Machine learning models for daily rainfall forecasting in Northern Tropical Africa using tropical wave predictors
Athul Rasheeda Satheesh, Peter Knippertz, Andreas H. Fink

TL;DR
This study demonstrates that machine learning models trained on tropical wave predictors from satellite data can significantly improve daily rainfall forecasts in northern tropical Africa, outperforming traditional benchmarks.
Contribution
The paper introduces the use of tropical wave predictors with ML models and EasyUQ for probabilistic rainfall forecasting, showing improved accuracy over existing benchmarks.
Findings
Downstream tropical wave predictors are most predictive.
ML models outperform traditional benchmarks in accuracy.
Probabilistic forecasts are better calibrated with EasyUQ.
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.…
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Taxonomy
TopicsHydrological Forecasting Using AI
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Softmax · Linear Layer · Dropout · Layer Normalization · Attention Is All You Need · Dense Connections · Gradient Clipping · Residual Connection · AdaGrad
