Bearing Fault Signal Analysis Based on an Adaptive Multiscale Combined Morphological Filter

IF 0.9 Q4 ENGINEERING, MECHANICAL
Chun Lv, Peilin Zhang, Dinghai Wu, Bing Li, Yunqiang Zhang
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引用次数: 5

Abstract

Bearing fault signal analysis is an important means of bearing fault diagnosis. To effectively eliminate noise in a fault signal, an adaptive multiscale combined morphological filter is proposed based on the theory of mathematical morphology. Both simulation and experimental results show that the adaptive multiscale combined morphological filter can remove noise more thoroughly and retain details of the fault signal better than the dual-tree complex wavelet filter, traditional morphological filter, adaptive singular value decomposition method (ASVD), and improved switching Kalman filter (ISKF). The adaptive multiscale combined morphological filter considers both positive and negative impulses in the signal; therefore, it has strong adaptability to complex noise in the environment, making it an effective new method for bearing fault diagnosis.
基于自适应多尺度组合形态滤波器的轴承故障信号分析
轴承故障信号分析是轴承故障诊断的重要手段。为了有效地消除故障信号中的噪声,基于数学形态学理论,提出了一种自适应多尺度组合形态滤波器。仿真和实验结果表明,自适应多尺度组合形态滤波器比双树复小波滤波器、传统形态滤波器、自适应奇异值分解方法(ASVD)和改进切换卡尔曼滤波器(ISKF)能更好地去除噪声,保留故障信号的细节。自适应多尺度组合形态滤波器同时考虑信号中的正脉冲和负脉冲;因此,它对环境中复杂噪声具有较强的适应性,是一种有效的轴承故障诊断新方法。
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来源期刊
CiteScore
2.40
自引率
0.00%
发文量
10
审稿时长
25 weeks
期刊介绍: This comprehensive journal provides the latest information on rotating machines and machine elements. This technology has become essential to many industrial processes, including gas-, steam-, water-, or wind-driven turbines at power generation systems, and in food processing, automobile and airplane engines, heating, refrigeration, air conditioning, and chemical or petroleum refining. In spite of the importance of rotating machinery and the huge financial resources involved in the industry, only a few publications distribute research and development information on the prime movers. This journal is the first source to combine the technology, as it applies to all of these specialties, previously scattered throughout literature.
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