Fly ash (FA) is a residual from thermal industries that has been effectively utilized in the production of FA-based geopolymer concrete (FGPC). To avoid time-consuming and costly experimental procedures, soft computing techniques, namely, random forest regression (RFR) and gene expression programming (GEP), are used in this study to develop an empirical model for the prediction of compressive strength of FGPC. A widespread, reliable, and consistent database of compressive strength of FGPC is set up via a comprehensive literature review. The database consists of 298 compressive strength data points. The influential parameters that are considered as input variables for modelling are curing temperature T, curing time t, age of the specimen A, ...
GEP has been employed in this work to model the compressive strength of different types of geopolyme...
The application of artificial intelligence approaches like machine learning (ML) to forecast materia...
In the modelling study, two models are presented by gene expression programming (GEP) for estimation...
Fly ash (FA) is a residual from thermal industries that has been effectively utilized in the product...
Annually, the thermal coal industries produce billion tons of fly-ash (FA) as a waste by-product. Wh...
For the production of geopolymer concrete (GPC), fly-ash (FA) like waste material has been effective...
A variety of ashes used as the binder in geopolymer concrete such as fly ash (FA), ground granulated...
The performance of gene expression programming (GEP) in predicting the compressive strength of bacte...
In this paper, the effect of different factors including mixture proportions and curing conditions o...
Geopolymer concrete is an inorganic concrete that uses industrial or agro by-product ashes as the ma...
Geopolymer is an eco-friendly material used in civil engineering works. For geopolymer concrete (GPC...
Fly ash-based geopolymer concrete is studied in this research work for its compressive strength, lif...
The aim of this research is to predict preplaced-aggregate concrete (PAC) compressive strength (CS) ...
Geopolymer concrete offers a favourable alternative to conventional Portland concrete due to its red...
This article presents a comprehensive study aimed at developing suitable mathematicalmodels for the ...
GEP has been employed in this work to model the compressive strength of different types of geopolyme...
The application of artificial intelligence approaches like machine learning (ML) to forecast materia...
In the modelling study, two models are presented by gene expression programming (GEP) for estimation...
Fly ash (FA) is a residual from thermal industries that has been effectively utilized in the product...
Annually, the thermal coal industries produce billion tons of fly-ash (FA) as a waste by-product. Wh...
For the production of geopolymer concrete (GPC), fly-ash (FA) like waste material has been effective...
A variety of ashes used as the binder in geopolymer concrete such as fly ash (FA), ground granulated...
The performance of gene expression programming (GEP) in predicting the compressive strength of bacte...
In this paper, the effect of different factors including mixture proportions and curing conditions o...
Geopolymer concrete is an inorganic concrete that uses industrial or agro by-product ashes as the ma...
Geopolymer is an eco-friendly material used in civil engineering works. For geopolymer concrete (GPC...
Fly ash-based geopolymer concrete is studied in this research work for its compressive strength, lif...
The aim of this research is to predict preplaced-aggregate concrete (PAC) compressive strength (CS) ...
Geopolymer concrete offers a favourable alternative to conventional Portland concrete due to its red...
This article presents a comprehensive study aimed at developing suitable mathematicalmodels for the ...
GEP has been employed in this work to model the compressive strength of different types of geopolyme...
The application of artificial intelligence approaches like machine learning (ML) to forecast materia...
In the modelling study, two models are presented by gene expression programming (GEP) for estimation...