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Automated detection of corrosion in used nuclear fuel dry storage canisters using residual neural networks

  • Papamarkou, Theodore (Computational Sciences and Engineering Division, Oak Ridge National Laboratory) ;
  • Guy, Hayley (Department of Mathematics, North Carolina State University) ;
  • Kroencke, Bryce (Department of Computer Science, University of California) ;
  • Miller, Jordan (Center for Cognitive Ubiquitous Computing, Arizona State University) ;
  • Robinette, Preston (Presbyterian College) ;
  • Schultz, Daniel (Innovative Computing Laboratory, University of Tennessee) ;
  • Hinkle, Jacob (Computational Sciences and Engineering Division, Oak Ridge National Laboratory) ;
  • Pullum, Laura (Computer Science and Mathematics Division, Oak Ridge National Laboratory) ;
  • Schuman, Catherine (Computer Science and Mathematics Division, Oak Ridge National Laboratory) ;
  • Renshaw, Jeremy (Electric Power Research Institute) ;
  • Chatzidakis, Stylianos (Reactor and Nuclear Systems Division, Oak Ridge National Laboratory)
  • Received : 2020.03.05
  • Accepted : 2020.07.13
  • Published : 2021.02.25

Abstract

Nondestructive evaluation methods play an important role in ensuring component integrity and safety in many industries. Operator fatigue can play a critical role in the reliability of such methods. This is important for inspecting high value assets or assets with a high consequence of failure, such as aerospace and nuclear components. Recent advances in convolution neural networks can support and automate these inspection efforts. This paper proposes using residual neural networks (ResNets) for real-time detection of corrosion, including iron oxide discoloration, pitting and stress corrosion cracking, in dry storage stainless steel canisters housing used nuclear fuel. The proposed approach crops nuclear canister images into smaller tiles, trains a ResNet on these tiles, and classifies images as corroded or intact using the per-image count of tiles predicted as corroded by the ResNet. The results demonstrate that such a deep learning approach allows to detect the locus of corrosion via smaller tiles, and at the same time to infer with high accuracy whether an image comes from a corroded canister. Thereby, the proposed approach holds promise to automate and speed up nuclear fuel canister inspections, to minimize inspection costs, and to partially replace human-conducted onsite inspections, thus reducing radiation doses to personnel.

Keywords

Acknowledgement

This manuscript has been authored by UT-Battelle, LLC, under contract DE-AC05-00OR22725 with the US Department of Energy (DOE). The US government retains and the publisher, by accepting the article for publication, acknowledges that the US government retains a nonexclusive, paid-up, irrevocable, worldwide license to publish or reproduce the published form of this manuscript, or allow others to do so, for US government purposes. DOE will provide public access to these results of federally sponsored research in accordance with the DOE Public Access Plan (http://energy.gov/downloads/doe-public- access-plan). This work was funded by the AI Initiative at the Oak Ridge National Laboratory. This research used resources of the Compute and Data Environment for Science (CADES) at the Oak Ridge National Laboratory, which is supported by the Office of Science of the U.S. Department of Energy under Contract No. DE-AC05-00OR22725. The authors would like to thank Guannan Zhang for helping with the co-supervision of the nuclear project interns at the artificial intelligence summer institute (AISI) 2019 of ORNL.

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