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Online chatter detection of the end milling based on wavelet packet transform and support vector machine recursive feature elimination

机译:基于小波包变换的终端铣削在线颤动检测和支持向量机递归特征消除

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摘要

Chatter is a common state in the end milling, which has important influence on machining quality. Early chatter detection is a prerequisite for taking effective measures to avoid chatter. However, there are still many difficulties in the feature extraction of chatter detection. In this article, a novel online chatter detection method in end milling process is proposed based on wavelet packet transform (WPT) and support vector machine recursive feature elimination (SVM-RFE). The measured vibration signal in the machining process was preprocessed by WPT. The original feature set of chatter composed of ten time-domain and four frequency-domain feature parameters was obtained via calculating the reconstructed signal. Then feature weights are computed by SVM-RFE, and the obtained feature ranking list was to indicate their different importance in chatter. The optimal feature subset was selected according to the prediction accuracy. The proposed method is described and applied to incipient chatter over conventional methods in identifying the transition from a stable to unstable state. Some milling tests were conducted and the experiment results was shown that the impulse factor and onestep autocorrelation function were the sensitive chatter features.
机译:喋喋不休是最终研磨中的常见状态,对加工质量有重要影响。早期的喋喋不休检测是采取有效措施避免喋喋不休的先决条件。然而,在颤动检测的特征提取中仍存在许多困难。在本文中,基于小波包变换(WPT),提出了一种新的在线铣削过程中的在线跨越过程,并支持向量机递归特征消除(SVM-RFE)。加工过程中的测量振动信号被WPT预处理。通过计算重建信号获得由十个时间域和四个频域特征参数组成的原始功能集。然后,特征权重由SVM-RFE计算,所获得的特征排名列表是在喋喋不休中指示它们不同的重要性。根据预测精度选择最佳特征子集。所提出的方法被描述并应用于初始喋喋不休的常规方法,以识别从稳定到不稳定状态的转变。进行了一些铣削测试,并显示实验结果表明,脉冲系数和oneStep自相关函数是敏感的颤振功能。

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