Prediction of Mg Alloy Corrosion Based on Machine Learning Models

材料科学 腐蚀 随机森林 支持向量机 机器学习 梯度升压 弹性模量 镁合金 合金 冶金 人工智能 复合材料 计算机科学
作者
Zhenxin Lu,Shujing Si,Keying He,Yang Ren,Shuo Li,Shuman Zhang,Yi Fu,Qi Jia,Heng Bo Jiang,Haiying Song,Mailing Hao
出处
期刊:Advances in Materials Science and Engineering [Hindawi Publishing Corporation]
卷期号:2022: 1-8 被引量:29
标识
DOI:10.1155/2022/9597155
摘要

Magnesium alloy is a potential biodegradable metallic material characterized by bone-like elastic modulus, which has great application prospects in medical, automotive, and aerospace industries owing to its bone-like elastic modulus, biocompatibility, and lightweight properties. However, the rapid corrosion rates of magnesium alloys seriously limit their applications. This study collected magnesium alloys’ corrosion data and developed a model to predict the corrosion potential, based on the chemical composition of magnesium alloys. We compared four machine learning algorithms: random forest (RF), multiple linear regression (MLR), support vector machine regression (SVR), and extreme gradient boosting (XGBoost). The RF algorithm offered the most accurate predictions than the other three machine learning algorithms. The input effects on corrosion potential have been investigated. Moreover, we used feature creation (transforming chemical component characteristics into atomic and physical characteristics) so that the input characteristics were not limited to specific chemical compositions. From this result, the model’s application range was widened, and machine learning was used to verify the accuracy and feasibility of predicting corrosion of magnesium alloys.
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