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Correlative image learning of chemo-mechanics in phase-transforming solids

Authors :
Deng, Haitao D.
Zhao, Hongbo
Jin, Norman
Hughes, Lauren
Savitzky, Benjamin H.
Ophus, Colin
Fraggedakis, Dimitrios
Borbély, András
Yu, Young-Sang
Lomeli, Eder G.
Yan, Rui
Liu, Jueyi
Shapiro, David A.
Cai, Wei
Bazant, Martin Z.
Minor, Andrew M.
Chueh, William C.
Source :
Nature Materials; May 2022, Vol. 21 Issue: 5 p547-554, 8p
Publication Year :
2022

Abstract

Constitutive laws underlie most physical processes in nature. However, learning such equations in heterogeneous solids (for example, due to phase separation) is challenging. One such relationship is between composition and eigenstrain, which governs the chemo-mechanical expansion in solids. Here we developed a generalizable, physically constrained image-learning framework to algorithmically learn the chemo-mechanical constitutive law at the nanoscale from correlative four-dimensional scanning transmission electron microscopy and X-ray spectro-ptychography images. We demonstrated this approach on LiXFePO4, a technologically relevant battery positive electrode material. We uncovered the functional form of the composition–eigenstrain relation in this two-phase binary solid across the entire composition range (0 ≤ X≤ 1), including inside the thermodynamically unstable miscibility gap. The learned relation directly validates Vegard’s law of linear response at the nanoscale. Our physics-constrained data-driven approach directly visualizes the residual strain field (by removing the compositional and coherency strain), which is otherwise impossible to quantify. Heterogeneities in the residual strain arise from misfit dislocations and were independently verified by X-ray diffraction line profile analysis. Our work provides the means to simultaneously quantify chemical expansion, coherency strain and dislocations in battery electrodes, which has implications on rate capabilities and lifetime. Broadly, this work also highlights the potential of integrating correlative microscopy and image learning for extracting material properties and physics.

Details

Language :
English
ISSN :
14761122 and 14764660
Volume :
21
Issue :
5
Database :
Supplemental Index
Journal :
Nature Materials
Publication Type :
Periodical
Accession number :
ejs58960856
Full Text :
https://doi.org/10.1038/s41563-021-01191-0