A local spectrum enhancement-based method and its application in incipient fault diagnosis of rotating machinery

IF 3.4 Q1 ENGINEERING, MECHANICAL
Jiancong Shi, Baoming Xu, Xinglong Wang, Jun Zhang
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引用次数: 0

Abstract

Incipient faults of gears and rolling bearings in rotating machineries are very difficult to identify using traditional envelope analysis methods. To address this challenge, this paper proposes an effective local spectrum enhancement-based diagnostic method that can identify weak fault frequencies in the original complicated raw signals. For this purpose, a traversal frequency band segmentation technique is first proposed for dividing the raw signal into a series of subfrequency bands. Then, the proposed synthetic quantitative index is constructed for selecting the most informative local frequency band (ILFB) containing fault features from the divided subfrequency bands. Furthermore, an improved grasshopper optimization algorithm-based stochastic resonance (SR) system is developed for enhancing weak fault features contained in the selected most ILFB with less computation cost. Finally, the enhanced weak fault frequencies are extracted from the output of the SR system using a common spectrum analysis. Two experiments on a laboratory planetary gearbox and an open bearing data set are used to verify the effectuality of the proposed method. The diagnostic results demonstrate that the proposed method can identify incipient faults of gears and bearings in an effective and accurate manner. Furthermore, the advantages of the proposed method are highlighted by comparison with other methods.

Abstract Image

一种基于局部谱增强的旋转机械早期故障诊断方法及其应用
传统的包络分析方法很难识别旋转机械中齿轮和滚动轴承的早期故障。为了应对这一挑战,本文提出了一种有效的基于局部频谱增强的诊断方法,该方法可以识别原始复杂原始信号中的弱故障频率。为此,首先提出了一种遍历频带分割技术,用于将原始信号划分为一系列子频带。然后,构建了所提出的综合定量指标,用于从划分的子频带中选择包含故障特征的信息量最大的本地频带(ILFB)。此外,为了以较小的计算成本增强所选的大多数ILFB中包含的弱故障特征,开发了一种基于随机共振(SR)系统的改进的蚱蜢优化算法。最后,使用公共频谱分析从SR系统的输出中提取增强的弱故障频率。在实验室行星齿轮箱和开放轴承数据集上进行了两个实验,验证了该方法的有效性。诊断结果表明,该方法能够有效、准确地识别齿轮和轴承的早期故障。此外,通过与其他方法的比较,突出了该方法的优点。
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CiteScore
3.50
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