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Sensoring systems and signal analysis to monitor tool wear in microdrilling operations on a sintered tungsten-copper composite material

机译:传感器系统和信号分析,可监控在烧结钨铜复合材料上进行微钻操作中的刀具磨损

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摘要

Monitoring of micro-scale machining processes is a key issue in efficient manufacturing. Monitoring not only reduces the need for expert operators, thereby lowering costs, but it also decreases the probability of unexpected tool breakage, which may involve damage to the workpiece or, even, to the machine-tool. Process monitoring is also of immense importance in view of the tiny tool diameters used in micro-mechanical machining. In this study, a microdrilling process was experimentally studied, which involved three different TiAlN-coated drills (diameters 0.1 mm; 0.5 mm and 1.0 mm), of a tungsten-copper alloy. Variations in tool dimensions were measured after the completion of each hole, while force and vibration signals were measured throughout the cutting process. Features were extracted from the signals by using time-domain statistics, fast Fourier transform, wavelet transform, and Hilbert-Huang transform. These features were correlated with the number of drilled holes by using statistical regressions, neural networks and neuro-fuzzy systems. The study shows that the combination of wavelet transform and neural network systems yielded the most suitable prediction of the use of tool. These results are relevant for further studies on the implementation of tool condition monitoring systems for micromechanical machining processes.
机译:监控微型加工过程是高效制造中的关键问题。监视不仅减少了对专业操作员的需求,从而降低了成本,而且还降低了意料之外的工具破损的可能性,这可能会损坏工件,甚至损坏机床。考虑到微机械加工中使用的微小刀具直径,过程监控也非常重要。在这项研究中,通过实验研究了微钻孔工艺,该工艺涉及钨铜合金的三种不同的TiAlN涂层钻头(直径0.1 mm; 0.5 mm和1.0 mm)。在每个孔完成后测量工具尺寸的变化,同时在整个切削过程中测量力和振动信号。通过使用时域统计,快速傅里叶变换,小波变换和希尔伯特-黄变换从信号中提取特征。通过使用统计回归,神经网络和神经模糊系统,将这些特征与钻孔数量相关联。研究表明,小波变换和神经网络系统的结合产生了最合适的工具使用预测。这些结果对于进一步研究微机械加工过程中的刀具状态监视系统的实现具有重要意义。

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