원문정보
초록
영어
The noise in the acoustic emission (AE) signal must be removed to identify the mode of AE signal accurately. The Wavelet threshold de-noising method shows some unique advantages. Based on the threshold selection risky problem, K-means clustering method was used to classify the high-frequency coefficients by the wavelet decomposition to determine the removal threshold for the wavelet coefficients corresponding to the noise, and achieve the de-noising purpose. Hard-threshold method and soft-threshold method were applied to AE signal through the wavelet threshold de-noising. The thresholds generated by K-means clustering approach and the Donoho method improved were respectively used as the threshold for the de-noising of the wavelet coefficients. The experimental results show that the method proposed is superior to the Donoho method improved in the three indicators of signal to noise ratio, root mean square error.
목차
1. Introduction
2. The Transform of One-Dimensional Discrete Wavelet
3. The Method of Wavelet Threshold De-noising
4. The Wavelet De-noising Threshold Generation Based on K-Means Clustering Method
5. The Results and Analysis of Experiments
6. Conclusion
References