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Tool Wear Condition Prediction Using Vibration Signals in High Speed Machining (HSM) of Titanium (Ti-6A1-4V) Alloy

机译:使用钛(Ti-6A1-4V)合金高速加工(HSM)中的振动信号的工具磨损条件预测

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Ti-6A1-4V is extensively used in aerospace and bio-medical applications. In an automated machining environment monitoring of tool conditions is imperative. In this study, Experiments were conducted to classify the tool conditions during High Speed Machining of Titanium alloy. During the machining process, vibration signals were monitored continuously using accelerometer. The features from the signal are extracted and a set of prominent features are selected using Dimensionality Reduction Technique. The selected features are given as an input to the classification algorithm to decide about the condition of the tool. Feature selection has been carried out using J48 Decision Tree Algorithm. Classifications of tool conditions were carried out using Machine Learning Algorithms namely J48 Decision Tree algorithm and Artificial Neural Network (ANN). From the analysis, it is found that ANN is producing comparatively better results. The methodology adopted in this study will be useful for online tool condition monitoring.
机译:TI-6A1-4V广泛用于航空航天和生物医疗应用。在自动加工环境中,监测工具条件是必要的。在该研究中,进行实验以在钛合金的高速加工过程中对工具条件进行分类。在加工过程中,使用加速度计连续监测振动信号。从信号中提取来自信号的特征,并使用维度减少技术选择一组突出特征。所选功能作为分类算法的输入,以确定工具的状况。已经使用J48决策树算法执行特征选择。使用机器学习算法进行刀具条件的分类即J48决策树算法和人工神经网络(ANN)。从分析中,发现ANN正在产生相对较好的结果。本研究采用的方法将有助于在线工具状况监测。

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