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Collective Anomalies Detection for Sensing Series of Spacecraft Telemetry with the Fusion of Probability Prediction and Markov Chain Model

机译:概率预测与马尔可夫链模型融合的航天器遥测传感系列集体异常检测

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摘要

Telemetry series, generally acquired from sensors, are the only basis for the ground management system to judge the working performance and health status of orbiting spacecraft. In particular, anomalies within telemetry can reflect sensor failure, transmission errors, and the major faults of the related subsystem. Therefore, anomaly detection for telemetry series has drawn great attention from the aerospace area, where probability prediction methods, e.g., Gaussian process regression and relevance vector machine, have an inherent advantage for anomaly detection in time series with uncertainty presentation. However, labelling a single point with probability prediction faces many isolated false alarms, as well as a lower detection rate for collective anomalies that significantly limits its practical application. Simple sliding window fusion can decrease the false positives, but the support number of anomalies within the sliding window is difficult to set effectively for different series. Therefore, in this work, fused with the probability prediction-based method, the Markov chain is designed to compute the support probability of each testing series to realize the improvement on collective anomaly mode. The experiments on simulated data sets and the actual telemetry series validated the effectiveness and applicability of our proposed method.
机译:通常从传感器获得的遥测系列是地面管理系统判断在轨航天器工作性能和健康状况的唯一基础。特别是,遥测中的异常可能反映出传感器故障,传输错误以及相关子系统的主要故障。因此,遥测系列的异常检测引起了航空航天领域的极大关注,在该领域中,概率预测方法(例如高斯过程回归和相关矢量机)在具有不确定性表示的时间序列中具有异常检测的固有优势。但是,用概率预测标记单个点将面临许多孤立的虚假警报,并且集体异常的检测率较低,这严重限制了其实际应用。简单的滑动窗口融合可以减少误报,但是对于不同的序列,很难有效地设置滑动窗口内的异常支持数。因此,在这项工作中,结合基于概率预测的方法,设计马尔可夫链来计算每个测试序列的支持概率,以实现对集体异常模式的改进。在模拟数据集和实际遥测序列上进行的实验验证了我们提出的方法的有效性和适用性。

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