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Wavelet packet analyses of acoustic emission signal for tool wear in high speed milling

机译:高速铣削刀具磨损声发射信号的小波包分析

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Tool wear condition monitoring technology is one of the main parts of advanced manufacturing technology and is a hot research direction in recent years. A method based on the characteristics of acoustic emission signal and the advantages of wavelet packets decomposition theory in the non-stationary signal feature extraction is proposed for tool wear state monitoring with monitor the change of acoustic emission signal feature vector. In this paper, through the method, firstly, acoustic emission signal were decomposed into 4 layers with wavelet packet analysis, secondly, the frequency band energy of the have been decomposed signal were extracted, thirdly, the frequency band energy that are sensitive to tool wear were selected as feature vector, and then the corresponding relation between feature vector and tool wear was established , finally, the state of the tool wear can be distinguished according to the change of feature vector. The results show that this method can be feasibility used to monitor tool wear state in high speed milling.
机译:工具磨损条件监控技术是先进制造技术的主要部分之一,是近年来的热门研究方向。提出了一种基于声发射信号特性的方法以及在非静止信号特征提取中的小波分组分解理论的优点,用于刀具磨损状态监测,监测声发射信号传感器的变化。在本文中,通过该方法,首先,声发射信号被分解成4层,其中小波分组分析,其次,提取了已经分解信号的频带能量,第三,对工具磨损敏感的频带能量选择为特征向量,然后建立特征向量和刀具磨损之间的相应关系,最后,可以根据特征向量的变化来区分工具磨损的状态。结果表明,该方法可以是用于监测高速铣削工具磨损状态的可行性。

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