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北斗导航卫星系统中广播星历时间序列的评估与异常检测方法

Evaluation and Anomaly Detection Methods for Broadcast Ephemeris Time Series in the BeiDou Navigation Satellite System.

作者信息

Cai Jiawei, Li Jianwen, Xie Shengda, Jin Hao

机构信息

School of Information and Electronic Engineering, Zhejiang University of Science and Technology, Liuxia Street, Hangzhou 310023, China.

出版信息

Sensors (Basel). 2024 Dec 14;24(24):8003. doi: 10.3390/s24248003.

Abstract

Broadcast ephemeris data are essential for the precision and reliability of the BeiDou Navigation Satellite System (BDS) but are highly susceptible to anomalies caused by various interference factors, such as ionospheric and tropospheric effects, solar radiation pressure, and satellite clock biases. Traditional threshold-based methods and manual review processes are often insufficient for detecting these complex anomalies, especially considering the distinct characteristics of different satellite types. To address these limitations, this study proposes an automated anomaly detection method using the IF-TEA-LSTM model. By transforming broadcast ephemeris data into multivariate time series and integrating anomaly score sequences, the model enhances detection robustness through data integrity assessments and stationarity tests. Evaluation results show that the IF-TEA-LSTM model reduces the RMSE by up to 20.80% for orbital parameters and improves clock deviation prediction accuracy for MEO satellites by 68.37% in short-term forecasts, outperforming baseline models. This method significantly enhances anomaly detection accuracy across GEO, IGSO, and MEO satellite orbits, demonstrating its superiority in long-term data processing and its capacity to improve the reliability of satellite operations within the BDS.

摘要

广播星历数据对于北斗导航卫星系统(BDS)的精度和可靠性至关重要,但极易受到各种干扰因素引起的异常影响,如电离层和对流层效应、太阳辐射压力以及卫星钟偏差。传统的基于阈值的方法和人工审查流程往往不足以检测这些复杂的异常,特别是考虑到不同卫星类型的独特特征。为了解决这些局限性,本研究提出了一种使用IF-TEA-LSTM模型的自动异常检测方法。通过将广播星历数据转换为多变量时间序列并整合异常分数序列,该模型通过数据完整性评估和平稳性测试提高了检测的稳健性。评估结果表明,IF-TEA-LSTM模型在轨道参数方面将均方根误差(RMSE)降低了高达20.80%,并在短期预测中将中地球轨道(MEO)卫星的钟差预测精度提高了68.37%,优于基线模型。该方法显著提高了地球静止轨道(GEO)、倾斜地球同步轨道(IGSO)和MEO卫星轨道的异常检测精度,证明了其在长期数据处理中的优越性以及提高BDS内卫星运行可靠性的能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b80c/11679261/7249376508ac/sensors-24-08003-g017.jpg

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