Litcius/Paper detail

Reviewing machine learning of corrosion prediction in a data-oriented perspective

Leonardo Bertolucci Coelho, Dawei Zhang, Yves Van Ingelgem, Denis Steckelmacher, Ann Nowé, Herman Terryn

2022npj Materials Degradation228 citationsDOIOpen Access PDF

Abstract

Abstract This work provides a data-oriented overview of the rapidly growing research field covering machine learning (ML) applied to predicting electrochemical corrosion. Our main aim was to determine which ML models have been applied and how well they performed depending on the corrosion topic considered. From an extensive review of corrosion articles presenting comparable performance metrics, a ‘Machine learning for corrosion database’ was created, guiding corrosion experts and model developers in their applications of ML to corrosion. Potential research gaps and recommendations are discussed, and a broad perspective for future research paths is provided.

Topics & Concepts

CorrosionPerspective (graphical)Computer scienceField (mathematics)Work (physics)Artificial intelligenceMachine learningData scienceMaterials scienceEngineeringMetallurgyMechanical engineeringMathematicsPure mathematicsCorrosion Behavior and InhibitionHydrogen embrittlement and corrosion behaviors in metalsConcrete Corrosion and Durability