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Estimation of tool wear during CNC milling using neural network-based sensor fusion

机译:使用基于神经网络的传感器融合估算CNC铣削过程中的刀具磨损

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摘要

Cutting tool wear degrades the product quality in manufacturing processes. Monitoring tool wear value online is therefore needed to prevent degradation in machining quality. Unfortunately there is no direct way of measuring the tool wear online. Therefore one has to adopt an indirect method wherein the tool wear is estimated from several sensors measuring related process variables. In this work, a neural network-based sensor fusion model has been developed for tool condition monitoring (TCM). Features extracted from a number of machining zone signals, namely cutting forces, spindle vibration, spindle current, and sound pressure level have been fused to estimate the average flank wear of the main cutting edge. Novel strategies such as, signal level segmentation for temporal registration, feature space filtering, outlier removal, and estimation space filtering have been proposed. The proposed approach has been validated by both laboratory and industrial implementations.
机译:切削工具的磨损会降低制造过程中的产品质量。因此,需要在线监控刀具磨损值,以防止加工质量下降。不幸的是,没有在线测量刀具磨损的直接方法。因此,必须采用一种间接方法,其中从测量相关过程变量的多个传感器估计工具磨损。在这项工作中,已经开发了基于神经网络的传感器融合模型用于工具状态监视(TCM)。从许多加工区信号中提取的特征(即切削力,主轴振动,主轴电流和声压级)已融合在一起,以估计主切削刃的平均侧面磨损。已经提出了新颖的策略,例如用于时间配准的信号电平分割,特征空间滤波,离群值去除和估计空间滤波。实验室和工业实施都验证了所提出的方法。

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