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Multiple time-frequency curve extraction Matlab code and its application to automatic bearing fault diagnosis under time-varying speed conditions

机译:多时频曲线提取Matlab代码及其在时变转速条件下轴承自动故障诊断中的应用

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Vibration signal analysis is an important technique for bearing fault diagnosis. For bearings operating under constant rotational speed, faults can be diagnosed in the frequency domain since each type of fault has a specific Fault Characteristic Frequency (FCF), which is proportional to the shaft rotational speed. However, bearings often operate under time-varying speed conditions. Additionally, the measurement of the time-varying rotational speed requires instruments, such as tachometers, which leads to extra cost and installation. With the development of time-frequency analysis, the time-varying FCFs manifest as curves in the Time-Frequency Representation (TFR). It has been shown that extracting multiple time-frequency curves from the TFR and then identifying the Instantaneous Fault Characteristic Frequency (IFCF) and Instantaneous Shaft Rotational Frequency (ISRF), bearing faults can be automatically diagnosed under time-varying speed conditions without using tachometers. However, the existing method used to identify the IFCF and the ISRF may lead to inaccurate results. In this study, the complete MATLAB? codes and a more reliable approach to use Multiple Time-Frequency Curve Extraction (MTFCE) for automatic bearing fault diagnosis under time-varying speed conditions are presented.?A Multiple time-frequency curve extraction (MTFCE) Matlab code is presented to extract multiple curves from the TFR.?Custom Matlab code for automatic bearing fault diagnosis under time-varying speed conditions without using tachometer data via the MTFCE is given and explained.?A new parameter, the allowable variance of the curve-to-curve ratio, is proposed to identify the IFCF and ISRF more reliably.
机译:振动信号分析是轴承故障诊断的重要技术。对于以恒定转速运行的轴承,由于每种类型的故障都有特定的故障特征频率(FCF),与轴转速成比例,因此可以在频域中诊断故障。但是,轴承通常在时变速度条件下运行。另外,时变转速的测量需要诸如转速计之类的仪器,这导致额外的成本和安装。随着时频分析的发展,时变FCF在时频表示(TFR)中表现为曲线。已经表明,从TFR中提取多个时频曲线,然后识别瞬时故障特征频率(IFCF)和瞬时轴旋转频率(ISRF),可以在时变速度条件下自动诊断轴承故障,而无需使用转速表。但是,用于标识IFCF和ISRF的现有方法可能会导致结果不准确。在这项研究中,完整的MATLAB?提出了一种时变速度条件下使用多时频曲线提取(MTFCE)进行轴承故障自动诊断的更可靠方法。提出了一种多时频曲线提取(MTFCE)Matlab代码来提取多条曲线给出并解释了在不使用转速表数据的情况下通过MTFCE在时变速度条件下自动进行轴承故障诊断的自定义Matlab代码。提出了一个新参数,曲线与曲线之比的允许方差以更可靠地识别IFCF和ISRF。

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