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On-line automatic early fault detection of rotating machinery

机译:旋转机械在线自动早期故障检测

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Machinery suffers from deterioration no matter how high its reliability is. Maintenance is an appropriate measure to ensure machinery normal condition. So performance degradation assessment is very important for maintenance decision-making. There are two very interesting aspects when degradation assessment is performed. One is to detect early fault of machinery as early as possible. Another is to estimate remaining useful life (RUL) once early fault of machinery is detected. In this paper, wavelet lifting scheme (WLS) and hidden Markov model (HMM) are used to describe current condition of gearbox and detect early gearbox faults with a dynamic threshold. After that, another model based on final failure data is proposed to predict how much time is left before a failure occurs given the current machine condition. At last, the proposed method is validated by a set of whole life gearbox data.
机译:机械的可靠性无论高到高都会受到影响。维护是确保机械正常运行的适当措施。因此,性能下降评估对于维护决策非常重要。执行降级评估时有两个非常有趣的方面。一种是尽早发现机械的早期故障。另一方法是,一旦检测到机械的早期故障,就估计剩余使用寿命(RUL)。本文采用小波提升方案(WLS)和隐马尔可夫模型(HMM)来描述变速箱的当前状态,并利用动态阈值检测变速箱的早期故障。此后,提出了基于最终故障数据的另一个模型,以预测在给定当前机器条件下故障发生之前还剩下多少时间。最后,通过整套齿轮箱数据对所提方法进行了验证。

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