Spatiotemporal Deep Learning Network for High-Latitude Ionospheric Phase Scintillation Forecasting

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Abstract

In this paper, we present a spatiotemporal deep learning (STDL) network to con-duct binary phase scintillation forecasting at a high-latitude global navigation satellite systems (GNSS) station. Historical measurements from the target and surrounding GNSS stations are utilized. In addition, external features such as solar wind parameters and geomagnetic activity indices are also included. The results show that the STDL network can adaptively incorporate spatiotemporal and external information to achieve the best performance by outperforming a naive method, three conventional machine learning algorithms (logistic regres-sion, gradient boosting decision tree, and fully connected neural network) and a machine learning algorithm known as long short-term memory that incorpo-rates temporal information.

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Liu, Y., Yang, Z., Morton, Y. J., & Li, R. (2023). Spatiotemporal Deep Learning Network for High-Latitude Ionospheric Phase Scintillation Forecasting. Navigation, Journal of the Institute of Navigation, 70(4). https://doi.org/10.33012/navi.615

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