Development of de-noised image reconstruction technique using Convolutional AutoEncoder for fast monitoring of fuel assemblies

The International Atomic Energy Agency has developed a tomographic imaging system for accomplishing the total fuel rod-by-rod verification time of fuel assemblies within the order of 1–2 h, however, there are still limitations for some fuel types. The aim of this study is to develop a deep learning-...

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Main Authors: Se Hwan Choi, Hyun Joon Choi, Chul Hee Min, Young Hyun Chung, Jae Joon Ahn
Format: Article
Language:English
Published: Elsevier 2021-03-01
Series:Nuclear Engineering and Technology
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1738573320308561
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spelling doaj-06f6c9c601ec444dba827bca83a5b3d02021-03-03T04:20:55ZengElsevierNuclear Engineering and Technology1738-57332021-03-01533888893Development of de-noised image reconstruction technique using Convolutional AutoEncoder for fast monitoring of fuel assembliesSe Hwan Choi0Hyun Joon Choi1Chul Hee Min2Young Hyun Chung3Jae Joon Ahn4Department of Information and Statistics, Yonsei University, Republic of KoreaDepartment of Radiation Convergence Engineering, Yonsei University, Republic of KoreaDepartment of Radiation Convergence Engineering, Yonsei University, Republic of KoreaDepartment of Radiation Convergence Engineering, Yonsei University, Republic of KoreaDepartment of Information and Statistics, Yonsei University, Republic of Korea; Corresponding author.The International Atomic Energy Agency has developed a tomographic imaging system for accomplishing the total fuel rod-by-rod verification time of fuel assemblies within the order of 1–2 h, however, there are still limitations for some fuel types. The aim of this study is to develop a deep learning-based de-noising process resulting in increasing the tomographic image acquisition speed of fuel assembly compared to the conventional techniques. Convolutional AutoEncoder (CAE) was employed for de-noising the low-quality images reconstructed by filtered back-projection (FBP) algorithm. The image data set was constructed by the Monte Carlo method with the FBP and ground truth (GT) images for 511 patterns of missing fuel rods. The de-noising performance of the CAE model was evaluated by comparing the pixel-by-pixel subtracted images between the GT and FBP images and the GT and CAE images; the average differences of the pixel values for the sample image 1, 2, and 3 were 7.7%, 28.0% and 44.7% for the FBP images, and 0.5%, 1.4% and 1.9% for the predicted image, respectively. Even for the FBP images not discriminable the source patterns, the CAE model could successfully estimate the patterns similarly with the GT image.http://www.sciencedirect.com/science/article/pii/S1738573320308561Tomographic imagingVerification of fuel assembliesDeep learning-based denoising processConvolutional autoencoder
collection DOAJ
language English
format Article
sources DOAJ
author Se Hwan Choi
Hyun Joon Choi
Chul Hee Min
Young Hyun Chung
Jae Joon Ahn
spellingShingle Se Hwan Choi
Hyun Joon Choi
Chul Hee Min
Young Hyun Chung
Jae Joon Ahn
Development of de-noised image reconstruction technique using Convolutional AutoEncoder for fast monitoring of fuel assemblies
Nuclear Engineering and Technology
Tomographic imaging
Verification of fuel assemblies
Deep learning-based denoising process
Convolutional autoencoder
author_facet Se Hwan Choi
Hyun Joon Choi
Chul Hee Min
Young Hyun Chung
Jae Joon Ahn
author_sort Se Hwan Choi
title Development of de-noised image reconstruction technique using Convolutional AutoEncoder for fast monitoring of fuel assemblies
title_short Development of de-noised image reconstruction technique using Convolutional AutoEncoder for fast monitoring of fuel assemblies
title_full Development of de-noised image reconstruction technique using Convolutional AutoEncoder for fast monitoring of fuel assemblies
title_fullStr Development of de-noised image reconstruction technique using Convolutional AutoEncoder for fast monitoring of fuel assemblies
title_full_unstemmed Development of de-noised image reconstruction technique using Convolutional AutoEncoder for fast monitoring of fuel assemblies
title_sort development of de-noised image reconstruction technique using convolutional autoencoder for fast monitoring of fuel assemblies
publisher Elsevier
series Nuclear Engineering and Technology
issn 1738-5733
publishDate 2021-03-01
description The International Atomic Energy Agency has developed a tomographic imaging system for accomplishing the total fuel rod-by-rod verification time of fuel assemblies within the order of 1–2 h, however, there are still limitations for some fuel types. The aim of this study is to develop a deep learning-based de-noising process resulting in increasing the tomographic image acquisition speed of fuel assembly compared to the conventional techniques. Convolutional AutoEncoder (CAE) was employed for de-noising the low-quality images reconstructed by filtered back-projection (FBP) algorithm. The image data set was constructed by the Monte Carlo method with the FBP and ground truth (GT) images for 511 patterns of missing fuel rods. The de-noising performance of the CAE model was evaluated by comparing the pixel-by-pixel subtracted images between the GT and FBP images and the GT and CAE images; the average differences of the pixel values for the sample image 1, 2, and 3 were 7.7%, 28.0% and 44.7% for the FBP images, and 0.5%, 1.4% and 1.9% for the predicted image, respectively. Even for the FBP images not discriminable the source patterns, the CAE model could successfully estimate the patterns similarly with the GT image.
topic Tomographic imaging
Verification of fuel assemblies
Deep learning-based denoising process
Convolutional autoencoder
url http://www.sciencedirect.com/science/article/pii/S1738573320308561
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