Prediction of multilayer Cr/GLC coatings degradation in deep-sea environments based on integrated mechanistic and machine learning models
Hongyu Ma, Pengfei Qin, Yu Cui, Rui Liu, Peiling Ke, Fuhui Wang, Li Liu
Abstract
Improving the accuracy of coating lifetime prediction on small sample data has been an urgent issue to be addressed. In this paper, based on in-situ electrochemical impedance spectroscopy data of multilayer Cr/GLC coatings, a lifetime prediction formula related to the coating failure mechanism is developed, which provides a quantitative basis for estimating the coating lifetime. Furthermore, the combination of the mechanistic prediction model and the ANN + RF integrated machine learning model can further increase the model’s prediction accuracy, reach 97.9%, and provide a new method for predicting coating performance and lifetime in deep-sea environments.
Topics & Concepts
CoatingDegradation (telecommunications)Dielectric spectroscopyCorrosionPredictive modellingMaterials scienceComputer scienceArtificial intelligenceElectrochemistryMachine learningNanotechnologyComposite materialChemistryElectrodeTelecommunicationsPhysical chemistryHydrogen embrittlement and corrosion behaviors in metalsCorrosion Behavior and InhibitionNon-Destructive Testing Techniques