Prediction of quantitative in-situ local corrosion via deep learning

  • Sun, Changhyo
  • Sriboriboon, Panithan
  • Han, Junghun
  • Ko, Sang-Jin
  • Lee, Seung-Yong
  • ... Heo, Yooun
  • 외 4명
Citations

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7

초록

A deep understanding of corrosion behavior is critical for improving steel durability and reliability. Typically, it requires significant experimental effort and extensive measurements over a long period of time. Therefore, exploring the time-dependent corrosion at an early stage to predict its progress at a later stage can effectively understand it. In this study, we quantitatively predicted later stages of local corrosion behavior using deep learning methods based on the early stage topographical information. Furthermore, we predicted and visualized the formation, growth, and accumulation of the particle-like oxides. Our proposed method can be extended to other types of corrosion-resistant electrochemical materials.

키워드

Atomic force microscopyCorrosionQuantitative topographyDeep learningAdvanced high strength steelDUAL-PHASE STEELDEFORMATIONDIFFRACTIONENVIRONMENTMICROSCOPYBEHAVIORFERRITE
제목
Prediction of quantitative in-situ local corrosion via deep learning
저자
Sun, ChanghyoSriboriboon, PanithanHan, JunghunKo, Sang-JinLee, Seung-YongHeo, YoounShim, Jae-HyeokYang, SejungKim, Jung-GuKim, Yunseok
DOI
10.1016/j.corsci.2024.112431
발행일
2024-11
유형
Article
저널명
Corrosion Science
240