional derivatives. To find the numerical solution of the considered dynamical model, the well-known Predictor-Corrector (PC) method is used. A number of cases are taken by using two different sets of values of the activation gradient of the neurons as well as six different initial conditions. The given results have been perfectly established using the different fractional-order values on the given derivative operator. The objective of this research is to investigate the dynamics of the proposed HNN model at various values of fractional orders. Nonlocal characteristic of the AB derivative contains the memory in the system which is the main motivation behind the proposal of this research.http://dx.doi.org/10.1155/2022/6784886
spellingShingle Shahram Rezapour
Pushpendra Kumar
Vedat Suat Erturk
Sina Etemad
A Study on the 3D Hopfield Neural Network Model via Nonlocal Atangana–Baleanu Operators
Complexity
title A Study on the 3D Hopfield Neural Network Model via Nonlocal Atangana–Baleanu Operators
title_full A Study on the 3D Hopfield Neural Network Model via Nonlocal Atangana–Baleanu Operators
title_fullStr A Study on the 3D Hopfield Neural Network Model via Nonlocal Atangana–Baleanu Operators
title_full_unstemmed A Study on the 3D Hopfield Neural Network Model via Nonlocal Atangana–Baleanu Operators
title_short A Study on the 3D Hopfield Neural Network Model via Nonlocal Atangana–Baleanu Operators
title_sort study on the 3d hopfield neural network model via nonlocal atangana baleanu operators
url http://dx.doi.org/10.1155/2022/6784886
work_keys_str_mv AT shahramrezapour astudyonthe3dhopfieldneuralnetworkmodelvianonlocalatanganabaleanuoperators
AT pushpendrakumar astudyonthe3dhopfieldneuralnetworkmodelvianonlocalatanganabaleanuoperators
AT vedatsuaterturk astudyonthe3dhopfieldneuralnetworkmodelvianonlocalatanganabaleanuoperators
AT sinaetemad astudyonthe3dhopfieldneuralnetworkmodelvianonlocalatanganabaleanuoperators
AT shahramrezapour studyonthe3dhopfieldneuralnetworkmodelvianonlocalatanganabaleanuoperators
AT pushpendrakumar studyonthe3dhopfieldneuralnetworkmodelvianonlocalatanganabaleanuoperators
AT vedatsuaterturk studyonthe3dhopfieldneuralnetworkmodelvianonlocalatanganabaleanuoperators
AT sinaetemad studyonthe3dhopfieldneuralnetworkmodelvianonlocalatanganabaleanuoperators