Tool condition monitoring in micro-drilling using vibration signals and artificial neural network: Subtitle: TCM in micro-drilling using vibration signals

K. Patra, A. Jha, T. Szalay
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引用次数: 5

Abstract

Tool condition monitoring is one of the key issues in mechanical micromachining for efficient manufacturing of the micro-parts in several industries. In the present study, a tool condition monitoring system for micro-drilling is developed using a tri-axial accelerometer, a data acquisition and signal processing module and an artificial neural network. Micro-drilling experiments were carried out on an austenitic stainless steel ((X5CrNi 18-10) workpiece with the 500 μm diameter micro-drill. A three-axis accelerometer was installed on a sensor plate attached to the workpiece to collect vibration signals in three directions during drilling. The time domain “root mean square” feature representing changes in tool wear was estimated for vibration signals of all three directions. The variations of the rms micro-drilling vibrations were investigated with the increasing number of holes under different cutting conditions. An artificial neural network (ANN) model was developed to fuse the rms values of all three directional vibration signals, the spindle speed and feed parameters to predict the drilled hole number. The predicted drilled hole number obtained with the ANN model is in good agreement with the experimentally obtained drilled hole number. It has been also shown that the error of hole number prediction obtained by the neural network model is less than that obtained by using the regression model.
基于振动信号和人工神经网络的微钻刀具状态监测:副标题:基于振动信号的微钻中医
刀具状态监测是机械微加工的关键问题之一,可以有效地制造出许多行业的微零件。本研究采用三轴加速度计、数据采集与信号处理模块和人工神经网络,开发了微钻工具状态监测系统。采用直径500 μm的微钻对奥氏体不锈钢(x5crni18 -10)工件进行了微钻实验。在工件附着的传感板上安装三轴加速度计,采集钻孔过程中三个方向的振动信号。对三个方向的振动信号估计了代表刀具磨损变化的时域“均方根”特征。研究了在不同切削条件下,随孔数的增加,均方根微钻振动的变化规律。建立了一种人工神经网络(ANN)模型,将三种方向振动信号的均方根值、主轴转速和进给参数融合在一起,预测钻孔数。人工神经网络模型预测的钻孔数与实验得到的钻孔数吻合较好。结果表明,神经网络模型的孔数预测误差小于回归模型的预测误差。
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