Hardness Predicting of Additively Manufactured High-Entropy Alloys Based on Fabrication Parameter-Dependent Machine Learning
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2022
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High-entropy alloys (HEAs) have received much attention since presented in 2004. Machine learning (ML) can accelerate the research of new HEAs. At present, among the ML research methods used to predict the properties of HEAs, alloys are manufactured mainly by the melt-casting method. The existing ML methods do not use the process parameters of the manufacturing process as input features. Unlike the melt-casting method, additive manufacturing (AM) has promising applications with its ability to prototype and manufacture complex-shaped parts rapidly. The AM process parameters can significantly affect the performance of HEAs. The process parameters are a critical factor that must be considered for ML. Therefore, an ML method dependent on AM process parameters is proposed to predict the hardness of HEAs. The prediction results of six commonly used ML models are compared. The dependence of ML on process parameters is investigated. Four new HEAs are manufactured based on AM to verify the reli...ability of ML prediction results. The experimental results show that adding process parameters to ML improves the prediction accuracy by 4%. The prediction accuracy of ML reaches 89%, and the average prediction error for new HEAs is 3.83%.
Кључне речи:
additive manufacturing / hardness prediction / high-entropy alloys / machine learning / process parametersИзвор:
Advanced Engineering Materials, 2022, 2201369-Институција/група
VinčaTY - JOUR AU - Zhou, Chao AU - Zhang, Youzhi AU - Stašić, Jelena AU - Liang, Yu AU - Chen, Xizhang AU - Trtica, Milan PY - 2022 UR - https://vinar.vin.bg.ac.rs/handle/123456789/10541 AB - High-entropy alloys (HEAs) have received much attention since presented in 2004. Machine learning (ML) can accelerate the research of new HEAs. At present, among the ML research methods used to predict the properties of HEAs, alloys are manufactured mainly by the melt-casting method. The existing ML methods do not use the process parameters of the manufacturing process as input features. Unlike the melt-casting method, additive manufacturing (AM) has promising applications with its ability to prototype and manufacture complex-shaped parts rapidly. The AM process parameters can significantly affect the performance of HEAs. The process parameters are a critical factor that must be considered for ML. Therefore, an ML method dependent on AM process parameters is proposed to predict the hardness of HEAs. The prediction results of six commonly used ML models are compared. The dependence of ML on process parameters is investigated. Four new HEAs are manufactured based on AM to verify the reliability of ML prediction results. The experimental results show that adding process parameters to ML improves the prediction accuracy by 4%. The prediction accuracy of ML reaches 89%, and the average prediction error for new HEAs is 3.83%. T2 - Advanced Engineering Materials T1 - Hardness Predicting of Additively Manufactured High-Entropy Alloys Based on Fabrication Parameter-Dependent Machine Learning SP - 2201369 DO - 10.1002/adem.202201369 ER -
@article{ author = "Zhou, Chao and Zhang, Youzhi and Stašić, Jelena and Liang, Yu and Chen, Xizhang and Trtica, Milan", year = "2022", abstract = "High-entropy alloys (HEAs) have received much attention since presented in 2004. Machine learning (ML) can accelerate the research of new HEAs. At present, among the ML research methods used to predict the properties of HEAs, alloys are manufactured mainly by the melt-casting method. The existing ML methods do not use the process parameters of the manufacturing process as input features. Unlike the melt-casting method, additive manufacturing (AM) has promising applications with its ability to prototype and manufacture complex-shaped parts rapidly. The AM process parameters can significantly affect the performance of HEAs. The process parameters are a critical factor that must be considered for ML. Therefore, an ML method dependent on AM process parameters is proposed to predict the hardness of HEAs. The prediction results of six commonly used ML models are compared. The dependence of ML on process parameters is investigated. Four new HEAs are manufactured based on AM to verify the reliability of ML prediction results. The experimental results show that adding process parameters to ML improves the prediction accuracy by 4%. The prediction accuracy of ML reaches 89%, and the average prediction error for new HEAs is 3.83%.", journal = "Advanced Engineering Materials", title = "Hardness Predicting of Additively Manufactured High-Entropy Alloys Based on Fabrication Parameter-Dependent Machine Learning", pages = "2201369", doi = "10.1002/adem.202201369" }
Zhou, C., Zhang, Y., Stašić, J., Liang, Y., Chen, X.,& Trtica, M.. (2022). Hardness Predicting of Additively Manufactured High-Entropy Alloys Based on Fabrication Parameter-Dependent Machine Learning. in Advanced Engineering Materials, 2201369. https://doi.org/10.1002/adem.202201369
Zhou C, Zhang Y, Stašić J, Liang Y, Chen X, Trtica M. Hardness Predicting of Additively Manufactured High-Entropy Alloys Based on Fabrication Parameter-Dependent Machine Learning. in Advanced Engineering Materials. 2022;:2201369. doi:10.1002/adem.202201369 .
Zhou, Chao, Zhang, Youzhi, Stašić, Jelena, Liang, Yu, Chen, Xizhang, Trtica, Milan, "Hardness Predicting of Additively Manufactured High-Entropy Alloys Based on Fabrication Parameter-Dependent Machine Learning" in Advanced Engineering Materials (2022):2201369, https://doi.org/10.1002/adem.202201369 . .