Method of Semi-Distributed Hydrological Model Soil Moisture Downscaling

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Demonstrates the possibility of using a topographic-based downscaling method of soil moisture content derived from the ECOMAG semi-distributed model on the example of the Ussuri River catchment (24,400 km2). The spatial resolution of the hydrological modeling results is increased by multiplying the low-resolution source data by the weight raster calculated on the basis of the relative slope position. The Tobler areal interpolation method is used as a smoothing function on the boundaries of model subbasins, ensuring preservation of subbasin average moisture content. The proposed method features and possible limitations of the practical application are discussed.

Sobre autores

A. Bugaets

Pacific Institute of Geography, FEB RAS; Water Problems Institute, RAS; Far Eastern Regional Hydrometeorological Research Institute

Email: andreybugaets@yandex.ru
Vladivostok, 690041, Russia; Moscow, 117971, Russia; Vladivostok, 690091 Russia

L. Gonchukov

Pacific Institute of Geography, FEB RAS; Water Problems Institute, RAS; Far Eastern Regional Hydrometeorological Research Institute

Vladivostok, 690041, Russia; Moscow, 117971, Russia; Vladivostok, 690091 Russia

Y. Motovilov

Water Problems Institute, RAS

Moscow, 117971, Russia

S. Lupakov

Pacific Institute of Geography, FEB RAS; Water Problems Institute, RAS

Vladivostok, 690041, Russia; Moscow, 117971, Russia

A. Bergen

Pacific Institute of Geography, FEB RAS

Vladivostok, 690041, Russia

N. Pschenichnikova

Pacific Institute of Geography, FEB RAS

Vladivostok, 690041, Russia

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