Flood Hydrograph Estimation based on Various Components of Rainfall Using Adaptive Neuro-Fuzzy Inference System in Kasilian Watershed
Flood hydrographs preparation and estimation are considered a comprehensive information for managers and planners. While, it is not simply possible preparing it for all watersheds. Therfore, suitable flood hydrograph estimation and modeling seems to be necessary using available rainfall data. The study area is located in Kasilian representative watershed in Mazandaran province comprising 66.75km2 in area. For the accomplished present study, 15 characteristics of hyetograph as independent variables and 8 characteristics of hydrograph as dependent variables were considered for 60 storms from 1975 to 2009. For estimation flood hydrograph, aadaptive neuro-fuzzy inference system with two methods i.e., grid partitioning and subtractive clustering was used. Variance inflation factor (VIF) was used to select the input variables. The ANFIS results showed that subtractive clustering was found to be superior to grid partitioning.
-
Significance of investigating watershed stability
Hamed Beigi, Seyed Hamidreza Sadeghi *, , Vahid Moosavi, Michael Maerker
Journal of Extension and Development of Watershed Managment, -
Prioritizing Sediment Generation Potential of Sub-Watersheds Using the Best-Worst Method and Observed Sediment Data
Ali Nasiri Khiavi, Seyed Hamidreza Sadeghi *, Michael Maerker, Azadeh Katebikord, Padideh Sadat Sadeghi, Seyed Saeid Ghiasi,
Iran Water Resources Research,