Lv Yong, Yuan Rui, Wang Tao, Li Hewenxuan, Song Gangbing
Key Laboratory of Metallurgical Equipment and Control Technology, Wuhan University of Science and Technology, Ministry of Education, Wuhan 430081, China.
Hubei Key Laboratory of Mechanical Transmission and Manufacturing Engineering, Wuhan University of Science and Technology, Wuhan 430081, China.
Materials (Basel). 2018 Jun 14;11(6):1009. doi: 10.3390/ma11061009.
Rolling bearings play a crucial role in rotary machinery systems, and their operating state affects the entire mechanical system. In most cases, the fault of a rolling bearing can only be identified when it has developed to a certain degree. At that moment, there is already not much time for maintenance, and could cause serious damage to the entire mechanical system. This paper proposes a novel approach to health degradation monitoring and early fault diagnosis of rolling bearings based on a complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) and improved multivariate multiscale sample entropy (MMSE). The smoothed coarse graining process was proposed to improve the conventional MMSE. Numerical simulation results indicate that CEEMDAN can alleviate the mode mixing problem and enable accurate intrinsic mode functions (IMFs), and improved MMSE can reflect intrinsic dynamic characteristics of the rolling bearing more accurately. During application studies, rolling bearing signals are decomposed by CEEMDAN to obtain IMFs. Then improved MMSE values of effective IMFs are computed to accomplish health degradation monitoring of rolling bearings, aiming at identifying the early weak fault phase. Afterwards, CEEMDAN is performed to extract the fault characteristic frequency during the early weak fault phase. The experimental results indicate the proposed method can obtain a better performance than other techniques in objective analysis, which demonstrates the effectiveness of the proposed method in practical application. The theoretical derivations, numerical simulations, and application studies all confirmed that the proposed health degradation monitoring and early fault diagnosis approach is promising in the field of prognostic and fault diagnosis of rolling bearings.
滚动轴承在旋转机械系统中起着至关重要的作用,其运行状态会影响整个机械系统。在大多数情况下,滚动轴承的故障只有发展到一定程度才能被识别出来。到那时,留给维修的时间已经不多了,并且可能会对整个机械系统造成严重损坏。本文提出了一种基于完全自适应噪声的总体经验模态分解(CEEMDAN)和改进的多变量多尺度样本熵(MMSE)的滚动轴承健康退化监测与早期故障诊断新方法。提出了平滑粗粒化过程以改进传统的MMSE。数值模拟结果表明,CEEMDAN可以缓解模态混叠问题并得到准确的本征模态函数(IMF),改进的MMSE可以更准确地反映滚动轴承的内在动态特性。在应用研究中,通过CEEMDAN对滚动轴承信号进行分解以获得IMF。然后计算有效IMF的改进MMSE值以完成滚动轴承的健康退化监测,旨在识别早期微弱故障阶段。之后,在早期微弱故障阶段执行CEEMDAN以提取故障特征频率。实验结果表明,该方法在客观分析方面比其他技术具有更好的性能,证明了该方法在实际应用中的有效性。理论推导、数值模拟和应用研究均证实,所提出的健康退化监测与早期故障诊断方法在滚动轴承的预后和故障诊断领域具有广阔的应用前景。