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Blind source separation for vibration-based diagnostics of rotorcraft bearings

机译:盲源分离,用于基于旋翼飞机轴承的振动诊断

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The vibration signals from sensors monitoring the activity of individual bearings in a power train unit may be linear instantaneous mixtures of vibrations generated by various dynamic components. Generally, an exact physical model describing the mixing process and the contribution of each dynamic component to the received sensor signal is not available. Vibration source signals from defective bearings often overlap in time and frequency, and, as such, the direct use of time- and frequency-domain methods may result in erroneous diagnostic information. This paper implements blind source separation (BSS) to demix sensor signals into correctly identifiable vibration source signals without the need of the vibration path property and sensor layout. Experimental vibration data from spalled, corroded, and healthy rotorcraft bearings are used with five representative BSS algorithms. The separation accuracy of these algorithms is then compared using various performance metrics. Results show that despite the inherent statistical dependence and near Gaussianity, it is possible to isolate vibration sources from mixed sensor signals using second- and higher-order statistics of the signals. The paper also identifies the limitations of the BSS technique and provides a remedy and recommendation for its implementation in rotorcraft bearing fault detection.
机译:来自监视动力总成单元中的各个轴承的活动的传感器的振动信号可以是由各种动态部件产生的振动的线性瞬时混合。通常,描述混合过程以及每个动态分量对接收到的传感器信号的贡献的精确物理模型是不可用的。来自有缺陷轴承的振动源信号通常在时间和频率上重叠,因此,直接使用时域和频域方法可能会导致错误的诊断信息。本文实现了盲源分离(BSS),可将传感器信号混合成可正确识别的振动源信号,而无需振动路径属性和传感器布局。来自散落,腐蚀和健康的旋翼机轴承的实验振动数据与五种代表性的BSS算法一起使用。然后使用各种性能指标比较这些算法的分离精度。结果表明,尽管固有的统计依赖性和接近高斯性,仍可以使用信号的二阶和高阶统计来从混合传感器信号中隔离振动源。本文还确定了BSS技术的局限性,并为在旋翼航空器轴承故障检测中的实施提供了补救措施和建议。

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