A new fault component selection strategy based on statistical detection for slewing bearing weak signal de-noising

Yubin Pan, Hua Wang, Jie Chen, R. Hong
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Abstract

Slewing bearing is a critical transmission component in large-size construction machinery due to its low-speed and heavy-load conditions. Fault prognostics and health management of slewing bearing are crucial for ensuring their high availability and profitable operation. However, the presence of background noise in construction machinery signals restricts the applicability of existing signal processing approaches in prognostics and health management. To address this challenge, a novel signal de-noising method is proposed based on adaptive decomposition, along with a new strategy for recognizing fault components using statistic detection through kernel principal component analysis (KPCA). First, robust local mean decomposition is utilized to adaptively decompose the fault and normal vibration signal over the entire service life. Then, product functions (PFs) decomposed by fault and normal vibration signal are used for KPCA anomaly detection. Finally, the fault PFs are reconstructed to obtain the de-noised signal. The effectiveness of the proposed method is validated through the use of both simulated and experimental vibration signals obtained from a slewing-bearing life-cycle test. The results illustrate that the proposed method has superior de-noising capability and decomposition efficiency, making it an effective signal preprocessing technique for prognostics and health management.
基于统计检测的回转支承弱信号去噪新故障成分选择策略
回转支承是大型工程机械的关键传动部件,具有低速和重载的特点。回转支承的故障预报和健康管理对于确保其高可用性和盈利运行至关重要。然而,工程机械信号中存在的背景噪声限制了现有信号处理方法在预报和健康管理中的适用性。为了应对这一挑战,我们提出了一种基于自适应分解的新型信号去噪方法,以及一种通过内核主成分分析(KPCA)使用统计检测识别故障成分的新策略。首先,利用鲁棒局部均值分解法对整个使用寿命期间的故障和正常振动信号进行自适应分解。然后,由故障和正常振动信号分解出的乘积函数(PFs)被用于 KPCA 异常检测。最后,对故障 PF 进行重构,得到去噪信号。通过使用从回转轴承生命周期测试中获得的模拟和实验振动信号,验证了所提方法的有效性。结果表明,所提出的方法具有卓越的去噪能力和分解效率,使其成为预报和健康管理的有效信号预处理技术。
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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