4.6 Article

Deep Learning Approach for Damage Classification Based on Acoustic Emission Data in Composite Materials

Journal

MATERIALS
Volume 15, Issue 12, Pages -

Publisher

MDPI
DOI: 10.3390/ma15124270

Keywords

acoustic emission; composite material; deep learning; InceptionTime; damage classification

Funding

  1. Department of Science and Technology of Heilongjiang Province Key R&D Program of Heilongjiang Province [GZ20210122]
  2. Open Fund Project of the Guangdong Provincial Key Laboratory of Petrochemical Equipment Fault Diagnosis, Guangdong University of Petrochemical Technology [91720218]
  3. Postdoctoral Research Foundation project of Heilongjiang Province [LBH-Q21083]

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This paper investigates the application of acoustic emission technique for damage detection and classification in carbon fiber-reinforced composites. By combining deep learning approach using InceptionTime model with acoustic emission data, high accuracy damage classification can be achieved, showing potential in handling data imbalances.
Damage detection and the classification of carbon fiber-reinforced composites using non-destructive testing (NDT) techniques are of great importance. This paper applies an acoustic emission (AE) technique to obtain AE data from three tensile damage tests determining fiber breakage, matrix cracking, and delamination. This article proposes a deep learning approach that combines a state-of-the-art deep learning technique for time series classification: the InceptionTime model with acoustic emission data for damage classification in composite materials. Raw AE time series and frequency-domain sequence data are used as the input for the InceptionTime network, and both obtain very high classification performances, achieving high accuracy scores of about 99%. The InceptionTime network produces better training, validation, and test accuracy with the raw AE time series data than it does with the frequency-domain sequence data. Simultaneously, the InceptionTime model network shows its potential in dealing with data imbalances.

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