通过数据驱动方法监测计算机数控机床磨损情况

F. Gougam, A. Afia, MA Aitchikh, W. Touzout, C. Rahmoune, D. Benazzouz
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引用次数: 0

摘要

计算机数控(CNC)机床中刀具的易损性使其成为铣削过程中最脆弱的部件。磨损状况直接影响最终产品质量和操作安全。为解决这一问题,本文介绍了一种混合方法,将特征提取和优化的机器学习算法结合起来,用于刀具磨损预测。该方法包括从铣削过程中获得的时间序列信号中提取一组特征。这些特征可以捕捉到与动态信号行为相关的有价值的特征。随后,我们提出了一个特征选择过程,该过程采用了接力和交叉特征等级。该步骤可自动识别和选择最相关的特征。最后,采用优化的回归支持向量机(OSVR)来预测加工刀具切口的磨损演变。三个铣削刀具磨损实验验证了所提方法的有效性。验证结果包括与线性回归 (LR)、卷积神经网络 (CNN)、CNN-ResNet50 和支持向量回归 (SVR) 方法的比较结果。
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Computer numerical control machine tool wear monitoring through a data-driven approach
The susceptibility of tools in Computer Numerical Control (CNC) machines makes them the most vulnerable elements in milling processes. The final product quality and the operations safety are directly influenced by the wear condition. To address this issue, the present paper introduces a hybrid approach incorporating feature extraction and optimized machine learning algorithms for tool wear prediction. The approach involves extracting a set of features from time-series signals obtained during the milling processes. These features allow the capture of valuable characteristics relating to the dynamic signal behavior. Subsequently, a feature selection process is proposed, employing Relief and intersection feature ranks. This step automatically identifies and selects the most pertinent features. Finally, an optimized support vector machine for regression (OSVR) is employed to predict the evolution of wear in machining tool cuts. The proposed method’s effectiveness is validated from three milling tool wear experiments. This validation includes comparative results with the Linear Regression (LR), Convolutional Neural Network (CNN), CNN-ResNet50, and Support Vector Regression (SVR) methods.
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