Approximating Real-Life Bvps Via Chebyshev Polynomials' First Derivative Pseudo-Galerkin Method
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Date
2021
Journal Title
Journal ISSN
Volume Title
Publisher
Mdpi
Open Access Color
GOLD
Green Open Access
No
OpenAIRE Downloads
OpenAIRE Views
Publicly Funded
No
Abstract
An efficient technique, called pseudo-Galerkin, is performed to approximate some types of linear/nonlinear BVPs. The core of the performance process is the two well-known weighted residual methods, collocation and Galerkin. A novel basis of functions, consisting of first derivatives of Chebyshev polynomials, has been used. Consequently, new operational matrices for derivatives of any integer order have been introduced. An error analysis is performed to ensure the convergence of the presented method. In addition, the accuracy and the efficiency are verified by solving BVPs examples, including real-life problems.
Description
Abdelhakem, Mohamed/0000-0001-7085-1685; Alaa Eldeen, Toqa/0000-0003-3063-3397
Keywords
Chebyshev Polynomials' First Derivative, Pseudo-Galerkin, Weighted Residual Methods, Error Analysis, Lane-Emden, Population Model, Mhd, QA299.6-433, weighted residual methods, Lane–Emden, pseudo-Galerkin, Chebyshev polynomials’ first derivative, Chebyshev polynomials’ first derivative; pseudo-Galerkin; weighted residual methods; error analysis; Lane–Emden; population model; MHD, QA1-939, Thermodynamics, population model, QC310.15-319, error analysis, Mathematics, Analysis
Fields of Science
01 natural sciences, 0101 mathematics
Citation
Abdelhakem, Mohamed...et al. (2021). "Approximating Real-Life BVPs via Chebyshev Polynomials' First Derivative Pseudo-Galerkin Method", Fractal and Fractional, Vol. 5, No. 4.
WoS Q
Q1
Scopus Q
Q1

OpenCitations Citation Count
26
Source
Fractal and Fractional
Volume
5
Issue
4
Start Page
165
End Page
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CrossRef : 26
Scopus : 30
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Mendeley Readers : 2
SCOPUS™ Citations
34
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Web of Science™ Citations
28
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Page Views
2
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