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Cutting Tool Wear Identification based on Wavelet Package and SVM

机译:基于小波包和支持向量机的刀具磨损识别

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By contrast with conventional methods, Acoustic Emission (AE) sensor possesses better performance for tool wear identifying. So, AE sensor is employed into cutting tool wear identification in this paper. Because of the diversity and time varying of AE, wavelet package decomposition and Support Vector Machine (SVM) are employed to process AE signal. Wavelet package is suitable for analyzing non-stationary signal, and SVM possesses excellent classification capacity for small sample. According to these features, signal processing method for identifying fault of cutting tool wear based on wavelet package and SVM was presented. The characteristics of the cutting tool wear under different conditions were extracted by wavelet package, and cutting tool wear was identified by SVM classifier. Experiment results show that the method based on wavelet package and SVM is suitable for identifying cutting tool wear, and the rate of successfully identifying is 93.3%.
机译:与传统方法相比,声发射(AE)传感器具有更好的刀具磨损识别性能。因此,本文将AE传感器应用于刀具磨损识别中。由于声发射的多样性和时变性,因此采用小波包分解和支持向量机(SVM)来处理声发射信号。小波包适用于分析非平稳信号,SVM具有出色的小样本分类能力。针对这些特点,提出了一种基于小波包和支持向量机的刀具磨损故障识别信号处理方法。利用小波包提取不同条件下的刀具磨损特征,并通过SVM分类器对刀具磨损进行识别。实验结果表明,基于小波包和支持向量机的识别方法适用于刀具磨损的识别,成功识别率为93.3%。

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