Machine learning models for daily rainfall forecasting in Northern Tropical Africa using tropical wave predictors

Athul Rasheeda Satheesh, Peter Knippertz, Andreas H. Fink
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Abstract

Numerical weather prediction (NWP) models often underperform compared to simpler climatology-based precipitation forecasts in northern tropical Africa, even after statistical postprocessing. AI-based forecasting models show promise but have avoided precipitation due to its complexity. Synoptic-scale forcings like African easterly waves and other tropical waves (TWs) are important for predictability in tropical Africa, yet their value for predicting daily rainfall remains unexplored. This study uses two machine-learning models--gamma regression and a convolutional neural network (CNN)--trained on TW predictors from satellite-based GPM IMERG data to predict daily rainfall during the July-September monsoon season. Predictor variables are derived from the local amplitude and phase information of seven TW from the target and up-and-downstream neighboring grids at 1-degree spatial resolution. The ML models are combined with Easy Uncertainty Quantification (EasyUQ) to generate calibrated probabilistic forecasts and are compared with three benchmarks: Extended Probabilistic Climatology (EPC15), ECMWF operational ensemble forecast (ENS), and a probabilistic forecast from the ENS control member using EasyUQ (CTRL EasyUQ). The study finds that downstream predictor variables offer the highest predictability, with downstream tropical depression (TD)-type wave-based predictors being most important. Other waves like mixed-Rossby gravity (MRG), Kelvin, and inertio-gravity waves also contribute significantly but show regional preferences. ENS forecasts exhibit poor skill due to miscalibration. CTRL EasyUQ shows improvement over ENS and marginal enhancement over EPC15. Both gamma regression and CNN forecasts significantly outperform benchmarks in tropical Africa. This study highlights the potential of ML models trained on TW-based predictors to improve daily precipitation forecasts in tropical Africa.
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利用热带波预测器预报热带非洲北部日降雨量的机器学习模型
在热带非洲北部,即使经过统计后处理,数值天气预报(NWP)模式与基于气候学的更简单降水预报相比,往往表现不佳。基于人工智能的预报模式显示出良好的前景,但由于其复杂性而避开了降水预报。非洲东波和其他热带波(TWs)等合流尺度的影响因素对热带非洲的可预测性非常重要,但它们在预测日降水量方面的价值仍有待探索。本研究使用了两种机器学习模型--伽马回归和卷积神经网络(CNN)--对基于卫星的 GPM IMERG 数据中的 TW 预测因子进行训练,以预测 7-9 月季风季节的日降雨量。预测变量来自目标网格和上下游邻近网格的七个 TW 的局部振幅和相位信息,空间分辨率为 1 度。将 ML 模型与 Easy Uncertainty Quantification(EasyUQ)相结合,生成校准概率预报,并与三个基准进行比较:扩展概率气候学(EPC15)、ECMWF 业务集合预报(ENS)和使用 EasyUQ(CTRL EasyUQ)的 ENS 控制成员的概率预报。研究发现,下游预测变量提供了最高的可预测性,其中基于下游热带低压(TD)类型波的预测变量最为重要。其他波,如混合罗斯重力波(MRG)、开尔文波和惰性重力波也有重要贡献,但表现出区域偏好。ENS 预测由于误差而表现出很差的技能。CTRL EasyUQ 比 ENS 有所改进,比 EPC15 略有提高。在热带非洲,伽马回归和 CNN 预测都明显优于基准。这项研究强调了基于 TW 预测因子的 ML 模型在改进非洲热带地区日降水量预报方面的潜力。
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