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Mapping Non-Linear Influence of Alloying Elements on Tensile Strength of Martensitic Steel

机译:合金元素对马氏体钢拉伸强度的非线性影响的映射

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In high-efficiency power plants, some components must withstand high stress and temperature. Materials scientists manipulate alloying element composition and thermomechanical processing to design specific mechanical properties in alloys. The analyzed 8-12% Cr steel dataset, for iron base alloy compositions (>80) and processing parameters, displayed results of tensile strength in 34 columns by 915 rows. To address non-linearity of the tensile properties, data analyses were carried out in composition-based clusters. We illustrated the effectiveness of the clustering approach in both classification and non-linear regression problems. This data science approach can assist with domain-guided statistical design for optimal manufacturing, computational materials engineering, uncertainty quantification to support decision-making, and additional scientific insight into complex, noisy, high-dimensional, and high-volume data sets. The hypotheses generated via the non-linear data analyses were tested on extended compositional ranges, providing new and interesting insights. These insights produced by data science can be interpreted using domain science knowledge for further validation and knowledge discovery.
机译:在高效电厂中,某些组件必须承受高压力和高温。材料科学家操纵合金元素的成分和热机械加工来设计合金的特定机械性能。对于铁基合金成分(> 80)和加工参数,分析后的8-12%Cr钢数据集显示了34列乘915行的抗拉强度结果。为了解决拉伸性能的非线性问题,在基于成分的聚类中进行了数据分析。我们说明了聚类方法在分类和非线性回归问题中的有效性。这种数据科学方法可以协助优化制造,计算材料工程,不确定性量化以支持决策的领域指导统计设计,以及对复杂,嘈杂,高维和大数据集的其他科学见解。通过非线性数据分析生成的假设在扩展的成分范围内进行了测试,从而提供了新的有趣的见解。可以使用领域科学知识来解释由数据科学产生的这些见解,以进行进一步的验证和知识发现。

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