Prediction and Uncertainty Quantification of SAFARI-1 Axial Neutron Flux Profiles with Neural Networks
Lesego E. Moloko, Pavel M. Bokov, Xu Wu, Kostadin N. Ivanov

TL;DR
This paper employs deep neural networks with uncertainty quantification methods to accurately predict axial neutron flux profiles in the SAFARI-1 reactor, including in extrapolated domains, supporting reactor measurements and validation.
Contribution
It introduces a methodology combining DNNs with Monte Carlo Dropout and Bayesian Neural Networks for uncertainty-aware neutron flux prediction in a research reactor.
Findings
DNN predictions agree well with measured data.
Uncertainty bands from MCD and BNN VI encompass noisy measurements.
Models generalize effectively to unseen reactor cycles.
Abstract
Artificial Neural Networks (ANNs) have been successfully used in various nuclear engineering applications, such as predicting reactor physics parameters within reasonable time and with a high level of accuracy. Despite this success, they cannot provide information about the model prediction uncertainties, making it difficult to assess ANN prediction credibility, especially in extrapolated domains. In this study, Deep Neural Networks (DNNs) are used to predict the assembly axial neutron flux profiles in the SAFARI-1 research reactor, with quantified uncertainties in the ANN predictions and extrapolation to cycles not used in the training process. The training dataset consists of copper-wire activation measurements, the axial measurement locations and the measured control bank positions obtained from the reactor's historical cycles. Uncertainty Quantification of the regular DNN models'…
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Taxonomy
TopicsNuclear reactor physics and engineering · Nuclear Physics and Applications · Fault Detection and Control Systems
MethodsDropout · Monte Carlo Dropout · Variational Inference
