Application of artificial neural networks to predict compressive strength of high strength concrete

A method to predict 28-day compressive strength of high strength concrete (HSC) by using MFNNs is proposed in this paper. The artificial neural networks (ANN) model is constructed trained and tested using the available data. A total of 368 different data of HSC mix-designs were collected from tech...

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Main Authors: Seyed Hakim, Seyed Jamalaldin, Noorzaei, Jamaloddin, Jaafar, M. S., Mohammed Jameel, Mohammed Jameel, Mohammadhassani, Mohammad
Format: Article
Language:en
Published: Academic Journals 2011
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Online Access:http://eprints.uthm.edu.my/7901/1/J14684_8bd68f76e56b12f43d7e299154b6ff90.pdf
http://eprints.uthm.edu.my/7901/
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author Seyed Hakim, Seyed Jamalaldin
Noorzaei, Jamaloddin
Jaafar, M. S.
Mohammed Jameel, Mohammed Jameel
Mohammadhassani, Mohammad
author_facet Seyed Hakim, Seyed Jamalaldin
Noorzaei, Jamaloddin
Jaafar, M. S.
Mohammed Jameel, Mohammed Jameel
Mohammadhassani, Mohammad
author_sort Seyed Hakim, Seyed Jamalaldin
building UTHM Library
collection Institutional Repository
content_provider Universiti Tun Hussein Onn Malaysia
content_source UTHM Institutional Repository
continent Asia
country Malaysia
description A method to predict 28-day compressive strength of high strength concrete (HSC) by using MFNNs is proposed in this paper. The artificial neural networks (ANN) model is constructed trained and tested using the available data. A total of 368 different data of HSC mix-designs were collected from technical literature. The data used to predict the compressive strength with ANN consisted of eight input parameters which include cement, water, coarse aggregate, fine aggregate, silica fume, superplasticizer, fly ash and granulated grated blast furnace slag. For the training phase, different combinations of layers, number of neurons, learning rate, momentum and activation functions were considered. The training was terminated when the root mean square error (RMSE) reached or was less than 0.001 and the results were tested with test data set. A total of 30 architectures were studied and the 8-10-6-1 architecture was the best possible architecture. The results show that the relative percentage error (RPE) for the training set was 7.02% and the testing set was 12.64%. The ANNs models give high prediction accuracy, and the research results demonstrate that using ANNs to predict concrete strength is practical and beneficial.
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spelling my.uthm.eprints-79012022-10-17T06:23:00Z http://eprints.uthm.edu.my/7901/ Application of artificial neural networks to predict compressive strength of high strength concrete Seyed Hakim, Seyed Jamalaldin Noorzaei, Jamaloddin Jaafar, M. S. Mohammed Jameel, Mohammed Jameel Mohammadhassani, Mohammad T Technology (General) A method to predict 28-day compressive strength of high strength concrete (HSC) by using MFNNs is proposed in this paper. The artificial neural networks (ANN) model is constructed trained and tested using the available data. A total of 368 different data of HSC mix-designs were collected from technical literature. The data used to predict the compressive strength with ANN consisted of eight input parameters which include cement, water, coarse aggregate, fine aggregate, silica fume, superplasticizer, fly ash and granulated grated blast furnace slag. For the training phase, different combinations of layers, number of neurons, learning rate, momentum and activation functions were considered. The training was terminated when the root mean square error (RMSE) reached or was less than 0.001 and the results were tested with test data set. A total of 30 architectures were studied and the 8-10-6-1 architecture was the best possible architecture. The results show that the relative percentage error (RPE) for the training set was 7.02% and the testing set was 12.64%. The ANNs models give high prediction accuracy, and the research results demonstrate that using ANNs to predict concrete strength is practical and beneficial. Academic Journals 2011 Article PeerReviewed text en http://eprints.uthm.edu.my/7901/1/J14684_8bd68f76e56b12f43d7e299154b6ff90.pdf Seyed Hakim, Seyed Jamalaldin and Noorzaei, Jamaloddin and Jaafar, M. S. and Mohammed Jameel, Mohammed Jameel and Mohammadhassani, Mohammad (2011) Application of artificial neural networks to predict compressive strength of high strength concrete. International Journal of the Physical Sciences, 6 (5). pp. 975-981.
spellingShingle T Technology (General)
Seyed Hakim, Seyed Jamalaldin
Noorzaei, Jamaloddin
Jaafar, M. S.
Mohammed Jameel, Mohammed Jameel
Mohammadhassani, Mohammad
Application of artificial neural networks to predict compressive strength of high strength concrete
title Application of artificial neural networks to predict compressive strength of high strength concrete
title_full Application of artificial neural networks to predict compressive strength of high strength concrete
title_fullStr Application of artificial neural networks to predict compressive strength of high strength concrete
title_full_unstemmed Application of artificial neural networks to predict compressive strength of high strength concrete
title_short Application of artificial neural networks to predict compressive strength of high strength concrete
title_sort application of artificial neural networks to predict compressive strength of high strength concrete
topic T Technology (General)
url http://eprints.uthm.edu.my/7901/1/J14684_8bd68f76e56b12f43d7e299154b6ff90.pdf
http://eprints.uthm.edu.my/7901/
url_provider http://eprints.uthm.edu.my/