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Faults Diagnostics of Railway Axle Bearings Based on IMF’s Confidence Index Algorithm for Ensemble EMD

机译:基于IMF置信度指数算法的集成式EMD铁路轴瓦的故障诊断

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As train loads and travel speeds have increased over time, railway axle bearings have become critical elements which require more efficient non-destructive inspection and fault diagnostics methods. This paper presents a novel and adaptive procedure based on ensemble empirical mode decomposition (EEMD) and Hilbert marginal spectrum for multi-fault diagnostics of axle bearings. EEMD overcomes the limitations that often hypothesize about data and computational efforts that restrict the application of signal processing techniques. The outputs of this adaptive approach are the intrinsic mode functions that are treated with the Hilbert transform in order to obtain the Hilbert instantaneous frequency spectrum and marginal spectrum. Anyhow, not all the IMFs obtained by the decomposition should be considered into Hilbert marginal spectrum. The IMFs’ confidence index arithmetic proposed in this paper is fully autonomous, overcoming the major limit of selection by user with experience, and allows the development of on-line tools. The effectiveness of the improvement is proven by the successful diagnosis of an axle bearing with a single fault or multiple composite faults, e.g., outer ring fault, cage fault and pin roller fault.
机译:随着火车负载和行驶速度随着时间的推移而增加,铁路车轴轴承已成为关键要素,需要更有效的无损检查和故障诊断方法。本文提出了一种基于整体经验模态分解(EEMD)和希尔伯特边际谱的新型自适应过程,用于轴承的多故障诊断。 EEMD克服了通常关于数据和计算工作的假设限制,这些限制限制了信号处理技术的应用。这种自适应方法的输出是固有模式函数,使用希尔伯特变换对其进行了处理,以获得希尔伯特瞬时频谱和边际频谱。无论如何,并非所有通过分解获得的IMF都应考虑到希尔伯特边际频谱中。本文提出的IMF信心指数算法是完全自主的,克服了有经验的用户选择的主要限制,并允许开发在线工具。通过成功诊断具有单个故障或多个复合故障(例如外圈故障,保持架故障和滚针故障)的轴承,证明了改进的有效性。

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