Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/129299
Title: Modeling of mechanical properties of silica fume-based green concrete using machine learning techniques
Authors: Nafees, Afnan
Amin, Muhammad Nasir
Khan, Kaffayatullah
Nazir, Kashif
Ali, Mujahid
Javed, Muhammad Faisal
Aslam, Fahid
Musarat, Muhammad Ali
Vatin, Nikolai Ivanovich
Keywords: Silica fume
Sustainable construction
Waste products as building materials
Building materials -- Environmental aspects
Machine learning
Support vector machines
Construction industry -- Statistical methods
Issue Date: 2021
Publisher: MDPI AG
Citation: Nafees, A., Amin, M. N., Khan, K., Nazir, K., Ali, M., Javed, M. F., ... & Vatin, N. I. (2021). Modeling of mechanical properties of silica fume-based green concrete using machine learning techniques. Polymers, 14(1), 30.
Abstract: Silica fume (SF) is a frequently used mineral admixture in producing sustainable concrete in the construction sector. Incorporating SF as a partial substitution of cement in concrete has obvious advantages, including reduced CO2 emission, cost-effective concrete, enhanced durability, and mechanical properties. Due to ever-increasing environmental concerns, the development of predictive machine learning (ML) models requires time. Therefore, the present study focuses on developing modeling techniques in predicting the compressive strength of silica fume concrete. The employed techniques include decision tree (DT) and support vector machine (SVM). An extensive and reliable database of 283 compressive strengths was established from the available literature information. The six most influential factors, i.e., cement, fine aggregate, coarse aggregate, water, superplasticizer, and silica fume, were considered as significant input parameters. The evaluation of models was performed by different statistical parameters, such as mean absolute error (MAE), root mean squared error (RMSE), root mean squared log error (RMSLE), and coefficient of determination (R2). Individual and ensemble models of DT and SVM showed satisfactory results with high prediction accuracy. Statistical analyses indicated that DT models bested SVM for predicting compressive strength. Ensemble modeling showed an enhancement of 11 percent and 1.5 percent for DT and SVM compressive strength models, respectively, as depicted by statistical parameters. Moreover, sensitivity analyses showed that cement and water are the governing parameters in developing compressive strength. A cross-validation technique was used to avoid overfitting issues and confirm the generalized modeling output. ML algorithms are used to predict SFC compressive strength to promote the use of green concrete.
URI: https://www.um.edu.mt/library/oar/handle/123456789/129299
Appears in Collections:Scholarly Works - FacBenCPM



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