Design of evolutionary optimized finite difference based numerical computing for dust density model of nonlinear Van-der Pol Mathieu’s oscillatory systems

In this study, a new evolutionary optimized finite difference based computing paradigm is presented for dynamical analysis of dust density model for the ensemble of electrical charges and dust particles represented with nonlinear oscillatory system based on hybridization of Van-der Pol and Mathieu e...

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Vydané v:Mathematics and computers in simulation Ročník 181; s. 444 - 470
Hlavní autori: Jadoon, Ihtesham, Raja, Muhammad Asif Zahoor, Junaid, Muhammad, Ahmed, Ashfaq, Rehman, Ata ur, Shoaib, Muhammad
Médium: Journal Article
Jazyk:English
Vydavateľské údaje: Elsevier B.V 01.03.2021
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ISSN:0378-4754, 1872-7166
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Shrnutí:In this study, a new evolutionary optimized finite difference based computing paradigm is presented for dynamical analysis of dust density model for the ensemble of electrical charges and dust particles represented with nonlinear oscillatory system based on hybridization of Van-der Pol and Mathieu equation (VDP-ME). Strength of accurate and effective discretization ability of finite difference method (FDM) is exploited to transform VDP-ME to equivalent nonlinear system of algebraic equations. The residual error based fitness function of the transformed model is constructed by the competency of approximation theory in mean square sense. The optimization of the residual error of the system through hybrid meta-heuristic computing paradigm GA-SQP; genetic algorithm (GA) for viable global search aided with rapid fine tuning of sequential quadratic programming (SQP). The proposed GA-SQP-FDM is applied on variants of dust density model of VDP-ME by varying the rate of charged dust grain production, as well as, loss and comparison of results with state of art numerical procedure established the worth of the scheme in terms of accuracy and convergence measures endorsed through statistical observations on large dataset.
ISSN:0378-4754
1872-7166
DOI:10.1016/j.matcom.2020.10.004