基于EMD和LTSA的机床中心振动状态监测

Jingshu Wang, Qiang Cao, Jinghua Ma, Bin Xing
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引用次数: 0

摘要

针对加工过程中的异常情况严重影响机床的加工性能,选择主轴振动信号对加工中心的加工过程进行监测。采用经验模态分解(EMD)方法对振动信号进行分解,提取前5个本征模函数分量计算功率谱。然后,采用局部切向空间排列(LTSA)方法进行降维,得到指示振动状态的一维特征向量;基于三种不同制造过程的一维临界特征,采用支持向量机模型对振动状态进行分类。分类结果表明,EMD-LTSA方法是一种有效的机床振动状态监测特征提取方法。
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Vibration Status Monitoring of Machine Center Based on EMD and LTSA
As the abnormal conditions of manufacturing process seriously affect the machining performance of machine tool, the vibration signal of spindle is selected to monitor the manufacturing process of machine center. The vibration signals are decomposed by empirical mode decomposition (EMD) method, and the first five intrinsic module functions components are picked out to calculate the power spectrums. Then, the local tangential space arrangement (LTSA) method is developed for dimension reduction, and the one-dimensional feature vector indicating the vibration state is obtained. A support vector machine model is used to classify vibration states based on one-dimensional critical features of three different manufacturing processes. The classification result indicates that the EMD-LTSA method is an efficient feature extraction method for vibration status monitoring of machine tools.
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