4.2 Article

Evaluation of sediment yield and soil loss by the MPSIAC model using GIS at Golestan watershed, northeast of Iran

期刊

ARABIAN JOURNAL OF GEOSCIENCES
卷 6, 期 9, 页码 3349-3362

出版社

SPRINGER HEIDELBERG
DOI: 10.1007/s12517-012-0573-y

关键词

MPSIAC model; Sediment yield; Soil loss; Sediment delivery ratio; GIS

资金

  1. Islamic Azad University-Mashhad branch

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Watershed degradation due to soil erosion and sedimentation is considered to be one of the major environmental problems in Iran. In order to address the critical conditions of watershed degradation in arid and semiarid regions, a study based on the Modified Pacific Southwest Inter-Agency Committee (MPSIAC) model was carried out at Golestan watershed, northeast of Iran. The model information layers comprising nine effective factors in erosion and sedimentation at the watershed site were obtained by digitalization and spatial interpolation of the basic information data in a GIS program. These factors are geology, soil, climate, runoff, topography, land cover, land use, channel, and upland erosion. The source data for the model were obtained from available records on rainfall and river discharge and sediment, topography, land use, geology, and soil maps as well as field surveys and laboratory analysis. The results of the MPSIAC model indicated that 60.75 % (194.4 km(2)) and 54.97 % (175.9 km(2)) of the total watershed area were classified in the heavy sedimentation and erosion classes, and the total basin sediment yield and erosion were calculated as 4,171.1 and 17,813.4 m(3) km(-2) year(-1), respectively. In the sensitivity analysis, it was found that the most sensitive parameters of the model in order of importance were topography (slope), land cover and use, runoff, and channel erosion (R-2 = 00.92-0.94), while geology, climate (rainfall), soil, and upland erosion factors were found to have moderate effect to the model output (R-2 = 00.74-0.59).

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