MSL Telecom Automated Anomaly Detection

R. Mukai, Zaid J. Towfic, M. Danos, M. Shihabi, D. Bell
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引用次数: 4

Abstract

The Mars Science Laboratory (MSL) Telecom Operations Team at the Jet Propulsion Laboratory (JPL) has implemented a machine learning system in order to automate the anomaly detection process as a part of daily operations. Machine learning enables reliable detection of anomalies in Telecom-related telemetry and automated reporting of Telecom subsystem status, resulting in an 90% reduction in team workload and improved anomaly detection reliability. At present, machine learning methods are used to detect: 1. Anomalous long-term trends in telemetry data 2. Anomalous time-domain evolution of telemetry values Both types of anomalies pose their own unique challenges that are addressed in different ways. In the first case, long term trending of daily minima, maximum, and mean telemetry values in temperatures, currents, voltages, and radio frequency (RF) power levels is used in addition to hard threshold safety checks to look for changes in long-term equipment health and performance. Long-term trending methods allow for ordinary seasonal variations in these quantities caused by temperature changes over the course of the Martian year while allowing operators to determine whether current performance remains in line with historical values from previous years. Changes in long-term trends can provide important insights into the health and status of the rover's on-board systems as well as valuable early warning if subtle degradation begins to take hold. But while trending of daily statistics is valuable, it does not detect anomalies in the short-term time evolution of data over the course of minutes or hours during a day, and this task is handled with short-term shape analysis. Principal components analysis (PCA) has been found to provide robust detection of short-term anomalies, and several examples of the use of PCA to detect actual anomalous events will be provided here. In using PCA, we use both the percentage of explained variance and also a log likelihood test on the PCA expansion coefficients to flag telemetry data for human review. Previous work in the field of spacecraft anomaly detection includes [1] for MSL and [2] for some other JPL missions.
MSL电信自动异常检测
喷气推进实验室(JPL)的火星科学实验室(MSL)电信运营团队已经实施了一个机器学习系统,以便将异常检测过程自动化,作为日常操作的一部分。机器学习能够可靠地检测电信相关遥测中的异常,并自动报告电信子系统状态,从而减少90%的团队工作量,提高异常检测的可靠性。目前,机器学习方法主要用于检测:1。遥测数据的长期异常趋势2。这两种类型的异常都有其独特的挑战,可以通过不同的方式解决。在第一种情况下,除了使用硬阈值安全检查外,还使用温度、电流、电压和射频(RF)功率水平的每日最小值、最大值和平均值遥测值的长期趋势来查找长期设备健康和性能的变化。长期趋势方法考虑了火星年期间温度变化引起的这些量的普通季节性变化,同时允许作业者确定当前的性能是否与前几年的历史值保持一致。长期趋势的变化可以提供对火星车上载系统的健康和状态的重要洞察,以及在细微退化开始发生时提供有价值的早期预警。但是,尽管每日统计的趋势很有价值,但它不能检测到一天中几分钟或几小时内数据的短期演变中的异常,并且这项任务是通过短期形状分析来处理的。主成分分析(PCA)已被发现可以提供对短期异常的稳健检测,这里将提供几个使用PCA检测实际异常事件的示例。在使用PCA时,我们既使用解释方差的百分比,也使用PCA展开系数的对数似然检验来标记遥测数据,以供人类审查。以往在航天器异常检测领域的工作包括MSL的[1]和JPL其他任务的[2]。
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