Novel Hierarchical Correlation Functions for Quantitative Representation of Complex Heterogeneous Materials and Microstructural Evolution
Pei-En Chen, Wenxiang Xu, Nikhilesh Chawla, Yi Ren, and, Yang Jiao

TL;DR
This paper introduces a new set of hierarchical statistical descriptors called n-point polytope functions for comprehensive, efficient, and explainable quantification of complex microstructures and their evolution in heterogeneous materials.
Contribution
The authors develop novel hierarchical microstructural descriptors and computational tools that effectively characterize and model complex material microstructures and their evolution.
Findings
Pn functions successfully decompose structural features into a polytope basis
Efficient extraction of Pn functions up to n=8 from imaging data
Application to diverse materials demonstrates comprehensive microstructure representation
Abstract
Effective and accurate characterization and quantification of complex microstructure of a heterogeneous material and its evolution under external stimuli are very challenging, yet crucial to achieving reliable material performance prediction, processing optimization and advanced material design. Here, we address this challenge by developing a set of novel hierarchical statistical microstructural descriptors, which we call the "n-point polytope functions" Pn, for quantitative characterization, representation and modeling of complex material microstructure and its evolution. These novel polytope functions successively include higher-order n-point statistics of the features of interest in the microstructure in a concise, expressive, explainable, and universal manner; and can be directly computed from multi-modal imaging data. We develop highly efficient computational tools to directly…
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Taxonomy
TopicsMachine Learning in Materials Science · Electron and X-Ray Spectroscopy Techniques · X-ray Diffraction in Crystallography
