4.4 Article

Intelligent damage recognition of composite materials based on deep learning and ultrasonic testing

Journal

AIP ADVANCES
Volume 11, Issue 12, Pages -

Publisher

AIP Publishing
DOI: 10.1063/5.0063615

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Funding

  1. National Natural Science Foundation of China [51975583]
  2. Natural Science Basic Research Program of Shaanxi Province of China [2021JQ-357]

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This paper proposes a 1D-YOLO network for intelligent recognition of aircraft composite material damage, which achieved higher accuracy and precision through training and testing of composite material damage data on aircraft skin.
Ultrasonic non-destructive testing can effectively detect damage in aircraft composite materials, but traditional manual testing is time-consuming and labor-intensive. To realize the intelligent recognition of aircraft composite material damage, this paper proposes a 1D-YOLO network, in which intelligent fusion recognizes both the ultrasonic C-scan image and ultrasonic A-scan signal of composite material damage. Through training and testing the composite material damage data on aircraft skin, the accuracy of the model is 94.5%, the mean average precision is 80.0%, and the kappa value is 97.5%. The use of dilated convolution and a recursive feature pyramid effectively improves the feature extraction ability of the model. The effectively used Cascade R-CNN (Cascade Region-Convolutional Neural Network) improves the recognition effect of the model, and the effectively used one-dimensional convolutional neural network excludes non-damaged objects. Comparing our network with YOLOv3, YOLOv4, cascade R-CNN, and other networks, the results show that our network can identify the damage of composite materials more accurately.(c) 2021 Author(s).

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