2022
DOI: 10.48550/arxiv.2207.10656
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Adaptive sparse interpolation for accelerating nonlinear stochastic reduced-order modeling with time-dependent bases

Abstract: Stochastic reduced-order modeling based on time-dependent bases (TDBs) has proven successful for extracting and exploiting low-dimensional manifold from stochastic partial differential equations (SPDEs). The nominal computational cost of solving a rank-r reduced-order model (ROM) based on time-dependent basis, a.k.a. TDB-ROM, is roughly equal to that of solving the full-order model for r random samples. As of now, this nominal performance can only be achieved for linear or quadratic SPDEs -at the expense of a … Show more

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