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Impurity gas detection for SNF canisters using probabilistic deep learning and acoustic sensing

  • Bozhou Zhuang
  • , Bora Gencturk
  • , Assad A. Oberai
  • , Harisankar Ramaswamy
  • , Ryan Meyer
  • , Anton Sinkov
  • , Morris Good

Research output: Contribution to journalArticlepeer-review

8 Scopus citations

Abstract

Monitoring impurity gases in spent nuclear fuel (SNF) canisters is a novel structural health monitoring approach for SNF in dry storage. The SNF canisters are sealed containers that do not facilitate visual access to the inside. Acoustic sensing can be deployed by taking advantage of the pathways unobstructed by internal hardware. Although the ultrasonic time-of-flight measurement can provide valuable information, it is limited in its ability to discern the concentration of only one impurity gas. As such, deep learning algorithms, particularly convolutional neural networks (CNNs), offer a promising solution. In this study, CNN-based probabilistic deep learning models were implemented to detect and quantify multiple impurity gases in helium. An experimental platform was established to simulate canister conditions, and ultrasonic test data were collected. The presence of argon and air in helium at concentrations ranging from 0% to 1.2% at increments of 0.05% was considered. The multi-layer perceptron, decision tree, and logistic regression classifiers achieved high accuracies when distinguishing pure helium from helium with impurities. CNN with dropout layers and CNN using maximum likelihood estimation showed a similar performance, indicating their ability to capture uncertainties. The ensemble CNN model exhibited improved predictions and the ability to balance individual gas concentration by integrating 1D- and 2D-CNN models. These findings contribute probabilistic deep learning solutions for impurity gas detection and analysis within SNF canisters, thus ensuring safe storage and management of SNFs.

Original languageEnglish
Article number126005
JournalMeasurement Science and Technology
Volume35
Issue number12
DOIs
StatePublished - Dec 1 2024

Funding

This study was funded by the U.S. Department of Energy under the Nuclear Energy University Program award no. DE-NE0009171. The findings and opinions presented in this study are those of the authors and do not necessary reflect the views of or endorsed by the Sponsor.

Keywords

  • acoustic sensing
  • convolutional neural networks (CNNs)
  • impurity gas detection
  • probabilistic deep learning
  • spent nuclear fuel (SNF)

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