Estimation And Prediction Of Weather Variables From Surveillance Data Using Spatio-Temporal Kriging

2017 IEEE/AIAA 36TH DIGITAL AVIONICS SYSTEMS CONFERENCE (DASC)(2017)

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摘要
State-of-the-art weather data obtained from numerical weather predictions are unlikely to satisfy the requirements of the future air traffic management system. A potential approach to improve the resolution and accuracy of the weather predictions could consist on using airborne aircraft as meteorological sensors, which would provide up-to-date weather observations to the surrounding aircraft and ground systems. This paper proposes to use Kriging, a geostatistical interpolation technique, to create short-term weather predictions from scattered weather observations derived from surveillance data. Results show that this method can accurately capture the spatio-temporal distribution of the temperature and wind fields, allowing to obtain high-quality local, short-term weather predictions and providing at the same time a measure of the uncertainty associated with the prediction.
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关键词
scattered weather observation,temperature field,wind field,airborne aircraft resolution,aircraft ground system,spatiotemporal Kriging surveillance data,weather observation,meteorological sensor,air traffic management system,numerical weather prediction,geostatistical interpolation technique,state-of-the-art weather data
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