Previous studies have shown how galvanic coupling susceptibility between stainless steel 316 or titanium alloy fasteners and coated aluminum alloy 7075-T6 depends on the chosen coating system and environmental factors such as relative humidity (RH) and chloride concentration. In this study, several machine learning models were developed to predict, analyze, and quantify galvanic corrosion arising between relatively noble fasteners and coated aluminum alloy panels. Different independent factors including pretreatment, primer coating, topcoat, RH, chloride concentration, fastener material, fastener quantity, existence of a defect, type of environment, and time of wetness were evaluated for their effect on galvanic coupling lost volume. Artificial neural networks (ANN), random forest regression (RFR), and multiple linear regression (MLR) were used to develop damage functions for galvanic corrosion. ANN, RFR, and MLR models all showed a reasonable fit for lost volume as a function of different inputs.
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1 December 2022
Research Article|
October 14 2022
Machine Learning Approaches to Model Galvanic Corrosion of Coated Al Alloy Systems Available to Purchase
Mahdi Jokar;
Mahdi Jokar
*Fontana Corrosion Center, The Ohio State University, Columbus, Ohio 43210.
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Xiaolei Guo;
Xiaolei Guo
*Fontana Corrosion Center, The Ohio State University, Columbus, Ohio 43210.
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G.S. Frankel
G.S. Frankel
‡
*Fontana Corrosion Center, The Ohio State University, Columbus, Ohio 43210.
‡Corresponding author. E-mail: [email protected].
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‡Corresponding author. E-mail: [email protected].
Online ISSN: 1938-159X
Print ISSN: 0010-9312
© 2022, AMPP
2022
CORROSION (2022) 78 (12): 1176–1189.
Citation
Mahdi Jokar, Xiaolei Guo, G.S. Frankel; Machine Learning Approaches to Model Galvanic Corrosion of Coated Al Alloy Systems. CORROSION 1 December 2022; 78 (12): 1176–1189. https://doi.org/10.5006/4175
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