Dmitry S. Bulgarevich
(National Institute for Materials Science)
;
Makoto Watanabe
(National Institute for Materials Science)
説明:
(abstract)The stress–strain curve (SSC) prediction for additively manufactured as-build metal materials with laser powder bed fusion (LPBF) is a lengthy and tedious process. It involves the sophisticated representative volume element (RVE) reconstruction of complex experimental microstructures for subsequent state-of-the-art crystal plasticity simulations with hyperparameter tunings in the appropriate physical model. However, even with a well-fitted model, simulations with different RVEs or temperatures, for example, are too time-consuming and computationally intensive. In recent years, several attempts were directed towards the SSC predictions with machine learning (ML) tools to speed up this process. Mainly, the artificial neural networks (ANN) were reported so far for this purpose. Here, we present our version to predict the temperature dependence of SSCs for LPBF fabricated industrially important Hastelloy X with various ML methods. Compared to previously reported studies on this matter with direct link between the microstructures and SSCs, we directly link only experimental conditions and predicted SSCs, which could be more preferable for some application scenarios discussed below. It was found that due to the structure and “small” size of our training dataset, the decision tree-based ML regressors worked better than other popular ML methods.
権利情報:
キーワード: additive manufacturing, crystal plasticity simulations, representative volume element reconstruction, machine learning regression, stress–strain curve simulation/prediction
刊行年月日: 2024-11-27
出版者: Springer Science and Business Media LLC
掲載誌:
研究助成金:
原稿種別: 出版者版 (Version of record)
MDR DOI:
公開URL: https://doi.org/10.1038/s41598-024-80098-7
関連資料:
その他の識別子:
連絡先:
更新時刻: 2024-12-18 08:30:38 +0900
MDRでの公開時刻: 2024-12-18 08:30:39 +0900
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Stress–strain curve predictions.pdf
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サイズ | 6.85MB | 詳細 |