Fatigue Damage Detection and Risk Assessment via Wavelet Transform and
Neural Network Analysis of Ultrasonic Signals
Abstract
This paper develops a data-driven autonomous method for detection of
fatigue damage and classification of the associated damage risk in
mechanical structures, based on ultrasonic signal energy. The underlying
concept is built upon attenuation of the signal and stability of the
attenuation process. The attenuation provides pertinent information for
damage quantification, whereas the stability represents resistance
towards the fatigue damage growth. The proposed neural network (NN)
model has been trained using the scaled conjugate-gradient
back-propagation method. The NN model is capable of damage detection and
damage classification into five classes of increasing risk. The
Daubechies wavelet transform has been used to reduce the noisy pattern
of the ultrasonic signal energy by using the associated approximation
coefficients. The results show that the proposed method of approximation
signal energy can detect and classify the damage with an accuracy of up
to ∼ 9 8 . 5 % .