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Application of RSSD-OCYCBD Strategy in Enhanced Fault Detection of Rolling Bearing

机译:RSSD-OCYCBD策略在增强滚动轴承故障检测中的应用

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The defect characteristics of rolling bearing are difficult to excavate at the incipient injury phase; in order to effectively solve this issue, an original strategy fusing recursive singular spectrum decomposition (RSSD) with optimized cyclostationary blind deconvolution (OCYCBD) is put forward to achieve fault characteristic enhanced detection. In this diagnosis strategy, the data-driven RSSD method without predetermined component number is proposed. In addition, a new morphological difference operation entropy (MDOE) indicator, which takes advantage of morphological transformation and Shannon entropy, is developed for confirming the influencing parameters of cyclostationary blind deconvolution (CYCBD). During the process of fault detection, RSSD is firstly adopted to preprocess the original signal, and the most sensitive singular spectrum component (SSC) is selected by the envelope spectrum peak (ESP) indicator. Then, the grid search algorithm is adopted to precisely confirm the optimal parameters and OCYCBD is further performed as a postprocessing technology on the most sensitive component to suppress the residual interferences and amplify the fault signatures. Finally, the enhanced fault detection of rolling bearing is able to achieve by analyzing the envelope spectrum of deconvolution signal. The feasibility of the proposed strategy is verified by the simulated and the measured signals, respectively, and its superiority is also demonstrated through several comparison methods. The results manifest this novel strategy has praisable advantages on weak characteristic extraction and intensification.
机译:轧制轴承的缺陷特性难以在初期损伤阶段挖掘;为了有效解决这个问题,提出了一种原始策略融合递归奇异谱分解(RSSD),具有优化的卷曲盲卷积(OCYCBD)以实现故障特征增强检测。在这种诊断策略中,提出了没有预定分量编号的数据驱动的RSSD方法。此外,开发了一种新的形态学差异熵(MDOE)指示器,用于确认卷曲盲卷积(CYCBD)的影响参数。在故障检测过程中,首先采用RSSD预处理原始信号,最灵敏度的奇异频谱分量(SSC)由包络谱峰(ESP)指示器选择。然后,采用电网搜索算法精确地确认最佳参数,并且OCYCBD进一步作为最敏感的组件的后处理技术进行,以抑制残余干扰并放大故障签名。最后,通过分析去卷积信号的包络谱来实现滚动轴承的增强故障检测。所提出的策略的可行性分别通过模拟和测量信号验证,并且还通过几种比较方法证明了其优越性。结果表明,这种新颖的策略具有较弱的特征提取和强化的优势。

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