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Supervised Learning Methods for Modeling Concrete Compressive Strength Prediction at High Temperature

Supervised learning algorithms are a recent trend for the prediction of mechanical properties of concrete. This paper presents AdaBoost, random forest (RF), and decision tree (DT) models for predicting the compressive strength of concrete at high temperature, based on the experimental data of 207 te...

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Autores principales: Ahmad, Mahmood, Hu, Ji-Lei, Ahmad, Feezan, Tang, Xiao-Wei, Amjad, Maaz, Iqbal, Muhammad Junaid, Asim, Muhammad, Farooq, Asim
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8071252/
https://www.ncbi.nlm.nih.gov/pubmed/33920988
http://dx.doi.org/10.3390/ma14081983
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author Ahmad, Mahmood
Hu, Ji-Lei
Ahmad, Feezan
Tang, Xiao-Wei
Amjad, Maaz
Iqbal, Muhammad Junaid
Asim, Muhammad
Farooq, Asim
author_facet Ahmad, Mahmood
Hu, Ji-Lei
Ahmad, Feezan
Tang, Xiao-Wei
Amjad, Maaz
Iqbal, Muhammad Junaid
Asim, Muhammad
Farooq, Asim
author_sort Ahmad, Mahmood
collection PubMed
description Supervised learning algorithms are a recent trend for the prediction of mechanical properties of concrete. This paper presents AdaBoost, random forest (RF), and decision tree (DT) models for predicting the compressive strength of concrete at high temperature, based on the experimental data of 207 tests. The cement content, water, fine and coarse aggregates, silica fume, nano silica, fly ash, super plasticizer, and temperature were used as inputs for the models’ development. The performance of the AdaBoost, RF, and DT models are assessed using statistical indices, including the coefficient of determination (R(2)), root mean squared error-observations standard deviation ratio (RSR), mean absolute percentage error, and relative root mean square error. The applications of the above-mentioned approach for predicting the compressive strength of concrete at high temperature are compared with each other, and also to the artificial neural network and adaptive neuro-fuzzy inference system models described in the literature, to demonstrate the suitability of using the supervised learning methods for modeling to predict the compressive strength at high temperature. The results indicated a strong correlation between experimental and predicted values, with R(2) above 0.9 and RSR lower than 0.5 during the learning and testing phases for the AdaBoost model. Moreover, the cement content in the mix was revealed as the most sensitive parameter by sensitivity analysis.
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spelling pubmed-80712522021-04-26 Supervised Learning Methods for Modeling Concrete Compressive Strength Prediction at High Temperature Ahmad, Mahmood Hu, Ji-Lei Ahmad, Feezan Tang, Xiao-Wei Amjad, Maaz Iqbal, Muhammad Junaid Asim, Muhammad Farooq, Asim Materials (Basel) Article Supervised learning algorithms are a recent trend for the prediction of mechanical properties of concrete. This paper presents AdaBoost, random forest (RF), and decision tree (DT) models for predicting the compressive strength of concrete at high temperature, based on the experimental data of 207 tests. The cement content, water, fine and coarse aggregates, silica fume, nano silica, fly ash, super plasticizer, and temperature were used as inputs for the models’ development. The performance of the AdaBoost, RF, and DT models are assessed using statistical indices, including the coefficient of determination (R(2)), root mean squared error-observations standard deviation ratio (RSR), mean absolute percentage error, and relative root mean square error. The applications of the above-mentioned approach for predicting the compressive strength of concrete at high temperature are compared with each other, and also to the artificial neural network and adaptive neuro-fuzzy inference system models described in the literature, to demonstrate the suitability of using the supervised learning methods for modeling to predict the compressive strength at high temperature. The results indicated a strong correlation between experimental and predicted values, with R(2) above 0.9 and RSR lower than 0.5 during the learning and testing phases for the AdaBoost model. Moreover, the cement content in the mix was revealed as the most sensitive parameter by sensitivity analysis. MDPI 2021-04-15 /pmc/articles/PMC8071252/ /pubmed/33920988 http://dx.doi.org/10.3390/ma14081983 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Ahmad, Mahmood
Hu, Ji-Lei
Ahmad, Feezan
Tang, Xiao-Wei
Amjad, Maaz
Iqbal, Muhammad Junaid
Asim, Muhammad
Farooq, Asim
Supervised Learning Methods for Modeling Concrete Compressive Strength Prediction at High Temperature
title Supervised Learning Methods for Modeling Concrete Compressive Strength Prediction at High Temperature
title_full Supervised Learning Methods for Modeling Concrete Compressive Strength Prediction at High Temperature
title_fullStr Supervised Learning Methods for Modeling Concrete Compressive Strength Prediction at High Temperature
title_full_unstemmed Supervised Learning Methods for Modeling Concrete Compressive Strength Prediction at High Temperature
title_short Supervised Learning Methods for Modeling Concrete Compressive Strength Prediction at High Temperature
title_sort supervised learning methods for modeling concrete compressive strength prediction at high temperature
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8071252/
https://www.ncbi.nlm.nih.gov/pubmed/33920988
http://dx.doi.org/10.3390/ma14081983
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