Evaluation of Supercritical Carbon Dioxide Corrosion by High Temperature Oxidation Experiments and Machine Learning Models

Hobyung Chae, Sukho Seo, Yong Chan Jung, E. Wen Huang, Jayant Jain, Jun Hyun Han, Soo Yeol Lee*

*此作品的通信作者

研究成果: Article同行評審

4 引文 斯高帕斯(Scopus)

摘要

Corrosion behaviors of ferritic-martensitic, austenitic steels, and Ni-based alloys were examined in high-temperature CO2 environments. Aside from the conventional evaluation, we further used machine learning based on experimental data and an existing SCO2 database, from which contributing factors influencing the SCO2 corrosion were quantified and the correlation between the CO2 and SCO2 corrosion was revealed. Among the tested alloys, Ni-based alloys revealed most exceptional corrosion resistance at 500 °C to 800 °C. The random forest model learning the SCO2 database suggested that the most important factor was the material type, followed in sequence by temperature, exposure time, Cr content, flow rate, and pressure. In the ferritic-martensitic steel, we observed a strong correlation between the CO2 evaluation data and the linear regression model. The machine learning models (linear regression, decision tree, and random forest) revealed a relatively weak correlation in the austenitic steel, but a relatively strong correlation in the Ni-based alloy.

原文English
頁(從 - 到)2614-2626
頁數13
期刊Metallurgical and Materials Transactions A: Physical Metallurgy and Materials Science
53
發行號7
DOIs
出版狀態Published - 7月 2022

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