首页> 外文期刊>Arabian Journal for Science and Engineering. Section A, Sciences >Hilbert-Huang Transform-Based Emitted Sound Signal Analysis for Tool Flank Wear Monitoring
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Hilbert-Huang Transform-Based Emitted Sound Signal Analysis for Tool Flank Wear Monitoring

机译:基于Hilbert-Huang变换的发射声信号分析,用于刀具侧面磨损监测

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摘要

This paper presents an emitted sound signal analysis technique for tool flank wear monitoring based on the Hilbert-Huang Transform (HHT). HHT is a new signal processing technique suitable for analyzing non-stationary and non-linear signals like emitted sound. The need for HHT in this analysis and its principle are explained. The entire experiment was done on a conventional turning machine using carbide insert tools and mild steel work piece. The emitted sound signal during turning process of a fresh tool, a slightly worn tool with 0.2 mm flank wear and a severely worn tool with 0.4 mm flank wear were recorded separately using a highly sensitive microphone under different cutting conditions. Each emitted sound signal is decomposed into several intrinsic mode functions (IMFs) using empirical mode decomposition (EMD). The Hilbert transform is then applied on each IMF to obtain the instantaneous frequencies with time and their amplitudes. Finally, the marginal and the Hilbert spectrums of fresh, slightly worn and severely worn tool sound signals were produced using selected IMFs. From these spectrums, it is found that the increase in tool flank wear resulted in an increase of the sound pressure amplitude. This is also found true for all the different cutting conditions. The results show that the HHT-based emitted sound signal analysis can also be considered as a simple and reliable method for tool flank wear monitoring.
机译:本文提出了一种基于希尔伯特-黄(Hilbert-Huang)变换(HHT)的发射声信号分析技术,用于刀具侧面磨损监测。 HHT是一种新的信号处理技术,适用于分析诸如声音之类的非平稳和非线性信号。解释了此分析中对HHT的需求及其原理。整个实验是在使用硬质合金刀片和低碳钢工件的常规车床上进行的。在不同的切削条件下,使用高灵敏度麦克风分别记录了新鲜刀具,侧面磨损为0.2 mm的稍微磨损的刀具和侧面磨损为0.4 mm的严重磨损刀具在车削过程中发出的声音信号。使用经验模式分解(EMD)将每个发出的声音信号分解为几个固有模式函数(IMF)。然后,将希尔伯特变换应用于每个IMF,以获得随时间变化的瞬时频率及其幅度。最后,使用选定的IMF产生新鲜,轻微磨损和严重磨损的工具声音信号的边际和希尔伯特频谱。从这些频谱中发现,工具侧面磨损的增加导致声压幅度的增加。对于所有不同的切割条件也是如此。结果表明,基于HHT的发射声信号分析也可以被视为一种简单而可靠的工具侧面磨损监测方法。

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