Low-carbon embodied alkali-activated materials for sustainable construction: A comparative study of single and ensemble learners

Author:

Amin Muhammad Nasir1,Khan Suleman Ayub2,Alawi Al-Naghi Ahmed A.3,Latifee Enamur R.3,Alnawmasi Nawaf3,Deifalla Ahmed Farouk4

Affiliation:

1. Department of Civil and Environmental Engineering, College of Engineering, King Faisal University , Al-Ahsa 31982 , Saudi Arabia

2. Department of Civil Engineering, COMSATS University Islamabad , Abbottabad 22060 , Pakistan

3. Civil Engineering Department, University of Ha’il , Ha’il 55476 , Saudi Arabia

4. Department of Structural Engineering and Construction Management, Future University in Egypt , New Cairo City 11835 , Egypt

Abstract

Abstract Popular and eco-friendly alkali-activated materials (AAMs) replace Portland cement concrete. Due to the considerable compositional variability of AAMs and the inability of established materials science methods to understand composition–performance relationships, accurate property forecasts have proved impossible. This study set out to develop AAM compressive strength (CS) evaluation machine learning (ML) models using techniques including extreme gradient boosting (XGB), bagging regressor (BR), and multi-layer perceptron neural network (MLPNN). Ten input variables were used with a large dataset of 676 points. Statistical and K-fold studies were also used to evaluate the developed models’ correctness. XGB predicted the CS of AAM the best, followed by BR and MLPNN. The MLPNN and BR models had R 2 values of 0.80 and 0.90, respectively, whereas the XGB model had 0.94. Results from statistical analyses and k-fold cross-validation of the used ML models further attest to their validity. The built models can potentially compute the CS of AAMs for a variety of input parameter values, reducing the requirement for costly and time-consuming laboratory testing. Researchers and businesses may find this study useful in determining the necessary quantities of AAMs’ raw components.

Publisher

Walter de Gruyter GmbH

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