1 April 2000 Limited samples wavelet network and its applications for damage detection composites
Yaojun Wu, Kwok Wo Wong, Tian-ge Zhuang
Author Affiliations +
A new data processing method is proposed for the damage detection of anisotropic composite materials. The wavelet transform and its phase space property are discussed to illustrate how the signal features are represented in the time-frequency plane. The terms in the expansion of the wavelet series that have the same time-frequency property as the original signal are then obtained by comparing the time- frequency space of the signal with the phase space of the wavelet transform. For wavelet neural networks, the training process can be very slow because the number of terms in the wavelet series is often too large for a reasonable search. Here we apply the Gram-Schmidt orthogonal- ization to remove the redundant wavelets in the series using the characteristics of sampled data. Moreover, the values of the features corresponding to different damage types are obtained by linear equations. Experiments on the damage detection of composites with various size cracks and delamination are conducted to demonstrate the feasibility of the proposed method. They show that the reconstructed curves obtained by the proposed approach can well approximate the original sampled curves and that the features corresponding to different damage types are identified.
Yaojun Wu, Kwok Wo Wong, and Tian-ge Zhuang "Limited samples wavelet network and its applications for damage detection composites," Optical Engineering 39(4), (1 April 2000). https://doi.org/10.1117/1.602447
Published: 1 April 2000
Lens.org Logo
CITATIONS
Cited by 5 scholarly publications.
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Wavelets

Composites

Time-frequency analysis

Wavelet transforms

Damage detection

Signal detection

Lithium

Back to Top