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Data-driven optimization model customization for atmospheric corrosion on low-alloy steel: incorporating the dynamic evolution of the surface rust layer

journal contribution
posted on 2024-11-17, 16:45 authored by Bingqin Wang, Yiran Li, Xuequn Cheng, Dawei Zhang, Chao Liu, Xiaolin Wang, Xingyue Yong, Xiaogang Li
This study utilized a state-of-the-art sensor to gather a big-data set of corrosion on low-alloy steel under six distinct meteorological conditions. Through modeling and calculations, we discovered that the effectiveness of the rust layer is a dynamic process that can be influenced by changes in weather, resulting in unpredictable levels of protection. We determined that prolonged periods of moisture have the most detrimental impact, while higher temperatures have a positive effect. To enhance the accuracy of corrosion assessment, We digitized and incorporated this dynamic process into the model that demonstrates promising results, and emphasized the significance of considering rust layer evolution in corrosion modeling.

Funding

National Natural Science Foundation of China (SQ2022FY010060)

History

Journal title

Corrosion Science

Volume

221

Language

English

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