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Residual Life Prediction of Rotating Machines Using Acoustic Noise Signals

机译:基于声噪声信号的旋转机械剩余寿命预测

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摘要

While automated condition monitoring of rotating machines often use vibration signals for defect detection, diagnosis, and residual life predictions, in this paper, the acoustic noise signal ( $<$ 25 kHz), acquired via non-contact microphone sensors, is used to predict the remaining useful life (RUL). Modulation spectral (MS) analysis of acoustic signals has the potential to provide additional long-term information over more conventional short-term signal spectral components. However, the high dimensionality of MS features has been cited as a limitation to their applicability in this area in the literature. Therefore, in this study, a novel approach is proposed which employs an information theoretic approach to feature subset selection of modulation spectra features. This approach does not require information regarding the spectral location of defect frequencies to be known or pre-estimated and leverages information regarding the chronological order of data samples for dimensionality reduction. The results of this study show significant improvements for this proposed approach over the other commonly used spectral-based approaches for the task of predicting RUL by up to 19% relative over the standard envelope analysis approach used in the literature. A further 16% improvement was achieved by applying a more rigorous approach to labeling of acoustic samples acquired over the lifetime of the machines over a fixed length class labeling approach. A detailed misclassification analysis is provided to interpret the relative cost of system errors for the task of residual life predictions of rotating machines used in industrial applications.
机译:虽然旋转机器的自动状态监测通常使用振动信号进行缺陷检测,诊断和剩余寿命预测,但在本文中,通过非接触式麦克风传感器获取的声学噪声信号($ <$ 25 kHz)用于预测剩余使用寿命(RUL)。声音信号的调制频谱(MS)分析有可能提供比更常规的短期信号频谱分量更多的长期信息。但是,MS特征的高维度已被引用为对其在该领域中的适用性的限制。因此,在这项研究中,提出了一种新颖的方法,该方法采用信息理论方法来选择调制频谱特征的特征子集。该方法不需要关于缺陷频率的频谱位置的信息是已知的或预先估计的,并且利用关于数据样本的时间顺序的信息来进行降维。这项研究的结果表明,与其他常用的基于频谱的方法相比,该建议方法相对于文献中使用的标准包络分析方法而言,相对于预测RUL的任务而言,有显着的提高。通过使用更严格的方法对固定寿命级别的标签方法在机器的整个生命周期中采集的声学样本进行标签,可以进一步提高16%。提供了详细的错误分类分析,以解释用于工业应用中的旋转机械剩余寿命预测任务的系统错误的相对成本。

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