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Lee, Deokjung
Computational Reactor physics & Experiment Lab.
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Machine learning of LWR spent nuclear fuel assembly decay heat measurements

Author(s)
Ebiwonjumi, BamideleCherezov, AlexeyDzianisau, SiarheiLee, Deokjung
Issued Date
2021-11
DOI
10.1016/j.net.2021.05.037
URI
https://scholarworks.unist.ac.kr/handle/201301/53848
Fulltext
https://www.sciencedirect.com/science/article/pii/S1738573321003120?via%3Dihub
Citation
NUCLEAR ENGINEERING AND TECHNOLOGY, v.53, no.11, pp.3563 - 3579
Abstract
Measured decay heat data of light water reactor (LWR) spent nuclear fuel (SNF) assemblies are adopted to train machine learning (ML) models. The measured data is available for fuel assemblies irradiated in commercial reactors operated in the United States and Sweden. The data comes from calorimetric measurements of discharged pressurized water reactor (PWR) and boiling water reactor (BWR) fuel assemblies. 91 and 171 measurements of PWR and BWR assembly decay heat data are used, respectively. Due to the small size of the measurement dataset, we propose: (i) to use the method of multiple runs (ii) to generate and use synthetic data, as large dataset which has similar statistical characteristics as the original dataset. Three ML models are developed based on Gaussian process (GP), support vector ma-chines (SVM) and neural networks (NN), with four inputs including the fuel assembly averaged enrichment, assembly averaged burnup, initial heavy metal mass, and cooling time after discharge. The outcomes of this work are (i) development of ML models which predict LWR fuel assembly decay heat from the four inputs (ii) generation and application of synthetic data which improves the performance of the ML models (iii) uncertainty analysis of the ML models and their predictions. (c) 2021 Korean Nuclear Society, Published by Elsevier Korea LLC. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
Publisher
KOREAN NUCLEAR SOC
ISSN
1738-5733
Keyword (Author)
Decay heatSpent nuclear fuelMachine learningLight water reactorSynthetic dataUncertainty analysis
Keyword
POWER PEAKING FACTORNEURAL-NETWORKSNOISEPWR

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