Shear Resistance of Reinforced Aerated Concrete Slabs: Prediction via Artificial Neural Networks
Autoclaved aerated concrete (AAC) provides advantageous material characteristics such as high thermal insulation and environmentally friendly properties. Besides its non-structural applications, AAC is being considered as a structural material due to its characteristics such as lighter weight compar...
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Yildiz Technical University
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doaj-9048c245aca74a5b8db824615aca7de02021-01-27T19:28:49ZengYildiz Technical UniversityJournal of Sustainable Construction Materials and Technologies2458-973X2019-10-014234435010.29187/jscmt.2019.38252Shear Resistance of Reinforced Aerated Concrete Slabs: Prediction via Artificial Neural NetworksAhmet Emin Kurtoğlu0Derya Bakbak1İSTANBUL RUMELİ ÜNİVERSİTESİTürkiye Büyük Millet MeclisiAutoclaved aerated concrete (AAC) provides advantageous material characteristics such as high thermal insulation and environmentally friendly properties. Besides its non-structural applications, AAC is being considered as a structural material due to its characteristics such as lighter weight compared to normal concrete. In this study, main focus is to test the usability of artificial neural networks (ANNs) in predicting the shear resistance of reinforced AAC slabs. A large experimental database with 271 data points extracted from eleven sources is used for ANN training and testing. Network training is accomplished via multi-layer backpropagation algorithm. Based on random selection, the dataset is partitioned into two portions, 75% for network training and 25% is for testing the validity of the network. Different models with a varying number of hidden neurons are developed to capture the network with optimum hidden neuron numbers. The results of each model are presented in terms of correlation coefficient (R 2 ) and mean squared error (MSE). Results suggest that the ANN model with seven hidden neurons is the simplest model with most accurate predictions and ANNs can provide excellent prediction ability with insignificant error rates.https://dergipark.org.tr/tr/pub/jscmt/issue/49566/635051artificial neural networksautoclaved aerated concrete reinforced concrete slabshear strengthmodelling |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ahmet Emin Kurtoğlu Derya Bakbak |
spellingShingle |
Ahmet Emin Kurtoğlu Derya Bakbak Shear Resistance of Reinforced Aerated Concrete Slabs: Prediction via Artificial Neural Networks Journal of Sustainable Construction Materials and Technologies artificial neural networks autoclaved aerated concrete reinforced concrete slab shear strength modelling |
author_facet |
Ahmet Emin Kurtoğlu Derya Bakbak |
author_sort |
Ahmet Emin Kurtoğlu |
title |
Shear Resistance of Reinforced Aerated Concrete Slabs: Prediction via Artificial Neural Networks |
title_short |
Shear Resistance of Reinforced Aerated Concrete Slabs: Prediction via Artificial Neural Networks |
title_full |
Shear Resistance of Reinforced Aerated Concrete Slabs: Prediction via Artificial Neural Networks |
title_fullStr |
Shear Resistance of Reinforced Aerated Concrete Slabs: Prediction via Artificial Neural Networks |
title_full_unstemmed |
Shear Resistance of Reinforced Aerated Concrete Slabs: Prediction via Artificial Neural Networks |
title_sort |
shear resistance of reinforced aerated concrete slabs: prediction via artificial neural networks |
publisher |
Yildiz Technical University |
series |
Journal of Sustainable Construction Materials and Technologies |
issn |
2458-973X |
publishDate |
2019-10-01 |
description |
Autoclaved aerated concrete (AAC) provides advantageous material characteristics such as high thermal
insulation and environmentally friendly properties. Besides its non-structural applications, AAC is being
considered as a structural material due to its characteristics such as lighter weight compared to normal concrete.
In this study, main focus is to test the usability of artificial neural networks (ANNs) in predicting the shear
resistance of reinforced AAC slabs. A large experimental database with 271 data points extracted from eleven
sources is used for ANN training and testing. Network training is accomplished via multi-layer backpropagation
algorithm. Based on random selection, the dataset is partitioned into two portions, 75% for network training and
25% is for testing the validity of the network. Different models with a varying number of hidden neurons are
developed to capture the network with optimum hidden neuron numbers. The results of each model are presented
in terms of correlation coefficient (R
2
) and mean squared error (MSE). Results suggest that the ANN model with
seven hidden neurons is the simplest model with most accurate predictions and ANNs can provide excellent
prediction ability with insignificant error rates. |
topic |
artificial neural networks autoclaved aerated concrete reinforced concrete slab shear strength modelling |
url |
https://dergipark.org.tr/tr/pub/jscmt/issue/49566/635051 |
work_keys_str_mv |
AT ahmeteminkurtoglu shearresistanceofreinforcedaeratedconcreteslabspredictionviaartificialneuralnetworks AT deryabakbak shearresistanceofreinforcedaeratedconcreteslabspredictionviaartificialneuralnetworks |
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