Detection of Substation Pollution in District Heating and Cooling Systems: A Comprehensive Comparative Analysis of Machine Learning and Artificial Neural Network Models
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Publication Date: | 2024 |
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Format: | Article |
Language: | eng |
Source: | ITEGAM-JETIA |
Download full: | https://itegam-jetia.org/journal/index.php/jetia/article/view/1289 |
Summary: | This study analyzes the detection of substation fouling failures in District Heating and Cooling (DHC) systems using synthetic data. In the study, high, medium and low levels of contamination are considered and both machine learning and deep learning techniques are applied for the detection of these failure types. Within the scope of the analysis, machine learning algorithms such as K-Nearest Neighbors, XGBoost and AdaBoost are compared with the proposed Convolutional Neural Network (CNN) model. The machine learning algorithms and the Convolutional Neural Network model are trained to perform fault detection at different contamination levels. In order to improve the performance of the machine learning models, hyperparameter tuning was performed by Grid Search Optimization method. The results obtained show that the proposed Convolutional Neural Network model provides higher accuracy and overall success compared to machine learning methods. High performance measures such as Matthews correlation coefficient 0.944 and accuracy rate 0.972 were achieved with the CNN model. These findings reveal that contamination detection in substations can be done effectively with CNN-based approaches, especially for situations that require high accuracy. This study on fault detection in DHC systems provides a new and reliable solution for industrial applications. |
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Detection of Substation Pollution in District Heating and Cooling Systems: A Comprehensive Comparative Analysis of Machine Learning and Artificial Neural Network ModelsThis study analyzes the detection of substation fouling failures in District Heating and Cooling (DHC) systems using synthetic data. In the study, high, medium and low levels of contamination are considered and both machine learning and deep learning techniques are applied for the detection of these failure types. Within the scope of the analysis, machine learning algorithms such as K-Nearest Neighbors, XGBoost and AdaBoost are compared with the proposed Convolutional Neural Network (CNN) model. The machine learning algorithms and the Convolutional Neural Network model are trained to perform fault detection at different contamination levels. In order to improve the performance of the machine learning models, hyperparameter tuning was performed by Grid Search Optimization method. The results obtained show that the proposed Convolutional Neural Network model provides higher accuracy and overall success compared to machine learning methods. High performance measures such as Matthews correlation coefficient 0.944 and accuracy rate 0.972 were achieved with the CNN model. These findings reveal that contamination detection in substations can be done effectively with CNN-based approaches, especially for situations that require high accuracy. This study on fault detection in DHC systems provides a new and reliable solution for industrial applications.ITEGAM - Instituto de Tecnologia e Educação Galileo da Amazônia2024-11-27info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionPeer-reviewed Articleapplication/pdfhttps://itegam-jetia.org/journal/index.php/jetia/article/view/128910.5935/jetia.v10i50.1289ITEGAM-JETIA; v.10 n.50 2024; 17-27ITEGAM-JETIA; v.10 n.50 2024; 17-27ITEGAM-JETIA; v.10 n.50 2024; 17-272447-022810.5935/jetia.v10i50reponame:ITEGAM-JETIAinstname:Instituto de Tecnologia e Educação Galileo da Amazônia (ITEGAM)instacron:ITEGAMenghttps://itegam-jetia.org/journal/index.php/jetia/article/view/1289/890Copyright (c) 2024 ITEGAM-JETIAinfo:eu-repo/semantics/openAccessAslan, EmrahÖzüpak, Yıldırım2024-12-31T11:22:15Zoai:ojs.itegam-jetia.org:article/1289Revistahttps://itegam-jetia.org/journal/index.php/jetiaPRIhttps://itegam-jetia.org/journal/index.php/jetia/oaieditor@itegam-jetia.orgopendoar:2024-12-31T11:22:15ITEGAM-JETIA - Instituto de Tecnologia e Educação Galileo da Amazônia (ITEGAM)false |
dc.title.none.fl_str_mv |
Detection of Substation Pollution in District Heating and Cooling Systems: A Comprehensive Comparative Analysis of Machine Learning and Artificial Neural Network Models |
title |
Detection of Substation Pollution in District Heating and Cooling Systems: A Comprehensive Comparative Analysis of Machine Learning and Artificial Neural Network Models |
spellingShingle |
Detection of Substation Pollution in District Heating and Cooling Systems: A Comprehensive Comparative Analysis of Machine Learning and Artificial Neural Network Models Aslan, Emrah |
title_short |
Detection of Substation Pollution in District Heating and Cooling Systems: A Comprehensive Comparative Analysis of Machine Learning and Artificial Neural Network Models |
title_full |
Detection of Substation Pollution in District Heating and Cooling Systems: A Comprehensive Comparative Analysis of Machine Learning and Artificial Neural Network Models |
title_fullStr |
Detection of Substation Pollution in District Heating and Cooling Systems: A Comprehensive Comparative Analysis of Machine Learning and Artificial Neural Network Models |
title_full_unstemmed |
Detection of Substation Pollution in District Heating and Cooling Systems: A Comprehensive Comparative Analysis of Machine Learning and Artificial Neural Network Models |
title_sort |
Detection of Substation Pollution in District Heating and Cooling Systems: A Comprehensive Comparative Analysis of Machine Learning and Artificial Neural Network Models |
author |
Aslan, Emrah |
author_facet |
Aslan, Emrah Özüpak, Yıldırım |
author_role |
author |
author2 |
Özüpak, Yıldırım |
author2_role |
author |
dc.contributor.author.fl_str_mv |
Aslan, Emrah Özüpak, Yıldırım |
description |
This study analyzes the detection of substation fouling failures in District Heating and Cooling (DHC) systems using synthetic data. In the study, high, medium and low levels of contamination are considered and both machine learning and deep learning techniques are applied for the detection of these failure types. Within the scope of the analysis, machine learning algorithms such as K-Nearest Neighbors, XGBoost and AdaBoost are compared with the proposed Convolutional Neural Network (CNN) model. The machine learning algorithms and the Convolutional Neural Network model are trained to perform fault detection at different contamination levels. In order to improve the performance of the machine learning models, hyperparameter tuning was performed by Grid Search Optimization method. The results obtained show that the proposed Convolutional Neural Network model provides higher accuracy and overall success compared to machine learning methods. High performance measures such as Matthews correlation coefficient 0.944 and accuracy rate 0.972 were achieved with the CNN model. These findings reveal that contamination detection in substations can be done effectively with CNN-based approaches, especially for situations that require high accuracy. This study on fault detection in DHC systems provides a new and reliable solution for industrial applications. |
publishDate |
2024 |
dc.date.none.fl_str_mv |
2024-11-27 |
dc.type.driver.fl_str_mv |
info:eu-repo/semantics/article info:eu-repo/semantics/publishedVersion Peer-reviewed Article |
format |
article |
status_str |
publishedVersion |
dc.identifier.uri.fl_str_mv |
https://itegam-jetia.org/journal/index.php/jetia/article/view/1289 10.5935/jetia.v10i50.1289 |
url |
https://itegam-jetia.org/journal/index.php/jetia/article/view/1289 |
identifier_str_mv |
10.5935/jetia.v10i50.1289 |
dc.language.iso.fl_str_mv |
eng |
language |
eng |
dc.relation.none.fl_str_mv |
https://itegam-jetia.org/journal/index.php/jetia/article/view/1289/890 |
dc.rights.driver.fl_str_mv |
Copyright (c) 2024 ITEGAM-JETIA info:eu-repo/semantics/openAccess |
rights_invalid_str_mv |
Copyright (c) 2024 ITEGAM-JETIA |
eu_rights_str_mv |
openAccess |
dc.format.none.fl_str_mv |
application/pdf |
dc.publisher.none.fl_str_mv |
ITEGAM - Instituto de Tecnologia e Educação Galileo da Amazônia |
publisher.none.fl_str_mv |
ITEGAM - Instituto de Tecnologia e Educação Galileo da Amazônia |
dc.source.none.fl_str_mv |
ITEGAM-JETIA; v.10 n.50 2024; 17-27 ITEGAM-JETIA; v.10 n.50 2024; 17-27 ITEGAM-JETIA; v.10 n.50 2024; 17-27 2447-0228 10.5935/jetia.v10i50 reponame:ITEGAM-JETIA instname:Instituto de Tecnologia e Educação Galileo da Amazônia (ITEGAM) instacron:ITEGAM |
instname_str |
Instituto de Tecnologia e Educação Galileo da Amazônia (ITEGAM) |
instacron_str |
ITEGAM |
institution |
ITEGAM |
reponame_str |
ITEGAM-JETIA |
collection |
ITEGAM-JETIA |
repository.name.fl_str_mv |
ITEGAM-JETIA - Instituto de Tecnologia e Educação Galileo da Amazônia (ITEGAM) |
repository.mail.fl_str_mv |
editor@itegam-jetia.org |
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1837010819971284992 |