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Chinese Journal of Applied Ecology ›› 2004, Vol. ›› Issue (2): 278-282.

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Distributed modeling of nutrient transport in basin with support of remote sensing and geography information system

LI Shuo1,2, SUN Bo1, ZENG Zhiyuan2, ZHAO Qiguo 1   

  1. 1. Institute of Soil Science, Chinese Academy of Sciences, Nanjing 210008, China;
    2. College of Geography Science, Nanjing Normal University, Nanjing 210097, China
  • Received:2003-02-04 Revised:2003-10-08 Online:2004-02-15

Abstract: Agricultural non-point source pollution has become serious in our country. Modeling the processes of nutrient(especially nitrogen and phosphorus) transport in basin and evaluating the adopted management practices are important for controlling the impact of non-point pollution on environment. A research scheme for distributed simulation of nutrient transport processes in Lianshui Basin, Xingguo County, Jiangxi Province was designed, with the support of remote sensing (RS) and geography information system (GIS). The research procedure included model selection, discretization and spatial parameterization of the basin, prediction, and validation. SWAT model was selected, and basin-subbasin-hydrological response unit discretization scheme was designed. Supported by RS and GIS and based on the topographic features of the watershed, the subwatershed discretization divided the watershed into subbasins, and each subbasin could be further partitioned into multiple hydrologic response units (HRUs), which were unique soil/land use combinations within the subbasin and modeled through statistical spatial overlay analysis. The parameters of land use were obtained from the supervised classification of TM imagery based on field training samples, and those of soil were obtained from field sampling and further interpolated through geostatistical method. The simulation was carried out by using the data from 1991 to 2000. The results showed that the simulation accuracy of annual runoff water yield and sediment yield was 89.9% and 70.2%, respectively.

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