3D deep learning for enhanced atom probe tomography analysis of nanoscale microstructures
Jiwei Yu
1
,
Zhangwei Wang
1
,
Aparna Saksena
2
,
Shaolou Wei
2
,
Ye Wei
3
,
T Colnaghi
4
,
Andreas Marek
4
,
Markus Rampp
4
,
M. Song
1
,
Baptiste Gault
2, 5
,
Yue Li
2
Publication type: Journal Article
Publication date: 2024-10-01
scimago Q1
wos Q1
SJR: 2.972
CiteScore: 15.4
Impact factor: 9.3
ISSN: 13596454, 18732453
Abstract
Quantitative analysis of microstructural features on the nanoscale, including precipitates, local chemical orderings (LCOs) or structural defects (e.g. stacking faults) plays a pivotal role in understanding the mechanical and physical responses of engineering materials. Atom probe tomography (APT), known for its exceptional combination of chemical sensitivity and sub-nanometer resolution, primarily identifies microstructures through compositional segregations. However, this fails when there is no significant segregation, as can be the case for LCOs and stacking faults. Here, we introduce a 3D deep learning approach, AtomNet, designed to process APT point cloud data at the single-atom level for nanoscale microstructure extraction, simultaneously considering compositional and structural information. AtomNet is showcased in segmenting L12-type nanoprecipitates from the matrix in an AlLiMg alloy, irrespective of crystallographic orientations, which outperforms previous methods. AtomNet also allows for 3D imaging of L10-type LCOs in an AuCu alloy, a challenging task for conventional analysis due to their small size and subtle compositional differences. Finally, we demonstrate the use of AtomNet for revealing 2D stacking faults in a Co-based superalloy, without any stacking-faults-relevant samples in the training dataset, expanding the capabilities for automated exploration of hidden microstructures in APT data. AtomNet can thus recognize challenging microstructures, including nanoprecipitates with diameters above 2 nm, LCOs with diameters of about 1–2 nm without obvious compositional segregation, and even unforeseen planar defects by analyzing atom-atom environments. AtomNet pushes the boundaries of APT analysis, and holds promise in establishing precise quantitative microstructure-property relationships across a diverse range of metallic materials.
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6
Total citations:
6
Citations from 2024:
4
(66.67%)
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Yu J. et al. 3D deep learning for enhanced atom probe tomography analysis of nanoscale microstructures // Acta Materialia. 2024. Vol. 278. p. 120280.
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Yu J., Wang Z., Saksena A., Wei S., Wei Y., Colnaghi T., Marek A., Rampp M., Song M., Gault B., Li Y. 3D deep learning for enhanced atom probe tomography analysis of nanoscale microstructures // Acta Materialia. 2024. Vol. 278. p. 120280.
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TY - JOUR
DO - 10.1016/j.actamat.2024.120280
UR - https://linkinghub.elsevier.com/retrieve/pii/S135964542400630X
TI - 3D deep learning for enhanced atom probe tomography analysis of nanoscale microstructures
T2 - Acta Materialia
AU - Yu, Jiwei
AU - Wang, Zhangwei
AU - Saksena, Aparna
AU - Wei, Shaolou
AU - Wei, Ye
AU - Colnaghi, T
AU - Marek, Andreas
AU - Rampp, Markus
AU - Song, M.
AU - Gault, Baptiste
AU - Li, Yue
PY - 2024
DA - 2024/10/01
PB - Elsevier
SP - 120280
VL - 278
SN - 1359-6454
SN - 1873-2453
ER -
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BibTex (up to 50 authors)
Copy
@article{2024_Yu,
author = {Jiwei Yu and Zhangwei Wang and Aparna Saksena and Shaolou Wei and Ye Wei and T Colnaghi and Andreas Marek and Markus Rampp and M. Song and Baptiste Gault and Yue Li},
title = {3D deep learning for enhanced atom probe tomography analysis of nanoscale microstructures},
journal = {Acta Materialia},
year = {2024},
volume = {278},
publisher = {Elsevier},
month = {oct},
url = {https://linkinghub.elsevier.com/retrieve/pii/S135964542400630X},
pages = {120280},
doi = {10.1016/j.actamat.2024.120280}
}