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Tool Wear and Surface Quality Monitoring Using High Frequency CNC Machine Tool Current Signature

机译:使用高频CNC机床电流信号监控刀具磨损和表面质量

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In this paper a machine learning approach for tool wear monitoring (TWM) and surface quality detection is proposed using high frequency current samples of a CNC turning machine main terminal. Significant frequency based features related to tool wear and surface quality are selected by univariate filter methods. Supervised machine learning methods including Support Vector Machine (SVM) and Random Forest Ensemble (RFE) are used to estimate tool wear and surface quality. Best hyper-parameter combinations of the proposed models are evaluated and found by grid search methods. Experimental studies are conducted on a CNC turning machine using a test work piece and the classification and accuracy results are presented. The presented methodology makes the set up of an on-line system for tool condition monitoring and an estimation of the work piece surface quality by the use of inexpensive and easy to install measurement hardware possible.
机译:本文使用数控车床主端子的高频电流样本,提出了一种用于刀具磨损监测(TWM)和表面质量检测的机器学习方法。通过单变量过滤方法选择与工具磨损和表面质量有关的基于频率的重要特征。有监督的机器学习方法(包括支持向量机(SVM)和随机森林集成(RFE))用于估计工具磨损和表面质量。通过网格搜索方法评估并找到了所提出模型的最佳超参数组合。在数控车床上使用测试工件进行了实验研究,并给出了分类和精度结果。所提出的方法使得可以通过使用廉价且易于安装的测量硬件来建立在线系统,以用于工具状态监测和工件表面质量的估计。

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