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Creating Situational Awareness in Spacecraft Operations with the Machine Learning Approach

机译:使用机器学习方法在航天器操作中创造情境意识

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This paper presents a machine learning approach for the situational awareness capability in spacecraft operations. There are two types of time dependent data patterns for spacecraft datasets: the absolute time pattern (ATP) and the relative time pattern (RTP). The machine learning captures the data patterns of the satellite datasets through the data training during the normal operations, which is represented by its time dependent trend. The data monitoring compares the values of the incoming data with the predictions of machine learning algorithm, which can detect any meaningful changes to a dataset above the noise level. If the difference between the value of incoming telemetry and the machine learning prediction are larger than the threshold defined by the standard deviation of datasets, it could indicate the potential anomaly that may need special attention. The application of the machine-learning approach to the Advanced Himawari Imager (AHI) on Japanese Himawari spacecraft series is presented, which has the same configuration as the Advanced Baseline Imager (AB1) on Geostationary Environment Operational Satellite (GOES) R series. The time dependent trends generated by the data-training algorithm are in excellent agreement with the datasets. The standard deviation in the time dependent trend provides a metric for measuring the data quality, which is particularly useful in evaluating the detector quality for both AHI and ABI with multiple detectors in each channel. The machine-learning approach creates the situational awareness capability, and enables engineers to handle the huge data volume that would have been impossible with the existing approach, and it leads to significant advances to more dynamic, proactive, and autonomous spacecraft operations.
机译:本文介绍了航天器业务中情境意识能力的机器学习方法。航天器数据集有两种类型的时间相关数据模式:绝对时间模式(ATP)和相对时间模式(RTP)。机器学习通过在正常操作期间通过数据培训捕获卫星数据集的数据模式,该数据培训由其时间依赖趋势表示。数据监视将传入数据的值与计算机学习算法的预测进行比较,这可以检测到噪声水平上方的数据集的任何有意义的更改。如果传入遥测的值与机器学习预测之间的差异大于由数据集的标准偏差定义的阈值,则它可以指示可能需要特别注意的潜在异常。介绍了机器学习方法在日本Himawari Spacecraft系列上的高级Himawari Imager(AHI)的应用,它具有与地球静止环境运营卫星(GUES)R系列的高级基线成像器(AB1)相同的配置。数据训练算法生成的时间依赖趋势与数据集具有很好的协议。时间依赖趋势的标准偏差提供了测量数据质量的度量,这对于评估每个通道中的多个检测器的AHI和ABI的检测器质量特别有用。机器学习方法创造了情境感知能力,使工程师能够处理现有方法不可能的巨大数据量,并且它导致更加动态,主动和自主航天器操作的重要进步。

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