Prediction of the Dynamic Stiffness of Resilient Materials using Artificial Neural Network (ANN) Technique

High-rise residential buildings are constructed in countries with high population density in response to the need to utilize small development areas. As many high-rise buildings are being constructed, issues of floor impact sound tend to occur in buildings. In general, resilient materials are implem...

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Main Authors: Changhyuk Kim, Jung-Yoon Lee, Moonhyun Kim
Format: Article
Language:English
Published: MDPI AG 2019-03-01
Series:Applied Sciences
Subjects:
Online Access:http://www.mdpi.com/2076-3417/9/6/1088
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spelling doaj-ab10bfffec1f41d09a81f649bcf56e692020-11-24T23:08:03ZengMDPI AGApplied Sciences2076-34172019-03-0196108810.3390/app9061088app9061088Prediction of the Dynamic Stiffness of Resilient Materials using Artificial Neural Network (ANN) TechniqueChanghyuk Kim0Jung-Yoon Lee1Moonhyun Kim2School of Civil, Architectural Engineering and Landscape Architecture, Sungkyunkwan University, Suwon 16419, KoreaSchool of Civil, Architectural Engineering and Landscape Architecture, Sungkyunkwan University, Suwon 16419, KoreaCollege of Software, Sungkyunkwan University, Suwon 16419, KoreaHigh-rise residential buildings are constructed in countries with high population density in response to the need to utilize small development areas. As many high-rise buildings are being constructed, issues of floor impact sound tend to occur in buildings. In general, resilient materials are implemented between the slab and the finishing mortar to control the floor impact sound. Various mechanical properties of resilient materials can affect the floor impact sound. To investigate the impact sound reduction capacity, various experimental tests were conducted. The test results show that the floor impact sound reduction capacity has a close relationship with the dynamic stiffness of resilient materials. A total of six different kinds of resilient materials were loaded under four loading conditions. The test results show that loading time, loading, and material properties influence the change in dynamic stiffness. Artificial neural network (ANN) technique was implemented to obtain the responses between the deflection and dynamic stiffness. Three different algorithms were considered in the ANN models and the trained results were analyzed based on the root mean square error. The feasibility of using the ANN technique was verified with a high and consistent level of accuracy.http://www.mdpi.com/2076-3417/9/6/1088artificial neural networkdata regressionresilient materiallong-term loaddynamic stiffness
collection DOAJ
language English
format Article
sources DOAJ
author Changhyuk Kim
Jung-Yoon Lee
Moonhyun Kim
spellingShingle Changhyuk Kim
Jung-Yoon Lee
Moonhyun Kim
Prediction of the Dynamic Stiffness of Resilient Materials using Artificial Neural Network (ANN) Technique
Applied Sciences
artificial neural network
data regression
resilient material
long-term load
dynamic stiffness
author_facet Changhyuk Kim
Jung-Yoon Lee
Moonhyun Kim
author_sort Changhyuk Kim
title Prediction of the Dynamic Stiffness of Resilient Materials using Artificial Neural Network (ANN) Technique
title_short Prediction of the Dynamic Stiffness of Resilient Materials using Artificial Neural Network (ANN) Technique
title_full Prediction of the Dynamic Stiffness of Resilient Materials using Artificial Neural Network (ANN) Technique
title_fullStr Prediction of the Dynamic Stiffness of Resilient Materials using Artificial Neural Network (ANN) Technique
title_full_unstemmed Prediction of the Dynamic Stiffness of Resilient Materials using Artificial Neural Network (ANN) Technique
title_sort prediction of the dynamic stiffness of resilient materials using artificial neural network (ann) technique
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2019-03-01
description High-rise residential buildings are constructed in countries with high population density in response to the need to utilize small development areas. As many high-rise buildings are being constructed, issues of floor impact sound tend to occur in buildings. In general, resilient materials are implemented between the slab and the finishing mortar to control the floor impact sound. Various mechanical properties of resilient materials can affect the floor impact sound. To investigate the impact sound reduction capacity, various experimental tests were conducted. The test results show that the floor impact sound reduction capacity has a close relationship with the dynamic stiffness of resilient materials. A total of six different kinds of resilient materials were loaded under four loading conditions. The test results show that loading time, loading, and material properties influence the change in dynamic stiffness. Artificial neural network (ANN) technique was implemented to obtain the responses between the deflection and dynamic stiffness. Three different algorithms were considered in the ANN models and the trained results were analyzed based on the root mean square error. The feasibility of using the ANN technique was verified with a high and consistent level of accuracy.
topic artificial neural network
data regression
resilient material
long-term load
dynamic stiffness
url http://www.mdpi.com/2076-3417/9/6/1088
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AT jungyoonlee predictionofthedynamicstiffnessofresilientmaterialsusingartificialneuralnetworkanntechnique
AT moonhyunkim predictionofthedynamicstiffnessofresilientmaterialsusingartificialneuralnetworkanntechnique
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