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강우자료 형태에 따른 인공신경망의 일유입량 예측 정확도 평가

Influence of Rainfall observation Network on Daily Dam Inflow using Artificial Neural Networks

  • Kim, Seokhyeon (Department of Rural Systems Engineering, Seoul national University) ;
  • Kim, Kyeung (Department of Rural Systems Engineering, Seoul national University) ;
  • Hwang, Soonho (Department of Rural Systems Engineering, Seoul national University) ;
  • Park, Jihoon (Climate Services and Research Department, APEC Climate Center) ;
  • Lee, Jaenam (Water Resources & Environment Research Group, Rural Research Institute, Korea Rural Community Corporation) ;
  • Kang, Moonseong (Department of Rural Systems Engineering, Institute of Agriculture and Life sciences, Institute of Green Bio Science and Technology, Seoul national University)
  • 투고 : 2018.11.29
  • 심사 : 2019.03.07
  • 발행 : 2019.03.31

초록

The objective of this study was to evaluate the influence of rainfall observation network on daily dam inflow using artificial neural networks(ANNs). Chungju Dam and Soyangriver Dam were selected for the study watershed. Rainfall and dam inflow data were collected as input data for construction of ANNs models. Five ANNs models, represented by Model 1 (In watershed, point rainfall), Model 2 (All in the Thiessen network, point rainfall), Model 3 (Out of watershed in the Thiessen network, point rainfall), Model 1-T (In watershed, area mean rainfall), Model 2-T (All in the Thiessen network, area mean rainfall), were adopted to evaluate the influence of rainfall observation network. As a result of the study, the models that used all station in the Thiessen network performed better than the models that used station only in the watershed or out of the watershed. The models that used point rainfall data performed better than the models that used area mean rainfall. Model 2 achieved the highest level of performance. The model performance for the ANNs model 2 in Chungju dam resulted in the $R^2$ value of 0.94, NSE of 0.94 $NSE_{ln}$ of 0.88 and PBIAS of -0.04 respectively. The model-2 predictions of Soyangriver Dam with the $R^2$ and NSE values greater than 0.94 were reasonably well agreed with the observations. The results of this study are expected to be used as a reference for rainfall data utilization in forecasting dam inflow using artificial neural networks.

키워드

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Fig. 1 Study area – Soyangriver dam watershed

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Fig. 2 Study area – Chungju dam watershed

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Fig. 3 Architecture of artificial neuron

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Fig. 4 Structure of artificial neural network

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Fig. 5 MSE according to time lags (Chungju dam)

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Fig. 6 MSE according to time lags (Soyangriver dam)

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Fig. 7 Scatter plots comparing observed and simulated Chungju dam inflow by artificial neural network for testing period

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Fig. 8 Scatter plots comparing observed and simulated Soyangriver dam inflow by artificial neural network for testing period

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Fig. 9 Time series of observed and simulated of Chungju dam inflow according to the meteorological range

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Fig. 10 Time series of observed and simulated of Soyangriver dam inflow according to the meteorological range

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Fig. 11 Time series of observed and simulated of Chungju dam inflow according to the use of area mean rainfall

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Fig. 12 Time series of observed and simulated of Soyangriver dam inflow according to the use of area mean rainfall

Table 1 Thiessen area of Soyangriver dam watershed

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Table 2 Thiessen area of Chungju dam watershed

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Table 3 Type of Input rainfall in model

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Table 4 Time lags and hidden node of each model

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Table 5 Training and testing statics for each models

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