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首页> 外文期刊>Journal of Beijing Institute of Technology >Monitoring Tool Wear States in Turning Based on Wavelet Analysis
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Monitoring Tool Wear States in Turning Based on Wavelet Analysis

机译:基于小波分析的车削刀具磨损状态监测

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摘要

To monitor the tool wear states in turning, a new way based on the wavelet transfor- mation 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 de- composed; 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.
机译:为了监测车削过程中的刀具磨损状态,提出了一种基于小波变换获取信号特征的新方法,可以反映刀具的磨损状态。利用离散二进小波变换,对切割过程的声发射信号进行分解。将不同尺度下分解信号的均方根(RMS)值作为特征向量。模糊模式识别技术被用于实时监测刀具磨损状态。在选择合适的标准样品的基础上,该方法可以正确识别刀具磨损状态。实验表明,基于小波分析的技术适用于制造应用中的实时实现。

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