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Estimating pitting descriptors of 316 L stainless steel by machine learning and statistical analysis

Leonardo Bertolucci Coelho, Daniel Torres, Vincent Vangrunderbeek, Miguel Bernal, Gian Marco Paldino, Gianluca Bontempi, Jon Ustarroz

2023npj Materials Degradation25 citationsDOIOpen Access PDF

Abstract

Abstract A hybrid rule-based/ML approach using linear regression and artificial neural networks (ANNs) determined pitting corrosion descriptors from high-throughput data obtained with Scanning Electrochemical Cell Microscopy (SECCM) on 316 L stainless steel. Non-parametric density estimation determined the central tendencies of the E pit /log( jpit ) and E pass /log( jpass ) distributions. Descriptors estimated using conditional mean or median curves were compared to their central tendency values, with the conditional medians providing more accurate results. Due to their lower sensitivity to high outliers, the conditional medians were more robust representations of the log( j ) vs. E distributions. An observed trend of passive range shortening with increasing testing aggressiveness was attributed to delayed stabilisation of the passive film, rather than early passivity breakdown.

Topics & Concepts

OutlierPitting corrosionRange (aeronautics)Parametric statisticsSensitivity (control systems)Artificial neural networkMathematicsCorrosionStatisticsLinear regressionMaterials scienceArtificial intelligenceComputer scienceMetallurgyEngineeringComposite materialElectronic engineeringHydrogen embrittlement and corrosion behaviors in metalsCorrosion Behavior and InhibitionNon-Destructive Testing Techniques
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