Leveraging deterministic weather forecasts for in-situ probabilistic temperature predictions via deep learning

IF 2.8 3区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES Monthly Weather Review Pub Date : 2024-06-04 DOI:10.1175/mwr-d-23-0273.1
David Landry, A. Charantonis, C. Monteleoni
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Abstract

We propose a neural network approach to produce probabilistic weather forecasts from a deterministic numerical weather prediction. Our approach is applied to operational surface temperature outputs from the Global Deterministic Prediction System up to ten-day lead times, targeting METAR observations in Canada and the United States. We show how postprocessing performance is improved by training a single model for multiple lead times. Multiple strategies to condition the network for the lead time are studied, including a supplementary predictor and an embedding. The proposed model is evaluated for accuracy, spread, distribution calibration, and its behavior under extremes. The neural network approach decreases CRPS by 15% and has improved distribution calibration compared to a naive probabilistic model based on past forecast errors. Our approach increases the value of a deterministic forecast by adding information about the uncertainty, without incurring the cost of simulating multiple trajectories. It applies to any gridded forecast including the recent machine learning-based weather prediction models. It requires no information regarding forecast spread and can be trained to generate probabilistic predictions from any deterministic forecast.
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通过深度学习利用确定性天气预报进行现场概率温度预测
我们提出了一种从确定性数值天气预报中生成概率天气预报的神经网络方法。针对加拿大和美国的 METAR 观测数据,我们的方法被应用于全球确定性预报系统 10 天前的业务表面温度输出。我们展示了如何通过为多个提前期训练单一模型来提高后处理性能。我们还研究了针对前导时间对网络进行调节的多种策略,包括补充预测器和嵌入。对提出的模型进行了准确性、传播、分布校准及其在极端情况下的行为评估。与基于过去预测误差的天真概率模型相比,神经网络方法将 CRPS 降低了 15%,并改进了分布校准。我们的方法增加了不确定性信息,从而提高了确定性预测的价值,而无需承担模拟多个轨迹的成本。它适用于任何网格预报,包括最近基于机器学习的天气预报模型。它不需要预报传播方面的信息,并且可以通过训练从任何确定性预报中生成概率预报。
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来源期刊
Monthly Weather Review
Monthly Weather Review 地学-气象与大气科学
CiteScore
6.40
自引率
12.50%
发文量
186
审稿时长
3-6 weeks
期刊介绍: Monthly Weather Review (MWR) (ISSN: 0027-0644; eISSN: 1520-0493) publishes research relevant to the analysis and prediction of observed atmospheric circulations and physics, including technique development, data assimilation, model validation, and relevant case studies. This research includes numerical and data assimilation techniques that apply to the atmosphere and/or ocean environments. MWR also addresses phenomena having seasonal and subseasonal time scales.
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