Cargando…

The Use of Collections of Artificial Neural Networks to Improve the Control Quality of the Induction Soldering Process

In industries that implement the technology of induction soldering, various sensors, including non-contact pyrometric ones, are widely used to control the technological process. The use of this type of sensor implies the need to choose a solution that is effective in different operating conditions i...

Descripción completa

Detalles Bibliográficos
Autores principales: Milov, Anton Vladimirovich, Tynchenko, Vadim Sergeevich, Kurashkin, Sergei Olegovich, Tynchenko, Valeriya Valerievna, Kukartsev, Vladislav Viktorovich, Bukhtoyarov, Vladimir Viktorovich, Sergienko, Roman, Kukartsev, Viktor Alekseevich, Bashmur, Kirill Aleksandrovich
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8234833/
https://www.ncbi.nlm.nih.gov/pubmed/34207395
http://dx.doi.org/10.3390/s21124199
_version_ 1783714174862360576
author Milov, Anton Vladimirovich
Tynchenko, Vadim Sergeevich
Kurashkin, Sergei Olegovich
Tynchenko, Valeriya Valerievna
Kukartsev, Vladislav Viktorovich
Bukhtoyarov, Vladimir Viktorovich
Sergienko, Roman
Kukartsev, Viktor Alekseevich
Bashmur, Kirill Aleksandrovich
author_facet Milov, Anton Vladimirovich
Tynchenko, Vadim Sergeevich
Kurashkin, Sergei Olegovich
Tynchenko, Valeriya Valerievna
Kukartsev, Vladislav Viktorovich
Bukhtoyarov, Vladimir Viktorovich
Sergienko, Roman
Kukartsev, Viktor Alekseevich
Bashmur, Kirill Aleksandrovich
author_sort Milov, Anton Vladimirovich
collection PubMed
description In industries that implement the technology of induction soldering, various sensors, including non-contact pyrometric ones, are widely used to control the technological process. The use of this type of sensor implies the need to choose a solution that is effective in different operating conditions in terms of the accuracy of the data obtained and the reliability of the measurement equipment and duplication in case of a failure. The present article discusses the development of intelligent technology based on a collection of artificial neural networks, which allows a number of problems associated with technological process control when using pyrometric sensors to be solved: assessing the quality of measurements, correcting measurements when non-standard errors are detected, and controlling the process of induction heating in the absence of reliable readings of the measurement instruments. The collection of artificial neural networks is self-configuring with the use of multicriterion genetic algorithms. The use of the proposed intelligent technology made it possible to improve the control quality of the technological process of the induction brazing of waveguide paths of spacecraft: the overregulation was decreased from 0–20 to 0, and the difference in the heating temperatures of the elements of the brazed waveguide assembly was decreased from 20–100 to 0–10. In addition, the overall process duration decreased and became more stable. When using the classical control technology, the time varied in the range of 20–60 s; when using the proposed technology, it stabilized in the range of 30–35 s.
format Online
Article
Text
id pubmed-8234833
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-82348332021-06-27 The Use of Collections of Artificial Neural Networks to Improve the Control Quality of the Induction Soldering Process Milov, Anton Vladimirovich Tynchenko, Vadim Sergeevich Kurashkin, Sergei Olegovich Tynchenko, Valeriya Valerievna Kukartsev, Vladislav Viktorovich Bukhtoyarov, Vladimir Viktorovich Sergienko, Roman Kukartsev, Viktor Alekseevich Bashmur, Kirill Aleksandrovich Sensors (Basel) Article In industries that implement the technology of induction soldering, various sensors, including non-contact pyrometric ones, are widely used to control the technological process. The use of this type of sensor implies the need to choose a solution that is effective in different operating conditions in terms of the accuracy of the data obtained and the reliability of the measurement equipment and duplication in case of a failure. The present article discusses the development of intelligent technology based on a collection of artificial neural networks, which allows a number of problems associated with technological process control when using pyrometric sensors to be solved: assessing the quality of measurements, correcting measurements when non-standard errors are detected, and controlling the process of induction heating in the absence of reliable readings of the measurement instruments. The collection of artificial neural networks is self-configuring with the use of multicriterion genetic algorithms. The use of the proposed intelligent technology made it possible to improve the control quality of the technological process of the induction brazing of waveguide paths of spacecraft: the overregulation was decreased from 0–20 to 0, and the difference in the heating temperatures of the elements of the brazed waveguide assembly was decreased from 20–100 to 0–10. In addition, the overall process duration decreased and became more stable. When using the classical control technology, the time varied in the range of 20–60 s; when using the proposed technology, it stabilized in the range of 30–35 s. MDPI 2021-06-18 /pmc/articles/PMC8234833/ /pubmed/34207395 http://dx.doi.org/10.3390/s21124199 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
Milov, Anton Vladimirovich
Tynchenko, Vadim Sergeevich
Kurashkin, Sergei Olegovich
Tynchenko, Valeriya Valerievna
Kukartsev, Vladislav Viktorovich
Bukhtoyarov, Vladimir Viktorovich
Sergienko, Roman
Kukartsev, Viktor Alekseevich
Bashmur, Kirill Aleksandrovich
The Use of Collections of Artificial Neural Networks to Improve the Control Quality of the Induction Soldering Process
title The Use of Collections of Artificial Neural Networks to Improve the Control Quality of the Induction Soldering Process
title_full The Use of Collections of Artificial Neural Networks to Improve the Control Quality of the Induction Soldering Process
title_fullStr The Use of Collections of Artificial Neural Networks to Improve the Control Quality of the Induction Soldering Process
title_full_unstemmed The Use of Collections of Artificial Neural Networks to Improve the Control Quality of the Induction Soldering Process
title_short The Use of Collections of Artificial Neural Networks to Improve the Control Quality of the Induction Soldering Process
title_sort use of collections of artificial neural networks to improve the control quality of the induction soldering process
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8234833/
https://www.ncbi.nlm.nih.gov/pubmed/34207395
http://dx.doi.org/10.3390/s21124199
work_keys_str_mv AT milovantonvladimirovich theuseofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT tynchenkovadimsergeevich theuseofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT kurashkinsergeiolegovich theuseofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT tynchenkovaleriyavalerievna theuseofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT kukartsevvladislavviktorovich theuseofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT bukhtoyarovvladimirviktorovich theuseofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT sergienkoroman theuseofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT kukartsevviktoralekseevich theuseofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT bashmurkirillaleksandrovich theuseofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT milovantonvladimirovich useofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT tynchenkovadimsergeevich useofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT kurashkinsergeiolegovich useofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT tynchenkovaleriyavalerievna useofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT kukartsevvladislavviktorovich useofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT bukhtoyarovvladimirviktorovich useofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT sergienkoroman useofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT kukartsevviktoralekseevich useofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess
AT bashmurkirillaleksandrovich useofcollectionsofartificialneuralnetworkstoimprovethecontrolqualityoftheinductionsolderingprocess