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RainBench: Towards Global Precipitation Forecasting from Satellite Imagery

Authors :
de Witt, Christian Schroeder
Tong, Catherine
Zantedeschi, Valentina
De Martini, Daniele
Kalaitzis, Freddie
Chantry, Matthew
Watson-Parris, Duncan
Bilinski, Piotr
de Witt, Christian Schroeder
Tong, Catherine
Zantedeschi, Valentina
De Martini, Daniele
Kalaitzis, Freddie
Chantry, Matthew
Watson-Parris, Duncan
Bilinski, Piotr
Publication Year :
2020

Abstract

Extreme precipitation events, such as violent rainfall and hail storms, routinely ravage economies and livelihoods around the developing world. Climate change further aggravates this issue. Data-driven deep learning approaches could widen the access to accurate multi-day forecasts, to mitigate against such events. However, there is currently no benchmark dataset dedicated to the study of global precipitation forecasts. In this paper, we introduce \textbf{RainBench}, a new multi-modal benchmark dataset for data-driven precipitation forecasting. It includes simulated satellite data, a selection of relevant meteorological data from the ERA5 reanalysis product, and IMERG precipitation data. We also release \textbf{PyRain}, a library to process large precipitation datasets efficiently. We present an extensive analysis of our novel dataset and establish baseline results for two benchmark medium-range precipitation forecasting tasks. Finally, we discuss existing data-driven weather forecasting methodologies and suggest future research avenues.<br />Comment: Work completed during the 2020 Frontier Development Lab research accelerator, a private-public partnership with NASA in the US, and ESA in Europe. Accepted as a spotlight/long oral talk at both Climate Change and AI, as well as AI for Earth Sciences Workshops at NeurIPS 2020

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1228453225
Document Type :
Electronic Resource