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Deep learning-assisted microstructural analysis of Ni/YSZ anode composites for solid oxide fuel cells

Quantitative microstructural interpretations were carried out without human involvement through an integrated combination of deep learning and focused ion beam-scanning electron microscopy (FIB-SEM) analytics on Ni/Y2O3-stabilized ZrO2 (Ni/YSZ) cermets. The Ni/YSZ/pore composites were analyzed for t...

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Published in:Materials characterization 2021-02, Vol.172, p.110906, Article 110906
Main Authors: Hwang, Heesu, Ahn, Junsung, Lee, Hyunbae, Oh, Jiwon, Kim, Jaehwan, Ahn, Jae-Pyeong, Kim, Hong-Kyu, Lee, Jong-Ho, Yoon, Young, Hwang, Jin-Ha
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Language:English
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Summary:Quantitative microstructural interpretations were carried out without human involvement through an integrated combination of deep learning and focused ion beam-scanning electron microscopy (FIB-SEM) analytics on Ni/Y2O3-stabilized ZrO2 (Ni/YSZ) cermets. The Ni/YSZ/pore composites were analyzed for the automated extraction of microstructural parameters to prevent the subjective analysis problems and unavoidable artifacts frequently encountered in lengthy image processing tasks and eliminate biased evaluations. Considering the high volume of image data and future expectations for electron microscopy usage, FIB-SEM was efficiently combined with semantic segmentation. Traditional image processing analysis tools are combined with phase separation predictions by semantic segmentation algorithms, leading to a quantitative evaluation of microstructural parameters. The combined strategy enables one to significantly enhance poor image quality originating from artifacts in electron microscopy, including charging effects, curtain effects, out-of-focus problems, and unclear phase boundaries encountered in searching for high-efficiency solid oxide fuel cells (SOFCs). •Semantic segmentation was applied to image-based phase identification in SOFCs.•Microstructural quantification was made using deep learning-predicted images.•The stereological approach was synergistically combined with semantic segmentation.
ISSN:1044-5803
1873-4189
DOI:10.1016/j.matchar.2021.110906