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POD/DEIM Reduced-Order Modeling of Time-Fractional Partial Differential Equations with Applications in Parameter Identification

机译:时间分数阶偏微分方程的POD / DEIM降阶建模及其在参数识别中的应用

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摘要

In this paper, a reduced-order model (ROM) based on the proper orthogonal decomposition and the discrete empirical interpolation method is proposed for efficiently simulating time-fractional partial differential equations (TFPDEs). Both linear and nonlinear equations are considered. We demonstrate the effectiveness of the ROM by several numerical examples, in which the ROM achieves the same accuracy of the full-order model (FOM) over a long-term simulation while greatly reducing the computational cost. The proposed ROM is then regarded as a surrogate of FOM and is applied to an inverse problem for identifying the order of the time-fractional derivative of the TFPDE model. Based on the Levenberg-Marquardt regularization iterative method with the Armijo rule, we develop a ROM-based algorithm for solving the inverse problem. For cases in which the observation data is either uncontaminated or contaminated by random noise, the proposed approach is able to achieve accurate parameter estimation efficiently.
机译:本文提出了一种基于适当正交分解和离散经验插值方法的降阶模型(ROM),以有效地模拟时间分数阶偏微分方程(TFPDE)。线性和非线性方程均被考虑。我们通过几个数值示例证明了ROM的有效性,其中ROM在长期仿真中达到了与全阶模型(FOM)相同的精度,同时大大降低了计算成本。所提出的ROM被视为FOM的替代品,并被应用于反问题以识别TFPDE模型的时间分数导数的阶数。基于带Armijo规则的Levenberg-Marquardt正则化迭代方法,我们开发了一种基于ROM的算法来解决反问题。对于观测数据未被污染或被随机噪声污染的情况,所提出的方法能够有效地实现准确的参数估计。

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