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Heuristic-based approach: Degradation signatures and CBD signatures

机译:基于启发式的方法:降级签名和CBD签名

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This paper describes a heuristic-based approach for transforming conditioned-based data (CBD) signatures into other signatures. Those signatures are highly correlated to changes in value (dP) of a parameter of interest (P0) that degrades to a level of damage at which a component and its assembly no longer functions within operation specifications: functional failure occurs. CBD signatures can be expressed in terms of feature data (FD) plus noise where the magnitude of FD changes to create a signature in response to degradation. That FD-based signature can be expressed as ratio of a current measurement (FDi) to a nominal value (FD0) to form a fault-to-failure progression (FFP) signature. Further, a present measurement can be expressed as a nominal value times a degradation function of a change (dPi) in a parameter that has a nominal value P0in the absence of degradation. An FD-based signature is transformed into a fault-to-failure progression (FFP) signature by dividing a present FD by the nominal FD value and solving in terms of (dPi/P0) to produce a degradation-progression signature {DPSi} which is a linearized version of an FFP signature. A DPS signature is further transformable into a functional failure signature, {FFS}, by dividing a DPS signature by a defined failure level. An FFS is amenable to processing as input to prediction algorithms because (1) its characteristic curve approaches an ideal straight-line transfer curve as noise is ameliorated and/or mitigated; (2) its data has zero or negative values in the absence of degradation; (3) its data has positive values below 100 when there is degradation below a defined level of functional failure; and (4) its data has values at or above 100 when the level of degradation is at or above a level defined as functional failure. Even in the presence of noise and other effects, such as feedback, and even when the rate of degradation is nonlinear, an FSS is still has a very close to linear transfer curve. Seven sets of models have been developed to use for transformation of CBD signatures into FFS data. The models were developed based on the characteristic shapes of degradation signatures and confirmed by physics-of-failure (PoF) analysis and failure-mode effects analysis (FMEA). This paper presents a methodology for selecting and using those models to transform CBD-based signature data into FFS data for use as input to a prediction framework of a PHM system.
机译:本文介绍了一种基于启发式的方法,用于将基于条件的数据(CBD)签名转换为其他签名。这些签名与关注参数(P 0 )会降低到损坏程度,在此损坏程度下,组件及其组件将无法在操作规格范围内工作:发生功能故障。 CBD签名可以表示为特征数据(FD)加噪声,其中FD的大小发生变化以响应于降级而创建签名。可以将基于FD的签名表示为电流测量的比率(FD i )到标称值(FD 0 )以形成故障到失败的进展(FFP)签名。此外,当前测量值可以表示为标称值乘以变化的衰减函数(dP i )在标称值为P的参数中 0 在没有降解的情况下。通过将当前FD除以标称FD值并根据(dP i / P 0 )以产生退化进度签名{DPS i },这是FFP签名的线性化版本。通过将DPS签名除以定义的故障级别,可以将DPS签名进一步转换为功能故障签名{FFS}。 FFS可以作为预测算法的输入进行处理,因为(1)随着噪声的改善和/或减轻,其特征曲线接近理想的直线传递曲线; (2)在不降低性能的情况下,其数据为零或负值; (3)当性能下降到规定的功能故障水平以下时,其数据的正值小于100; (4)当降级级别等于或高于定义为功能故障的级别时,其数据的值等于或大于100。即使在存在噪声和其他影响(例如反馈)的情况下,并且即使降级速度是非线性的,FSS仍然具有非常接近线性传递曲线的特性。已开发出七套模型,用于将CBD签名转换为FFS数据。这些模型是根据退化特征的特征形状开发的,并通过失效物理(PoF)分析和失效模式效应分析(FMEA)进行了确认。本文提出了一种方法,用于选择和使用这些模型将基于CBD的签名数据转换为FFS数据,以用作输入到PHM系统的预测框架中。

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