Analyzing nuclear reactor simulation data and uncertainty with the group method of data handling

Group method of data handling (GMDH) is considered one of the earliest deep learning methods. Deep learning gained additional interest in today's applications due to its capability to handle complex and high dimensional problems. In this study, multi-layer GMDH networks are used to perform unce...

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Main Authors: Majdi I. Radaideh, Tomasz Kozlowski
Format: Article
Language:English
Published: Elsevier 2020-02-01
Series:Nuclear Engineering and Technology
Online Access:http://www.sciencedirect.com/science/article/pii/S1738573319300774
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spelling doaj-99f2d0c594764909b63fad3ed85c8e732020-11-25T00:28:40ZengElsevierNuclear Engineering and Technology1738-57332020-02-01522287295Analyzing nuclear reactor simulation data and uncertainty with the group method of data handlingMajdi I. Radaideh0Tomasz Kozlowski1Corresponding author.; Department of Nuclear, Plasma, and Radiological Engineering, University of Illinois at Urbana Champaign, Urbana, IL, 61801, USADepartment of Nuclear, Plasma, and Radiological Engineering, University of Illinois at Urbana Champaign, Urbana, IL, 61801, USAGroup method of data handling (GMDH) is considered one of the earliest deep learning methods. Deep learning gained additional interest in today's applications due to its capability to handle complex and high dimensional problems. In this study, multi-layer GMDH networks are used to perform uncertainty quantification (UQ) and sensitivity analysis (SA) of nuclear reactor simulations. GMDH is utilized as a surrogate/metamodel to replace high fidelity computer models with cheap-to-evaluate surrogate models, which facilitate UQ and SA tasks (e.g. variance decomposition, uncertainty propagation, etc.). GMDH performance is validated through two UQ applications in reactor simulations: (1) low dimensional input space (two-phase flow in a reactor channel), and (2) high dimensional space (8-group homogenized cross-sections). In both applications, GMDH networks show very good performance with small mean absolute and squared errors as well as high accuracy in capturing the target variance. GMDH is utilized afterward to perform UQ tasks such as variance decomposition through Sobol indices, and GMDH-based uncertainty propagation with large number of samples. GMDH performance is also compared to other surrogates including Gaussian processes and polynomial chaos expansions. The comparison shows that GMDH has competitive performance with the other methods for the low dimensional problem, and reliable performance for the high dimensional problem. Keywords: Uncertainty quantification, GMDH, Surrogate modeling, Deep learning, Reactor simulationshttp://www.sciencedirect.com/science/article/pii/S1738573319300774
collection DOAJ
language English
format Article
sources DOAJ
author Majdi I. Radaideh
Tomasz Kozlowski
spellingShingle Majdi I. Radaideh
Tomasz Kozlowski
Analyzing nuclear reactor simulation data and uncertainty with the group method of data handling
Nuclear Engineering and Technology
author_facet Majdi I. Radaideh
Tomasz Kozlowski
author_sort Majdi I. Radaideh
title Analyzing nuclear reactor simulation data and uncertainty with the group method of data handling
title_short Analyzing nuclear reactor simulation data and uncertainty with the group method of data handling
title_full Analyzing nuclear reactor simulation data and uncertainty with the group method of data handling
title_fullStr Analyzing nuclear reactor simulation data and uncertainty with the group method of data handling
title_full_unstemmed Analyzing nuclear reactor simulation data and uncertainty with the group method of data handling
title_sort analyzing nuclear reactor simulation data and uncertainty with the group method of data handling
publisher Elsevier
series Nuclear Engineering and Technology
issn 1738-5733
publishDate 2020-02-01
description Group method of data handling (GMDH) is considered one of the earliest deep learning methods. Deep learning gained additional interest in today's applications due to its capability to handle complex and high dimensional problems. In this study, multi-layer GMDH networks are used to perform uncertainty quantification (UQ) and sensitivity analysis (SA) of nuclear reactor simulations. GMDH is utilized as a surrogate/metamodel to replace high fidelity computer models with cheap-to-evaluate surrogate models, which facilitate UQ and SA tasks (e.g. variance decomposition, uncertainty propagation, etc.). GMDH performance is validated through two UQ applications in reactor simulations: (1) low dimensional input space (two-phase flow in a reactor channel), and (2) high dimensional space (8-group homogenized cross-sections). In both applications, GMDH networks show very good performance with small mean absolute and squared errors as well as high accuracy in capturing the target variance. GMDH is utilized afterward to perform UQ tasks such as variance decomposition through Sobol indices, and GMDH-based uncertainty propagation with large number of samples. GMDH performance is also compared to other surrogates including Gaussian processes and polynomial chaos expansions. The comparison shows that GMDH has competitive performance with the other methods for the low dimensional problem, and reliable performance for the high dimensional problem. Keywords: Uncertainty quantification, GMDH, Surrogate modeling, Deep learning, Reactor simulations
url http://www.sciencedirect.com/science/article/pii/S1738573319300774
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