Abstract

Ultrasound testing has been widely applied for material characterization. The method accuracy usually relies on operator experience, considering this, an automatic decision support system may contribute to increase the evaluation efficiency. This paper presented an embedded electronic system for decision support in ultrasound evaluation of fiber–metal laminate composites. The proposed system comprised analog to digital conversion and digital signal processing algorithms. Discrete Fourier, wavelet and cosine transforms were used for feature extraction and principal component analysis was applied for efficient feature selection. The automatic classification was performed using an artificial neural network. The results demonstrated that it was possible to produce, in a short time latency, high-quality decision support information for two different types of test objects.

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