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Study on identification method of tool wear based on feature fusion and least squares support vector machine

机译:基于特征融合和最小二乘支持向量机的刀具磨损识别方法研究

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For accurately identifying the condition of the tool wear in vector machines, a novel feature vector extraction methods based on fusing wavelet packet multi-scale information entropy (Frequency domain)and AR model coefficients(Time Domain) of Acoustic emission signal of tool wear is proposed. In order to reduce the dimension of feature vector, the analysis method of kernel principal component analysis method is adopted. The new feature vector is put into lease squares support vector machine to train and identify the tool wear state. The identification results proved that the method using feature fusion obtain higher recognition rate than that using the Single feature.
机译:为了准确识别矢量机中刀具磨损的状况,提出了一种基于小波包多尺度信息熵(频域)和刀具磨损声发射信号的AR模型系数(时域)融合的特征向量提取方法。 。为了减小特征向量的维数,采用了核主成分分析法。将新的特征向量放入租约平方支持向量机中,以训练和识别工具磨损状态。识别结果表明,特征融合方法比单特征方法具有更高的识别率。

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