TY - JOUR
T1 - A fine pore-preserved deep neural network for porosity analytics of a high burnup U-10Zr metallic fuel
AU - Wang, Haotian
AU - Xu, Fei
AU - Cai, Lu
AU - Salvato, Daniele
AU - Di Lemma, Fidelma Giulia
AU - Capriotti, Luca
AU - Yao, Tiankai
AU - Xian, Min
N1 - Funding Information:
This work was partially supported by the U.S. Department of Energy, Advanced Fuels Campaign of the Nuclear Technology Research and Development program in the Office of Nuclear Energy and by the INL Laboratory Directed Research& Development (LDRD: 22A1059-094FP) Program under DOE Idaho Operations Office Contract DE-AC07-05ID14517. The authors acknowledge the financial support from the U.S. Department of Energy, Office of Nuclear Energy as part of a Nuclear Science User Facilities Rapid Turnaround Experiment (RTE #2899). The authors are extremely grateful to all the people at HFEF and IMCL involved in the sample’s handling, preparation, and analysis.
Publisher Copyright:
© 2023, The Author(s).
PY - 2023/12/14
Y1 - 2023/12/14
N2 - U-10 wt.% Zr (U-10Zr) metallic fuel is the leading candidate for next-generation sodium-cooled fast reactors. Porosity is one of the most important factors that impacts the performance of U-10Zr metallic fuel. The pores generated by the fission gas accumulation can lead to changes in thermal conductivity, fuel swelling, Fuel-Cladding Chemical Interaction (FCCI) and Fuel-Cladding Mechanical Interaction (FCMI). Therefore, it is crucial to accurately segment and analyze porosity to understand the U-10Zr fuel system to design future fast reactors. To address the above issues, we introduce a workflow to process and analyze multi-source Scanning Electron Microscope (SEM) image data. Moreover, an encoder-decoder-based, deep fully convolutional network is proposed to segment pores accurately by integrating the residual unit and the densely-connected units. Two SEM 250 × field of view image datasets with different formats are utilized to evaluate the new proposed model’s performance. Sufficient comparison results demonstrate that our method quantitatively outperforms two popular deep fully convolutional networks. Furthermore, we conducted experiments on the third SEM 2500 × field of view image dataset, and the transfer learning results show the potential capability to transfer the knowledge from low-magnification images to high-magnification images. Finally, we use a pre-trained network to predict the pores of SEM images in the whole cross-sectional image and obtain quantitative porosity analysis. Our findings will guide the SEM microscopy data collection efficiently, provide a mechanistic understanding of the U-10Zr fuel system and bridge the gap between advanced characterization to fuel system design.
AB - U-10 wt.% Zr (U-10Zr) metallic fuel is the leading candidate for next-generation sodium-cooled fast reactors. Porosity is one of the most important factors that impacts the performance of U-10Zr metallic fuel. The pores generated by the fission gas accumulation can lead to changes in thermal conductivity, fuel swelling, Fuel-Cladding Chemical Interaction (FCCI) and Fuel-Cladding Mechanical Interaction (FCMI). Therefore, it is crucial to accurately segment and analyze porosity to understand the U-10Zr fuel system to design future fast reactors. To address the above issues, we introduce a workflow to process and analyze multi-source Scanning Electron Microscope (SEM) image data. Moreover, an encoder-decoder-based, deep fully convolutional network is proposed to segment pores accurately by integrating the residual unit and the densely-connected units. Two SEM 250 × field of view image datasets with different formats are utilized to evaluate the new proposed model’s performance. Sufficient comparison results demonstrate that our method quantitatively outperforms two popular deep fully convolutional networks. Furthermore, we conducted experiments on the third SEM 2500 × field of view image dataset, and the transfer learning results show the potential capability to transfer the knowledge from low-magnification images to high-magnification images. Finally, we use a pre-trained network to predict the pores of SEM images in the whole cross-sectional image and obtain quantitative porosity analysis. Our findings will guide the SEM microscopy data collection efficiently, provide a mechanistic understanding of the U-10Zr fuel system and bridge the gap between advanced characterization to fuel system design.
UR - http://www.scopus.com/inward/record.url?scp=85179654868&partnerID=8YFLogxK
UR - https://www.mendeley.com/catalogue/c97ac8dc-6a75-3537-8bb4-0a19f1adc759/
U2 - 10.1038/s41598-023-48800-3
DO - 10.1038/s41598-023-48800-3
M3 - Article
C2 - 38097710
AN - SCOPUS:85179654868
SN - 2045-2322
VL - 13
SP - 22274
JO - Scientific Reports
JF - Scientific Reports
IS - 1
M1 - 22274
ER -