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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Optimized GNSS Station Selection to Support Long-Term Monitoring of Ionospheric Anomalies for Aircraft Landing Systems
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Optimized GNSS Station Selection to Support Long-Term Monitoring of Ionospheric Anomalies for Aircraft Landing Systems

机译:优化的GNSS站选择,以支持对飞机着陆系统的电离层异常进行长期监测

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Differential global navigation satellite systems (GNSS)-based aircraft precision approach and landing systems require the development of ionospheric threat models to insure that users are sufficiently protected against ionospheric anomalies. The long-term ionospheric anomaly monitor (LTIAM) is being used to build ionospheric threat models for ground-based augmentation systems (GBAS) and to continuously monitor ionospheric behavior over the life cycle of GBAS. While LTAIM exhaustively detects all potential anomalies, the use of poor-quality GNSS data degrades the accuracy of ionospheric delay estimates and produces many faulty anomaly candidates, thus adding a great burden to LTIAM processing. To select GNSS reference stations with high-quality data, an optimized set of thresholds for data quality metrics are established. The high-quality station selection method maximizes the elimination of spurious gradients while minimizing unnecessary station removals. When applied to the continuously operating reference stations (CORS) network in the Conterminous U.S. (CONUS), this method discards 90% of faulty candidates while only excluding 14% of the over 1600 CORS stations. The well-distributed subnetwork selection method is also proposed to remove geographically redundant stations in dense regions. The number of CORS stations in CONUS is reduced to 48% of total stations when a desired baseline constraint is 100 km. The results demonstrate that the optimal GNSS station section methods are applicable to a wide range of GNSS station networks that will be used for ionospheric monitoring.
机译:基于差分全球导航卫星系统(GNSS)的飞机精确进近和着陆系统需要开发电离层威胁模型,以确保用户得到充分保护,免受电离层异常影响。长期电离层异常监测器(LTIAM)用于建立地面增强系统(GBAS)的电离层威胁模型,并在GBAS的整个生命周期内连续监测电离层行为。尽管LTAIM详尽地检测了所有可能的异常,但是使用质量差的GNSS数据会降低电离层延迟估计的准确性,并产生许多错误的异常候选者,从而给LTIAM处理增加了很大的负担。为了选择具有高质量数据的GNSS参考站,建立了一组优化的数据质量指标阈值。高质量的站点选择方法最大程度地消除了虚假梯度,同时最大程度地减少了不必要的站点删除。当应用于美国本土(CONUS)的连续运行参考站(CORS)网络时,此方法将丢弃90%的错误候选对象,而仅排除1600多个CORS站中的14%。还提出了一种分布良好的子网选择方法,以消除密集区域中的地理上冗余的站点。当所需的基线约束为100 km时,CONUS中的CORS站数将减少到总站数的48%。结果表明,最佳的GNSS台站分段方法适用于将用于电离层监测的各种GNSS台站网络。

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