Non-destructive evaluation and machine learning methods for inspection of spent nuclear fuel canisters: A state-of-the-art review

  • Bozhou Zhuang
  • , Anna Arcaro
  • , Bora Gencturk
  • , Ryan Meyer
  • , Assad Oberai
  • , Anton Sinkov
  • , Morris Good

Research output: Contribution to journalReview articlepeer-review

7 Scopus citations

Abstract

Nuclear energy is among the cleanest and most efficient energy sources currently available. The operation of nuclear power plants (NPPs) produces large amounts of high-level radioactive waste known as spent nuclear fuel (SNF). Currently, large amounts of SNF is stored in dry cask storage systems (DCSSs) for extended interim storage until a permanent disposal solution becomes available. During the extended interim storage, the DCSS, particularly the SNF canisters, may degrade and abnormal conditions may occur. Therefore, non-destructive evaluation (NDE) and machine learning (ML) approaches are necessary for inspection of SNF canisters. This paper presents a state-of-the-art review of literature by summarizing recent progress made on the applications of NDE and ML for inspection of SNF canisters. Sixteen NDE methods are examined and compared: visual inspection, ultrasonic guided waves (UGWs), laser-based approaches, acoustic emission (AE), eddy current testing (ECT), non-invasive acoustic sensing, dynamic modal testing, cosmic ray muons tomography, neutron imaging, gamma rays detection, fiber optical sensors, through-wall communications, X-ray computed tomography (CT), vibrothermography, monoenergetic photon sources, and surface acoustic wave (SAW) sensors. The technology readiness level (TRL) for each method is assessed and compared. Recent publications on ML-enhanced visual inspection, AE, non-invasive acoustic sensing, dynamic modal testing, and neutron imaging for SNF canisters are summarized and future research needs are identified. This review article provides a convenient reference on the state-of-the-art applications of NDE and ML methods for inspection of SNF canisters.

Original languageEnglish
Article number105697
JournalProgress in Nuclear Energy
Volume185
DOIs
StatePublished - Jul 2025

Funding

The funding for this research is provided by the U.S. Department of Energy under the Nuclear Energy University Program award no. DE-NE0009171. The findings and opinions presented here are those of the authors and do not necessarily reflect the views of or endorsed by the sponsor.

Keywords

  • Canisters
  • Dry cask storage system (DCSS)
  • Machine learning (ML)
  • Non-destructive evaluation (NDE)
  • Spent nuclear fuel (SNF)

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