Inverse Uncertainty Quantification using the Modular Bayesian Approach based on Gaussian Process, Part 2: Application to TRACE
Xu Wu, Tomasz Kozlowski, Hadi Meidani, Koroush Shirvan

TL;DR
This paper develops an efficient Bayesian inverse UQ method using Gaussian Processes for TRACE model parameters, reducing computational costs and improving test selection for nuclear safety analysis.
Contribution
It introduces a modular Bayesian approach with GP emulators for inverse UQ of TRACE parameters, including a sequential test source allocation strategy.
Findings
GP emulator reduces computational cost by orders of magnitude.
Model discrepancy treatment avoids over-fitting.
Sequential test selection improves parameter inference efficiency.
Abstract
Inverse Uncertainty Quantification (UQ) is a process to quantify the uncertainties in random input parameters while achieving consistency between code simulations and physical observations. In this paper, we performed inverse UQ using an improved modular Bayesian approach based on Gaussian Process (GP) for TRACE physical model parameters using the BWR Full-size Fine-Mesh Bundle Tests (BFBT) benchmark steady-state void fraction data. The model discrepancy is described with a GP emulator. Numerical tests have demonstrated that such treatment of model discrepancy can avoid over-fitting. Furthermore, we constructed a fast-running and accurate GP emulator to replace TRACE full model during Markov Chain Monte Carlo (MCMC) sampling. The computational cost was demonstrated to be reduced by several orders of magnitude. A sequential approach was also developed for efficient test source…
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