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A data-driven method to enhance vibration signal decomposition for rolling bearing fault analysis

机译:滚动轴承故障分析中一种增强振动信号分解的数据驱动方法

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Health condition analysis and diagnostics of rotating machinery requires the capability of properly characterizing the information content of sensor signals in order to detect and identify possible fault features. Time-frequency analysis plays a fundamental role, as it allows determining both the existence and the causes of a fault. The separation of components belonging to different time-frequency scales, either associated to healthy or faulty conditions, represents a challenge that motivates the development of effective methodologies for multi-scale signal decomposition. In this framework, the Empirical Mode Decomposition (EMD) is a flexible tool, thanks to its data-driven and adaptive nature. However, the EMD usually yields an over-decomposition of the original signals into a large number of intrinsic mode functions (IMFs). The selection of most relevant IMFs is a challenging task, and the reference literature lacks automated methods to achieve a synthetic decomposition into few physically meaningful modes by avoiding the generation of spurious or meaningless modes. The paper proposes a novel automated approach aimed at generating a decomposition into a minimal number of relevant modes, called Combined Mode Functions (CMFs), each consisting in a sum of adjacent IMFs that share similar properties. The final number of CMFs is selected in a fully data driven way, leading to an enhanced characterization of the signal content without any information loss. A novel criterion to assess the dissimilarity between adjacent CMFs is proposed, based on probability density functions of frequency spectra. The method is suitable to analyze vibration signals that may be periodically acquired within the operating life of rotating machineries. A rolling element bearing fault analysis based on experimental data is presented to demonstrate the performances of the method and the provided benefits.
机译:旋转机械的健康状况分析和诊断需要能够正确表征传感器信号的信息内容,以便检测和识别可能的故障特征。时频分析起着基本作用,因为它可以确定故障的存在和原因。与健康状况或故障状况相关的属于不同时频尺度的分量的分离,代表着挑战,促使人们开发出用于多尺度信号分解的有效方法。在此框架中,由于经验模式分解(EMD)具有数据驱动和自适应的特性,因此它是一种灵活的工具。但是,EMD通常会导致原始信号过度分解为大量的固有模式函数(IMF)。选择最相关的IMF是一项艰巨的任务,并且参考文献缺乏通过避免产生虚假或无意义的模式而将合成分解为几种物理上有意义的模式的自动化方法。本文提出了一种新颖的自动化方法,旨在将分解为最小数量的相关模式,称为组合模式函数(CMF),每个模式均由共享相似属性的相邻IMF的总和组成。 CMF的最终数量以完全数据驱动的方式进行选择,从而增强了信号内容的特性,而不会造成任何信息丢失。基于频谱的概率密度函数,提出了一种评估相邻CMF之间相异性的新标准。该方法适合于分析在旋转机械的使用寿命内可以周期性获取的振动信号。提出了基于实验数据的滚动轴承故障分析,以证明该方法的性能和所提供的好处。

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