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An Automatic Feature Extraction Method Based on Multiple Sensors

机译:基于多个传感器的自动特征提取方法

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摘要

Aiming at the problems of inaccurate monitoring and untimely fault detection in online tool condition monitoring system of CNC machine tools, an automatic feature extraction method based on multiple sensors is proposed. Firstly, different sensors are selected to collect vibration signal, three-phase current signal and acoustic emission signal during tool processing. Then the signals collected by all sensors are analyzed in time domain, frequency domain and wavelet domain respectively. After analyzing the signal, different features are extracted from it. For each feature, the least square method is used to obtain the fitting line. Finally, according to the comparison of the slope and square error of the fitting line, the characteristics that are highly correlated with tool wear are selected. These features are composed into an eigenvector to reflect the tool wear state. This method can monitor tool wear more accurately and timely.
机译:旨在CNC机床在线工具状态监测系统中不准确的监测和不合时宜的故障检测问题,提出了一种基于多个传感器的自动特征提取方法。首先,选择不同的传感器以在工具处理期间收集振动信号,三相电流信号和声发射信号。然后分别在时域,频域和小波域中分析由所有传感器收集的信号。在分析信号后,从中提取不同的特征。对于每个特征,最小二乘法用于获得拟合线。最后,根据配件线的斜率和方误差的比较,选择与工具磨损高度相关的特性。这些特征组成为特征向量以反映工具磨损状态。这种方法可以更准确及时监测工具磨损。

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