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Prediction of ultimate tensile strength of Al-Si alloys based on multimodal fusion learning

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摘要 Exploring the“composition-microstructure-property”relationship is a long-standing theme in materials science.However,complex interactions make this area of research challenging.Based on the image processing and machine learning techniques,this paper proposes a multimodal fusion learning framework that comprehensively considers both composition and microstructure in prediction of the ultimate tensile strength(UTS)of Al-Si alloys.Firstly,the composition and image information are collected from the literature and supplementary experi-ments,followed by the image segmentation and quantitative analysis of eutectic Si images.Subsequently,the quantitative analysis results are combined with other features for three-step feature screening,and 12 key features are obtained.Finally,four machine-learning models(i.e.,decision tree,random forest,adaptive boosting,and extreme gradient boosting[XGBoost])are used to predict the UTS of Al-Si alloys.The results show that the quantitative analysis method proposed in this paper is superior to Image-Pro Plus(IPP)software in some aspects.The XGBoost model has the best prediction performance with R^(2)=0.94.Furthermore,five mixed features and their critical values that significantly affect UTS are identified.Our study provides enlightenment for the prediction of UTS of Al-Si alloys from composition and microstructure,and would be applicable to other alloys.
出处 《Materials Genome Engineering Advances》 2024年第1期104-119,共16页 材料基因工程前沿(英文)
基金 supported by the National Natural Science Foundation of China(U2102212) the National Natural Science Foundation of China(52273228) the Shanghai Rising-Star Program(21QA1403200) the Key Research Project of Zhejiang Laboratory(2021PE0AC02) the Shanghai Science and Technology Young Talents Sailing Program(23YF1412900).

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