基于典型变量分析和滑动区间方差的卫星动量轮轴承健康状态监测

Sirui Du, Shumei Zhang, Yang Zhao
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引用次数: 0

摘要

随着空间技术的飞速发展,对卫星可靠性的要求越来越高。动量轮是卫星姿态控制系统的关键部件,其可靠性是影响卫星寿命的重要因素。动量轮轴承(MWB)的状态监测对保证卫星的长寿命和高可靠性运行具有重要意义。本文提出了一种基于多元统计和典型变量分析(CVA)的健康度监测方法,并从动态和静态两个方面定义了新的健康度函数。首先,利用时频域分析技术提取MWB在时域、频域和时频域的特征,构建多域高维健康状况特征集;然后,为了降低问题的复杂性,在CVA的基础上实现特征约简。在考虑稳态误差和滑动区间方差的基础上,定义了表征MWB性能状况的健康度(HD)。最后,基于轴承试验台的实验结果表明,所提出的方法是可行和有效的,实现了数据驱动的卫星动量轮轴承健康状态监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Health Condition Monitoring of Satellite Momentum Wheel Bearing Based on Canonical Variable Analysis and Sliding Interval Variance
With the rapid development of space technology, the demand for satellite reliability is getting higher and higher. Momentum wheel is a key component of satellite attitude control system, and its reliability is an important factor affecting the life of satellite. The condition monitoring of momentum wheel bearing (MWB) is of great significance to ensure the long life and high reliable operation of the satellite. In this paper, a new monitoring method based on multivariate statistics and canonical variable analysis (CVA) is proposed, and a new health degree function is defined from both dynamic and static aspects. First, the time-frequency domain analysis technique is used to extract the features of MWB in time domain, frequency domain and time-frequency domain, and the multi-domain high-dimensional health condition feature set is constructed. Then, in order to reduce the complexity of the problem, feature reduction is realized based on CVA. On the basis of considering steady-state error and sliding interval variance (SIV), the health degree (HD) characterizing the performance condition of MWB is defined. Finally, the experimental results based on the bearing test-bed show that the proposed method is feasible and effective, and the data-driven health condition monitoring of satellite momentum wheel bearing is realized.
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