Ambika, Anukesh Krishnankutty ; Tayal, Kshitij ; Mishra, Vimal ; Lu, Dan (2025) Novel Deep Learning Transformer Model for Short to Sub‐Seasonal Streamflow Forecast Geophysical Research Letters, 52 (14). ISSN 0094-8276
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Official URL: https://doi.org/10.1029/2025GL116707
Related URL: http://dx.doi.org/10.1029/2025GL116707
Abstract
Accurate short-to-subseasonal streamflow forecasts are becoming crucial for effective water management in an increasingly variable climate. However, streamflow forecast remains challenging over extended lead times, uncertainty in meteorological inputs, and increased frequency and variability in extreme weather and climate events. We implemented a Future Time Series Transformer (FutureTST) model for streamflow forecasting that separately integrates past meteorological and streamflow data while incorporating future weather conditions. FutureTST achieves a mean Nash-Sutcliffe Efficiency (NSE) of 0.82 to 0.67 for 1- to 30-day streamflow forecasts. Incorporating upstream streamflow information improved forecast accuracy by up to 10%. During real-time forecast, FutureTST maintains higher forecast skills of 9.03 for 1-day and 5.74 for 14-day forecasts. In contrast, calibrated process-based hydrological model forecasts become unreliable beyond a 4-day lead time. Our findings demonstrate the potential of FutureTST as a reliable streamflow forecasting tool that offers a valuable addition to operational flood monitoring systems and climate-resilient decision-making.
| Item Type: | Article |
|---|---|
| Source: | Copyright of this article belongs to American Geophysical Union. |
| ID Code: | 142475 |
| Deposited On: | 19 Jan 2026 13:32 |
| Last Modified: | 19 Jan 2026 13:32 |
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