Assessment of the GraphCast AI model for precipitation forecasting and its potential in extreme event prediction over Bangladesh
Munad Hasan,
Shabista Yildiz and
Mohammad Kamruzzaman
PLOS Climate, 2026, vol. 5, issue 6, 1-16
Abstract:
Bangladesh situated in the tropical monsoon region is one of the most rainfall-sensitive countries in the world with terrain ranging from northwest floodplains to southern coastal deltas to eastern hilly regions. This complex landscape coupled with intensified climate variability influences local convection and extreme precipitation events, making short range forecasting difficult. In this context, AI driven weather forecasting is gaining promise in diagnosing nonlinear atmospheric processes where conventional physics-based models fall short. Therefore, this study employs AI-based GraphCast model to forecast 1-, 2-, and 3-day cumulative rainfall over Bangladesh utilizing observational data from 43 Bangladesh Meteorological Department (BMD) stations during 2023–2024. Then, the performance of the model has been evaluated against global forecasting models namely ECMWF and GFS with statistical metrics including correlation coefficient (CC), mean error (ME), root mean square error (RMSE), and probability of detection (POD). The capability of GraphCast to detect rainfall events was evaluated using POD for all rainfall occurrences exceeding 0 mm, while its skill in identifying extreme rainfall was assessed using the Critical Success Index (CSI) and False Alarm Ratio (FAR) at thresholds of 100, 200, and 300 mm for 1-, 2-, and 3-day accumulated rainfall. The findings revealed that GraphCast outperforms ECMWF and GFS in routine precipitation forecasting, achieving higher CC (0.57–0.65), lower RMSE (15.66–16.61 mm day ‒1), and near-perfect POD values (>0.98). It exhibited better performance in central and northern Bangladesh, where monsoon characteristics are more uniform compared to coastal and southeastern hilly regions. However, GraphCast tends to overestimate extreme rainfall events with lower CSI (0.4476–0.5170) and higher FAR (0.4809–0.5519) values. This contrast highlights GraphCast’s strong potential for operational rainfall monitoring and flood early warning in monsoon regions, while emphasizing the need for improved representation of rare extreme events and hybrid AI–physics frameworks for reliable high-impact weather forecasting.
Date: 2026
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pclm00:0000791
DOI: 10.1371/journal.pclm.0000791
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