Advanced Predictive Modeling of Concrete Compressive Strength and Slump Characteristics: A Comparative Evaluation of BPNN, SVM, and RF Models Optimized via PSO

Materials (Basel). 2024 Sep 29;17(19):4791. doi: 10.3390/ma17194791.

Abstract

This study presents the development of predictive models for concrete performance, specifically targeting the compressive strength and slump value, utilizing the quantities of individual raw materials in the concrete mix design as input variables. Three distinct machine learning approaches-Backpropagation Neural Network (BPNN), Support Vector Machine (SVM), and Random Forest (RF)-were employed to establish the prediction models independently. In the model construction process, the Particle Swarm Optimization (PSO) algorithm was integrated with cross-validation to fine-tune the hyperparameters of each model, ensuring optimal performance. Following the completion of training and modeling, a comprehensive comparison of the predictive accuracy among the three models was conducted, with the aim of selecting the most suitable model for incorporation into an optimized objective function. The findings reveal that among the chosen machine learning techniques, BPNN exhibited superior predictive capabilities for the compressive strength of concrete. Specifically, in the validation set, BPNN achieved a high correlation coefficient (R) of 0.9531 between the predicted and actual outputs, accompanied by a low Root Mean Square Error (RMSE) of 4.2568 and a Mean Absolute Error (MAE) of 2.6627, indicating a precise and reliable prediction. Conversely, for the prediction of the concrete slump value, RF outperformed the other two models, demonstrating a correlation coefficient (R) of 0.8986, an RMSE of 9.4906, and an MAE of 5.5034 in the validation set. This underscores the effectiveness of RF in capturing the complexity and variability inherent in slump behavior. Overall, this research highlights the potential of integrating advanced machine learning algorithms with optimization techniques for enhancing the accuracy and efficiency of concrete performance predictions. The identified optimal models, BPNN for compressive strength and RF for slump, can serve as valuable tools for engineers and researchers in the field of construction materials, facilitating the design of concrete mixes tailored to specific performance requirements.

Keywords: compressive strength; concrete; slump value.

Grants and funding

This project was financially supported by the Natural Science Foundation of Fujian, grant No. 2023J01999; the Startup Fund for Advanced Talents of Putian University “Study on the structure-function relationship and influence mechanism of nano-silica modified recycled concrete”, grant No. 2024051; the Putian University Zixiao Scholars Young Top Talent Program 2024; the Mulan River Comprehensive Governance Research Institute of Putian Univeristy with the project “Research on the comprehensive governance and efficient recycling utilization model of resources in the Mulan river basin under the guidance of Xi’s ecological civilization thought”, No. ZX2024-12; and the Engineering Research Center of Disaster Prevention and Mitigation of Southeast Coastal Engineering Structures of Fujian Province University, grant No. 2022001.