Mobile QR Code QR CODE : Journal of the Korean Society of Civil Engineers
Title The Application of Adaptive Network-based Fuzzy Inference system (ANFIS) for Modeling the Hourly Runoff in the Gapcheon Watershed
Authors 김호준 ; 정건희 ; 이도훈 ; 이은태
Page pp.405-414
ISSN 10156348
Keywords neuro-fuzzy;ANFIS;rainfall-runoff;membership function;뉴로-퍼지;적응형 퍼지추론;강우-유출;소속함수
Abstract The adaptive network-based fuzzy inference system (ANFIS) which had a success for time series prediction and system control was applied for modeling the hourly runoff in the Gapcheon watershed. The ANFIS used the antecedent rainfall and runoff as the input. The ANFIS was trained by varying the various simulation factors such as mean areal rainfall estimation, the number of input variables, the type of membership function and the number of membership function. The root mean square error (RMSE), mean peak runoff error (PE), and mean peak time error (TE) were used for validating the ANFIS simulation. The ANFIS predicted runoff was in good agreement with the measured runoff and the applicability of ANFIS for modelling the hourly runoff appeared to be good. The forecasting ability of ANFIS up to the maximum 8 lead hour was investigated by applying the different input structure to ANFIS model. The accuracy of ANFIS for predicting the hourly runoff was reduced as the forecasting lead hours increased. The long-term predictability of ANFIS for forecasting the hourly runoff at longer lead hours appeared to be limited. The ANFIS might be useful for modeling the hourly runoff and has an advantage over the physically based models because the model construction of ANFIS based on only input and output data is relatively simple.