基于极限学习机的航天器时间序列在线异常检测

Sriram Baireddy, Moses W. Chan, Sundip R. Desai, Richard H. Foster, M. Comer, E. Delp
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引用次数: 1

摘要

探测航天器遥测信道中的异常是一个高度优先的问题,特别是考虑到航天器工作环境的严酷性。这些异常通常是系统故障的前兆。目前,遥测信道监测主要由领域专家手工完成,耗时长,范围广。鉴于每个卫星系统都有数千个频道需要监控,一种自动化的异常检测方法将是理想的。机器学习模型已被证明在检测通道的正常行为和标记任何异常方面是有效的。然而,需要为每个通道训练一个独特的模型,并且高性能模型需要增加训练时间。我们建议使用在线顺序极限学习机的集合来快速理解给定通道的行为并在接近实时的情况下识别异常。这大大减少了为每个通道获得模型所需的训练时间和数据量。我们展示了我们的方法的结果,表明我们可以用最少的训练时间和数据实现与最先进的航天器异常检测方法相当的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spacecraft Time-Series Online Anomaly Detection Using Extreme Learning Machines
Detecting anomalies in spacecraft telemetry channels is a high priority, especially considering the harshness of the spacecraft operating environment. These anomalies often function as precursors for system failure. Currently, telemetry channel monitoring is done manually by domain experts, which is time-consuming and limited in scope. Given that each satellite system has thousands of channels to monitor, an automated approach to anomaly detection would be ideal. Machine learning models have been shown to be effective at detecting the normal behavior of the channels and flagging any abnormalities. However, a unique model needs to be trained for each channel, and high performing models have been shown to require an increased training time. We propose using an ensemble of online sequential extreme learning machines to quickly understand the behavior of a given channel and identify anomalies in near real-time. This greatly reduces the amount of training time and data required to obtain a model for each channel. We present the results of our approach to show that we can achieve performance comparable to state-of-the-art spacecraft anomaly detection methods with minimal training time and data.
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