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A deep auto-encoder satellite anomaly advance warning framework

机译:深度自动编码器卫星异常提前警告框架

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Purpose The purpose of this paper is to ensure the stable operation of satellites in orbit and to assist ground personnel in continuously monitoring the satellite telemetry data and finding anomalies in advance, which can improve the reliability of satellite operation and prevent catastrophic losses. Design/methodology/approach This paper proposes a deep auto-encoder (DAE) satellite anomaly advance warning framework for satellite telemetry data. Firstly, this study performs grey correlation analysis, extracts important feature attributes to construct feature vectors and builds the variational auto-encoder with bidirectional long short-term memory generative adversarial network discriminator (VAE/BLGAN). Then, the Mahalanobis distance is used to measure the reconstruction score of input and output. According to the periodic characteristic of satellite operation, a dynamic threshold method based on periodic time window is proposed. Satellite health monitoring and advance warning are achieved using reconstruction scores and dynamic thresholds. Findings Experiment results indicate DAE methods can probe that satellite telemetry data appear abnormal, trigger a warning before the anomaly occurring and thus allow enough time for troubleshooting. This paper further verifies that the proposed VAE/BLGAN model has stronger data learning ability than other two auto-encoder models and is sensitive to satellite monitoring data. Originality/value This paper provides a DAE framework to apply in the field of satellite health monitoring and anomaly advance warning. To the best of the authors' knowledge, this is the first paper to combine DAE methods with satellite anomaly detection, which can promote the application of artificial intelligence in spacecraft health monitoring.
机译:目的本文的目的是确保轨道中卫星的稳定运行,并协助地面人员在不断监测卫星遥测数据并提前寻找异常,这可以提高卫星运行的可靠性,防止灾难性损失。设计/方法/方法本文提出了一个深度自动编码器(DAE)卫星异常用于卫星遥测数据的警告框架。首先,本研究执行灰色相关性分析,提取重要特征属性来构造特征向量,并用双向短期内存生成的对抗网络鉴别器(VAE / Blgan)构建变形自动编码器。然后,Mahalanobis距离用于测量输入和输出的重建分数。根据卫星操作的周期性特性,提出了一种基于周期性时间窗口的动态阈值方法。使用重建分数和动态阈值实现卫星健康监测和预先警告。结果实验结果表明DAE方法可以探测卫星遥测数据看起来异常,触发发生异常发生的警告,从而允许足够的时间进行故障排除。本文进一步验证了所提出的VAE / Blgan模型的数据学习能力较强,而不是其他两个自动编码器模型,对卫星监测数据敏感。原创性/价值本文提供了一个DAE框架,适用于卫星健康监测和异常预警的领域。据作者所知,这是第一份将DAE方法与卫星异常检测结合的论文,可以促进人工智能在航天器健康监测中的应用。

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