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Online fault prognostics based on degradation-oriented slow feature analysis and temporal smoothness analysis*

机译:基于面向退化的慢特征分析和时间平滑度分析的在线故障预测*

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Fault prognostic, which estimates the time to failure and risk for existing and future failure modes has recognized as a key component in maintenance strategies currently. The fault degradation process is in general slowly varying autocorrelated and shows typical nonstationary nature. However, most of existing prognostic methods don't consider the nonstationary characteristics of the fault degradation process. Besides, stationary fault information may bury the fault degradation trend. In this work, a fault degradation modeling and online fault prognosticating strategy is proposed based on degradation-oriented slow feature analysis and temporal smoothness analysis. First, a fault degradation-oriented slow feature analysis (FDSFA) algorithm is proposed to extract critical fault degradation features. Second, a stability weighting factor (SW) is defined to evaluate the stability of each feature and a key fault degradation factor (KFDF) is calculated by combining critical features and SW. Considering the nonstationary characteristics of KFDF, a time-varying regression model with temporal smoothness regularization is developed for online fault prognostics. Case study on a real industrial process illustrates the validity of the proposed method.
机译:故障预测可以估计故障的时间以及现有和未来故障模式的风险,目前已被认为是维护策略中的关键组成部分。故障降级过程通常是缓慢变化的自相关,并且表现出典型的非平稳性质。但是,大多数现有的预测方法都没有考虑故障退化过程的非平稳特征。此外,固定的故障信息可能掩盖了故障的恶化趋势。在这项工作中,基于面向退化的慢特征分析和时间平滑度分析,提出了一种故障退化建模和在线故障诊断策略。首先,提出了一种面向故障退化的慢特征分析(FDSFA)算法,以提取关键的故障退化特征。其次,定义稳定性加权因子(SW)以评估每个特征的稳定性,并通过组合关键特征和SW来计算关键故障退化因子(KFDF)。考虑到KFDF的非平稳特性,开发了具有时态平滑度正则化的时变回归模型,用于在线故障预测。实际工业过程的案例研究证明了该方法的有效性。

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