Iterative feature mode decomposition: A novel adaptive denoising method for mechanical fault diagnosis

Xiaolong Ruan, Rui Yuan, Zhang Dang, Yong Lv, Xiaolong Jing
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Abstract

Remaining useful life prediction of rolling bearings highly relies on feature extraction of signals. The use of denoising algorithms helps to better eliminate noise and extract features, thereby constructing health indicators to predict remaining useful life. This paper proposes a novel adaptive denoising method based on iterative feature mode decomposition ( FMD) toI accurately and efficiently extract fault features. The feature mode decomposition (FMD) employs correlation kurtosis (CK) as the objective function for iterative filter bank updates, enabling rapid identification of fault features. To achieve IFMD, the sparrow search algorithm combines sine-cosine algorithm and cauchy variation (SCSSA) to optimize two key parameters in FMD. During the continuous iteration process of the SCSSA algorithm, filter length and number of modes were determined. IFMD does not require empirical setting of initial parameters. During iterative process, the signal is accurately decomposed and the noise is eliminated. Compared with other optimization algorithms, SCSSA has obvious advantages in iterative rate and global optimization. The envelope spectrum feature energy ratio (ES-FER) is used to select decomposed modes, and the mode with the largest ES-FER is chosen as the optimal mode. Bearing fault diagnosis is realized by envelope spectrum analysis of the optimal mode. The numerical simulations and experimental verifications both validate the effectiveness and superiority of the proposed IFMD in mechanical fault diagnosis.
迭代特征模式分解:用于机械故障诊断的新型自适应去噪方法
滚动轴承的剩余使用寿命预测高度依赖于信号的特征提取。使用去噪算法有助于更好地消除噪声和提取特征,从而构建预测剩余使用寿命的健康指标。本文提出了一种基于迭代特征模式分解(FMD)的新型自适应去噪方法,以准确、高效地提取故障特征。特征模式分解(FMD)采用相关峰度(CK)作为迭代滤波器组更新的目标函数,能够快速识别故障特征。为实现 IFMD,麻雀搜索算法结合了正弦余弦算法和考奇变异(SCSSA),以优化 FMD 中的两个关键参数。在 SCSSA 算法的连续迭代过程中,确定了滤波器长度和模式数。IFMD 不需要根据经验设置初始参数。在迭代过程中,信号被精确分解,噪声被消除。与其他优化算法相比,SCSSA 在迭代速率和全局优化方面具有明显优势。利用包络谱特征能量比(ES-FER)来选择分解模式,并选择 ES-FER 最大的模式作为最优模式。通过对最优模式的包络谱分析实现轴承故障诊断。数值模拟和实验验证都验证了所提出的 IFMD 在机械故障诊断中的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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