Predicting the compressive strength of polymer-infused bricks: A machine learning approach with SHAP interpretability

Abstract The rapid increase in global waste production, particularly Polymer wastes, poses significant environmental challenges because of its nonbiodegradable nature and harmful effects on both vegetation and aquatic life. To address this issue, innovative construction approaches have emerged, such...

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Main Authors: Sathvik Sharath Chandra, Rakesh Kumar, Archudha Arjunasamy, Sakshi Galagali, Adithya Tantri, Sujay Raghavendra Naganna
Format: Article
Language:English
Published: Nature Portfolio 2025-03-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-025-89606-9
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author Sathvik Sharath Chandra
Rakesh Kumar
Archudha Arjunasamy
Sakshi Galagali
Adithya Tantri
Sujay Raghavendra Naganna
author_facet Sathvik Sharath Chandra
Rakesh Kumar
Archudha Arjunasamy
Sakshi Galagali
Adithya Tantri
Sujay Raghavendra Naganna
author_sort Sathvik Sharath Chandra
collection DOAJ
description Abstract The rapid increase in global waste production, particularly Polymer wastes, poses significant environmental challenges because of its nonbiodegradable nature and harmful effects on both vegetation and aquatic life. To address this issue, innovative construction approaches have emerged, such as repurposing waste Polymers into building materials. This study explores the development of eco-friendly bricks incorporating cement, fly ash, M sand, and polypropylene (PP) fibers derived from waste Polymers. The primary innovation lies in leveraging advanced machine learning techniques, namely, artificial neural networks (ANN), support vector machines (SVM), Random Forest and AdaBoost to predict the compressive strength of these Polymer-infused bricks. The polymer bricks’ compressive strength was recorded as the output parameter, with cement, fly ash, M sand, PP waste, and age serving as the input parameters. Machine learning models often function as black boxes, thereby providing limited interpretability; however, our approach addresses this limitation by employing the SHapley Additive exPlanations (SHAP) interpretation method. This enables us to explain the influence of different input variables on the predicted outcomes, thus making the models more transparent and explainable. The performance of each model was evaluated rigorously using various metrics, including Taylor diagrams and accuracy matrices. Among the compared models, the ANN and RF demonstrated superior accuracy which is in close agreement with the experimental results. ANN model achieves R2 values of 0.99674 and 0.99576 in training and testing respectively, whereas RMSE value of 0.0151 (Training) and 0.01915 (Testing). This underscores the reliability of the ANN model in estimating compressive strength. Age, fly ash were found to be the most important variable in predicting the output as determined through SHAP analysis. This study not only highlights the potential of machine learning to enhance the accuracy of predictive models for sustainable construction materials and demonstrates a novel application of SHAP to improve the interpretability of machine learning models in the context of Polymer waste repurposing.
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spelling doaj-art-2a07be4854714acbba7a941e997343392025-08-20T02:59:20ZengNature PortfolioScientific Reports2045-23222025-03-0115112210.1038/s41598-025-89606-9Predicting the compressive strength of polymer-infused bricks: A machine learning approach with SHAP interpretabilitySathvik Sharath Chandra0Rakesh Kumar1Archudha Arjunasamy2Sakshi Galagali3Adithya Tantri4Sujay Raghavendra Naganna5Department of Civil Engineering, Dayananda Sagar College of EngineeringDepartment of Civil Engineering, Dayananda Sagar College of EngineeringDepartment of Artificial Intelligence and Machine Learning, Dayananda Sagar College of EngineeringDepartment of Civil Engineering, Dayananda Sagar College of EngineeringDepartment of Civil Engineering, Manipal Institute of Technology Bengaluru, Manipal Academy of Higher EducationDepartment of Civil Engineering, Manipal Institute of Technology Bengaluru, Manipal Academy of Higher EducationAbstract The rapid increase in global waste production, particularly Polymer wastes, poses significant environmental challenges because of its nonbiodegradable nature and harmful effects on both vegetation and aquatic life. To address this issue, innovative construction approaches have emerged, such as repurposing waste Polymers into building materials. This study explores the development of eco-friendly bricks incorporating cement, fly ash, M sand, and polypropylene (PP) fibers derived from waste Polymers. The primary innovation lies in leveraging advanced machine learning techniques, namely, artificial neural networks (ANN), support vector machines (SVM), Random Forest and AdaBoost to predict the compressive strength of these Polymer-infused bricks. The polymer bricks’ compressive strength was recorded as the output parameter, with cement, fly ash, M sand, PP waste, and age serving as the input parameters. Machine learning models often function as black boxes, thereby providing limited interpretability; however, our approach addresses this limitation by employing the SHapley Additive exPlanations (SHAP) interpretation method. This enables us to explain the influence of different input variables on the predicted outcomes, thus making the models more transparent and explainable. The performance of each model was evaluated rigorously using various metrics, including Taylor diagrams and accuracy matrices. Among the compared models, the ANN and RF demonstrated superior accuracy which is in close agreement with the experimental results. ANN model achieves R2 values of 0.99674 and 0.99576 in training and testing respectively, whereas RMSE value of 0.0151 (Training) and 0.01915 (Testing). This underscores the reliability of the ANN model in estimating compressive strength. Age, fly ash were found to be the most important variable in predicting the output as determined through SHAP analysis. This study not only highlights the potential of machine learning to enhance the accuracy of predictive models for sustainable construction materials and demonstrates a novel application of SHAP to improve the interpretability of machine learning models in the context of Polymer waste repurposing.https://doi.org/10.1038/s41598-025-89606-9Mix proportionPolymer brickWaste materialsArtificial neural networkSupport vector machineAdaBoost
spellingShingle Sathvik Sharath Chandra
Rakesh Kumar
Archudha Arjunasamy
Sakshi Galagali
Adithya Tantri
Sujay Raghavendra Naganna
Predicting the compressive strength of polymer-infused bricks: A machine learning approach with SHAP interpretability
Scientific Reports
Mix proportion
Polymer brick
Waste materials
Artificial neural network
Support vector machine
AdaBoost
title Predicting the compressive strength of polymer-infused bricks: A machine learning approach with SHAP interpretability
title_full Predicting the compressive strength of polymer-infused bricks: A machine learning approach with SHAP interpretability
title_fullStr Predicting the compressive strength of polymer-infused bricks: A machine learning approach with SHAP interpretability
title_full_unstemmed Predicting the compressive strength of polymer-infused bricks: A machine learning approach with SHAP interpretability
title_short Predicting the compressive strength of polymer-infused bricks: A machine learning approach with SHAP interpretability
title_sort predicting the compressive strength of polymer infused bricks a machine learning approach with shap interpretability
topic Mix proportion
Polymer brick
Waste materials
Artificial neural network
Support vector machine
AdaBoost
url https://doi.org/10.1038/s41598-025-89606-9
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