利用神经细胞自动机从统计描述符重构微观结构

IF 2.4 3区 材料科学 Q3 ENGINEERING, MANUFACTURING Integrating Materials and Manufacturing Innovation Pub Date : 2024-01-18 DOI:10.1007/s40192-023-00335-1
Paul Seibert, Alexander Raßloff, Yichi Zhang, Karl Kalina, Paul Reck, Daniel Peterseim, Markus Kästner
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引用次数: 0

摘要

摘要 从模拟、马尔科夫、深度学习和基于描述符的方法等多个方向探讨了在硅学中生成复杂材料微观结构的问题。本研究提出了一种混合方法,它受到了上述四种方法的启发,并具有有趣的可扩展性。通过训练神经细胞自动机,可根据局部信息演化微结构。与大多数基于机器学习的方法不同,它不直接需要参考显微照片的数据集,而是通过统计显微结构描述符进行训练,这些描述符可以来自单一参考。这意味着训练成本仅随结构和相关描述符的复杂程度而变化。由于重建结构的大小可以在推理过程中设定,因此即使是超大型结构也能高效生成。同样,如果要从同一个描述符重建许多结构进行统计评估,该方法也非常有效。本文通过各种数值实验对该方法进行了详细的阐述和讨论,证明了该方法的实用性和可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Reconstructing Microstructures From Statistical Descriptors Using Neural Cellular Automata

Abstract

The problem of generating microstructures of complex materials in silico has been approached from various directions including simulation, Markov, deep learning and descriptor-based approaches. This work presents a hybrid method that is inspired by all four categories and has interesting scalability properties. A neural cellular automaton is trained to evolve microstructures based on local information. Unlike most machine learning-based approaches, it does not directly require a data set of reference micrographs, but is trained from statistical microstructure descriptors that can stem from a single reference. This means that the training cost scales only with the complexity of the structure and associated descriptors. Since the size of the reconstructed structures can be set during inference, even extremely large structures can be efficiently generated. Similarly, the method is very efficient if many structures are to be reconstructed from the same descriptor for statistical evaluations. The method is formulated and discussed in detail by means of various numerical experiments, demonstrating its utility and scalability.

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来源期刊
Integrating Materials and Manufacturing Innovation
Integrating Materials and Manufacturing Innovation Engineering-Industrial and Manufacturing Engineering
CiteScore
5.30
自引率
9.10%
发文量
42
审稿时长
39 days
期刊介绍: The journal will publish: Research that supports building a model-based definition of materials and processes that is compatible with model-based engineering design processes and multidisciplinary design optimization; Descriptions of novel experimental or computational tools or data analysis techniques, and their application, that are to be used for ICME; Best practices in verification and validation of computational tools, sensitivity analysis, uncertainty quantification, and data management, as well as standards and protocols for software integration and exchange of data; In-depth descriptions of data, databases, and database tools; Detailed case studies on efforts, and their impact, that integrate experiment and computation to solve an enduring engineering problem in materials and manufacturing.
期刊最新文献
New Paradigms in Model Based Materials Definitions for Titanium Alloys in Aerospace Applications An Explainable Deep Learning Model Based on Multi-scale Microstructure Information for Establishing Composition–Microstructure–Property Relationship of Aluminum Alloys Comparison of Full-Field Crystal Plasticity Simulations to Synchrotron Experiments: Detailed Investigation of Mispredictions 3D Reconstruction of a High-Energy Diffraction Microscopy Sample Using Multi-modal Serial Sectioning with High-Precision EBSD and Surface Profilometry L-PBF High-Throughput Data Pipeline Approach for Multi-modal Integration
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