Litcius/Paper detail

Efficient machine learning models for estimation of compressive strengths of zeolite and diatomite substituting concrete in sodium chloride solution

Gıyasettin Özcan, Burak Koçak, Eyyüp Gülbandılar, Yılmaz Koçak

2024Arabian Journal for Science and Engineering10 citationsDOIOpen Access PDF

Abstract

Abstract This study implements a set of machine learning algorithms to building material science, which predict the compressive strength of zeolite and diatomite substituting concrete mixes in sodium chloride solution. Particularly, Random Forest, Support Vector Machine, Extreme Gradient Boosting, Light Gradient Boosting, and Categorical Boosting algorithms are exploited and their optimal parameters are tuned. In the training and testing of these models, 28 day, 56 day, and 90 day compressive strength observations of 63 samples of 7 different concrete mixtures substituting Portland cement, zeolite, diatomite, zeolite + diatomite were used. Consequently, compressive strength experimentation results and machine learning predictions were compared through statistical methods such as RMSE, MAPE, and R 2 . Results denote that the prediction performance of machine learning is improving with tuned models. Particularly, RMSE, MAPE, R 2 scores of Categorical Boosting are, respectively, 1.15, 1.45%, and 98.03% after parameter tuning design. The results denote that presented machine learning model can provide an advantage in the cost and duration of the compressive strength experiments.

Topics & Concepts

Compressive strengthBoosting (machine learning)Categorical variableGradient boostingPortland cementMachine learningSupport vector machineMathematicsRandom forestMean squared errorZeoliteArtificial intelligenceMaterials scienceCementAlgorithmComputer scienceComposite materialStatisticsChemistryCatalysisBiochemistryInnovative concrete reinforcement materialsInfrastructure Maintenance and MonitoringConcrete and Cement Materials Research