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Optimizing pervious concrete with machine learning: Predicting permeability and compressive strength using artificial neural networks

Yinglong Wu, Ricardo Pieralisi, F. Gersson B. Sandoval, Rubén-Daniel López-Carreño, Pablo Pujadas

2024Construction and Building Materials42 citationsDOIOpen Access PDF

Abstract

This study makes a significant contribution to the field of pervious concrete by using machine learning to innovatively predict both mechanical and hydraulic performance. Unlike existing methods that rely on labor-intensive trial-and-error experiments, our proposed approach leverages a multilayer perceptron network. To develop this approach, we compiled a comprehensive dataset comprising 271 sets and 3,252 experimental data points. Our methodology involved evaluating 22,246 network configurations, employing Monte Carlo cross-validation over 20 iterations, and using 4 training algorithms, resulting in a total of 1,779,680 training iterations. This results in an optimized model that integrates diverse mix design parameters, enabling accurate predictions of permeability and compressive strength even in the absence of experimental data, achieving R² values of 0.97 and 0.98, respectively. Sensitivity analyses validate the model's alignment with established principles of pervious concrete behavior. By demonstrating the efficacy of machine learning as a complementary tool for optimizing pervious concrete mix designs, this research not only addresses current methodological limitations but also lays the groundwork for more efficient and effective approaches in the field.

Topics & Concepts

Compressive strengthArtificial neural networkPervious concreteComputer sciencePermeability (electromagnetism)Machine learningPerceptronArtificial intelligenceField (mathematics)Experimental dataMathematicsMaterials scienceMetallurgyGeneticsCementPure mathematicsBiologyComposite materialMembraneStatisticsUrban Stormwater Management SolutionsInfrastructure Maintenance and MonitoringWater Systems and Optimization