基于CALPHAD势的多相场模型界面能空间的机器学习辅助高通量探索

Vahid Attari, Raymundo Arroyave
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引用次数: 3

摘要

计算方法越来越多地被纳入到微结构-性能关系的开发中,用于材料的微结构敏感设计。在目前的工作中,我们提出了非侵入性材料信息学方法,用于使用机器学习增强的多相场建模方案对合成微观结构空间进行高通量探索和分析。具体研究了相场建模中最不确定输入之一的界面能量空间及其对固液相间二次相非均相凝固过程中生长相形状和接触角的影响。我们评估和讨论了这些输入参数的不确定性的敏感性和传播的研究方法,这些不确定性反映在Cu6Sn5金属间化合物在液态锡焊料内Cu衬底上生长过程中由于界面能不确定而形成的形状上。灵敏度结果表明,σSI、σIL和σIL是对金属间化合物形状影响最大的参数。此外,我们使用变分自编码器(一种深度生成神经网络方法)和标签扩展(一种半监督机器学习方法)来建立计算模型的输入和输出之间的相关性。我们使用标签扩展方法将微观结构分为“湿润”、“去湿润”和“不变”三类,并将其与Young-Laplace方程观察到的趋势进行了比较。另一方面,建立了界面能空间的结构图,表明σSI和σSL同步改变金属间化合物的形状,σSI和σSL的增加和σSI的减少使金属间化合物的形状从脱湿结构转变为润湿结构。研究表明,机器学习增强相场方法是一种方便的方法来分析ICME框架下的微观结构设计空间。
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Machine learning-assisted high-throughput exploration of interface energy space in multi-phase-field model with CALPHAD potential

Computational methods are increasingly being incorporated into the exploitation of microstructure–property relationships for microstructure-sensitive design of materials. In the present work, we propose non-intrusive materials informatics methods for the high-throughput exploration and analysis of a synthetic microstructure space using a machine learning-reinforced multi-phase-field modeling scheme. We specifically study the interface energy space as one of the most uncertain inputs in phase-field modeling and its impact on the shape and contact angle of a growing phase during heterogeneous solidification of secondary phase between solid and liquid phases. We evaluate and discuss methods for the study of sensitivity and propagation of uncertainty in these input parameters as reflected on the shape of the Cu6Sn5 intermetallic during growth over the Cu substrate inside the liquid Sn solder due to uncertain interface energies. The sensitivity results rank σSI,σIL, and σIL, respectively, as the most influential parameters on the shape of the intermetallic. Furthermore, we use variational autoencoder, a deep generative neural network method, and label spreading, a semi-supervised machine learning method for establishing correlations between inputs of outputs of the computational model. We clustered the microstructures into three categories (“wetting”, “dewetting”, and “invariant”) using the label spreading method and compared it with the trend observed in the Young-Laplace equation. On the other hand, a structure map in the interface energy space is developed that shows σSI and σSL alter the shape of the intermetallic synchronously where an increase in the latter and decrease in the former changes the shape from dewetting structures to wetting structures. The study shows that the machine learning-reinforced phase-field method is a convenient approach to analyze microstructure design space in the framework of the ICME.

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期刊介绍: Journal of Materials Science: Materials Theory publishes all areas of theoretical materials science and related computational methods. The scope covers mechanical, physical and chemical problems in metals and alloys, ceramics, polymers, functional and biological materials at all scales and addresses the structure, synthesis and properties of materials. Proposing novel theoretical concepts, models, and/or mathematical and computational formalisms to advance state-of-the-art technology is critical for submission to the Journal of Materials Science: Materials Theory. The journal highly encourages contributions focusing on data-driven research, materials informatics, and the integration of theory and data analysis as new ways to predict, design, and conceptualize materials behavior.
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