基于核方法的航天器特征提取故障检测与主成分分析研究

IF 0.5 4区 物理与天体物理 Q4 ASTRONOMY & ASTROPHYSICS
Na Fu, Guanghua Zhang, Keqiang Xia, Kun Qu, Guan Wu, M. Han, Junru Duan
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引用次数: 2

摘要

卫星异常是一个演化的过程。检测这种演变和潜在的特征变化对于卫星健康预测、故障预警和响应至关重要。分析遥测参数之间的相关性比探测单点异常更有说服力。本文采用主成分分析法对多元概率模型进行降尺度处理,通过检验T 2 {T}^{2}统计量来判断数据异常,省去了设置阈值的麻烦。在探测到异常后,引入时域可视化和降维方法,将遥测或特征的维数降维到二维或三维坐标中,实现卫星异常演变的可视化。工程实践表明,该方法有助于早期发现卫星异常,并帮助地面操作人员在异常的早期阶段做出响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on fault detection and principal component analysis for spacecraft feature extraction based on kernel methods
Abstract Satellite anomaly is a process of evolution. Detecting this evolution and the underlying feature changes is critical to satellite health prediction, fault early warning, and response. Analyzing the correlation between telemetry parameters is more convincing than detecting single-point anomalies. In this article, principal component analysis method was adopted to downscale the multivariate probability model, T 2 {T}^{2} statistic was checked to determine the data anomaly, without the trouble of threshold setting. After an anomaly was detected, time-domain visualization and dimension reduction methods were introduced to visualize the satellite anomaly evolution, where the dimensions of telemetry or features were reduced and presented in two- or three-dimensional coordinates. Engineering practice shows that this method facilitates the early detection of satellite anomalies, and helps ground operators to respond in the early stages of an anomaly.
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来源期刊
Open Astronomy
Open Astronomy Physics and Astronomy-Astronomy and Astrophysics
CiteScore
1.30
自引率
14.30%
发文量
37
审稿时长
16 weeks
期刊介绍: The journal disseminates research in both observational and theoretical astronomy, astrophysics, solar physics, cosmology, galactic and extragalactic astronomy, high energy particles physics, planetary science, space science and astronomy-related astrobiology, presenting as well the surveys dedicated to astronomical history and education.
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