Application of Ensemble Machine Learning Methods to Estimate the Compressive Strength of Fiber-Reinforced Nano-Silica Modified Concrete

被引:23
作者
Anjum, Madiha [1 ]
Khan, Kaffayatullah [2 ]
Ahmad, Waqas [3 ]
Ahmad, Ayaz [4 ,5 ]
Amin, Muhammad Nasir [2 ]
Nafees, Afnan [3 ]
机构
[1] King Faisal Univ, Coll Comp Sci & Informat, Dept Comp Engn, Technol, Al Hasa 31982, Saudi Arabia
[2] King Faisal Univ, Coll Engn, Dept Civil & Environm Engn, Al Hasa 31982, Saudi Arabia
[3] COMSATS Univ Islamabad, Dept Civil Engn, Abbottabad 22060, Pakistan
[4] Natl Univ Ireland Galway, Coll Sci & Engn, MaREI Ctr, Ryan Inst, Galway H91 TK33, Ireland
[5] Natl Univ Ireland Galway, Coll Sci & Engn, Sch Engn, Galway H91 TK33, Ireland
关键词
concrete; fiber-reinforced concrete; nano-silica; nano-silica modified concrete; compressive strength; RECYCLED AGGREGATE CONCRETE; ARTIFICIAL NEURAL-NETWORK; POLYPROPYLENE FIBERS; MECHANICAL-PROPERTIES; DURABILITY PROPERTIES; MICRO-SILICA; PERFORMANCE; PREDICTION; STEEL; NANO-SIO2;
D O I
10.3390/polym14183906
中图分类号
O63 [高分子化学(高聚物)];
学科分类号
070305 ; 080501 ; 081704 ;
摘要
In this study, compressive strength (CS) of fiber-reinforced nano-silica concrete (FRNSC) was anticipated using ensemble machine learning (ML) approaches. Four types of ensemble ML methods were employed, including gradient boosting, random forest, bagging regressor, and AdaBoost regressor, to achieve the study's aims. The validity of employed models was tested and compared using the statistical tests, coefficient of determination (R-2), and k-fold method. Moreover, a Shapley Additive Explanations (SHAP) analysis was used to observe the interaction and effect of input parameters on the CS of FRNSC. Six input features, including fiber volume, coarse aggregate to fine aggregate ratio, water to binder ratio, nano-silica, superplasticizer to binder ratio, and specimen age, were used for modeling. In predicting the CS of FRNSC, it was observed that gradient boosting was the model of lower accuracy and the AdaBoost regressor had the highest precision in forecasting the CS of FRNSC. However, the performance of random forest and the bagging regressor was also comparable to that of the AdaBoost regressor model. The R-2 for the gradient boosting, random forest, bagging regressor, and AdaBoost regressor models were 0.82, 0.91, 0.91, and 0.92, respectively. Also, the error values of the models further validated the exactness of the ML methods. The average error values for the gradient boosting, random forest, bagging regressor, and AdaBoost regressor models were 5.92, 4.38, 4.24, and 3.73 MPa, respectively. SHAP study discovered that the coarse aggregate to fine aggregate ratio shows a greater negative correlation with FRNSC's CS. However, specimen age affects FRNSC CS positively. Nano-silica, fiber volume, and the ratio of superplasticizer to binder have both positive and deleterious effects on the CS of FRNSC. Employing these methods will promote the building sector by presenting fast and economical methods for calculating material properties and the impact of raw ingredients.
引用
收藏
页数:23
相关论文
共 93 条
[51]   Temperature impact on residual properties of self-compacting based hybrid fiber reinforced concrete with fly ash and colloidal nano silica [J].
Mahapatra, Chinmaya Kumar ;
Barai, Sudhirkumar V. .
CONSTRUCTION AND BUILDING MATERIALS, 2019, 198 :120-132
[52]   Influence of nano- and micro-silica additions on the durability of a high-performance self-compacting concrete [J].
Massana, Jordi ;
Reyes, Encarnacion ;
Bernal, Jesus ;
Leon, Nestor ;
Sanchez-Espinosa, Elvira .
CONSTRUCTION AND BUILDING MATERIALS, 2018, 165 :93-103
[53]   Properties of nano-silica modified pervious concrete [J].
Mohammed, Bashar S. ;
Liew, Mohd Shahir ;
Alaloul, Wesam S. ;
Khed, Veerendrakumar C. ;
Hoong, Cheah Yit ;
Adamu, Musa .
CASE STUDIES IN CONSTRUCTION MATERIALS, 2018, 8 :409-422
[54]   Compressive strength prediction for concrete modified with nanomaterials [J].
Murad, Yasmin .
CASE STUDIES IN CONSTRUCTION MATERIALS, 2021, 15
[55]   Forecasting the Mechanical Properties of Plastic Concrete Employing Experimental Data Using Machine Learning Algorithms: DT, MLPNN, SVM, and RF [J].
Nafees, Afnan ;
Khan, Sherbaz ;
Javed, Muhammad Faisal ;
Alrowais, Raid ;
Mohamed, Abdeliazim Mustafa ;
Mohamed, Abdullah ;
Vatin, Nikolai Ivanovic .
POLYMERS, 2022, 14 (08)
[56]   Modeling of Mechanical Properties of Silica Fume-Based Green Concrete Using Machine Learning Techniques [J].
Nafees, Afnan ;
Amin, Muhammad Nasir ;
Khan, Kaffayatullah ;
Nazir, Kashif ;
Ali, Mujahid ;
Javed, Muhammad Faisal ;
Aslam, Fahid ;
Musarat, Muhammad Ali ;
Vatin, Nikolai Ivanovich .
POLYMERS, 2022, 14 (01)
[57]   Predictive Modeling of Mechanical Properties of Silica Fume-Based Green Concrete Using Artificial Intelligence Approaches: MLPNN, ANFIS, and GEP [J].
Nafees, Afnan ;
Javed, Muhammad Faisal ;
Khan, Sherbaz ;
Nazir, Kashif ;
Farooq, Furqan ;
Aslam, Fahid ;
Musarat, Muhammad Ali ;
Vatin, Nikolai Ivanovich .
MATERIALS, 2021, 14 (24)
[58]   Prediction of compressive strength of concrete by neural networks [J].
Ni, HG ;
Wang, JZ .
CEMENT AND CONCRETE RESEARCH, 2000, 30 (08) :1245-1250
[59]   Microstructural analysis of self-compacting concrete modified with the addition of nanoparticles [J].
Niewiadomski, Pawel ;
Stefaniuk, Damian ;
Hola, Jerzy .
MODERN BUILDING MATERIALS, STRUCTURES AND TECHNIQUES, 2017, 172 :776-783
[60]   Applications of using nano material in concrete: A review [J].
Norhasri, M. S. Muhd ;
Hamidah, M. S. ;
Fadzil, A. Mohd .
CONSTRUCTION AND BUILDING MATERIALS, 2017, 133 :91-97