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Materials informatics for the screening of multi-principal elements and high-entropy alloys

机译:用于筛选多原理元素和高熵合金的材料信息学

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摘要

The field of multi-principal element or (single-phase) high-entropy (HE) alloys has recently seen exponential growth as these systems represent a paradigm shift in alloy development, in some cases exhibiting unexpected structures and superior mechanical properties. However, the identification of promising HE alloys presents a daunting challenge given the associated vastness of the chemistry/composition space. We describe here a supervised learning strategy for the efficient screening of HE alloys that combines two complementary tools, namely: (1) a multiple regression analysis and its generalization, a canonical-correlation analysis (CCA) and (2) a genetic algorithm (GA) with a CCA-inspired fitness function. These tools permit the identification of promising multi-principal element alloys. We implement this procedure using a database for which mechanical property information exists and highlight new alloys having high hardnesses. Our methodology is validated by comparing predicted hardnesses with alloys fabricated by arc-melting, identifying alloys having very high measured hardnesses.
机译:最近,多主元素或(单相)高熵(HE)合金领域呈指数增长,因为这些系统代表了合金发展的范式转变,在某些情况下表现出出乎意料的结构和优越的机械性能。但是,鉴于化学/成分空间的巨大关联,有希望的HE合金的鉴定提出了艰巨的挑战。我们在这里描述一种用于高效筛选HE合金的监督学习策略,该策略结合了两个互补工具,即:(1)多元回归分析及其推广,规范相关分析(CCA)和(2)遗传算法(GA) )具有受CCA启发的健身功能。这些工具可用于鉴定有前途的多主要元素合金。我们使用存在机械性能信息的数据库来实施此程序,并突出显示具有高硬度的新合金。我们的方法通过将预测的硬度与通过电弧熔化制造的合金进行比较而得到验证,可以识别出具有很高测量硬度的合金。

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