Deep learning in automated ultrasonic NDE – Developments, axioms and opportunities

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57 Citations (Scopus)
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Abstract

The analysis of ultrasonic NDE data has traditionally been addressed by a trained operator manually interpreting data with the support of rudimentary automation tools. Recently, many demonstrations of deep learning (DL) techniques that address individual NDE tasks (data pre-processing, defect detection, defect characterisation, and property measurement) have started to emerge in the research community. These methods have the potential to offer high flexibility, efficiency, and accuracy subject to the availability of sufficient training data. Moreover, they enable the automation of complex processes that span one or more NDE steps (e.g. detection, characterisation, and sizing). There is, however, a lack of consensus on the direction and requirements that these new methods should follow. These elements are critical to help achieve automation of ultrasonic NDE driven by artificial intelligence such that the research community, industry, and regulatory bodies embrace it. This paper reviews the state-of-the-art of autonomous ultrasonic NDE enabled by DL methodologies. The review is organised by the NDE tasks that are addressed by means of DL approaches. Key remaining challenges for each task are noted. Basic axiomatic principles for DL methods in NDE are identified based on the literature review, relevant international regulations, and current industrial needs. By placing DL methods in the context of general NDE automation levels, this paper aims to provide a roadmap for future research and development in the area.
Original languageEnglish
Article number102703
JournalNDT and E International
Volume131
Early online date13 Jul 2022
DOIs
Publication statusPublished - 20 Jul 2022

Bibliographical note

Funding Information:
The work reported is part of a pilot project (Grant number 100374) funded by Lloyd's Register Foundation and the Alan Turing Institute Data-Centric Engineering Programme . The authors would also like to thank the industrial participants who responded to the surveys from which the axioms and automation levels were developed.

Publisher Copyright:
© 2022 The Authors

Keywords

  • Non-destructive evaluation
  • Deep leraning
  • Ultrasound
  • Structural integrity
  • Automation
  • Axioms

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