TY - JOUR
T1 - Bayesian uncertainty quantification of tristructural isotropic particle fuel silver release
T2 - Decomposing model inadequacy plus experimental noise and parametric uncertainties
AU - Dhulipala, Somayajulu L.N.
AU - Toptan, Aysenur
AU - Che, Yifeng
AU - Schwen, Daniel
AU - Sweet, Ryan T.
AU - Hales, Jason D.
AU - Novascone, Stephen R.
N1 - Funding Information:
The research is supported through the Battelle Energy Alliance LLC under contract no. DE-AC07-05ID14517 with the U.S. Department of Energy DE-AC07-05ID14517 , with funding from the Nuclear Energy Advanced Modeling and Simulation program. This research made use of the resources of the High-Performance Computing Center at INL, which is supported by the Office of Nuclear Energy of the U.S. DOE and the Nuclear Science User Facilities under Contract No. DE-AC07-05ID14517 .
Publisher Copyright:
© 2023
PY - 2024/1/1
Y1 - 2024/1/1
N2 - Tristructural isotropic (TRISO) particle fuel is one of the most promising fuel concepts enabling high temperature and high burnup reactor operation. One dominant source of radioactivity released from the TRISO particles is silver (Ag), which is subject to a high release fraction and long decay life compared to other fission products. Previous modeling efforts using the fuel performance code BISON indicated nonnegligible uncertainties in modeling the diffusion process of fission products in TRISO compared to the Advanced Gas Reactor experiments. The overall uncertainties observed when modeling the fission product diffusion can result from uncertainties in model parameters, noisy experimental measurements, and deficiencies in the developed models. The three types of underlying uncertainties have not yet been properly quantified in open literature. This paper presents the Bayesian uncertainty quantification (UQ) using massively parallelizable Markov chain Monte Carlo samplers. The uncertainties due to model parameters, model inadequacy, and experimental measurement noise are quantified, with the σ term used to represent the sum of the model inadequacy and measurement noise uncertainties. It is worth noting that this is the first time the σ term is inferred for nuclear fuel experiments, as compared to using prescribed values for uncertainty quantification in previous work. The parallelizable Markov chain Monte Carlo samplers efficiently infer the model parameters and the σ term, giving insight into physical parameters like diffusion coefficients and the combined model discrepancy and measurement noise. A subsequent forward uncertainty quantification (UQ) is also performed based on the calibration results to generate more accurate predictions of the Ag release. The model inadequacy plus experimental noise is the most dominant source of uncertainty compared to the parametric uncertainty. All the UQ analyses presented in this work are based on the second series of the irradiation experiments in the Advanced Gas Reactor program.
AB - Tristructural isotropic (TRISO) particle fuel is one of the most promising fuel concepts enabling high temperature and high burnup reactor operation. One dominant source of radioactivity released from the TRISO particles is silver (Ag), which is subject to a high release fraction and long decay life compared to other fission products. Previous modeling efforts using the fuel performance code BISON indicated nonnegligible uncertainties in modeling the diffusion process of fission products in TRISO compared to the Advanced Gas Reactor experiments. The overall uncertainties observed when modeling the fission product diffusion can result from uncertainties in model parameters, noisy experimental measurements, and deficiencies in the developed models. The three types of underlying uncertainties have not yet been properly quantified in open literature. This paper presents the Bayesian uncertainty quantification (UQ) using massively parallelizable Markov chain Monte Carlo samplers. The uncertainties due to model parameters, model inadequacy, and experimental measurement noise are quantified, with the σ term used to represent the sum of the model inadequacy and measurement noise uncertainties. It is worth noting that this is the first time the σ term is inferred for nuclear fuel experiments, as compared to using prescribed values for uncertainty quantification in previous work. The parallelizable Markov chain Monte Carlo samplers efficiently infer the model parameters and the σ term, giving insight into physical parameters like diffusion coefficients and the combined model discrepancy and measurement noise. A subsequent forward uncertainty quantification (UQ) is also performed based on the calibration results to generate more accurate predictions of the Ag release. The model inadequacy plus experimental noise is the most dominant source of uncertainty compared to the parametric uncertainty. All the UQ analyses presented in this work are based on the second series of the irradiation experiments in the Advanced Gas Reactor program.
KW - Forward uncertainty quantification
KW - Inverse uncertainty quantification
KW - Model inadequacy
KW - Parallelized Bayesian inference
KW - Parametric uncertainty
KW - TRISO fuel
UR - http://www.scopus.com/inward/record.url?scp=85174727885&partnerID=8YFLogxK
U2 - 10.1016/j.jnucmat.2023.154790
DO - 10.1016/j.jnucmat.2023.154790
M3 - Article
AN - SCOPUS:85174727885
SN - 0022-3115
VL - 588
JO - Journal of Nuclear Materials
JF - Journal of Nuclear Materials
M1 - 154790
ER -