材料科学
合金
退火(玻璃)
腐蚀
镁合金
机械加工
模拟退火
冶金
机器学习
计算机科学
作者
Da Xue,Wu Wei,Wei Shi,Xiaorong Zhou,Jinlei Qi,S.P. Wen,Xiaolan Wu,Kunyuan Gao,Xiangyuan Xiong,Hui Huang,Zuo Ren Nie
标识
DOI:10.1016/j.mtcomm.2023.106177
摘要
The corrosion properties of the alloy are influenced by the physical parameters involved in the preparation process. Experiments to explore the preparation process of Al-Mg alloys are very complex and time-consuming, and the amount of data is very limited. In this work, the analysis of the corrosion mechanism of Al-Mg alloy identified the alloy magnesium content, deformation, annealing temperature and time as important factors affecting the corrosion resistance of the alloy. Based on the existing experimental data, a machine learning framework that effectively promotes smart manufacturing is proposed. The results show that the machine learning framework constructed based on the existing experimental results can reliably predict the NAMLT values of the alloy. As more data is acquired, the method is expected to be used to adjust production processes for efficient and intelligent machining.
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