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Symbolic Analysis of Hilbert-Huang spectrum of Vibration data for condition monitoring of rotating machines

机译:用于旋转机械状态监测的振动数据的 Hilbert-Huang 谱符号分析

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摘要

This article presents a novel data-driven method of abnormal pattern identification for real-time monitoring of faults that are evolving within a rotating machine. The concept is built upon partitioning of Hilbert spectrum that are generated on intrinsic mode functions (Hilbert-Huang spectrum) of a measured vibration signal. The partitioning is further used for feature (pattern) extraction based on symbolic dynamic filtering ( SDF ). The statistical patterns are generated and used for identifying any possible damage in the rotating machinery. The proposed method is not only capable of detecting small anomalies (i.e. deviations from the nominal condition) in the vibration pattern, but also quantifies the extent of anomalies within an observed signal, thereby generating early warnings on damage initiation. The proposed realtime fault monitoring algorithm has been validated on vibration data recorded on a bearing test-bed, where system behavior gradually changes because of the accruing damage in bearing components.
机译:本文介绍了一种新的数据驱动的异常模式识别方法,用于实时监测旋转机器内部正在发生的故障。该概念建立在希尔伯特谱的分区之上,希尔伯特谱是在测量振动信号的固有模态函数(希尔伯特-黄谱)上生成的。该分区还用于基于符号动态滤波(SDF)的特征(模式)提取。生成统计模式并用于识别旋转机械中任何可能的损坏。所提出的方法不仅能够检测振动模式中的微小异常(即与标称条件的偏差),而且还能够量化观测信号中的异常程度,从而在损伤发生时产生早期预警。所提出的实时故障监测算法已经在轴承试验台上记录的振动数据上进行了验证,其中系统行为会随着轴承部件的累积损坏而逐渐改变。

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