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首页> 外文期刊>Journal of Nuclear Materials: Materials Aspects of Fission and Fusion >Tensile property prediction by feature engineering guided machine learning in reduced activation ferritic/martensitic steels
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Tensile property prediction by feature engineering guided machine learning in reduced activation ferritic/martensitic steels

机译:减少激活铁素体/马氏体钢的特征工程引导机学习的拉伸性能预测

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摘要

The accurate prediction of tensile properties has great importance for the service life assessment and alloy design of RAFM steels. In order to overcome the limitation of traditional physical metallurgical models, machine learning algorithm was used to establish universal models for the prediction of RAFM steels' yield strength and total elongation. A database with a wide range of compositions and treatment processes of RAFM steels was first established. Then, feature engineering methods were used to select the highly correlated features. With the reasonable selection of machine learning algorithm and test/ training set partitioning strategy, random forests regressors were trained by the selected features. The prediction results proved that, compared with traditional physical metallurgical models, the feature engineering guided random forests regressors had advantages of accuracy and universality for the prediction of RAFM steels' yield strength and total elongation. And the calculated process window for the balance of strength and plasticity could provide guidance for the further design and development of RAFM steels. (C) 2019 Elsevier B.V. All rights reserved.
机译:抗拉性特性的精确预测对于Rafm Steels的使用寿命评估和合金设计非常重要。为了克服传统物理冶金模型的限制,机器学习算法用于建立万尺钢屈服强度和总伸长率的预测通用模型。首先建立了具有广泛组成和Rafm Steels的组合物和处理过程的数据库。然后,使用特征工程方法来选择高度相关的特征。通过合理选择机器学习算法和测试/培训设置分区策略,随机林回归被选定的功能训练。预测结果证明,与传统物理冶金模型相比,特征工程导向随机森林回归具有精度和普遍性的优点,用于预测RAFM钢的屈服强度和总伸长率。而且计算的力量和可塑性的计算过程窗口可以为RAFM钢的进一步设计和开发提供指导。 (c)2019 Elsevier B.v.保留所有权利。

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