Development of Prediction Model to Predict the Compressive Strength of Eco-Friendly Concrete Using Multivariate Polynomial Regression Combined with Stepwise Method
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 learning model known as multivariate
polynomial regression (MPR) was developed to predict the compressive strength of eco-friendly
concrete. The model was compared with the other two machine learning models, where one is also
a white-box machine learning model, namely linear regression (LR), and the other is the black-box
machine learning model, which is a support vector machine (SVM). The newly suggested model
shows robust estimation capabilities and outperforms the other two models in terms of R2 (coefficient
of determination) and RMSE (root mean absolute error) measurements.