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A novel data-driven fault diagnosis method based on VMD-RCMFE-DDMA-BASSVM model for rolling bearings

机译:一种基于VMD-RCMFE-DDMA-BASSVM模型的新型数据驱动故障诊断方法滚动轴承模型

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Condition monitoring and fault diagnosis of bearings play an important role in the safe operation of equipment and can reduce maintenance costs. In this paper, a novel data-driven bearing fault diagnosis model is developed. First, the variable modal decomposition method is applied for denoising and recombination to reduce noise interference. Next, the refined composite multi-scale fuzzy entropy is used to extract features from the recombined signal. After that, discriminant diffusion maps analysis is utilized to compress the high-dimensional features into the low-dimensional space and remove the interference of redundant features. Finally, the beetle antennae search support vector machine is adopted for fault classification. The proposed method is applied to the fault diagnosis of wind turbine bearings under various operating conditions, and the experimental results show that the proposed method can accurately and effectively identify various faults.
机译:条件监测和故障诊断轴承在设备的安全运行中发挥着重要作用,可以降低维护成本。 本文开发了一种新型数据驱动的轴承故障诊断模型。 首先,应用可变模态分解方法用于去噪和重组以降低噪声干扰。 接下来,使用精制的复合多尺度模糊熵用于从重组信号中提取特征。 之后,利用判别扩散图分析将高维特征压缩到低维空间中并去除冗余特征的干扰。 最后,采用甲虫天线搜索支持向量机器进行故障分类。 该方法应用于各种操作条件下风力涡轮机轴承的故障诊断,实验结果表明,该方法可以准确且有效地识别各种故障。

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