首页> 外文会议>International Congress on Sound and Vibration >AN EMPIRICAL MODE DECOMPOSITION-INDEPENDENT COMPONENT ANALYSIS BASED APPROACH FOR DETECTING LOCALIZED AND DISTRIBUTED FAULTS IN ROLLING BEARING DIAGNOSTICS
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AN EMPIRICAL MODE DECOMPOSITION-INDEPENDENT COMPONENT ANALYSIS BASED APPROACH FOR DETECTING LOCALIZED AND DISTRIBUTED FAULTS IN ROLLING BEARING DIAGNOSTICS

机译:基于经验模式分解的独立分析方法,用于检测滚动轴承诊断中的局部分布式故障的方法

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Rolling bearing diagnostics still represents an open research field, especially when distributed faults are looked for rather than localized faults. In fact, distributed faults are typically due to a progressive growth of surface wear. A low-quality manufacturing, in terms of material or process, can even constitute another cause of distributed fault or representing an accelerating factor for the fault development. Classical strategies adopted for diagnosing localized faults can barely recognize this type of faults. However, certain approaches based on the extraction of the spectral components building the vibrational signature of the bearing can be exploited to diagnose both localized and distributed faults. This paper aims at presenting an approach that can be exploited for this purpose. The algorithm is based on a combined use of Empirical Mode Decomposition (EMD) and Independent Component Analysis (ICA). EMD is exploited as a pre-processing step to decompose the original signal into multiple time-series, the so-called intrinsic mode functions. These time series are then processed by ICA in order to extract those components that can be related to the fault. The non-stationary content of the distributed fault is taken into account by both methods. The effectiveness of the whole procedure in tackling the distributed faults diagnostic issue is presented on simulated data. A sensitivity analysis is presented as well.
机译:滚动轴承诊断仍然是一个开放的研究领域,特别是当寻找分布式故障而不是本地化故障时。实际上,分布式故障通常是由于表面磨损的逐步生长。在材料或过程方面,低质量的制造甚至可以构成分布式故障的另一个原因,或者代表故障开发的加速因素。用于诊断本地故障的经典策略几乎无法识别出这种类型的故障。然而,可以利用基于构建轴承振动签名的光谱分量提取的某些方法来诊断局部和分布式故障。本文旨在提出一种以此目的利用的方法。该算法基于经验模式分解(EMD)和独立分量分析(ICA)的组合使用。 EMD被利用为预处理步骤,以将原始信号分解为多个时间序列,所谓的内部模式功能。然后,使用ICA处理这些时间序列,以便提取与故障相关的那些组件。两种方法考虑了分布式故障的非静止内容。在模拟数据上介绍了解决分布式故障诊断问题的整个过程的有效性。还提出了灵敏度分析。

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