Hybrid explainable machine learning models for predicting rapid chloride penetration test and sorptivity of self-compacting concrete with fly ash and silica fume under thermal exposure
Key Points
Predictive models suggest significant correlation between thermal exposure and chloride penetration in concrete.
The evaluation showed that self-compacting concrete with fly ash and silica fume had varied sorptivity values, reaching a maximum of 50%.
Analysis involved the application of hybrid explainable machine learning models to assess concrete properties under stress.
Understanding these properties is crucial for developing more resilient concrete mixes, especially for construction in extreme conditions.