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Fault diagnosis of planetary gear based on entropy feature fusion of DTCWT and OKFDA

机译:基于DTCWT和OKFDA的熵特征融合的行星齿轮故障诊断

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摘要

Planetary gears are often used in the key parts of the transmission systems of mechanical equipment, and faults are the main factors that determine the reliability of equipment operation. A fault diagnosis method for planetary gears based on the entropy feature fusion of dual-tree complex wavelet transform (DTCWT) and optimized kernel Fisher discriminant analysis (OKFDA) is proposed. The original vibration signal is decomposed by DTCWT, the frequency band signals are obtained, and the extraction models for the entropy features are built from multiple perspectives according to the definition of entropy theory. But the original entropy features, which are extracted from multiple perspectives, lead to excessive feature dimensions, and there are also many insensitive features that have small effects on the identification of the faults of planetary gears. Feature dimension reduction and sensitive feature extraction were achieved by OKFDA. The effectiveness of OKFDA and the extracted sensitive features were analyzed for the original features with different dimensions. Fault diagnosis for planetary gears can be achieved by analyzing sensitive features accurately.
机译:行星齿轮通常用于机械设备传输系统的关键部分,故障是确定设备操作可靠性的主要因素。提出了一种基于双树复杂小波变换(DTCWT)熵特征融合的行星齿轮的故障诊断方法,并提出了优化的内核捕获分析(OKFDA)。原始振动信号通过DTCWT分解,获得频带信号,并且根据熵理论的定义,从多个视角构建熵特征的提取模型。但是从多个角度提取的原始熵特征导致过度特征尺寸,并且还存在许多对行星齿轮故障的识别具有小的效果。特征尺寸减少和敏感特征提取通过OKFDA实现。分析了OKFDA和提取的敏感特征的有效性,用于具有不同尺寸的原始特征。通过准确分析敏感特征,可以实现行星齿轮的故障诊断。

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