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Short period forecasting of catchment-scale precipitation. Part II: a water-balance storm model for short-term rainfall and flood forecasting

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HAL Id: hal-00304693

https://hal.archives-ouvertes.fr/hal-00304693

Submitted on 1 Jan 2000

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Short period forecasting of catchment-scale

precipitation. Part II: a water-balance storm model for

short-term rainfall and flood forecasting

V. A. Bell, R. J. Moore

To cite this version:

V. A. Bell, R. J. Moore. Short period forecasting of catchment-scale precipitation. Part II: a water-balance storm model for short-term rainfall and flood forecasting. Hydrology and Earth System Sciences Discussions, European Geosciences Union, 2000, 4 (4), pp.635-651. �hal-00304693�

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