The current trend in modern research revolves around novel techniques that can predict the characteristics of materials without consuming time, effort, and experimental costs. The adaptation of machine learning techniques to compute the various properties of materials is gaining more attention. This study aims to use both standalone and ensemble machine learning techniques to forecast the 28-day compressive strength of high-performance concrete. One standalone technique (support vector regression (SVR)) and two ensemble techniques (AdaBoost and random forest) were applied for this purpose. To validate the performance of each technique, coefficient of determination (R2), statistical, and k-fold cross-validation checks were used. Additionally...
Early and accurate prediction of the compressive strength of concrete is important in the constructi...
Currently, one of the topical areas of application of machine learning methods in the construction i...
The application of artificial intelligence approaches like machine learning (ML) to forecast materia...
The current trend in modern research revolves around novel techniques that can predict the character...
Recently, research has centered on developing new approaches, such as supervised machine learning te...
In this study, an efficient implementation of machine learning models to predict compressive and ten...
This paper presents machine learning (ML) models for high fidelity prediction of compressive strengt...
The prediction results of high-performance concrete compressive strength (HPCCS) based on machine le...
The utilization of waste material, such as fly ash, in the concrete industry will provide a valuable...
Accurate prediction of the compressive strength of concrete is of great significance to construction...
Compressive strength is the most significant metric to evaluate the mechanical properties of concret...
The entraining and distribution of air voids in the concrete matrix is a complex process that makes ...
A comparative analysis for the prediction of compressive strength of concrete at the ages of 28, 56,...
In this research, we present an efficient implementation of machine learning (ML) models that foreca...
Strength of concrete is the major parameter in the design of structures and is represented by the 28...
Early and accurate prediction of the compressive strength of concrete is important in the constructi...
Currently, one of the topical areas of application of machine learning methods in the construction i...
The application of artificial intelligence approaches like machine learning (ML) to forecast materia...
The current trend in modern research revolves around novel techniques that can predict the character...
Recently, research has centered on developing new approaches, such as supervised machine learning te...
In this study, an efficient implementation of machine learning models to predict compressive and ten...
This paper presents machine learning (ML) models for high fidelity prediction of compressive strengt...
The prediction results of high-performance concrete compressive strength (HPCCS) based on machine le...
The utilization of waste material, such as fly ash, in the concrete industry will provide a valuable...
Accurate prediction of the compressive strength of concrete is of great significance to construction...
Compressive strength is the most significant metric to evaluate the mechanical properties of concret...
The entraining and distribution of air voids in the concrete matrix is a complex process that makes ...
A comparative analysis for the prediction of compressive strength of concrete at the ages of 28, 56,...
In this research, we present an efficient implementation of machine learning (ML) models that foreca...
Strength of concrete is the major parameter in the design of structures and is represented by the 28...
Early and accurate prediction of the compressive strength of concrete is important in the constructi...
Currently, one of the topical areas of application of machine learning methods in the construction i...
The application of artificial intelligence approaches like machine learning (ML) to forecast materia...