Uncertainty Quantification of Nuclear Engineering Models: Orthogonal Basis for Polynomial Regression with Derivative Information

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We discuss the choice of polynomial basis for approximation of uncertainty propagation through complex simulation models with capability to output derivative information. Our work is a part of larger research effort in uncertainty quantification using sampling methods augmented with derivative information. The approach is distinct from standard polynomial regression, and requires a different setup for best results. In this study, we address orthogonality of the multivariate basis that is used in regression with derivative information. We use a simplified model of heat transport in the nuclear reactor core with uncertainties in material properties as a case study. In our numerical experiments, we compare a new basis, constructed to satisfy the correct orthogonality conditions with such standard choices as Hermite or Lagrange polynomials. The orthogonal basis results in a better numerical conditioning of the regression procedure, a modest improvement in approximation error when basis polynomials are chosen a priori, and a significant improvement when basis polynomials are chosen adaptively, using a stepwise fitting procedure.

Our work can be viewed as a study in the basis choice for sampling-based polynomial regression in the cases when the sampled training data is presented in a non-standard format (in a distributed form, under some parametrization or mapping, augmented with additional information). In that context, our results have long-term significance for the tasks of uncertainty quantification of a wide class of simulation models.

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Computational Mathematics & Statistics

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