발간논문

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Vol.61, No.1, 18 ~ 28, 2023
Title
A Study on the Prediction of Characteristics of Molding Sand Using Machine Learning and Data Preprocessing Techniques
이정민 Jeong-min Lee , 김문조 Moon-jo Kim , 최경환 Kyeong-hwan Choe , 김동응 Dongeung Kim
Abstract
The main components of molding sand used in sand casting are sand, clay and water. The composition of the molding sand has a great influence on the properties of the casting. In order to obtain highquality castings, it is important to manage the components that affect the properties of the molding sand such as especially green compression strength and compactability. In this work, green compression strength and compactability are predicted through a machine learning technique using the processing data obtained from a foundry and the properties of molding sand as the input variables. Through the correlation analysis between the input variables and the response variable, we investigated the relationship between the processing data and the properties of the molding sand. The possibility of predicting the characteristics of molding sand with high accuracy was confirmed using a model created through data preprocessing with the real foundry data. If the composition of the molding sand is adjusted in the foundry using the generated model, it is expected that higher quality castings can be produced and the productivity can be increased. (Received 16 September, 2022; Accepted 4 October, 2022)
Key Words
machine learning, molding sand, green compression strength, compactability
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