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Tool Wear Prediction in Ti-6Al-4V Machining through Multiple Sensor Monitoring and PCA Features Pattern Recognition

机译:通过多传感器监控和PCA特征模式识别在Ti-6Al-4V加工中的刀具磨损预测

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摘要

Machining of titanium alloys is characterised by extremely rapid tool wear due to the high cutting temperature and the strong adhesion at the tool-chip and tool-workpiece interface, caused by the low thermal conductivity and high chemical reactivity of Ti alloys. With the aim to monitor the tool conditions during dry turning of Ti-6Al-4V alloy, a machine learning procedure based on the acquisition and processing of cutting force, acoustic emission and vibration sensor signals during turning is implemented. A number of sensorial features are extracted from the acquired sensor signals in order to feed machine learning paradigms based on artificial neural networks. To reduce the large dimensionality of the sensorial features, an advanced feature extraction methodology based on Principal Component Analysis (PCA) is proposed. PCA allowed to identify a smaller number of features (k = 2 features), the principal component scores, obtained through linear projection of the original d features into a new space with reduced dimensionality k = 2, sufficient to describe the variance of the data. By feeding artificial neural networks with the PCA features, an accurate diagnosis of tool flank wear (VBmax) was achieved, with predicted values very close to the measured tool wear values.
机译:钛合金的机加工特点是:由于钛合金的低导热性和高化学反应性,导致切削温度高以及在刀具-切屑和刀具-工件界面处的牢固附着力,刀具磨损非常快。为了监控Ti-6Al-4V合金干式车削过程中的刀具状态,基于切削过程中切削力,声发射和振动传感器信号的获取和处理,实施了机器学习程序。为了获取基于人工神经网络的机器学习范例,从获取的传感器信号中提取了许多感觉特征。为了减小感觉特征的大尺寸,提出了一种基于主成分分析(PCA)的高级特征提取方法。 PCA可以识别较少数量的特征(k = 2个特征),这些特征是通过将原始d个特征线性投影到维数为k = 2的新空间中而获得的,足以描述数据的方差。通过为人工神经网络提供PCA功能,可以对刀具侧面磨损(VBmax)进行准确的诊断,其预测值非常接近所测量的刀具磨损值。

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