Predicting Long-Term Deformation of Soundproofing Resilient Materials Subjected to Compressive Loading: Machine Learning Approach

<b> </b>Soundproofing materials are widely used within structural components of multi-dwelling residential buildings to alleviate neighborhood noise problems. One of the critical mechanical properties for the soundproofing materials to ensure its appropriate structural and soundproofing...

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Main Authors: Seungbum Koo, Jongkwon Choi, Changhyuk Kim
Format: Article
Language:English
Published: MDPI AG 2020-09-01
Series:Materials
Subjects:
Online Access:https://www.mdpi.com/1996-1944/13/18/4133
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spelling doaj-a8b580b07ad94abd889c9d6e765f18fd2020-11-25T03:23:10ZengMDPI AGMaterials1996-19442020-09-01134133413310.3390/ma13184133Predicting Long-Term Deformation of Soundproofing Resilient Materials Subjected to Compressive Loading: Machine Learning ApproachSeungbum Koo0Jongkwon Choi1Changhyuk Kim2The MathWorks Inc., Natick, MA 01760, USADepartment of Civil and Environmental Engineering, Hongik University, Seoul 04066, KoreaKorea Institute of Civil Engineering and Building Technology, Ilsan 10223, Korea<b> </b>Soundproofing materials are widely used within structural components of multi-dwelling residential buildings to alleviate neighborhood noise problems. One of the critical mechanical properties for the soundproofing materials to ensure its appropriate structural and soundproofing performance is the long-term compressive deformation under the service loading conditions. The test method in the current test specifications only evaluates resilient materials for a limited period (90-day). It then extrapolates the test results using a polynomial function to predict the long-term compressive deformation. However, the extrapolation is universally applied to materials without considering the level of loads; thus, the calculated deformation may not accurately represent the actual compressive deformation of the materials. In this regard, long-term compressive deformation tests were performed on the selected soundproofing resilient materials (i.e., polystyrene, polyethylene, and ethylene-vinyl acetate). Four levels of loads were chosen to apply compressive loads up to 350 to 500 days continuously, and the deformations of the test specimens were periodically monitored. Then, three machine learning algorithms were used to predict long-term compressive deformations. The predictions based on machine learning and ISO 20392 method are compared with experimental test results, and the accuracy of machine learning algorithms and ISO 20392 method are discussed.https://www.mdpi.com/1996-1944/13/18/4133resilient materiallong-term deformationfloor impact soundmachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Seungbum Koo
Jongkwon Choi
Changhyuk Kim
spellingShingle Seungbum Koo
Jongkwon Choi
Changhyuk Kim
Predicting Long-Term Deformation of Soundproofing Resilient Materials Subjected to Compressive Loading: Machine Learning Approach
Materials
resilient material
long-term deformation
floor impact sound
machine learning
author_facet Seungbum Koo
Jongkwon Choi
Changhyuk Kim
author_sort Seungbum Koo
title Predicting Long-Term Deformation of Soundproofing Resilient Materials Subjected to Compressive Loading: Machine Learning Approach
title_short Predicting Long-Term Deformation of Soundproofing Resilient Materials Subjected to Compressive Loading: Machine Learning Approach
title_full Predicting Long-Term Deformation of Soundproofing Resilient Materials Subjected to Compressive Loading: Machine Learning Approach
title_fullStr Predicting Long-Term Deformation of Soundproofing Resilient Materials Subjected to Compressive Loading: Machine Learning Approach
title_full_unstemmed Predicting Long-Term Deformation of Soundproofing Resilient Materials Subjected to Compressive Loading: Machine Learning Approach
title_sort predicting long-term deformation of soundproofing resilient materials subjected to compressive loading: machine learning approach
publisher MDPI AG
series Materials
issn 1996-1944
publishDate 2020-09-01
description <b> </b>Soundproofing materials are widely used within structural components of multi-dwelling residential buildings to alleviate neighborhood noise problems. One of the critical mechanical properties for the soundproofing materials to ensure its appropriate structural and soundproofing performance is the long-term compressive deformation under the service loading conditions. The test method in the current test specifications only evaluates resilient materials for a limited period (90-day). It then extrapolates the test results using a polynomial function to predict the long-term compressive deformation. However, the extrapolation is universally applied to materials without considering the level of loads; thus, the calculated deformation may not accurately represent the actual compressive deformation of the materials. In this regard, long-term compressive deformation tests were performed on the selected soundproofing resilient materials (i.e., polystyrene, polyethylene, and ethylene-vinyl acetate). Four levels of loads were chosen to apply compressive loads up to 350 to 500 days continuously, and the deformations of the test specimens were periodically monitored. Then, three machine learning algorithms were used to predict long-term compressive deformations. The predictions based on machine learning and ISO 20392 method are compared with experimental test results, and the accuracy of machine learning algorithms and ISO 20392 method are discussed.
topic resilient material
long-term deformation
floor impact sound
machine learning
url https://www.mdpi.com/1996-1944/13/18/4133
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AT jongkwonchoi predictinglongtermdeformationofsoundproofingresilientmaterialssubjectedtocompressiveloadingmachinelearningapproach
AT changhyukkim predictinglongtermdeformationofsoundproofingresilientmaterialssubjectedtocompressiveloadingmachinelearningapproach
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