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Efficient approximation of Sparse Jacobians for time-implicit reduced order models

机译:有效近似稀疏雅可比的时间隐式减少订单模型

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摘要

This paper introduces a sparse matrix discrete interpolation method to effectively compute matrix approximations in the reduced order modeling framework. The sparse algorithm developed herein relies on the discrete empirical interpolation method and uses only samples of the nonzero entries of the matrix series. The proposed approach can approximate very large matrices, unlike the current matrix discrete empirical interpolation method, which is limited by its large computational memory requirements. The empirical interpolation indices obtained by the sparse algorithm slightly differ from the ones computed by the matrix discrete empirical interpolation method as a consequence of the singular vectors round-off errors introduced by the economy or full singular value decomposition (SVD) algorithms when applied to the full matrix snapshots. When appropriately padded with zeros, the economy SVD factorization of the nonzero elements of the snapshots matrix is a valid economy SVD for the full snapshots matrix. Numerical experiments are performed with the 1D Burgers and 2D shallow water equations test problems where the quadratic reduced nonlinearities are computed via tensorial calculus. The sparse matrix approximation strategy is compared against five existing methods for computing reduced Jacobians: (i) matrix discrete empirical interpolation method, (ii) discrete empirical interpolation method, (iii) tensorial calculus, (iv) full Jacobian projection onto the reduced basis subspace, and (v) directional derivatives of the model along the reduced basis functions. The sparse matrix method outperforms all other algorithms. The use of traditional matrix discrete empirical interpolation method is not possible for very large dimensions because of its excessive memory requirements. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:本文介绍了一种稀疏的矩阵离散插值方法,以有效地计算阶数建模框架中的矩阵近似。这里开发的稀疏算法依赖于离散的经验插值方法,仅使用矩阵系列的非零条目的样本。与当前矩阵离散经验模拟方法不同,所提出的方法可以近似非常大的矩阵,其受到其大计算存储器要求的限制。通过稀疏算法获得的经验插值指数与由矩阵离散经验插值方法计算的那些略有不同,因为当应用于时完整矩阵快照。当适当地用零填充时,快照矩阵的非零元素的经济SVD分解是完整快照矩阵的有效经济SVD。用1D汉总和2D浅水方程进行数值实验测试问题,其中通过张解模次计算二次减少的非线性。将稀疏矩阵近似策略与五种现有的计算方法进行比较:(i)矩阵离散经验性插值方法,(ii)离散经验插值方法,(iii)张解模微积分,(iv)全雅各比投影到降低的基板上(v)模型的定向衍生物沿着减少的基本函数。稀疏矩阵方法优于所有其他算法。由于其内存需求过高,因此不可能使用传统的矩阵离散经验性插值方法。版权所有(c)2016 John Wiley&Sons,Ltd。

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