Data pre-processing methods for NPP equipment diagnostics algorithms: an overview

The main tasks of diagnostics at nuclear power plants are detection, localization, diagnosis, and prognosis of the development of malfunctions. Analytical algorithms of varying degrees of complexity are used to solve these tasks. Many of these algorithms require pre-processed input d...

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Main Authors: Iurii D. Katser, Vyacheslav O. Kozitsin, Ivan V. Maksimov, Denis A. Larionov, Konstantin I. Kotsoev
Format: Article
Language:English
Published: National Research Nuclear University (MEPhI) 2021-06-01
Series:Nuclear Energy and Technology
Subjects:
Online Access:https://nucet.pensoft.net/article/63675/download/pdf/
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spelling doaj-420e3ae241224fa4bb657853059fd1b02021-09-28T14:36:52ZengNational Research Nuclear University (MEPhI)Nuclear Energy and Technology2452-30382021-06-017211112510.3897/nucet.7.6367563675Data pre-processing methods for NPP equipment diagnostics algorithms: an overviewIurii D. Katser0Vyacheslav O. Kozitsin1Ivan V. Maksimov2Denis A. Larionov3Konstantin I. Kotsoev4Cifrum – Nuclear Industry Digitalization SupportSkolkovo Institute of Science and TechnologyCifrum – Nuclear Industry Digitalization SupportCifrum – Nuclear Industry Digitalization SupportBauman Moscow State Technical University The main tasks of diagnostics at nuclear power plants are detection, localization, diagnosis, and prognosis of the development of malfunctions. Analytical algorithms of varying degrees of complexity are used to solve these tasks. Many of these algorithms require pre-processed input data for high-quality and efficient operation. The pre-processing stage can help to reduce the volume of the analyzed data, generate additional informative diagnostic features, find complex dependencies and hidden patterns, discard uninformative source signals and remove noise. Finally, it can produce an improvement in detection, localization and prognosis quality. This overview briefly describes the data collected at nuclear power plants and provides methods for their preliminary processing. The pre-processing techniques are systematized according to the tasks performed. Their advantages and disadvantages are presented and the requirements for the initial raw data are considered. The references include both fundamental scientific works and applied industrial research on the methods applied. The paper also indicates the mechanisms for applying the methods of signal pre-processing in real-time. The overview of the data pre-processing methods in application to nuclear power plants is obtained, their classification and characteristics are given, and the comparative analysis of the methods is presented. https://nucet.pensoft.net/article/63675/download/pdf/advanced analyticsdata analysis
collection DOAJ
language English
format Article
sources DOAJ
author Iurii D. Katser
Vyacheslav O. Kozitsin
Ivan V. Maksimov
Denis A. Larionov
Konstantin I. Kotsoev
spellingShingle Iurii D. Katser
Vyacheslav O. Kozitsin
Ivan V. Maksimov
Denis A. Larionov
Konstantin I. Kotsoev
Data pre-processing methods for NPP equipment diagnostics algorithms: an overview
Nuclear Energy and Technology
advanced analytics
data analysis
author_facet Iurii D. Katser
Vyacheslav O. Kozitsin
Ivan V. Maksimov
Denis A. Larionov
Konstantin I. Kotsoev
author_sort Iurii D. Katser
title Data pre-processing methods for NPP equipment diagnostics algorithms: an overview
title_short Data pre-processing methods for NPP equipment diagnostics algorithms: an overview
title_full Data pre-processing methods for NPP equipment diagnostics algorithms: an overview
title_fullStr Data pre-processing methods for NPP equipment diagnostics algorithms: an overview
title_full_unstemmed Data pre-processing methods for NPP equipment diagnostics algorithms: an overview
title_sort data pre-processing methods for npp equipment diagnostics algorithms: an overview
publisher National Research Nuclear University (MEPhI)
series Nuclear Energy and Technology
issn 2452-3038
publishDate 2021-06-01
description The main tasks of diagnostics at nuclear power plants are detection, localization, diagnosis, and prognosis of the development of malfunctions. Analytical algorithms of varying degrees of complexity are used to solve these tasks. Many of these algorithms require pre-processed input data for high-quality and efficient operation. The pre-processing stage can help to reduce the volume of the analyzed data, generate additional informative diagnostic features, find complex dependencies and hidden patterns, discard uninformative source signals and remove noise. Finally, it can produce an improvement in detection, localization and prognosis quality. This overview briefly describes the data collected at nuclear power plants and provides methods for their preliminary processing. The pre-processing techniques are systematized according to the tasks performed. Their advantages and disadvantages are presented and the requirements for the initial raw data are considered. The references include both fundamental scientific works and applied industrial research on the methods applied. The paper also indicates the mechanisms for applying the methods of signal pre-processing in real-time. The overview of the data pre-processing methods in application to nuclear power plants is obtained, their classification and characteristics are given, and the comparative analysis of the methods is presented.
topic advanced analytics
data analysis
url https://nucet.pensoft.net/article/63675/download/pdf/
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