Downscaling Seasonal Precipitation Forecasts over East Africa with Deep Convolutional Neural Networks

IF 5.5 2区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES
Temesgen Gebremariam Asfaw, Jing-Jia Luo
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Abstract

This study assesses the suitability of convolutional neural networks (CNNs) for downscaling precipitation over East Africa in the context of seasonal forecasting. To achieve this, we design a set of experiments that compare different CNN configurations and deployed the best-performing architecture to downscale one-month lead seasonal forecasts of June–July–August–September (JJAS) precipitation from the Nanjing University of Information Science and Technology Climate Forecast System version 1.0 (NUIST-CFS1.0) for 1982–2020. We also perform hyper-parameter optimization and introduce predictors over a larger area to include information about the main large-scale circulations that drive precipitation over the East Africa region, which improves the downscaling results. Finally, we validate the raw model and downscaled forecasts in terms of both deterministic and probabilistic verification metrics, as well as their ability to reproduce the observed precipitation extreme and spell indicator indices. The results show that the CNN-based downscaling consistently improves the raw model forecasts, with lower bias and more accurate representations of the observed mean and extreme precipitation spatial patterns. Besides, CNN-based downscaling yields a much more accurate forecast of extreme and spell indicators and reduces the significant relative biases exhibited by the raw model predictions. Moreover, our results show that CNN-based downscaling yields better skill scores than the raw model forecasts over most portions of East Africa. The results demonstrate the potential usefulness of CNN in downscaling seasonal precipitation predictions over East Africa, particularly in providing improved forecast products which are essential for end users.

利用深度卷积神经网络对东非的季节降水预报进行降尺度处理
本研究评估了卷积神经网络(CNN)在季节性预报中对东非降水降级的适用性。为此,我们设计了一组实验,比较不同的卷积神经网络配置,并部署了性能最佳的架构,以降级南京信息工程大学气候预报系统 1.0 版(NUIST-CFS1.0)1982-2020 年 6 月-7 月-8 月-9 月(JJAS)降水量的一个月领先季节预报。我们还进行了超参数优化,并引入了更大范围的预测因子,以纳入驱动东非地区降水的主要大尺度环流信息,从而改善降尺度结果。最后,我们从确定性和概率验证指标两方面对原始模型和降尺度预报进行了验证,并验证了它们再现观测到的极端降水和法术指标指数的能力。结果表明,基于 CNN 的降尺度预报不断改进原始模型预报,偏差更小,对观测到的平均降水量和极端降水量空间模式的描述更加准确。此外,基于 CNN 的降尺度还能更准确地预报极端降水量和极端降水量指标,并减少原始模型预报的显著相对偏差。此外,我们的结果表明,在东非大部分地区,基于 CNN 的降尺度预报比原始模式预报的技能得分更高。这些结果证明了 CNN 在缩减东非季节性降水预测中的潜在作用,特别是在提供对终端用户至关重要的改进型预测产品方面。
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来源期刊
Advances in Atmospheric Sciences
Advances in Atmospheric Sciences 地学-气象与大气科学
CiteScore
9.30
自引率
5.20%
发文量
154
审稿时长
6 months
期刊介绍: Advances in Atmospheric Sciences, launched in 1984, aims to rapidly publish original scientific papers on the dynamics, physics and chemistry of the atmosphere and ocean. It covers the latest achievements and developments in the atmospheric sciences, including marine meteorology and meteorology-associated geophysics, as well as the theoretical and practical aspects of these disciplines. Papers on weather systems, numerical weather prediction, climate dynamics and variability, satellite meteorology, remote sensing, air chemistry and the boundary layer, clouds and weather modification, can be found in the journal. Papers describing the application of new mathematics or new instruments are also collected here.
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