Development of Data-Driven Machine Learning Models for the Prediction of Casting Surface Defects

被引:31
作者
Chen, Shikun [1 ]
Kaufmann, Tim [2 ]
机构
[1] Univ Duisburg Essen, Inst Technol Met, Math Engn, Friedrich Ebert Str 12, D-47119 Duisburg, Germany
[2] Univ Appl Sci Kempten, Mfg Technol Foundry Technol, Bahnhofstrasse 61, D-87435 Kempten, Germany
关键词
casting defects; metal penetrations; steel casting; cast iron; machine learning; SHAP; data-driven process modeling;
D O I
10.3390/met12010001
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
This paper presents an approach for the application of machine learning in the prediction and understanding of casting surface related defects. The manner by which production data from a steel and cast iron foundry can be used to create models for predicting casting surface related defect is demonstrated. The data used for the model creation were collected from a medium-sized steel and cast iron foundry in which components ranging from 1 to 100 kg in weight are produced from wear and heat resistant cast iron and steel materials. This includes all production-relevant data from the melting and casting process, as well as from the mold production, the sand preparation and component quality related data from the quality management department. The data are tethered together with each other, the information regarding the identity and number of components that resulted in scrap due to the casting surface defect metal penetrations was added to the dataset. Six different machine learning algorithms were trained and an interpretation of the models outputs was accomplished with the application of the SHAP framework.
引用
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页数:15
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