Machine learning in concrete durability
challenges and pathways identified by RILEM TC 315-DCS towards enhanced predictive models
Woubishet Zewdu Taffese (Aalto University)
Benoît Hilloulin (Université de Nantes)
Yury Villagran Zaccardi (Vlaamse Instelling voor Technologisch Onderzoek)
Afshin Marani (University of Toronto)
Moncef L. Nehdi (University of Guelph)
Muhammad Usman Hanif (University of Southern Denmark)
Muralidhar Kamath (Apple Chemie India Private Limited)
Sandra Nunes (TU Delft - Concrete Structures)
Stefanie von Greve-Dierfeld (TFB Technology and Research for Concrete Structures)
Antonios Kanellopoulos (University of Hertfordshire)
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Abstract
This review provides an in-depth examination of machine learning applications in assessing concrete durability from 2013 to 2024, with a particular focus on critical degradation mechanisms, including carbonation, chloride-induced deterioration, sulfate attack, frost damage, shrinkage, and corrosion. It underscores the field’s heavy reliance on laboratory-based data and notes the limited use of field data and the scarcity of newly generated datasets. The review reveals that most studies utilize existing literature-based datasets, with few contributing novel data and limited open access to these databases, which hampers broader validation and application. The review classifies the features analyzed in studies into categories such as mixture proportions, engineering properties, exposure conditions, test parameters, and chemical compositions, highlighting a growing emphasis on chemical compositions. Modeling approaches are predominantly standalone, though ensemble and hybrid models are increasingly prevalent, with ensemble models showing particularly strong performance in recent years. High accuracy is observed across studies, with ensemble models, neural networks, and hybrid models leading in performance. Furthermore, the review stresses the growing importance of model explainability, noting that model-agnostic methods like SHAP are frequently used and that the focus on explainability has increased. To propel the field forward, the review advocates for the development of diverse new datasets that include both the chemical and physical properties of various mix ingredients and improved data-sharing practices. It recommends adopting a multi-task learning approach to simultaneously address multiple deterioration mechanisms, which can yield deeper insights and support the creation of more durable concrete structures.