论文标题
一个多尺度的深度学习框架,用于预测极端天气
A Multi-Scale Deep Learning Framework for Projecting Weather Extremes
论文作者
论文摘要
极端天气是一种主要的社会和经济危害,每年夺去了数千人的生命,并造成数十亿美元的损失。在气候变化下,它们的影响和强度预计会大大恶化。不幸的是,当前是气候预测的主要工具的一般循环模型(GCM)无法准确表征天气。为了解决这个问题,我们提出了一个多分辨率的深度学习框架,首先,该框架通过将其输出的低序和尾部统计数据与粗尺度的观测值匹配,从而纠正GCM的偏见;其次,通过将较细的尺度重建作为粗尺度的函数来重建较细的尺度,从而提高了DECIAS GCM输出的细节水平。我们使用拟议的框架通过使用观察性大气再分析校正的简单GCM对西欧的气候产生统计上现实的实现。我们还讨论了在不断变化的气候下对自然灾害的概率风险评估的影响。
Weather extremes are a major societal and economic hazard, claiming thousands of lives and causing billions of dollars in damage every year. Under climate change, their impact and intensity are expected to worsen significantly. Unfortunately, general circulation models (GCMs), which are currently the primary tool for climate projections, cannot characterize weather extremes accurately. To address this, we present a multi-resolution deep-learning framework that, firstly, corrects a GCM's biases by matching low-order and tail statistics of its output with observations at coarse scales; and secondly, increases the level of detail of the debiased GCM output by reconstructing the finer scales as a function of the coarse scales. We use the proposed framework to generate statistically realistic realizations of the climate over Western Europe from a simple GCM corrected using observational atmospheric reanalysis. We also discuss implications for probabilistic risk assessment of natural disasters in a changing climate.