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Predicting critical crack propagation length in sustainable additive-enhanced concrete using explainable machine learning

Sci Rep. 2025 Dec 13. doi: 10.1038/s41598-025-31900-7. Online ahead of print.

ABSTRACT

Predicting the critical crack propagation length (CCPL) of sustainable additive-enhanced concrete (SAEC) is a significant challenge in structural durability analysis and fracture mechanics. Experimental and numerical techniques often face limitations of complexity, cost, and computational inefficiency. To overcome these limitations, this paper presents a comprehensive machine learning framework that integrates ensemble, kernel-based, and deep learning models. A high-quality experimental dataset of 800 SAEC samples, incorporating nine key features and controlled curing, mixing, and fracture testing, was prepared. Model performance was evaluated using different statistical indices under both hold-out and k-fold cross-validation. Among all the machine learning models, the novel Neural Tangent Kernel Gaussian Process (NTK-GP) achieved the best predictive performance with R2 = 0.95‒0.96, RMSE = 0.74‒0.90 mm, MAPE = 0.09‒0.14, and VAF = 0.95‒0.96. The NTK-GP’s hybrid architecture, which unites the flexibility of neural representations with Bayesian uncertainty quantification, enabled accurate, smooth, and stable predictions even under nonlinear, high-dimensional data. Statistical significance tests, such as the Friedman and Nemenyi tests, confirmed that the NTK-GP is statistically comparable to several state-of-the-art models. Explainable AI analysis using SHAP revealed that fiber type (FT) and fiber volume content (FVC) are the most influential features, accounting for over 65% of the model’s variance in CCPL. SHAP interaction and dependency plots showed strong combined influences between FT and FVC, especially with steel and basalt fibers at higher volumes. This supports the idea that these fibers bridge cracks and dissipate energy. Bootstrap-based 95% confidence intervals were applied for uncertainty quantification, confirming the predictive reliability by showing consistent coverage across the dataset. This study pioneers the use of NTK-GP for fracture mechanics. It demonstrates that integrating explainable machine learning with uncertainty-aware regression provides a data-efficient, robust, and interpretable alternative to experimental and numerical methods. The proposed framework not only enhances CCPL prediction accuracy and computational efficiency but also contributes to the broader goal of designing sustainable, fracture-resistant concrete materials through intelligent and data-driven modeling.

PMID:41390865 | DOI:10.1038/s41598-025-31900-7

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