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Fluctuation feature extraction of satellite telemetry data and on-orbit anomaly detection

机译:卫星遥测数据起伏特征提取和在轨异常检测

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On-orbit anomaly detection is an open problem for long-term management of satellites, in which defining and extracting effective features based on satellite telemetry data is one of the key points. Classical spectral analytic methods such as Fourier analysis, Wavelet analysis methods and other signal processing methods have make contributions to the cognition and management of satellite telemetry data. However, with satellite running on orbit and huge data accumulated, it is difficult to utilize and cognize the telemetry data features due to the discrete values, huge volumes, containing large noise, loss of data and complex anomaly, which makes the features of telemetry data non-significant and hinders the anomaly detection of telemetry data. This paper proposes a set of fluctuation feature of satellite telemetry data, called state-counting method (SCM), in which the changing frequency and amplitude of satellite telemetry data are extracted to describe the fluctuation features of satellite telemetry data. This extraction method is feasible and efficient, and is not sensitive to noise and outliers in the telemetry data. Based on the fluctuation features, an efficient anomaly detection method based on SPRT is proposed. Comparison of the approach with others shows that the fluctuation features proposed in this article can be used to recognize the normal and anomaly satellite states. From the index system of scoring, this approach has high computational efficiency and better detection performance.
机译:轨道异常检测是卫星长期管理的一个悬而未决的问题,其中基于卫星遥测数据的定义和提取有效特征是关键点之一。诸如傅立叶分析,小波分析方法和其他信号处理方法之类的经典频谱分析方法为卫星遥测数据的认知和管理做出了贡献。但是,随着卫星在轨道上运行并积累了大量数据,由于离散值,体积巨大,包含大噪声,数据丢失和复杂异常,难以利用和识别遥测数据特征,这使得遥测数据具有特征。无关紧要并阻碍遥测数据的异常检测。提出了一套卫星遥测数据的波动特征,称为状态计数法(SCM),其中提取了卫星遥测数据的变化频率和幅度来描述卫星遥测数据的波动特征。这种提取方法既可行又高效,并且对遥测数据中的噪声和异常值不敏感。基于波动特征,提出了一种基于SPRT的有效异常检测方法。与其他方法的比较表明,本文提出的起伏特征可用于识别正常和异常卫星状态。从得分指标体系来看,该方法具有较高的计算效率和较好的检测性能。

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