Learning metal microstructural heterogeneity through spatial mapping of diffraction latent space features

IF 11.9 1区 材料科学 Q1 CHEMISTRY, PHYSICAL
Mathieu Calvat, Chris Bean, Dhruv Anjaria, Hyoungryul Park, Haoren Wang, Kenneth Vecchio, J. C. Stinville
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Abstract

To leverage advancements in machine learning for metallic materials design and property prediction, it is crucial to develop a data-reduced representation of metal microstructures that surpasses the limitations of current physics-based discrete microstructure descriptors. This need is particularly relevant for metallic materials processed through additive manufacturing, which exhibit complex hierarchical microstructures that cannot be adequately described using the conventional metrics typically applied to wrought materials. Furthermore, capturing the spatial heterogeneity of microstructures at the different scales is necessary within such framework to accurately predict their properties. To address these challenges, we propose the physical spatial mapping of metal diffraction latent space features. This approach integrates (i) point diffraction data encoding via variational autoencoders or contrastive learning and (ii) the physical mapping of the encoded values. Together, these steps offer a method to comprehensively describe metal microstructures. We demonstrate this approach on a wrought and additively manufactured alloy, showing that it effectively encodes microstructural information and enables direct identification of microstructural heterogeneity not directly possible by physics-based models. This data-reduced microstructure representation opens the application of machine learning models in accelerating metallic material design and accurately predicting their properties.

Abstract Image

通过衍射潜空间特征的空间映射了解金属微观结构的非均质性
为了利用机器学习在金属材料设计和性能预测方面的进步,开发一种数据简化的金属微结构表示是至关重要的,它超越了当前基于物理的离散微观结构描述符的限制。这种需求与通过增材制造加工的金属材料特别相关,这些材料表现出复杂的分层微观结构,无法使用通常应用于锻造材料的传统指标来充分描述。此外,在这样的框架内,捕获不同尺度的微观结构的空间异质性对于准确预测其性质是必要的。为了解决这些挑战,我们提出了金属衍射潜在空间特征的物理空间映射。该方法集成了(i)通过变分自编码器或对比学习的点衍射数据编码和(ii)编码值的物理映射。总之,这些步骤提供了一种全面描述金属微观结构的方法。我们在一种锻造和增材制造的合金上证明了这种方法,表明它有效地编码了显微组织信息,并能够直接识别基于物理模型无法直接识别的显微组织非均质性。这种数据简化的微观结构表示打开了机器学习模型在加速金属材料设计和准确预测其性能方面的应用。
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来源期刊
npj Computational Materials
npj Computational Materials Mathematics-Modeling and Simulation
CiteScore
15.30
自引率
5.20%
发文量
229
审稿时长
6 weeks
期刊介绍: npj Computational Materials is a high-quality open access journal from Nature Research that publishes research papers applying computational approaches for the design of new materials and enhancing our understanding of existing ones. The journal also welcomes papers on new computational techniques and the refinement of current approaches that support these aims, as well as experimental papers that complement computational findings. Some key features of npj Computational Materials include a 2-year impact factor of 12.241 (2021), article downloads of 1,138,590 (2021), and a fast turnaround time of 11 days from submission to the first editorial decision. The journal is indexed in various databases and services, including Chemical Abstracts Service (ACS), Astrophysics Data System (ADS), Current Contents/Physical, Chemical and Earth Sciences, Journal Citation Reports/Science Edition, SCOPUS, EI Compendex, INSPEC, Google Scholar, SCImago, DOAJ, CNKI, and Science Citation Index Expanded (SCIE), among others.
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