The low tensile strain capacity and brittle nature of high-strength concrete (HSC) can be improved by incorporating steel fibers into it. Steel fibers’ addition in HSC results in bridging behavior which improves its post-cracking behavior, provides cracks arresting and stresses transfer in concrete. Using machine learning (ML) techniques, concrete properties prediction is an effective solution to conserve construction time and cost. Therefore, sophisticated ML approaches are applied in this study to predict the compressive strength of steel fiber reinforced HSC (SFRHSC). To fulfil this purpose, a standalone ML model called Multiple-Layer Perceptron Neural Network (MLPNN) and ensembled ML algorithms named Bagging and Adaptive Boosting (AdaBo...
This paper presents machine learning (ML) models for high fidelity prediction of compressive strengt...
The advent of rapid industrialization and urbanization all over the world has led to the depletion o...
In this study, the predictive capability for compressive strength of IBK a K-Nearest Neighbor algori...
Estimating concrete properties using soft computing techniques has been shown to be a time and cost-...
Recently, research has centered on developing new approaches, such as supervised machine learning te...
Steel-fiber-reinforced concrete (SFRC) has emerged as a viable and efficient substitute for traditio...
In this research, we present an efficient implementation of machine learning (ML) models that foreca...
An irregular distribution of steel fibers in fresh concrete results in a complex structure. This cau...
Steel fibers enhance the flexural strength, the compressive strength and the ductility of untra-high...
Recently, artificial intelligence (AI) approaches have gained the attention of researchers in the ci...
Using soft computing methods could be of great interest in predicting the compressive strength of Ul...
Experimental studies using a substantial number of datasets can be avoided by employing efficient me...
This investigation delves into the mechanical characteristics of Basalt Fiber Reinforced Concrete (B...
In this study, the predictive capabilityfor compressive strength of IBk (Instance-Bases l...
Current development of high-performance fiber-reinforced cementitious composites (HPFRCC) mainly rel...
This paper presents machine learning (ML) models for high fidelity prediction of compressive strengt...
The advent of rapid industrialization and urbanization all over the world has led to the depletion o...
In this study, the predictive capability for compressive strength of IBK a K-Nearest Neighbor algori...
Estimating concrete properties using soft computing techniques has been shown to be a time and cost-...
Recently, research has centered on developing new approaches, such as supervised machine learning te...
Steel-fiber-reinforced concrete (SFRC) has emerged as a viable and efficient substitute for traditio...
In this research, we present an efficient implementation of machine learning (ML) models that foreca...
An irregular distribution of steel fibers in fresh concrete results in a complex structure. This cau...
Steel fibers enhance the flexural strength, the compressive strength and the ductility of untra-high...
Recently, artificial intelligence (AI) approaches have gained the attention of researchers in the ci...
Using soft computing methods could be of great interest in predicting the compressive strength of Ul...
Experimental studies using a substantial number of datasets can be avoided by employing efficient me...
This investigation delves into the mechanical characteristics of Basalt Fiber Reinforced Concrete (B...
In this study, the predictive capabilityfor compressive strength of IBk (Instance-Bases l...
Current development of high-performance fiber-reinforced cementitious composites (HPFRCC) mainly rel...
This paper presents machine learning (ML) models for high fidelity prediction of compressive strengt...
The advent of rapid industrialization and urbanization all over the world has led to the depletion o...
In this study, the predictive capability for compressive strength of IBK a K-Nearest Neighbor algori...