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Robust Tool Wear Monitoring Using Systematic Feature Selection in Turning Processes With Consideration of Uncertainties

机译:使用系统特征选择在转向过程中考虑不确定性的鲁棒工具磨损监控

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摘要

This paper describes a robust tool wear monitoring scheme for turning processes using low-cost sensors. A feature normalization scheme is proposed to eliminate the dependence of signal features on cutting conditions, cutting tools, and workpiece materials. In addition, a systematic feature selection procedure in conjunction with automated signal preprocessing parameter selection is presented to select the feature set that maximizes the performance of the predictive tool wear model. The tool wear model is built using a type-2 fuzzy basis function network (FBFN), which is capable of estimating the uncertainty bounds associated with tool wear measurement. Experimental results show that the tool wear model built with the selected features exhibits high accuracy, generalized applicability, and exemplary robustness: The model trained using 4140 steel turning test data could predict the tool wear for Inconel 718 turning with a root-mean-square error (RMSE) of 7.80 mu m and requests tool changes with a 6% margin on average. Furthermore, the developed method was successfully applied to tool wear monitoring of Ti-6Al-4V alloy despite different mechanisms of tool wear, i.e., crater wear instead of flank wear.
机译:本文介绍了一种强大的工具磨损监控方案,用于使用低成本传感器转动过程。提出了一种特征归一化方案来消除信号特征对切割条件,切割工具和工件材料的依赖性。另外,提出了一种与自动信号预处理参数选择结合的系统特征选择过程以选择最大化预测工具磨损模型的性能的特征集。刀具磨损模型是使用类型-2模糊基函数网络(FBFN)构建的,能够估计与刀具磨损测量相关的不确定性界限。实验结果表明,采用所选功能构建的工具磨损模型具有高精度,广义适用性和示例性稳健性:使用4140钢转动试验数据培训的模型可以预测Inconel 718转动的工具磨损,具有根均方误差(RMSE)为7.80 mu m,并请求工具更改,平均余量为6%。此外,尽管工具磨损机制不同,但成功地应用于Ti-6Al-4V合金的工具磨损监测。

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