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Solving Time Fractional Burgers' and Fisher's Equations Using Cubic B-Spline Approximation Method

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2020

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Springer

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Abstract

This article presents a numerical algorithm for solving time fractional Burgers' and Fisher's equations using cubic B-spline finite element method. The L1 formula with Caputo derivative is used to discretized the time fractional derivative, whereas the Crank-Nicolson scheme based on cubic B-spline functions is used to interpolate the solution curve along the spatial grid. The numerical scheme has been implemented on three test problems. The obtained results indicate that the proposed method is a good option for solving nonlinear fractional Burgers' and Fisher's equations. The error norms L2 and L infinity have been calculated to validate the efficiency and accuracy of the presented algorithm.

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Iqbal, Muhammad Kashif/0000-0003-4442-7498

Keywords

Cubic B-Spline Collocation Method, Time Fractional Differential Equation, Caputo'S Fractional Derivative, Stability And Convergence, Finite Difference Formulation

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Citation

Majeed, Abdul...et al. (2020) "Solving time fractional Burgers' and Fisher's equations using cubic B-spline approximation method", Advances in Difference Equations, Vol. 2020, No. 1.

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Q1

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42

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2020

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1

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57

checked on Apr 22, 2026

Web of Science™ Citations

54

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1.045

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