Estimation and prediction of weather variables from surveillance data using spatio-temporal Kriging

Ramon Dalmau, M. Pérez-Batlle, X. Prats
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引用次数: 15

Abstract

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.
利用时空克里格法从监测数据估计和预测天气变量
从数值天气预报中获得的最先进的天气数据不太可能满足未来空中交通管理系统的要求。提高天气预报的分辨率和准确性的一个潜在方法可能是使用机载飞机作为气象传感器,它将向周围的飞机和地面系统提供最新的天气观测。本文提出利用地质统计学插值技术克里格(Kriging),从监测数据中获得的零散天气观测数据中创建短期天气预报。结果表明,该方法可以准确地捕捉温度场和风场的时空分布,从而获得高质量的局部短期天气预报,同时提供与预测相关的不确定性度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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