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Multiple Time-Frequency Curve Classification for Tacho-Less and Resampling-Less Compound Bearing Fault Detection Under Time-Varying Speed Conditions

机译:在时变速度条件下,多个时频曲线分类,用于减速和更少重采样的化合物轴承故障检测

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摘要

Rotating machinery usually runs at time-varying speeds, which often brings failures, especially compound faults. However, currently, there is still a lack of satisfactory coupled fault diagnosis methods at variable speeds. Several methods have been developed, which try to eliminate rotational speed influences by converting nonstationary fault characteristic frequencies into stationary ones. But it brings new problems of computational efficiency and accuracy, and requires an auxiliary tachometer to measure the rotational speed. Time-frequency analysis can solve the problems, and extract time-frequency curves for fault diagnosis through time-frequency representation (TFR). However, for signals containing multiple faults at variable speeds, uninterested components will be generated when extracting multiple time-frequency curve (MTFC), which makes it difficult for compound fault diagnosis. To solve these problems, a novel MTFC classification method for tacho-less and resampling-less compound bearing fault detection under time-varying speed conditions is proposed in this paper. Here the TFR characteristics of a multi-fault vibration signal is analyzed, and a compound fault diagnosis strategy based on MTFC classification is developed. Firstly, MTFC is extracted by a local peak search method. Then, according to the relationship between instantaneous shaft rotational frequency, instantaneous fault characteristics frequency and their respective harmonics, two classification criteria for curves are proposed and MTFC is classified into interested curves and uninterested curves. Finally, the average ratios between interested curves are matched to theoretical fault characteristic coefficients to determine the fault type. Case studies on rolling bearing experiments verified the effectiveness and superiority of the proposed method.
机译:旋转机械通常以时变速度运行,这通常会带来故障,尤其是复合故障。然而,目前,在可变速度下仍然缺乏令人满意的耦合故障诊断方法。已经开发了几种方法,该方法尝试通过将非间断的故障特性频率转换为固定式来消除转速影响。但它带来了计算效率和准确性的新问题,需要辅助转速表来测量转速。时频分析可以解决问题,并通过时频表示(TFR)提取故障诊断的时频曲线。然而,对于包含变速下的多个故障的信号,在提取多个时频曲线(MTFC)时将产生不感兴的组件,这使得复合故障诊断难以实现。为了解决这些问题,本文提出了一种新的MTFC分类方法,用于在时变速度条件下进行Tacho-较少和更少的重采样的化合物轴承故障检测。这里分析了多故障振动信号的TFR特性,开发了基于MTFC分类的复合故障诊断策略。首先,通过本地峰值搜索方法提取MTFC。然后,根据瞬时轴旋转频率,瞬时故障特性频率和它们各自的谐波之间的关系,提出了两个曲线的分类标准,并且MTFC分类为感兴趣的曲线和无趣的曲线。最后,感兴趣曲线之间的平均比率与理论故障特征系数匹配以确定故障类型。滚动轴承实验的案例研究验证了所提出的方法的有效性和优越性。

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