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Machine Tool Volumetric Error Features Extraction and Classification Using Principal Component Analysis and K-Means

机译:基于主成分分析和K均值的机床体积误差特征提取与分类

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Volumetric errors (VE) are related to the machine tool accuracy state. Extracting features from the complex VE data provides with a means to characterize this data. VE feature classification can reveal the machine tool accuracy states. This paper presents a study on how to use principal component analysis (PCA) to extract the features of VE and how to use the K-means method for machine tool accuracy state classification. The proposed data processing methods have been tested with the VE data acquired from a five-axis machine tool with different states of malfunction. The results indicate that the PCA and K-means are capable of extracting the VE feature information and classifying the fault states including the C axis encoder fault, uncalibrated C axis encoder fault, and pallet location fault from the machine tool normal states. This research provides a new way for VE features extraction and classification.
机译:体积误差(VE)与机床精度状态有关。从复杂的VE数据中提取特征提供了表征该数据的手段。 VE特征分类可以揭示机床精度状态。本文介绍了如何使用主成分分析(PCA)提取VE的特征以及如何使用K-means方法进行机床精度状态分类的研究。所提出的数据处理方法已经从具有不同故障状态的五轴机床获得的VE数据进行了测试。结果表明,PCA和K-means能够提取VE特征信息并从机床正常状态分类故障状态,包括C轴编码器故障,未校准的C轴编码器故障和托盘定位故障。该研究为VE特征的提取和分类提供了一种新方法。

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