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A GENERAL FRAMEWORK FOR ENHANCING SPARSITY OF GENERALIZED POLYNOMIAL CHAOS EXPANSIONS

机译:提高广义多项式混沌扩张稀疏性的一般框架

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摘要

Compressive sensing has become a powerful addition to uncertainty quantification when only limited data are available. In this paper, we provide a general framework to enhance the sparsity of the representation of uncertainty in the form of generalized polynomial chaos expansion. We use an alternating direction method to identify new sets of random variables through iterative rotations so the new representation of the uncertainty is sparser. Consequently, we increase both the efficiency and accuracy of the compressive-sensing-based uncertainty quantification method. We demonstrate that the previously developed rotation-based methods to enhance the sparsity of Hermite polynomial expansion is a special case of this general framework. Moreover, we use Legendre and Chebyshev polynomial expansions to demonstrate the effectiveness of this method with applications in solving stochastic partial differential equations and high-dimensional (O(100)) problems.
机译:当只有有限的数据时,压缩感已成为不确定量化的强力补充。在本文中,我们提供了一般框架,以提高普遍化多项式混沌扩张形式的不确定性表示的稀疏性。我们使用交替方向方法通过迭代旋转来识别新的随机变量,因此不确定性的新表示是稀疏。因此,我们提高了基于压缩感应的不确定性定量方法的效率和准确性。我们证明了以前开发的基于旋转的方法,以增强Hermite多项式扩展的稀疏性是该一般框架的特殊情况。此外,我们使用Legendre和Chebyshev多项式扩展来展示该方法在解决随机偏微分方程和高维(O(100))问题中的应用。

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