Concrete is the most widely used building material, but it is also a recognized pollutant, causing significant issues for sustainability in terms of resource depletion, energy use, and greenhouse gas emissions. As a result, efforts should be concentrated on reducing concrete’s environmental consequences in order to increase its long-term viability. In order to design environmentally friendly concrete mixtures, this research intended to create a prediction model for the compressive strength of those mixtures. The concrete mixtures that were used in this study to build our proposed prediction model are concrete mixtures that contain both recycled aggregate concrete (RAC) and ground granulated blast-furnace slag (GGBFS). A white-box machine le...
Climate change has become trending news due to its serious impacts on Earth. Initiatives are being t...
The aim of this research is to predict preplaced-aggregate concrete (PAC) compressive strength (CS) ...
The advancement of machine learning (ML) models has received remarkable attention by several science...
Recently, various waste materials and industrial by-products such as supplementary cementitious mate...
Abstract Integrating artificial intelligence and green concrete in the construction industry is a ch...
A crucial factor in the efficient design of concrete sustainable buildings is the compressive streng...
Numerous tests are used to determine the performance of concrete, but compressive strength (CS) is u...
Replacing a specified quantity of cement with Class F fly ash contributes to sustainable development...
With its growing emphasis on sustainability, the construction industry is increasingly interested in...
This paper presents machine learning (ML) models for high fidelity prediction of compressive strengt...
In the construction and cement manufacturing sectors, the development of artificial intelligence mod...
To minimize the environmental risks and for sustainable development, the utilization of recycled agg...
Published online: 1 August 2018This paper investigates the application of three artificial intellige...
Fly ash-based geopolymer concrete is studied in this research work for its compressive strength, lif...
In recent decades, a variety of organizational sectors have demanded and researched green structural...
Climate change has become trending news due to its serious impacts on Earth. Initiatives are being t...
The aim of this research is to predict preplaced-aggregate concrete (PAC) compressive strength (CS) ...
The advancement of machine learning (ML) models has received remarkable attention by several science...
Recently, various waste materials and industrial by-products such as supplementary cementitious mate...
Abstract Integrating artificial intelligence and green concrete in the construction industry is a ch...
A crucial factor in the efficient design of concrete sustainable buildings is the compressive streng...
Numerous tests are used to determine the performance of concrete, but compressive strength (CS) is u...
Replacing a specified quantity of cement with Class F fly ash contributes to sustainable development...
With its growing emphasis on sustainability, the construction industry is increasingly interested in...
This paper presents machine learning (ML) models for high fidelity prediction of compressive strengt...
In the construction and cement manufacturing sectors, the development of artificial intelligence mod...
To minimize the environmental risks and for sustainable development, the utilization of recycled agg...
Published online: 1 August 2018This paper investigates the application of three artificial intellige...
Fly ash-based geopolymer concrete is studied in this research work for its compressive strength, lif...
In recent decades, a variety of organizational sectors have demanded and researched green structural...
Climate change has become trending news due to its serious impacts on Earth. Initiatives are being t...
The aim of this research is to predict preplaced-aggregate concrete (PAC) compressive strength (CS) ...
The advancement of machine learning (ML) models has received remarkable attention by several science...