Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/6847
Title: Runof mapping using the SCS‑CN method and artifcial neural network algorithm, Ratga Basin, Iraq
Authors: Muneer, Ahmed Shahadha
Afan, Haitham Abdulmohsin
Kamel, Ammar Hatem
Sayl, Khamis Naba
Keywords: SCS-CN method
GIS
Remote sensing
GRNN · Runof
Issue Date: 31-Mar-2022
Abstract: The traditional Soil Conservation Service )SCS( process for calculating the runof depth tends to be a very tedious and time time-consuming hydrological modeling process. Therefore, a geographic information system (GIS) is now being utilized as a tool alongside the common SCS-CN method for runof calculations. This research aims to estimate the spatial distribu tion of runof depth from Ratga, an agricultural watershed from the Iraqi Western Desert, using the SCS-CN method, GIS, generalized regression neural network (GRNN), feld observation dataset, and remote sensing data. The GRNN model was used to predict the soil type based on spectral refectance data. The results refer to an excellent performance of this model with the maximum absolute error was 8.44%, 14.11%, and 4.15% for sand, silt, and clay soil, respectively, and the sandy soil has the highest correlation coefcient (0.83). The outcome of the SCS method showed the CN value ranged from 70 to 85 of normal conditions. This investigation outline that the maximum volume of surface runof of the 2018 to 2020 years was 4,324,528 m3 . This paper proves that incorporating GIS with the SCS-CN model and ANN provides a robust tool for calculation runof depth in the Iraqi Western Desert, representing barren catchments of Iraq
URI: http://localhost:8080/xmlui/handle/123456789/6847
Appears in Collections:هندسة السدود والموارد المائية



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