A framework for probabilistic weather forecast post-processing across models and lead times using machine learning

被引:27
作者
Kirkwood, Charlie [1 ]
Economou, Theo [1 ]
Odbert, Henry [2 ]
Pugeault, Nicolas [3 ]
机构
[1] Univ Exeter, Coll Engn Math & Phys Sci, Exeter, Devon, England
[2] Met Off, Exeter, Devon, England
[3] Univ Glasgow, Sch Comp Sci, Glasgow, Lanark, Scotland
来源
PHILOSOPHICAL TRANSACTIONS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES | 2021年 / 379卷 / 2194期
基金
英国工程与自然科学研究理事会;
关键词
data integration; uncertainty quantification; quantile regression; model stacking; decision theory; artificial intelligence;
D O I
10.1098/rsta.2020.0099
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Forecasting the weather is an increasingly data-intensive exercise. Numerical weather prediction (NWP) models are becoming more complex, with higher resolutions, and there are increasing numbers of different models in operation. While the forecasting skill of NWP models continues to improve, the number and complexity of these models poses a new challenge for the operational meteorologist: how should the information from all available models, each with their own unique biases and limitations, be combined in order to provide stakeholders with well-calibrated probabilistic forecasts to use in decision making? In this paper, we use a road surface temperature example to demonstrate a three-stage framework that uses machine learning to bridge the gap between sets of separate forecasts from NWP models and the 'ideal' forecast for decision support: probabilities of future weather outcomes. First, we use quantile regression forests to learn the error profile of each numerical model, and use these to apply empirically derived probability distributions to forecasts. Second, we combine these probabilistic forecasts using quantile averaging. Third, we interpolate between the aggregate quantiles in order to generate a full predictive distribution, which we demonstrate has properties suitable for decision support. Our results suggest that this approach provides an effective and operationally viable framework for the cohei;iv e post-processing of weather forecasts across multiple models and lead times to produce a well-calibrated probabilistic output. This article of the theme issue 'Machine learning for weather and climate modeling'.
引用
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页数:15
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