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首页> 外文期刊>SIAM Journal on Numerical Analysis >FAST FINITE DIFFERENCE APPROXIMATION FOR IDENTIFYING PARAMETERS IN A TWO-DIMENSIONAL SPACE-FRACTIONAL NONLOCAL MODEL WITH VARIABLE DIFFUSIVITY COEFFICIENTS
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FAST FINITE DIFFERENCE APPROXIMATION FOR IDENTIFYING PARAMETERS IN A TWO-DIMENSIONAL SPACE-FRACTIONAL NONLOCAL MODEL WITH VARIABLE DIFFUSIVITY COEFFICIENTS

机译:具有可变扩散系数的二维空间分数非局部模型中参数的快速有限差分逼近

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摘要

In this paper, we consider an inverse problem for identifying the fractional derivative indices in a two-dimensional space-fractional nonlocal model based on a generalization of the two-sided Riemann-Liouville formulation with variable diffusivity coefficients. First, we derive an implicit difference method (IDM) for the direct problem and the stability and convergence of the IDM are discussed. Second, for the implementation of the IDM, we develop a fast bi-conjugate gradient stabilized method (FBi-CGSTAB) that is superior in computational performance to Gaussian elimination and attains the same accuracy. Third, we utilize the Levenberg-Marquardt (L-M) regularization technique combined with the Armijo rule (the popular inexact line search condition) to solve the modified nonlinear least squares model associated with the parameter identification. Finally, we carry out numerical tests to verify the accuracy and efficiency of the IDM. Numerical investigations are performed with both accurate data and noisy data to check the effectiveness of the L-M regularization method. The convergence behavior of the L-M for the inverse problem involving the space-fractional diffusion model is shown graphically.
机译:在本文中,我们考虑了基于具有可变扩散系数的双面Riemann-Liouville公式的推广,在二维空间分数非局部模型中识别分数导数的逆问题。首先,我们针对直接问题推导了一种隐式差分方法(IDM),并讨论了IDM的稳定性和收敛性。第二,为实施IDM,我们开发了一种快速双共轭梯度稳定方法(FBi-CGSTAB),该方法在计算性能上优于高斯消去法,并且具有相同的精度。第三,我们利用Levenberg-Marquardt(L-M)正则化技术结合Armijo规则(流行的不精确线搜索条件)来解决与参数识别相关的改进的非线性最小二乘模型。最后,我们进行了数值测试以验证IDM的准确性和效率。使用精确数据和噪声数据进行数值研究,以检查L-M正则化方法的有效性。用图形显示了L-M对于涉及空间分数扩散模型的反问题的收敛行为。

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