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Reduced spline method based on a proper orthogonal decomposition technique for fractional sub-diffusion equations

机译:分数次扩散方程基于适当正交分解技术的简化样条法

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In this paper, a reduced spline (RS) method based on a proper orthogonal decomposition (POD) technique for numerical solution of time fractional sub-diffusion equations is investigated. Combining POD with polynomial and non-polynomial spline methods yield a new model with lower dimensions and sufficiently high accuracy, so that the amount of computations and the calculation time decrease in comparison with usual spline methods. Although, the classical L1 scheme on uniform meshes is one of the most successful methods for approximation of the Caputo fractional derivative in time, due to the fact that the solution of time fractional sub-diffusion equations typically has a singularity at the origin, a weak convergence will conclude for such scheme. To overcome this difficulty, we use the L1 scheme on graded meshes in time, such that considered time steps are very small near the origin which compensate the singularity of the solution. Also, the error estimates between the POD approximate solution of the RS scheme and the exact solution of fractional sub-diffusion equation are established for two types of uniform and graded meshes in time. Numerical examples are given to illustrate the feasibility and efficiency of the proposed method. (C) 2018 IMACS. Published by Elsevier B.V. All rights reserved.
机译:本文针对时间分数次扩散方程的数值解,研究了一种基于适当正交分解(POD)技术的简化样条(RS)方法。结合POD与多项式和非多项式样条方法,可以得到一个具有较小尺寸和足够高精度的新模型,因此与常规样条方法相比,计算量和计算时间减少了。尽管在均匀网格上的经典L1方案是在时间上逼近Caputo分数阶导数的最成功方法之一,原因是时间分数次扩散方程的解通常在原点处具有奇异性,这种方案将收敛。为了克服这个困难,我们在时间上对渐变网格使用L1方案,以使考虑的时间步长在原点附近很小,从而补偿了解决方案的奇异性。同样,针对两种类型的均匀和渐变网格,建立了RS方案的POD近似解与分数次扩散方程的精确解之间的误差估计。数值算例说明了该方法的可行性和有效性。 (C)2018年IMACS。由Elsevier B.V.发布。保留所有权利。

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