Machine Learning-Enabled Tomographic Imaging of Chemical Short-Range Atomic Ordering.
Yue LiTimoteo ColnaghiYilun GongHuaide ZhangYuan YuYe WeiBin GanMin SongAndreas MarekMarkus RamppSiyuan ZhangZongrui PeiMatthias WuttigSheuly GhoshFritz KörmannJörg NeugebauerZhangwei WangBaptiste GaultPublished in: Advanced materials (Deerfield Beach, Fla.) (2024)
In solids, chemical short-range order (CSRO) refers to the self-organization of atoms of certain species occupying specific crystal sites. CSRO is increasingly being envisaged as a lever to tailor the mechanical and functional properties of materials. Yet quantitative relationships between properties and the morphology, number density, and atomic configurations of CSRO domains remain elusive. Herein, it is showcased how machine learning-enhanced atom probe tomography (APT) can mine the near-atomically resolved APT data and jointly exploit the technique's high elemental sensitivity to provide a 3D quantitative analysis of CSRO in a CoCrNi medium-entropy alloy. Multiple CSRO configurations are revealed, with their formation supported by state-of-the-art Monte-Carlo simulations. Quantitative analysis of these CSROs allows establishing relationships between processing parameters and physical properties. The unambiguous characterization of CSRO will help refine strategies for designing advanced materials by manipulating atomic-scale architectures.