Abstract

An ionospheric anomaly is the irregular change of the ionosphere. It may result in potential threats for the ground-based augmentation system (GBAS) supporting the high-level precision approach. To counter the hazardous anomalies caused by the steep gradient in ionospheric delays, customized monitors are equipped in GBAS architectures. A major challenge is to rapidly detect the ionospheric gradient anomaly from environmental noise to meet the safety-critical requirements. A one-class support vector machine (OCSVM)-based monitor is developed to clearly detect ionospheric anomalies and to improve the robust detection speed. An offline-online framework based on the OCSVM is proposed to extract useful information related to anomalous characteristics in the presence of noise. To validate the effectiveness of the proposed framework, the influence of noise is fully considered and analyzed based on synthetic, semi-simulated, and real data from a typical ionospheric anomaly event. Synthetic results show that the OCSVM-based monitor can identify the anomaly that cannot be detected by other commonly-used monitors, such as the CCD-1OF, CCD-2OF and KLD-1OF. Semi-simulation results show that compared with other monitors, the newly proposed monitor can improve the average detection speed by more than 40% and decrease the minimum detectable gradient change rate to 0.002 m/s. Furthermore, in the real ionospheric anomaly event experiment, compared with other monitors, the OCSVM-based monitor can improve the detection speed by 16%. The result indicates that the proposed monitor has encouraging potential to ensure integrity of the GBAS.

Highlights

  • An ionospheric anomaly is the irregular change of the ionosphere

  • Ionospheric delays because of free electrons along the path of the Global Navigation Satellite Systems (GNSS) signal are always uniformly distributed under normal conditions

  • We present an analysis of the statistics of one-class support vector machine (OCSVM) metrics and establish a framework of the monitor

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Summary

Introduction with regard to jurisdictional claims in

The Ground-Based Augmentation System (GBAS) is a short-baseline, airport-based augmentation of the Global Navigation Satellite Systems (GNSS). The CCD monitorsubsystem is the only for oneGAST capable detecting phenomenon caused by the signal propagation in the disturbed ionosphere, gradients observable to both the user and ground subsystem for GAST D. The inherent averaging characteristics of filters lead to the weak anomaly-related components being overwhelmed by normal noise It is often difficult for traditional divergence monitors to quickly detect the ionospheric anomaly. A one class support vector machine (OCSVM) algorithm extends the SVM algorithm to solve a single classification problem [23] It learns the underlying characteristics of the existing normal samples to judge whether the new samples come from this distribution, well suitable for anomaly detection.

Ionospheric Anomalies Detection Based on the OCSVM
The OCSVM Algorithm
Ionospheric Anomaly Detection with the OCSVM-Based Monitor
Experiment Analysis
Ionospheric Anomaly Detection with Synthetic Data
Vector
Trained
Variation of test the test statistics thresholds of the and the the proposed
Variations
Ionospheric
13. Variation
14. Comparison
15. Variations
18. Variation
Findings
Conclusions and Perspectives
Full Text
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