基于数据驱动的三点相关函数的微观结构表征

Sheng Cheng, Yang Jiao, Max Yi Ren
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引用次数: 6

摘要

本文考虑了确定完整、简明和可解释的无序非均质材料系统的定量微观结构表示的公开挑战。完备性和简洁性是通过现有的数据驱动方法实现的,例如,深度生成模型,然而,这些模型不提供数学上可解释的潜在表示。本文研究了由三点相关函数组成的表征,这是一种特殊类型的空间卷积。我们证明了各种微观结构可以用一个简洁的三点关联子集来表征,并且可以通过贝叶斯优化来实现这些子集的识别。最后,我们证明了所提出的表征可以直接用于基于有效介质理论的材料性质计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Learning of 3-Point Correlation Functions as Microstructure Representations
This paper considers the open challenge of identifying complete, concise, and explainable quantitative microstructure representations for disordered heterogeneous material systems. Completeness and conciseness have been achieved through existing data-driven methods, e.g., deep generative models, which, however, do not provide mathematically explainable latent representations. This study investigates representations composed of three-point correlation functions, which are a special type of spatial convolutions. We show that a variety of microstructures can be characterized by a concise subset of three-point correlations, and the identification of such subsets can be achieved by Bayesian optimization. Lastly, we show that the proposed representation can directly be used to compute material properties based on the effective medium theory.
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