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首页> 外文期刊>SIAM Journal on Numerical Analysis >NEW POD ERROR EXPRESSIONS, ERROR BOUNDS, AND ASYMPTOTIC RESULTS FOR REDUCED ORDER MODELS OF PARABOLIC PDEs
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NEW POD ERROR EXPRESSIONS, ERROR BOUNDS, AND ASYMPTOTIC RESULTS FOR REDUCED ORDER MODELS OF PARABOLIC PDEs

机译:抛物线式PDE降阶模型的新POD错误表达,错误界和渐近结果

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摘要

The derivations of existing error bounds for reduced order models of time varying partial differential equations (PDEs) constructed using proper orthogonal decomposition (POD) have relied on bounding the error between the POD data and various POD projections of that data. Furthermore, the asymptotic behavior of the model reduction error bounds depends on the asymptotic behavior of the POD data approximation error bounds. We consider time varying data taking values in two different Hilbert spaces H and V, with V ? H, and prove exact expressions for the.POD data approximation errors considering four different POD projections and the two different Hilbert space error norms. Furthermore, the exact error expressions can be computed using only the POD eigenvalues.and modes, and we prove the errors converge to zero as the number, of POD modes increases. We consider the POD error estimation approaches of Kunisch and Volkwein [SIAM J. Numer. Anal., 40 (2002), pp. 492-515] and Chapelle, Gariah, and Sainte-Marie [ESAIM Math. Model. Numer. Anal., 46 (2012), pp. 731-7571 and apply our results to derive new POD model reduction error bounds and convergence.results for the two-dimensional Navier-Stokes equations. We prove the new error bounds tend to zero as the number of POD modes increases for POD space X = H in both approaches; the asymptotic behavior of existing error bounds was unknown for this case. Also, for X = H we prove one new' error bound tends to zero without requiring time derivative data in the POD data set.
机译:使用适当的正交分解(POD)构造的时变偏微分方程(PDE)的降阶模型的现有误差范围的推导,依赖于对POD数据与该数据的各种POD投影之间的误差进行界定。此外,模型减少误差范围的渐近行为取决于POD数据近似误差范围的渐近行为。我们考虑在两个不同的希尔伯特空间H和V中取值的时变数据,其中V? H,并证明POD数据近似误差的精确表达式,其中考虑了四个不同的POD投影和两个不同的希尔伯特空间误差范数。此外,仅使用POD特征值和模式就可以计算出准确的误差表达式,并且我们证明随着POD模式数量的增加,误差收敛到零。我们考虑了Kunisch和Volkwein的POD误差估计方法[SIAM J. Numer。 [J. Anal。,40(2002),492-515页]和Chapelle,Gariah和Sainte-Marie [ESAIM Math。模型。 Numer。 Anal。,46(2012),pp.731-7571,并将我们的结果应用于导出新的POD模型归约误差界限和收敛。二维Navier-Stokes方程的结果。我们证明在两种方法中,随着POD空间X = H的POD模式数量增加,新的误差范围趋于零。在这种情况下,现有误差范围的渐近行为是未知的。同样,对于X = H,我们证明一个新的误差范围趋于零,而无需POD数据集中的时间导数数据。

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