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Fatigue Feature Extraction Analysis based on a K-Means Clustering Approach

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Academic year: 2017

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Figure 1. A diagrammatic process flow of the wavelet transform extraction method.
Figure 2. Flowchart for K-mean clustering.
Figure 3. Kurtosis and energy coefficient distributions of fatigue damage for two  centroids
Figure 4. Kurtosis and energy coefficient distributions of fatigue damage for three  centroids
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