磨削颤振信号的二元经验模态分解

Jianyang Shen, Huanguo Chen, Yongyu Yi, Jianwei Wu, Yajie Li, Chunshao Huang
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引用次数: 2

摘要

大量实验表明,磨削颤振是磨削过程中主机故障表现的主要形式之一。鉴于此,需要更先进的监测技术来保证磨床的高可靠性。经验模态分解(EMD)技术有望满足这一要求。一般来说,EMD仅限于处理一维信号,无法提供可靠的颤振检测所需的信息融合功能。本文对二元EMD (BEMD)作为一种磨削状态监测技术进行了评估。通过对仿真颤振信号的处理,对传统EMD和BEMD进行了比较。BEMD技术显示出更强的处理非平稳和非线性颤振信号的能力。此外,BEMD能够更有效地从多个信号中提取特征并检测固有模态函数的相位信息。信号的瞬时能量、峰对峰、标准差和峰度参数可以作为颤振特征向量来描述磨削过程中遇到的不同振动状态。这些特征向量表现出独特的行为,可以作为早期磨削颤振的检测器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bivariate empirical mode decomposition of grinding chatter signals
Large numbers of experiments have shown that grinding chatter is one of the major forms of host fault performance in grinding processes. In view of this, more advanced monitoring techniques are required to ensure the high reliability of grinders. The empirical mode decomposition (EMD) technique has shown promise for meeting this requirement. In general, EMD has been limited to processing one-dimensional signals and is unable to deliver the information fusion function required for reliable chatter detection. In this paper, a bivariate EMD (BEMD) was assessed as a grinding condition monitoring technique. Conventional EMD and BEMD were compared by using them to process a simulated chatter signal. The BEMD technique showed a more powerful capability to process non-stationary and non-linear chatter signals. Moreover, BEMD was more effective for extracting features from multiple signals and detecting the phase information of intrinsic mode functions. The instantaneous energy, peak to peak, standard deviation and kurtosis parameters of the signal were able to be used as chatter feature vectors to describe the different vibratory states encountered during grinding. These feature vectors exhibit distinctive behaviors and could be applied as detectors of early grinding chatter.
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