Prediction Models with Multiple Linear Regression for Improving Acoustic Performance of Textile Industry Plants

In industrial plants noise is a major threat to the mental and physical health of employees. The risk increases more due to the presence of high noise sources and the presence of too many employees in textile industry plants. This paper aims to predict the consequences of variables that may arise in...

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Main Authors: Muammer YAMAN, Cüneyt KURTAY, Gülsu ULUKAVAK HARPUTLUGIL
Format: Article
Language:English
Published: Institute of Fundamental Technological Research Polish Academy of Sciences 2025-01-01
Series:Archives of Acoustics
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Online Access:https://acoustics.ippt.pan.pl/index.php/aa/article/view/3867
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author Muammer YAMAN
Cüneyt KURTAY
Gülsu ULUKAVAK HARPUTLUGIL
author_facet Muammer YAMAN
Cüneyt KURTAY
Gülsu ULUKAVAK HARPUTLUGIL
author_sort Muammer YAMAN
collection DOAJ
description In industrial plants noise is a major threat to the mental and physical health of employees. The risk increases more due to the presence of high noise sources and the presence of too many employees in textile industry plants. This paper aims to predict the consequences of variables that may arise in the plants for acoustic improvement in textile industry plants. For this purpose, scenario plants have been created according to architectural properties and source-transmission path-receiver characteristics. The acoustic analyses of the scenario plants were performed in the ODEON Auditorium, and A-weighted sound pressure level (LA), noise reduction (NR), and reverberation time (RT) were determined. From the data, prediction equations were created with a multiple linear regression (MLR) model. To test the prediction equations, acoustic measurements were made, and acoustics improvements were carried out at a textile industry plant located in Türkiye. When the obtained results, the success, validity, and reliability of the prediction method are provided. In conclusion, the effect of architectural properties and the surface absorption on acoustic improvements in the textile industry was revealed. It was emphasized that prediction methods can be used to determine the effectiveness of interventions that can be applied in different facilities and can be improved in future studies.
format Article
id doaj-art-87d5a83fd2e846a78064c995d2ea16af
institution Kabale University
issn 0137-5075
2300-262X
language English
publishDate 2025-01-01
publisher Institute of Fundamental Technological Research Polish Academy of Sciences
record_format Article
series Archives of Acoustics
spelling doaj-art-87d5a83fd2e846a78064c995d2ea16af2025-08-20T03:34:53ZengInstitute of Fundamental Technological Research Polish Academy of SciencesArchives of Acoustics0137-50752300-262X2025-01-0150110.24425/aoa.2024.148819Prediction Models with Multiple Linear Regression for Improving Acoustic Performance of Textile Industry PlantsMuammer YAMAN0https://orcid.org/0000-0002-8767-4811Cüneyt KURTAY1https://orcid.org/0000-0002-9673-701XGülsu ULUKAVAK HARPUTLUGIL2https://orcid.org/0000-0002-8715-7603Department of Architecture, Faculty of Architecture, Ondokuz Mayis UniversityDepartment of Architecture, Faculty of Fine Arts, Design and Architecture, Başkent UniversityDepartment of Architecture, Faculty of Architecture, Çankaya UniversityIn industrial plants noise is a major threat to the mental and physical health of employees. The risk increases more due to the presence of high noise sources and the presence of too many employees in textile industry plants. This paper aims to predict the consequences of variables that may arise in the plants for acoustic improvement in textile industry plants. For this purpose, scenario plants have been created according to architectural properties and source-transmission path-receiver characteristics. The acoustic analyses of the scenario plants were performed in the ODEON Auditorium, and A-weighted sound pressure level (LA), noise reduction (NR), and reverberation time (RT) were determined. From the data, prediction equations were created with a multiple linear regression (MLR) model. To test the prediction equations, acoustic measurements were made, and acoustics improvements were carried out at a textile industry plant located in Türkiye. When the obtained results, the success, validity, and reliability of the prediction method are provided. In conclusion, the effect of architectural properties and the surface absorption on acoustic improvements in the textile industry was revealed. It was emphasized that prediction methods can be used to determine the effectiveness of interventions that can be applied in different facilities and can be improved in future studies.https://acoustics.ippt.pan.pl/index.php/aa/article/view/3867industrial noise controlacoustics simulationmultiple linear regressionprediction methodstextile industryODEON Auditorium
spellingShingle Muammer YAMAN
Cüneyt KURTAY
Gülsu ULUKAVAK HARPUTLUGIL
Prediction Models with Multiple Linear Regression for Improving Acoustic Performance of Textile Industry Plants
Archives of Acoustics
industrial noise control
acoustics simulation
multiple linear regression
prediction methods
textile industry
ODEON Auditorium
title Prediction Models with Multiple Linear Regression for Improving Acoustic Performance of Textile Industry Plants
title_full Prediction Models with Multiple Linear Regression for Improving Acoustic Performance of Textile Industry Plants
title_fullStr Prediction Models with Multiple Linear Regression for Improving Acoustic Performance of Textile Industry Plants
title_full_unstemmed Prediction Models with Multiple Linear Regression for Improving Acoustic Performance of Textile Industry Plants
title_short Prediction Models with Multiple Linear Regression for Improving Acoustic Performance of Textile Industry Plants
title_sort prediction models with multiple linear regression for improving acoustic performance of textile industry plants
topic industrial noise control
acoustics simulation
multiple linear regression
prediction methods
textile industry
ODEON Auditorium
url https://acoustics.ippt.pan.pl/index.php/aa/article/view/3867
work_keys_str_mv AT muammeryaman predictionmodelswithmultiplelinearregressionforimprovingacousticperformanceoftextileindustryplants
AT cuneytkurtay predictionmodelswithmultiplelinearregressionforimprovingacousticperformanceoftextileindustryplants
AT gulsuulukavakharputlugil predictionmodelswithmultiplelinearregressionforimprovingacousticperformanceoftextileindustryplants