Inspection Data-Driven Machine Learning Models for Predicting the Remaining Service Life of Deteriorating Bridge Decks

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Abstract

The bridge deck is more vulnerable to deterioration than other structural components due to its direct exposure to environmental factors such as vehicular loads, chloride ingress, and freeze–thaw cycles. This accelerated degradation often results in a serviceability life that is shorter than the intended design life. However, the absence of standardized condition assessment methods and clear definitions of residual service life has limited the establishment of rational guidelines for repair and strengthening. This study focuses on PSC-I type bridges in South Korea, utilizing long-term field inspection data to analyze environmental, structural, and material factors—including reinforcement corrosion, chloride diffusion, and freeze–thaw actions. Environmental zoning was applied based on regional conditions, while structural zoning was per-formed according to load characteristics, allowing classification of deck regions into moment zones and cantilever sections. Machine learning models were employed to identify dominant deterioration mechanisms, and the validity of the zoning classification was evaluated through model accuracy and SHAP value analysis. Additionally, a regression-based approach was proposed to estimate the residual service life of the bridge deck for each corrosion phase, providing a quantitative framework for durability assessment and maintenance planning.

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europepmc
last seen: 2026-05-20T01:45:00.602351+00:00
unpaywall
last seen: 2026-05-22T02:00:06.705733+00:00
License: CC-BY-4.0