利用机器学习预测航天器时间序列

Bed Prasad Dhakal, Angelika Maag, Nirosha Gunasekera
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引用次数: 0

摘要

航天器是智能和高度敏感的系统,经常受到环境的影响。航天器上的复杂系统旨在利用机器学习(更具体地说是遥测采矿)减少故障和死亡。这种分析预测了卫星的行为,使航天器能够纠正它们的路线或采取其他措施来减轻潜在的负面影响。本文旨在实现统计自回归综合移动平均(ARIMA)算法,用于时间序列预测航天器故障,以节省投资和生命。为了识别潜在的失败,使用ARIMA算法通过平均值、标准差、协方差和Pearson相关平方对预测结果进行评估。以埃及卫星1号卫星的电池温度接收数据为参数,输入到Matlab中。本文在输入参数的基础上,通过ARIMA算法的实现,总结了航天器的性能和健康状况。最后,对该算法的输出进行了比较。提出了一种用于航天器时间序列预测的机器学习新框架。预测的准确性有助于降低航天器的故障率,提高航天器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Machine Learning to Forecast Time Series in Spacecrafts
Spacecrafts are intelligent and highly sensitive systems that are constantly exposed to environmental impact. Complex systems like those found in spacecrafts are designed to reduce faults and fatalities utilizing machine learning - more specifically known as Telemetry Mining. This analysis predicts satellite behavior which allows spacecrafts to correct their course or take other measures to mitigate potential negative impact. This paper aims to implement the statistical Autoregressive Integrated Moving Average (ARIMA) algorithm, used to forecast time series to predict spacecraft failure with the aim of saving investment and lives. To identify potential failure, results from predictions are evaluated through mean, standard deviation, covariance and Pearson's correlation square using the ARIMA algorithm. The data received from the Egyptsat-1 satellite's battery temperature is used as the parameter for input into Matlab This paper summarizes the performance and health of the spacecraft with the result of the implementation of the ARIMA algorithm on the basis of input parameters. Finally, the output from this algorithm is compared. This paper proposes a new framework for Machine Learning to Forecast Time Series in Spacecrafts. Prediction accuracy helps to decrease the failure rate of and improves the performance of the spacecraft.
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