In this study, it was proposed a novel prediction model to predict compressive strength of mortar samples having different properties. For this purpose, 8 different fly ashes were used in mortar mixture as a replacement of cement by weight. Mortars including different ashes were prepared with addition of 10%, 20%, 30% and 40% fly ash. Compressive strength of the produced mortar samples were evaluated at 1, 3, 7, 28, 90 and 365 days. Totally 196 test samples were produced and mechanically tested. The relation between compressive strength values (dependent value) and SiO2 + Al2O3 + Fe2O3 content, age, and fly ash replacement ratios (independent values) were predicted by machine learning techniques such as Artificial Neural Networks (ANN) and ...
In the 21st century, numerous numerical calculation techniques have been discovered and used in seve...
Forecasting the compressive strength of concrete is a complex task owing to the interactions among c...
Geopolymers are inorganic polymers produced by the alkali activation of alumina-silicate minerals. G...
In this study, it was proposed a novel prediction model to predict compressive strength of mortar sa...
Replacing a specified quantity of cement with Class F fly ash contributes to sustainable development...
In this study, an artificial neural network (ANN) model for studying the strength properties of stee...
Geopolymer concrete (GPC) has been used as a partial replacement of Portland cement concrete (PCC) i...
Green concrete has been widely used in recent years because its production compliments environmental...
The paper presents a comparative performance of the models developed to predict 28 days compressive ...
Fly ash, a by-product procured from thermal power plants have been used alternatively in varying pro...
Artificial intelligence and machine learning are employed in creating functions for the prediction o...
Fly ash (FA)-based geopolymer concrete is considered as an alternative system with potentially lower...
Abstract Integrating artificial intelligence and green concrete in the construction industry is a ch...
Excessive materials are being manufactured, and along with it are the waste products that are being ...
This article presents a regression tool for predicting the compressive strength of fly ash (FA) geop...
In the 21st century, numerous numerical calculation techniques have been discovered and used in seve...
Forecasting the compressive strength of concrete is a complex task owing to the interactions among c...
Geopolymers are inorganic polymers produced by the alkali activation of alumina-silicate minerals. G...
In this study, it was proposed a novel prediction model to predict compressive strength of mortar sa...
Replacing a specified quantity of cement with Class F fly ash contributes to sustainable development...
In this study, an artificial neural network (ANN) model for studying the strength properties of stee...
Geopolymer concrete (GPC) has been used as a partial replacement of Portland cement concrete (PCC) i...
Green concrete has been widely used in recent years because its production compliments environmental...
The paper presents a comparative performance of the models developed to predict 28 days compressive ...
Fly ash, a by-product procured from thermal power plants have been used alternatively in varying pro...
Artificial intelligence and machine learning are employed in creating functions for the prediction o...
Fly ash (FA)-based geopolymer concrete is considered as an alternative system with potentially lower...
Abstract Integrating artificial intelligence and green concrete in the construction industry is a ch...
Excessive materials are being manufactured, and along with it are the waste products that are being ...
This article presents a regression tool for predicting the compressive strength of fly ash (FA) geop...
In the 21st century, numerous numerical calculation techniques have been discovered and used in seve...
Forecasting the compressive strength of concrete is a complex task owing to the interactions among c...
Geopolymers are inorganic polymers produced by the alkali activation of alumina-silicate minerals. G...