论文标题

研究旋转机械健康监测的稀疏度措施

Research on Sparsity Measures for Rotating Machinery Health Monitoring

论文作者

Cao, Yudong

论文摘要

机器健康管理是PHM技术的主要研究内容之一,该研究旨在在线监视机器的健康状态,并通过实时传感器数据评估退化阶段。近年来,诸如峰度,LP/LQ Norm,PQ均值,平滑度指数,负熵和GINI指数等经典稀疏度措施已被广泛用于表征重复瞬态的冲动。由于提出了平滑度指数和负熵,因此尚未完全分析稀疏特性。本文的第一项工作是分析平滑度指数和负熵的六个特性。此外,本文对多元功率平均功能进行了彻底的研究,发现现有的经典稀疏度度量可以分别为多元功率平均功能(MPMF)的比率进行重新校正。最后,提出了索引设计的一般范式,以扩大稀疏度度量家族,并给出了一些新设计的无量纲健康指数。使用两个不同的运行轴承数据集来分析和验证新设计的健康指数的功能和优势。实验结果证明,新设计的健康指数在单调降解描述,第一个故障出现时间确定和退化状态评估方面表现出良好的性能。

Machine health management is one of the main research contents of PHM technology, which aims to monitor the health states of machines online and evaluate degradation stages through real-time sensor data. In recent years, classic sparsity measures such as kurtosis, Lp/Lq norm, pq-mean, smoothness index, negative entropy, and Gini index have been widely used to characterize the impulsivity of repetitive transients. Since smoothness index and negative entropy were proposed, the sparse properties have not been fully analyzed. The first work of this paper is to analyze six properties of smoothness index and negative entropy. In addition, this paper conducts a thorough investigation on multivariate power average function and finds that existing classical sparsity measures can be respectively reformulated as the ratio of multivariate power mean functions (MPMFs). Finally, a general paradigm of index design are proposed for the expansion of sparsity measures family, and several newly designed dimensionless health indexes are given as examples. Two different run-to-failure bearing datasets were used to analyze and validate the capabilities and advantages of the newly designed health indexes. Experimental results prove that the newly designed health indexes show good performance in terms of monotonic degradation description, first fault occurrence time determination and degradation state assessment.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源