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Monitoring Tool Wear States in Turning Based on Wavelet Analysis 被引量:6
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作者 王忠民 王信义 +1 位作者 陈爱第 贾玉平 《Journal of Beijing Institute of Technology》 EI CAS 2001年第1期101-107,共7页
To monitor the tool wear states in turning, a new way based on the wavelet transformation to get the signal characters, which can reflect the tool wear states, was proposed. Using discrete dyadic wavelet transform, th... To monitor the tool wear states in turning, a new way based on the wavelet transformation to get the signal characters, which can reflect the tool wear states, was proposed. Using discrete dyadic wavelet transform, the acoustic emission(AE) signal of cutting process was decomposed; the root mean square(RMS) values of the decomposed signals at different scales were taken as the feature vector; the technique of fuzzy pattern identification was used to real time monitor the tool wear states. Based on choosing the suitable standard samples, this method can correctly identify the tool wear states. Experiments showed that the technique based on wavelet analysis is suitable for real time implementation in manufacturing application. 展开更多
关键词 wavelet transform fuzzy pattern identification acoustic emission(AE) tool wear
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