arXiv Open Access 2023

A machine learning framework for quantifying chemical segregation and microstructural features in atom probe tomography data

Alaukik Saxena Nikita Polin Navyanth Kusampudi Shyam Katnagallu Leopoldo Molina-Luna +5 lainnya
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Abstrak

Atom probe tomography (APT) is ideally suited to characterize and understand the interplay of chemical segregation and microstructure in modern multicomponent materials. Yet, the quantitative analysis typically relies on human expertise to define regions of interest. We introduce a computationally efficient, multistage machine learning strategy to identify chemically distinct domains in a semi automated way, and subsequently quantify their geometric and compositional characteristics. In our algorithmic pipeline, we first coarse grain the APT data into voxels, collect the composition statistics, and decompose it via clustering in composition space. The composition classification then enables the real space segmentation via a density based clustering algorithm, thus revealing the microstructure at voxel resolution. Our approach is demonstrated for a Sm(Co,Fe)ZrCu alloy. The alloy exhibits two precipitate phases with a plate-like, but intertwined morphology. The primary segmentation is further refined to disentangle these geometrically complex precipitates into individual plate like parts by an unsupervised approach based on principle component analysis, or a U-Net based semantic segmentation trained on the former. Following the chemical and geometric analysis, detailed chemical distribution and segregation effects relative to the predominant plate-like geometry can be readily mapped without resorting to the initial voxelization.

Penulis (10)

A

Alaukik Saxena

N

Nikita Polin

N

Navyanth Kusampudi

S

Shyam Katnagallu

L

Leopoldo Molina-Luna

O

Oliver Gutfleisch

B

Benjamin Berkels

B

Baptiste Gault

J

Jörg Neugebauer

C

Christoph Freysoldt

Format Sitasi

Saxena, A., Polin, N., Kusampudi, N., Katnagallu, S., Molina-Luna, L., Gutfleisch, O. et al. (2023). A machine learning framework for quantifying chemical segregation and microstructural features in atom probe tomography data. https://arxiv.org/abs/2304.08761

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Tahun Terbit
2023
Bahasa
en
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arXiv
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Open Access ✓