Automated defect detection in digital radiography of aerospace welds using deep learning

被引:0
|
作者
Topias Tyystjärvi
Iikka Virkkunen
Peter Fridolf
Anders Rosell
Zuheir Barsoum
机构
[1] Trueflaw,Department of Mechanical Engineering
[2] School of Engineering,Department of Engineering Mechanics
[3] Aalto University,undefined
[4] GKN Aerospace Engine Systems,undefined
[5] KTH Royal Institute of Technology,undefined
来源
Welding in the World | 2022年 / 66卷
关键词
Deep learning; Non-destructive evaluation; Welding; Data augmentation; Probability of detection;
D O I
暂无
中图分类号
学科分类号
摘要
Aerospace welds are non-destructively evaluated (NDE) during manufacturing to identify defective parts that may pose structural risks, often using digital radiography. The analysis of these digital radiographs is time consuming and costly. Attempts to automate the analysis using conventional computer vision methods or shallow machine learning have not, thus far, provided performance equivalent to human inspectors due to the high reliability requirements and low contrast to noise ratio of the defects. Modern approaches based on deep learning have made considerable progress towards reliable automated analysis. However, limited data sets render current machine learning solutions insufficient for industrial use. Moreover, industrial acceptance would require performance demonstration using standard metrics in non-destructive evaluation, such as probability of detection (POD), which are not commonly used in previous studies. In this study, data augmentation with virtual flaws was used to overcome data scarcity, and compared with conventional data augmentation. A semantic segmentation network was trained to find defects from computed radiography data of aerospace welds. Standard evaluation metrics in non-destructive testing were adopted for the comparison. Finally, the network was deployed as an inspector’s aid in a realistic environment to predict flaws from production radiographs. The network achieved high detection reliability and defect sizing performance, and an acceptable false call rate. Virtual flaw augmentation was found to significantly improve performance, especially for limited data set sizes, and for underrepresented flaw types even at large data sets. The deployed prototype was found to be easy to use indicating readiness for industry adoption.
引用
收藏
页码:643 / 671
页数:28
相关论文
共 50 条
  • [21] Fabric Defect Detection Using Deep Learning Techniques
    Gopalakrishnan, K.
    Vanathi, P. T.
    UBIQUITOUS INTELLIGENT SYSTEMS, 2022, 302 : 101 - 113
  • [22] Tyre Defect Detection using Deep Learning Technique
    Pathmanaban P.
    Sunil S.
    Jeyangel A.S.S.
    Chermadurai S.
    International Journal of Vehicle Structures and Systems, 2023, 15 (05) : 699 - 703
  • [23] Detection of Leaf Disease Using Deep Learning A Deep Learning Based for Automated Detection.
    Agusthiyar, R.
    Devi, Shyamala J.
    Saravanabhavan, N. M.
    BIOSCIENCE BIOTECHNOLOGY RESEARCH COMMUNICATIONS, 2020, 13 (06): : 34 - 38
  • [24] Tomato processing defect detection using deep learning
    Shi, Xunang
    Wu, Xuncheng
    2019 2ND WORLD CONFERENCE ON MECHANICAL ENGINEERING AND INTELLIGENT MANUFACTURING (WCMEIM 2019), 2019, : 728 - 732
  • [25] PCB Defect Detection Using Deep Learning Methods
    Wu, Xing
    Ge, Yuxi
    Zhang, Qingfeng
    Zhang, Dali
    PROCEEDINGS OF THE 2021 IEEE 24TH INTERNATIONAL CONFERENCE ON COMPUTER SUPPORTED COOPERATIVE WORK IN DESIGN (CSCWD), 2021, : 873 - 876
  • [26] AUTOMATED FUSE INSPECTION USING DIGITAL RADIOGRAPHY
    STOKES, JA
    PRESKITT, CA
    COREY, RL
    ADAMS, JA
    MATERIALS EVALUATION, 1983, 41 (02) : A15 - A15
  • [27] Non-contact automated defect detection using a deep learning approach in diffraction phase microscopy
    Pandey, Dhruvam
    Saini, Abhinav
    Gannavarpu, Rajshekhar
    OPTICS CONTINUUM, 2023, 2 (11): : 2421 - 2435
  • [28] Automated steel surface defect detection and classification using a new deep learning-based approach
    Demir, Kursat
    Ay, Mustafa
    Cavas, Mehmet
    Demir, Fatih
    NEURAL COMPUTING & APPLICATIONS, 2023, 35 (11): : 8389 - 8406
  • [29] Automated fabric defect detection using hybrid particle cat swarm optimizer with deep learning model
    Sajitha, N.
    Priya, S. Prasanna
    MULTIMEDIA TOOLS AND APPLICATIONS, 2024, 83 (27) : 69715 - 69737
  • [30] Automated steel surface defect detection and classification using a new deep learning-based approach
    Kursat Demir
    Mustafa Ay
    Mehmet Cavas
    Fatih Demir
    Neural Computing and Applications, 2023, 35 : 8389 - 8406