Application of Artificial Intelligence Technologies to Assess the Quality of Structures

The timeliness of the complex automated diagnostics of the metal condition for all characteristics has been substantiated. An algorithm for the automation of metallographic quality control of metals is proposed and described. It is based on the use of neural networks for recognizing images of metal...

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Main Authors: Anton Zhilenkov, Sergei Chernyi, Vitalii Emelianov
Format: Article
Language:English
Published: MDPI AG 2021-12-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/14/23/8040
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author Anton Zhilenkov
Sergei Chernyi
Vitalii Emelianov
author_facet Anton Zhilenkov
Sergei Chernyi
Vitalii Emelianov
author_sort Anton Zhilenkov
collection DOAJ
description The timeliness of the complex automated diagnostics of the metal condition for all characteristics has been substantiated. An algorithm for the automation of metallographic quality control of metals is proposed and described. It is based on the use of neural networks for recognizing images of metal microstructures and a precedent method for determining the metal grade. An approach to preliminarily process the images of metal microstructures is described. The structure of a neural network has been developed to determine the quantitative characteristics of metals. The results of the functioning of neural networks for determining the quantitative characteristics of metals are presented. The high accuracy of determining the characteristics of metals using neural networks is shown. Software has been developed for the automated recognition of images of metal microstructures, and for the determination of the metal grade. Comparative results of carrying out metallographic analysis with the developed tools are demonstrated. As a result, there is a significant reduction in the time required for analyzing metallographic images, as well as an increase in the accuracy of determining the quantitative characteristics of metals. The study of this problem is important not only in the metallurgical industry, but also in production, the maritime industry, and other engineering fields.
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spelling doaj.art-e9f3d82be1304bc895cc8db4e44442292023-11-23T02:21:43ZengMDPI AGEnergies1996-10732021-12-011423804010.3390/en14238040Application of Artificial Intelligence Technologies to Assess the Quality of StructuresAnton Zhilenkov0Sergei Chernyi1Vitalii Emelianov2Department of Cyber-Physical Systems, St. Petersburg State Marine Technical University, 190121 Saint-Petersburg, RussiaDepartment of Cyber-Physical Systems, St. Petersburg State Marine Technical University, 190121 Saint-Petersburg, RussiaFinancial University under the Government of the Russian Federation, 49 Leningradsky Prospekt, 125993 Moscow, RussiaThe timeliness of the complex automated diagnostics of the metal condition for all characteristics has been substantiated. An algorithm for the automation of metallographic quality control of metals is proposed and described. It is based on the use of neural networks for recognizing images of metal microstructures and a precedent method for determining the metal grade. An approach to preliminarily process the images of metal microstructures is described. The structure of a neural network has been developed to determine the quantitative characteristics of metals. The results of the functioning of neural networks for determining the quantitative characteristics of metals are presented. The high accuracy of determining the characteristics of metals using neural networks is shown. Software has been developed for the automated recognition of images of metal microstructures, and for the determination of the metal grade. Comparative results of carrying out metallographic analysis with the developed tools are demonstrated. As a result, there is a significant reduction in the time required for analyzing metallographic images, as well as an increase in the accuracy of determining the quantitative characteristics of metals. The study of this problem is important not only in the metallurgical industry, but also in production, the maritime industry, and other engineering fields.https://www.mdpi.com/1996-1073/14/23/8040intelligent systemmetallographic analysissoftwareneural networksprecedents method
spellingShingle Anton Zhilenkov
Sergei Chernyi
Vitalii Emelianov
Application of Artificial Intelligence Technologies to Assess the Quality of Structures
Energies
intelligent system
metallographic analysis
software
neural networks
precedents method
title Application of Artificial Intelligence Technologies to Assess the Quality of Structures
title_full Application of Artificial Intelligence Technologies to Assess the Quality of Structures
title_fullStr Application of Artificial Intelligence Technologies to Assess the Quality of Structures
title_full_unstemmed Application of Artificial Intelligence Technologies to Assess the Quality of Structures
title_short Application of Artificial Intelligence Technologies to Assess the Quality of Structures
title_sort application of artificial intelligence technologies to assess the quality of structures
topic intelligent system
metallographic analysis
software
neural networks
precedents method
url https://www.mdpi.com/1996-1073/14/23/8040
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