This research used gene expression programming (GEP) and multi expression programming (MEP) to determine the compressive strength (CS) of alkali-activated material (AAM) to compare and develop more reliable genetic algorithm-based prediction models. To learn more about how raw ingredients affect and interact with the CS of AAM, a SHapley Additive exPlanations (SHAP) analysis was conducted. A comprehensive dataset containing 676 points with fifteen influential parameters was formulated from the previously published literature. According to this study, considering the impact of 15 input variables, both genetic algorithms produced results close to the experimental CS (retrieved from the literature). When the performance of the GEP and MEP mode...
5siAlkali-activated products composed of industrial waste materials have shown promising environment...
Alkali-activated materials(AAM) are known to be environmentally friendly alternatives to cement-base...
This study used machine learning methods to predict the water absorption (W-A) of cement-based mater...
This article presents a comprehensive study aimed at developing suitable mathematicalmodels for the ...
Alkali-activated system is an environment-friendly, sustainable construction material utilized to re...
This paper presents the outcome of work conducted to develop models for the prediction of compressiv...
Alkali-activated mortar (AAM) is an emerging eco-friendly construction material, which can complemen...
Fly ash (FA) is a residual from thermal industries that has been effectively utilized in the product...
Fly ash (FA) is a residual from thermal industries that has been effectively utilized in the product...
Rapid industrialization is leading to the pollution of underground natural soil by alkali concentrat...
An experimental investigation was conducted to synthesise an alkali-activated binder using natural p...
In this paper, the effect of different factors including mixture proportions and curing conditions o...
Multi-scale experimental investigation and machine-learning modeling of alkali-silica reaction (ASR)...
The significant difference in water-to-binder ratio, activator type and concentration between alkali...
The development of environmentally friendly alkaline-activated materials (AAMs) holds promise, as AA...
5siAlkali-activated products composed of industrial waste materials have shown promising environment...
Alkali-activated materials(AAM) are known to be environmentally friendly alternatives to cement-base...
This study used machine learning methods to predict the water absorption (W-A) of cement-based mater...
This article presents a comprehensive study aimed at developing suitable mathematicalmodels for the ...
Alkali-activated system is an environment-friendly, sustainable construction material utilized to re...
This paper presents the outcome of work conducted to develop models for the prediction of compressiv...
Alkali-activated mortar (AAM) is an emerging eco-friendly construction material, which can complemen...
Fly ash (FA) is a residual from thermal industries that has been effectively utilized in the product...
Fly ash (FA) is a residual from thermal industries that has been effectively utilized in the product...
Rapid industrialization is leading to the pollution of underground natural soil by alkali concentrat...
An experimental investigation was conducted to synthesise an alkali-activated binder using natural p...
In this paper, the effect of different factors including mixture proportions and curing conditions o...
Multi-scale experimental investigation and machine-learning modeling of alkali-silica reaction (ASR)...
The significant difference in water-to-binder ratio, activator type and concentration between alkali...
The development of environmentally friendly alkaline-activated materials (AAMs) holds promise, as AA...
5siAlkali-activated products composed of industrial waste materials have shown promising environment...
Alkali-activated materials(AAM) are known to be environmentally friendly alternatives to cement-base...
This study used machine learning methods to predict the water absorption (W-A) of cement-based mater...