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Early fault detection method for rolling bearing based on multiscale morphological filtering of information-entropy threshold

机译:基于多尺度形态滤波的信息熵阈值的滚动轴承早期故障检测方法

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摘要

The scale of structure element is especially important to obtain good filtering results in multiscale morphological filtering (MMF) method. In general, the optimal scale of structure element is set to be a fixed value in traditional morphological filter, therefore it is difficult to extract the fault feature from rolling bearing vibration signal effectively. A novel multiscale morphological filtering algorithm is proposed based on information-entropy threshold (IET-MMF) for early fault detection of rolling bearing. Compared with traditional MMF method, several optimal scales of structure elements are achieved according to the energy distribution characteristic of different vibration signals. The information entropy theory is applied to quantify the analyzed signals, and the optimal threshold of information entropy is obtained by iterative algorithm to ensure integrity of useful information. The simulation and rolling bearing experimental analysis results show that the IET-MMF method can extract fault features of vibration signals effectively.
机译:结构元件的规模尤为重要,无法获得多尺度形态过滤(MMF)方法的良好过滤结果。通常,结构元件的最佳规模被设定为传统形态过滤器中的固定值,因此难以有效地从滚动承载振动信号中提取故障特征。基于滚动轴承早期故障检测的信息熵阈值(IET-MMF)提出了一种新型多尺度形态滤波算法。与传统的MMF方法相比,根据不同振动信号的能量分布特性实现了几种结构元件的最佳尺度。信息熵理论应用于量化分析的信号,并且通过迭代算法获得信息熵的最佳阈值,以确保有用信息的完整性。仿真和滚动轴承实验分析结果表明,IET-MMF方法可以有效地提取振动信号的故障特征。

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