2022
DOI: 10.1088/1402-4896/aca43a
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Evaluating the corrosion resistance of marine steels under different exposure environments via machine learning

Abstract: The corrosion behavior of marine engineering steels in marine environment is an extremely complex process, which poses great challenge to accurately evaluate the corrosion resistance of various stees in different marine environment. Owing to the wide application of machine learning (ML) approaches and the accumulation of corrosion data of different steels in natural marine environment, herein, we reported eXtreme Gradient Boosting (XGBoost) ML models for predicting the corrosion rate in submerged, tidal and sp… Show more

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Cited by 4 publications
(1 citation statement)
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“…Due to their highly aggressive nature, chloride ions have the ability to locally break down the oxide layer at specific points on the metal surface, resulting in small areas with reduced corrosion resistance. As the anodic reaction advances, metal ions are released into the solution, leading to the enlargement of the pit [56,57]. The pit can extend both horizontally and vertically, ultimately forming a cavity (figure 6(a)).…”
Section: Electrochemical Corrosionmentioning
confidence: 99%
“…Due to their highly aggressive nature, chloride ions have the ability to locally break down the oxide layer at specific points on the metal surface, resulting in small areas with reduced corrosion resistance. As the anodic reaction advances, metal ions are released into the solution, leading to the enlargement of the pit [56,57]. The pit can extend both horizontally and vertically, ultimately forming a cavity (figure 6(a)).…”
Section: Electrochemical Corrosionmentioning
confidence: 99%