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Sensor fusion for real-time condition monitoring of tool wear in surfacing with fly cutters

机译:传感器融合,可实时监测飞刀表面的刀具磨损状况

摘要

A coherent artificial neural network, ANN, software program capable of real time analysis and decision-making is utilized in this work for the automatic detection and diagnostics of tool wear during a surfacing milling operation using a fly cutter. Several sensors were utilized to collect data indirectly related to wear: current measurements from the spindle and two (x, y) drive motors, three (x, y, z) components of cutting force, and acoustic emission. Furthermore, direct wear measurements were collected using image capturing and dimensional measurements of the worn location (not performed in real-time). As the inputs from these sensors were ‘fused’, the ANN utilized this multiple-sensor data to yield reasonable predictions of ‘good’, ‘used’, and ‘worn’ tools.
机译:在这项工作中,使用了能够进行实时分析和决策的相干人工神经网络(ANN)软件程序,用于在使用飞刀进行堆焊铣削操作期间自动检测和诊断刀具磨损。利用多个传感器来收集与磨损间接相关的数据:主轴和两个(x,y)驱动电机的电流测量值,切削力的三个(x,y,z)分量以及声发射。此外,使用图像捕获和磨损位置的尺寸测量(不实时执行)来收集直接磨损测量。由于这些传感器的输入是“融合”的,因此ANN利用此多传感器数据来合理预测“好”,“二手”和“破旧”工具。

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