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An early fault diagnosis method of gear based on improved symplectic geometry mode decomposition

机译:基于改进的辛几何模式分解的齿轮早期故障诊断方法

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摘要

Symplectic geometry mode decomposition (SGMD) is an effective signal processing method, and it has been applied in compound fault diagnosis successfully. However, for early gear fault vibration signals, SGMD has two shortcomings. On the one hand, SGMD directly reconstructs the trajectory matrix through the original time series, which may cause the weak fault features submerged in global time series. Therefore, add a slip window to preprocess the original time series. On the other hand, the symplectic geometry components (SGCs) with low energy and fault feature information are eliminated for denoise. Therefore, variable entropy (VE) weighting is proposed to obtain the weighted symplectic geometry components (WSGCs) containing the vast majority of fault feature information. In conclusion, an improved symplectic geometry mode decomposition (ISGMD) is proposed to overcome the above two shortcomings. Simulated and experimental results indicate that ISGMD is effective for raw vibration signals. (C) 2019 Elsevier Ltd. All rights reserved.
机译:双翼几何模式分解(SGMD)是一种有效的信号处理方法,并且已成功应用于复合故障诊断。但是,对于早期齿轮故障振动信号,SGMD具有两个缺点。一方面,SGMD通过原始时间序列直接重建轨迹矩阵,这可能导致全局时间序列中淹没的弱故障功能。因此,添加一个滑动窗口以预处理原始时间序列。另一方面,对于Denoise,消除了具有低能量和故障特征信息的辛的几何分量(SGC)。因此,提出了可变熵(VE)加权来获得包含绝大多数故障特征信息的加权辛的几何分量(WSGC)。总之,提出了一种改进的辛的几何模式分解(ISGMD)以克服上述两种缺点。模拟和实验结果表明ISGMD对原始振动信号有效。 (c)2019年elestvier有限公司保留所有权利。

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