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Localizing Perturbations in Pressurized Water Reactors Using One-Dimensional Deep Convolutional Neural Networks

This work outlines an approach for localizing anomalies in nuclear reactor cores during their steady state operation, employing deep, one-dimensional, convolutional neural networks. Anomalies are characterized by the application of perturbation diagnostic techniques, based on the analysis of the so-...

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Autores principales: Pantera, Laurent, Stulík, Petr, Vidal-Ferràndiz, Antoni, Carreño, Amanda, Ginestar, Damián, Ioannou, George, Tasakos, Thanos, Alexandridis, Georgios, Stafylopatis, Andreas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8747522/
https://www.ncbi.nlm.nih.gov/pubmed/35009662
http://dx.doi.org/10.3390/s22010113
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author Pantera, Laurent
Stulík, Petr
Vidal-Ferràndiz, Antoni
Carreño, Amanda
Ginestar, Damián
Ioannou, George
Tasakos, Thanos
Alexandridis, Georgios
Stafylopatis, Andreas
author_facet Pantera, Laurent
Stulík, Petr
Vidal-Ferràndiz, Antoni
Carreño, Amanda
Ginestar, Damián
Ioannou, George
Tasakos, Thanos
Alexandridis, Georgios
Stafylopatis, Andreas
author_sort Pantera, Laurent
collection PubMed
description This work outlines an approach for localizing anomalies in nuclear reactor cores during their steady state operation, employing deep, one-dimensional, convolutional neural networks. Anomalies are characterized by the application of perturbation diagnostic techniques, based on the analysis of the so-called “neutron-noise” signals: that is, fluctuations of the neutron flux around the mean value observed in a steady-state power level. The proposed methodology is comprised of three steps: initially, certain reactor core perturbations scenarios are simulated in software, creating the respective perturbation datasets, which are specific to a given reactor geometry; then, the said datasets are used to train deep learning models that learn to identify and locate the given perturbations within the nuclear reactor core; lastly, the models are tested on actual plant measurements. The overall methodology is validated on hexagonal, pre-Konvoi, pressurized water, and VVER-1000 type nuclear reactors. The simulated data are generated by the FEMFFUSION code, which is extended in order to deal with the hexagonal geometry in the time and frequency domains. The examined perturbations are absorbers of variable strength, and the trained models are tested on actual plant data acquired by the in-core detectors of the Temelín VVER-1000 Power Plant in the Czech Republic. The whole approach is realized in the framework of Euratom’s CORTEX project.
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spelling pubmed-87475222022-01-11 Localizing Perturbations in Pressurized Water Reactors Using One-Dimensional Deep Convolutional Neural Networks Pantera, Laurent Stulík, Petr Vidal-Ferràndiz, Antoni Carreño, Amanda Ginestar, Damián Ioannou, George Tasakos, Thanos Alexandridis, Georgios Stafylopatis, Andreas Sensors (Basel) Article This work outlines an approach for localizing anomalies in nuclear reactor cores during their steady state operation, employing deep, one-dimensional, convolutional neural networks. Anomalies are characterized by the application of perturbation diagnostic techniques, based on the analysis of the so-called “neutron-noise” signals: that is, fluctuations of the neutron flux around the mean value observed in a steady-state power level. The proposed methodology is comprised of three steps: initially, certain reactor core perturbations scenarios are simulated in software, creating the respective perturbation datasets, which are specific to a given reactor geometry; then, the said datasets are used to train deep learning models that learn to identify and locate the given perturbations within the nuclear reactor core; lastly, the models are tested on actual plant measurements. The overall methodology is validated on hexagonal, pre-Konvoi, pressurized water, and VVER-1000 type nuclear reactors. The simulated data are generated by the FEMFFUSION code, which is extended in order to deal with the hexagonal geometry in the time and frequency domains. The examined perturbations are absorbers of variable strength, and the trained models are tested on actual plant data acquired by the in-core detectors of the Temelín VVER-1000 Power Plant in the Czech Republic. The whole approach is realized in the framework of Euratom’s CORTEX project. MDPI 2021-12-24 /pmc/articles/PMC8747522/ /pubmed/35009662 http://dx.doi.org/10.3390/s22010113 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Pantera, Laurent
Stulík, Petr
Vidal-Ferràndiz, Antoni
Carreño, Amanda
Ginestar, Damián
Ioannou, George
Tasakos, Thanos
Alexandridis, Georgios
Stafylopatis, Andreas
Localizing Perturbations in Pressurized Water Reactors Using One-Dimensional Deep Convolutional Neural Networks
title Localizing Perturbations in Pressurized Water Reactors Using One-Dimensional Deep Convolutional Neural Networks
title_full Localizing Perturbations in Pressurized Water Reactors Using One-Dimensional Deep Convolutional Neural Networks
title_fullStr Localizing Perturbations in Pressurized Water Reactors Using One-Dimensional Deep Convolutional Neural Networks
title_full_unstemmed Localizing Perturbations in Pressurized Water Reactors Using One-Dimensional Deep Convolutional Neural Networks
title_short Localizing Perturbations in Pressurized Water Reactors Using One-Dimensional Deep Convolutional Neural Networks
title_sort localizing perturbations in pressurized water reactors using one-dimensional deep convolutional neural networks
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8747522/
https://www.ncbi.nlm.nih.gov/pubmed/35009662
http://dx.doi.org/10.3390/s22010113
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