The challenge of quantifying uncertainty propagation in real-world systems is rooted in the high-dimensionality
of the stochastic input and the frequent lack of explicit knowledge of its probability distribution. Traditional
approaches show limitations for such problems, especially when the size of the training data is limited. To address
these diculties, we have developed a general framework of constructing surrogate models on spaces of
stochastic input with arbitrary probability measure irrespective of the mutual dependencies between individual
components of the random inputs and the analytical form. The present Data-driven Sparsity-enhancing
Rotation for Arbitrary Randomness (DSRAR) framework includes a data-driven construction of multivariate
polynomial basis for arbitrary mutually dependent probability measure and a sparsity enhancement rotation
procedure. This sparsity-enhancing rotation method was initially proposed in our previous work [1] for
Gaussian density distributions, which may not be feasible for non-Gaussian distributions due to the loss of
orthogonality after the rotation. To remedy such diculties, we developed a new data-driven approach to
construct orthonormal polynomials for polynomials for arbitrary mutually dependent (amdP) randomness,
ensuring the constructed basis maintains the orthogonality/near-orthogonality with respect to the density of
the rotated random vector, where directly applying the regular polynomial chaos including arbitrary polynomial
chaos (aPC) [2] shows limitations due to the assumption of the mutual independence between the
components of the random inputs. The developed DSRAR framework leads to accurate recovery, with only
limited training data, of a sparse representation of the target functions. The eectiveness of our method is
demonstrated in challenging problems such as PDEs and realistic molecular systems within high-dimensional
conformational space (O(10)) where the underlying density is implicitly represented by a large collection of
sample data, as well as systems with explicitly given non-Gaussian probabilistic measures.
Revised: August 17, 2020 |
Published: June 15, 2019
Citation
Lei H., J. Li, P. Gao, P. Stinis, and N.A. Baker. 2019.A data-driven framework for sparsity-enhanced surrogates with arbitrary mutually dependent randomness.Computer Methods in Applied Mechanics and Engineering 350.PNNL-SA-134010.doi:10.1016/j.cma.2019.03.014