AO-PHAICVJun 23, 2022

Short-range forecasts of global precipitation using deep learning-augmented numerical weather prediction

arXiv:2206.11669v37 citationsh-index: 70
Originality Incremental advance
AI Analysis

This work addresses precipitation forecasting accuracy for meteorological applications and disaster preparedness, representing a strong domain-specific improvement through hybrid modeling.

The authors tackled the problem of large biases in short-range global precipitation forecasts from numerical weather prediction models by augmenting the CFSv2 model with deep learning, resulting in a hybrid model that reduced average precipitation bias from +5-7 mm/day to within -1 to +1 mm/day and cut mean bias by 8x for 1-day lead times over land regions.

Precipitation governs Earth's hydroclimate, and its daily spatiotemporal fluctuations have major socioeconomic effects. Advances in Numerical weather prediction (NWP) have been measured by the improvement of forecasts for various physical fields such as temperature and pressure; however, large biases exist in precipitation prediction. We augment the output of the well-known NWP model CFSv2 with deep learning to create a hybrid model that improves short-range global precipitation at 1-, 2-, and 3-day lead times. To hybridise, we address the sphericity of the global data by using modified DLWP-CS architecture which transforms all the fields to cubed-sphere projection. Dynamical model precipitation and surface temperature outputs are fed into a modified DLWP-CS (UNET) to forecast ground truth precipitation. While CFSv2's average bias is +5 to +7 mm/day over land, the multivariate deep learning model decreases it to within -1 to +1 mm/day. Hurricane Katrina in 2005, Hurricane Ivan in 2004, China floods in 2010, India floods in 2005, and Myanmar storm Nargis in 2008 are used to confirm the substantial enhancement in the skill for the hybrid dynamical-deep learning model. CFSv2 typically shows a moderate to large bias in the spatial pattern and overestimates the precipitation at short-range time scales. The proposed deep learning augmented NWP model can address these biases and vastly improve the spatial pattern and magnitude of predicted precipitation. Deep learning enhanced CFSv2 reduces mean bias by 8x over important land regions for 1 day lead compared to CFSv2. The spatio-temporal deep learning system opens pathways to further the precision and accuracy in global short-range precipitation forecasts.

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