고강도 Nb기 초내열 합금 설계를 위한 기계학습 기반 데이터 분석

Translated title of the contribution: Machine Learning-based Data Analysis for Designing High-strength Nb-based Superalloys

Research output: Contribution to journalArticlepeer-review

Abstract

Machine learning-based data analysis approaches have been employed to overcome the limitations in accurately analyzing data and to predict the results of the design of Nb-based superalloys. In this study, a database containing the composition of the alloying elements and their room-temperature tensile strengths was prepared based on a previous study. After computing the correlation between the tensile strength at room temperature and the composition, a material science analysis was conducted on the elements with high correlation coefficients. These alloying elements were found to have a significant effect on the variation in the tensile strength of Nb-based alloys at room temperature. Through this process, a model was derived to predict the properties using four machine learning algorithms. The Bayesian ridge regression algorithm proved to be the optimal model when Y, Sc, W, Cr, Mo, Sn, and Ti were used as input features. This study demonstrates the successful application of machine learning techniques to effectively analyze data and predict outcomes, thereby providing valuable insights into the design of Nb-based superalloys.
Translated title of the contributionMachine Learning-based Data Analysis for Designing High-strength Nb-based Superalloys
Original languageKorean
Pages (from-to)217-222
Number of pages6
Journal한국분말재료학회지
Volume30
Issue number3
DOIs
StatePublished - 2023

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