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real-time flood forecasting using a hydrological grey model in conjunction with a global optimization method

عنوان مقاله: real-time flood forecasting using a hydrological grey model in conjunction with a global optimization method
شناسه ملی مقاله: SUADE01_037
منتشر شده در سمپوزیوم برآورد عدم قطعیت در مهندسی سد در سال 1384
مشخصات نویسندگان مقاله:

M. G KANG - Senior Researcher, Korea Institute of Water and Environment, Korea Water Resources Corporation (KOWACO), Daejon
S. W. PARK - Department of Agricultural Engineering, Seoul National University, Seoul, Korea
I. H. KO - Head Researcher Chief, Korea Institute of Water and Environment, Korea Water Resources Corporation (KOWACO
Y. J. NA - Korea Institute of Water and Environment, Korea Water Resources Corporation (KOWACO), Daejon, Korea,

خلاصه مقاله:
Real-time flood forecasting is the major element of a flood forecasting and control system that is a nonstructural method to reduce flood damage in flood prone areas. In this study, a hydrological grey model is developed to forecast runoff in real time, and the model’s applicability is evaluated by comparison with the observed and forecasted runoff. The model parameters are estimated with a global search method, the annealing-simplex method in conjunction with an objective function, HMLE. To forecast accurately runoff, the fifth order differential equation is adopted as the governing equation of the model. The statistic values between the observed and forecasted runoff in calibration and validation indicate that the simulated results are in good agreement with the observed. To evaluate the efficiency of the grey model, the results of the model are compared to these of an artificial neural networks (ANN) model. Comparing RMSE, R2, and REPF (Relative Error between the observed and forecasted Peak Flow) values of the ANN model and grey model results reveals that the grey model is a little superior to the ANN model.

کلمات کلیدی:
Real-time flood forecasting, Hydrological Grey model, Artificial neural networks model

صفحه اختصاصی مقاله و دریافت فایل کامل: https://civilica.com/doc/126494/