CHATTER DETECTION IN VIBRATION SIGNALS USING TIME-FREQUENCY ANALYSIS

IF 0.6 Q4 ENGINEERING, MECHANICAL
Dialoke Ejiofor Matthew, Jianghai Shi, Maxiao Hou, Hongrui Cao
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引用次数: 0

Abstract

Chatter is a common state in the end milling, which has major influence on machining quality. Early chatter detection is a prerequisite for taking adequate measures to avoid chatter. Nevertheless, there are still numerous challenges and difficulties in the feature extraction of chatter detection. In this paper, effective chatter detection in the milling process of a vibration signal is investigated using time frequency analysis. Firstly, the measured vibration signal in the machining process was preprocessed by Wavelet Transform decomposition. Different sub-bands were obtained and the portion with high chatter information was reconstructed for further analysis. Since measured signals from sensors usually constitute of background noise and other disturbances, the wavelet decomposition serves as a preprocessor to denoise the measured signals and enhance the performance of the Wavelet Synchro Squeezing Transform (WSST) which was applied on the reconstructed signal for chatter Identification. The techniques were used to detect the chatter in different operating condition of the machining process. Finally, some milling tests were conducted and the experiment results prove that the proposed method indeed succeed in effectively chatter identification.
基于时频分析的振动信号颤振检测
颤振是立铣削加工中常见的一种状态,对加工质量有重大影响。早期发现颤振是采取适当措施避免颤振的先决条件。然而,颤振检测的特征提取仍然存在许多挑战和困难。本文利用时频分析方法研究了铣削过程中振动信号颤振的有效检测方法。首先,对加工过程中实测振动信号进行小波分解预处理;得到了不同的子带,重建了高颤振信息的部分,以便进一步分析。由于传感器测量信号通常包含背景噪声和其他干扰,小波分解作为预处理对测量信号进行降噪,提高小波同步压缩变换(WSST)的性能,将小波同步压缩变换应用于重构信号进行颤振识别。利用该技术对不同加工条件下的颤振进行了检测。最后进行了铣削试验,实验结果表明,该方法能够有效地识别颤振。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
MM Science Journal
MM Science Journal ENGINEERING, MECHANICAL-
CiteScore
1.30
自引率
42.90%
发文量
96
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