将天气模式信息纳入模型输出统计,改进短期近地面温度预报

IF 2.8 3区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
Matthias Zech, L. von Bremen
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引用次数: 0

摘要

过去几十年来,动态数值天气预报有了显著改善。然而,还需要后处理技术来校准基于统计和机器学习技术的预报。随着最近在推导全年大尺度大气环流或天气体制方面取得的进展,出现了这样一个问题,即这些信息在预报后处理方法中是否有价值。本文对此进行了研究,提出了一种偏差校正方案,将从经验正交函数(称为天气模式)中得出的大气环流状态整合到基于 LASSO 回归的确定性短期近地表温度预报中。我们提出了一项计算研究,首先评估了不同的天气模式定义(空间域),以改进欧洲的气温预报。由于偏差可能与模型初始化时或预报实现时的天气模式有关,因此本研究对两种变体都进行了测试。结果表明,空间域与预报完全相同的天气模式预报技能最佳,平均平方误差技能分别提高了 3%(提前一天)或 1%(提前一周)。仅考虑欧洲陆地表面的改进,可观察到提前一天预报的改进幅度为 4%-6%,提前一周预报的改进幅度为 1%-5%。我们相信,这项研究不仅引入了一种简单而有效的工具来减少气温预报中的偏差,还有助于人们积极讨论天气模式的价值以及如何在预报校准技术中使用天气模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving short-term, near-surface temperature forecasts by integrating weather pattern information into Model Output Statistics
Dynamical numerical weather prediction has remarkably improved over the last decades. Yet, postprocessing techniques are needed to calibrate forecasts which are based on statistical and Machine Learning techniques. With recent advances in the derivation of year-round, large-scale atmospheric circulations, or weather regimes, the question arises of whether this information can be valuable within forecast postprocessing methods. This paper investigates this by proposing a bias correction scheme to integrate the atmospheric circulation state derived from empirical orthogonal functions, referred to as weather patterns, for deterministic short-term, near-surface temperature forecasts based on LASSO regression. We propose a computational study which first evaluates different weather pattern definitions (spatial domain) to improve temperature forecasts in Europe. As a bias could be associated with the weather pattern at the model initialization time or at the realization time of the forecast, both variants are tested in this study. We show that forecasted weather patterns with the identical spatial domain as the forecast show best skill reaching Mean Squared Error Skill improvements of up to 3% (day-ahead) or 1% respectively (week ahead). Only considering land surface improvements in Europe, improvements of 4-6% for day-ahead and 1 to 5% for week-ahead forecasts are observable. We believe that this study not only introduces a simple yet effective tool to reduce bias in temperature forecasts but also contributes to the active discussion of how valuable weather patterns are and how to use them within forecast calibration techniques.
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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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