Sub-seasonal Prediction of Central European Summer Heatwaves with Linear and Random Forest Machine Learning Models

Elizabeth Weirich Benet, M. Pyrina, B. Jiménez-Esteve, E. Fraenkel, J. Cohen, D. Domeisen
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引用次数: 2

Abstract

Heatwaves are extreme near-surface temperature events that can have substantial impacts on ecosystems and society. EarlyWarning Systems help to reduce these impacts by helping communities prepare for hazardous climate-related events. However, state-of-the-art prediction systems can often not make accurate forecasts of heatwaves more than two weeks in advance, which are required for advance warnings. We therefore investigate the potential of statistical and machine learning methods to understand and predict central European summer heatwaves on timescales of several weeks. As a first step, we identify the most important regional atmospheric and surface predictors based on previous studies and supported by a correlation analysis: 2-m air temperature, 500-hPa geopotential, precipitation, and soil moisture in central Europe, as well as Mediterranean and North Atlantic sea surface temperatures, and the North Atlantic jet stream. Based on these predictors, we apply machine learning methods to forecast two targets: summer temperature anomalies and the probability of heatwaves for 1–6 weeks lead time at weekly resolution. For each of these two target variables, we use both a linear and a random forest model. The performance of these statistical models decays with lead time, as expected, but outperforms persistence and climatology at all lead times. For lead times longer than two weeks, our machine learning models compete with the ensemble mean of the European Centre for Medium-Range Weather Forecasts’ hindcast system. We thus show that machine learning can help improve sub-seasonal forecasts of summer temperature anomalies and heatwaves.
基于线性和随机森林机器学习模型的中欧夏季热浪分季节预测
热浪是极端的近地表温度事件,可对生态系统和社会产生重大影响。预警系统通过帮助社区为与气候有关的危险事件做好准备,有助于减少这些影响。然而,最先进的预报系统往往不能提前两周以上准确预报热浪,而这是预警所必需的。因此,我们研究了统计和机器学习方法在几周时间尺度上理解和预测中欧夏季热浪的潜力。首先,我们在前人研究的基础上,通过相关分析确定了最重要的区域大气和地面预测因子:中欧2米气温、500 hpa位势、降水和土壤湿度,以及地中海和北大西洋海面温度和北大西洋急流。基于这些预测因子,我们应用机器学习方法来预测两个目标:夏季温度异常和以周分辨率提前1-6周的热浪概率。对于这两个目标变量中的每一个,我们都使用线性和随机森林模型。正如预期的那样,这些统计模型的性能随着前置时间的推移而衰减,但在所有前置时间内都优于持久性和气候学。如果提前期超过两周,我们的机器学习模型将与欧洲中期天气预报中心的后置系统的整体平均值竞争。因此,我们表明机器学习可以帮助改进夏季温度异常和热浪的分季节预测。
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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