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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Deep Learning for Downscaling Tropical Cyclone Rainfall to Hazard‐Relevant Spatial Scales
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Deep Learning for Downscaling Tropical Cyclone Rainfall to Hazard‐Relevant Spatial Scales

机译:Deep Learning for Downscaling Tropical Cyclone Rainfall to Hazard‐Relevant Spatial Scales

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Abstract Flooding, driven in part by intense rainfall, is the leading cause of mortality and damages from the most intense tropical cyclones (TCs). With rainfall from TCs set to increase under anthropogenic climate change, it is critical to accurately estimate extreme rainfall to better support short‐term and long‐term resilience efforts. While high‐resolution climate models capture TC statistics better than low‐resolution models, they are computationally expensive. This leads to a trade‐off between capturing TC features accurately, and generating large enough simulation data sets to sufficiently sample high‐impact, low‐probability events. Downscaling can assist by predicting high‐resolution features from relatively cheap, low‐resolution models. Here, we develop and evaluate a set of three deep learning models for downscaling TC rainfall to hazard‐relevant spatial scales. We use rainfall from the Multi‐Source Weighted‐Ensemble Precipitation observational product at a coarsened resolution of ∼100 km, and apply our downscaling model to reproduce the original resolution of ∼10 km. We find that the Wasserstein Generative Adversarial Network is able to capture realistic spatial structures and power spectra and performs the best overall, with mean biases within 5% of observations. We also show that the model can perform well at extrapolating to the most extreme storms, which were not used in training.
机译:抽象的洪水,部分源于激烈降雨,是死亡率的主要原因损失的最强烈的热带气旋(TCs)。在人为的气候变化,它是准确地估计极端降雨的关键为了更好地支持量短期和长期弹性工作。比模型捕获TC统计数据低高分辨率模型计算贵了。准确地捕捉TC特性,并生成足够大的模拟数据集足够样高的影响,低概率的事件。降尺度可以帮助预测从相对便宜的高分辨率特性,低分辨率模型。评估的三种深度学习模型降尺度TC降雨风险量相关空间尺度。多人源加权合奏降水观察产品分辨率变粗了∼100公里,我们降尺度模型和应用繁殖的原始分辨率∼10公里。发现瓦瑟斯坦生成对抗网络是可以捕捉到现实的空间结构和功率谱和执行最好,平均偏差在5%以内观察。在推断最极端的表现良好风暴,没有用于培训。

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