Intelligent computing for Duffing-Harmonic oscillator equation via the bio-evolutionary optimization algorithm

This paper presents a bio-evolutionary metaheuristic approach to study the harmonically oscillating behavior of the Duffing equation. The proposed methodology is an amalgamation of the artificial neural network with the firefly algorithm. A novelty in the activation of neurons of artificial neural n...

Full description

Bibliographic Details
Main Authors: Najeeb Alam Khan, Tooba Hameed, Oyoon A Razzaq, Muhammad Ayaz
Format: Article
Language:English
Published: SAGE Publishing 2019-12-01
Series:Journal of Low Frequency Noise, Vibration and Active Control
Online Access:https://doi.org/10.1177/1461348418819408
id doaj-422adbcaf3f1427aa90cc2abd0329e49
record_format Article
spelling doaj-422adbcaf3f1427aa90cc2abd0329e492020-11-25T03:17:38ZengSAGE PublishingJournal of Low Frequency Noise, Vibration and Active Control1461-34842048-40462019-12-013810.1177/1461348418819408Intelligent computing for Duffing-Harmonic oscillator equation via the bio-evolutionary optimization algorithmNajeeb Alam KhanTooba HameedOyoon A RazzaqMuhammad AyazThis paper presents a bio-evolutionary metaheuristic approach to study the harmonically oscillating behavior of the Duffing equation. The proposed methodology is an amalgamation of the artificial neural network with the firefly algorithm. A novelty in the activation of neurons of artificial neural network is described using the cosine function with the angular frequency. Chronologically, artificial neural network approximates discretizes the nonlinear functions of the governing problem, which then undergoes an optimization process by the firefly algorithm that then later generates the effective values of the unknown parameters. Generally, the algorithm and implementation of the scheme are assimilated by considering an application of Duffing-harmonic oscillator. Some error measurements, in order to discuss the convergence and accuracy of the scheme, are also visualized through tables and graphs. An effective optimized relationship between the angular frequency and amplitude is derived and its results are depicted in a tabular form. The comparison of the proposed methodology is also deliberated by homotopy perturbation method. Moreover, the geometrical illustration of the trajectories of the dynamic system is also added in the phase plane for different values of amplitude and angular frequency.https://doi.org/10.1177/1461348418819408
collection DOAJ
language English
format Article
sources DOAJ
author Najeeb Alam Khan
Tooba Hameed
Oyoon A Razzaq
Muhammad Ayaz
spellingShingle Najeeb Alam Khan
Tooba Hameed
Oyoon A Razzaq
Muhammad Ayaz
Intelligent computing for Duffing-Harmonic oscillator equation via the bio-evolutionary optimization algorithm
Journal of Low Frequency Noise, Vibration and Active Control
author_facet Najeeb Alam Khan
Tooba Hameed
Oyoon A Razzaq
Muhammad Ayaz
author_sort Najeeb Alam Khan
title Intelligent computing for Duffing-Harmonic oscillator equation via the bio-evolutionary optimization algorithm
title_short Intelligent computing for Duffing-Harmonic oscillator equation via the bio-evolutionary optimization algorithm
title_full Intelligent computing for Duffing-Harmonic oscillator equation via the bio-evolutionary optimization algorithm
title_fullStr Intelligent computing for Duffing-Harmonic oscillator equation via the bio-evolutionary optimization algorithm
title_full_unstemmed Intelligent computing for Duffing-Harmonic oscillator equation via the bio-evolutionary optimization algorithm
title_sort intelligent computing for duffing-harmonic oscillator equation via the bio-evolutionary optimization algorithm
publisher SAGE Publishing
series Journal of Low Frequency Noise, Vibration and Active Control
issn 1461-3484
2048-4046
publishDate 2019-12-01
description This paper presents a bio-evolutionary metaheuristic approach to study the harmonically oscillating behavior of the Duffing equation. The proposed methodology is an amalgamation of the artificial neural network with the firefly algorithm. A novelty in the activation of neurons of artificial neural network is described using the cosine function with the angular frequency. Chronologically, artificial neural network approximates discretizes the nonlinear functions of the governing problem, which then undergoes an optimization process by the firefly algorithm that then later generates the effective values of the unknown parameters. Generally, the algorithm and implementation of the scheme are assimilated by considering an application of Duffing-harmonic oscillator. Some error measurements, in order to discuss the convergence and accuracy of the scheme, are also visualized through tables and graphs. An effective optimized relationship between the angular frequency and amplitude is derived and its results are depicted in a tabular form. The comparison of the proposed methodology is also deliberated by homotopy perturbation method. Moreover, the geometrical illustration of the trajectories of the dynamic system is also added in the phase plane for different values of amplitude and angular frequency.
url https://doi.org/10.1177/1461348418819408
work_keys_str_mv AT najeebalamkhan intelligentcomputingforduffingharmonicoscillatorequationviathebioevolutionaryoptimizationalgorithm
AT toobahameed intelligentcomputingforduffingharmonicoscillatorequationviathebioevolutionaryoptimizationalgorithm
AT oyoonarazzaq intelligentcomputingforduffingharmonicoscillatorequationviathebioevolutionaryoptimizationalgorithm
AT muhammadayaz intelligentcomputingforduffingharmonicoscillatorequationviathebioevolutionaryoptimizationalgorithm
_version_ 1724630870656024576