This paper presents a random forest-based machine learning algorithm to auto-matically detect satellite oscillator anomalies using dual-or triple-frequency GPS carrier phase measurements. The algorithm can distinguish satellite oscillator anomalies from other GPS carrier phase disturbances including ion-ospheric scintillation and receiver oscillator anomalies. Carrier phase power spectral density and carrier phase ratios between carriers are extracted from measurements and applied as input features to the random forest algorithm. The method is trained using data collected at seven GNSS monitoring stations located in Alaska, Ascension Island, Greenland, Hong Kong, Peru, Puerto Rico, and Singapore. The overall detection accuracies of 98.4% and 99.0% are achieved for dual-and triple-frequency signals, respectively. The method outperforms other machine learning algorithms. The preliminary detection results demon-strate that the method presented can be employed on a global satellite oscillator anomaly monitoring system.
CITATION STYLE
Liu, Y., & Jade Morton, Y. (2022). Improved Automatic Detection of GPS Satellite Oscillator Anomaly using a Machine Learning Algorithm. Navigation, Journal of the Institute of Navigation, 69(1). https://doi.org/10.33012/navi.500
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