2017
DOI: 10.3390/w9090644
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Hourly Water Level Forecasting at Tributary Affected by Main River Condition

Abstract: This study develops hourly water level forecasting models with lead-times of 1 to 3 h using an artificial neural network (ANN) for Anyangcheon stream, one of the major tributaries of the Han River, South Korea. To consider the backwater effect from this river, an enhanced tributary water level forecasting model is proposed by adding multiple water level data on the main river as input variables into the conventional ANN structure which often uses rainfall and upstream water level data. Four types of ANN models… Show more

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Cited by 28 publications
(20 citation statements)
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References 35 publications
(34 reference statements)
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“…whereŷ k is the forecasted kth output value, f 0 is the activation function for the output neuron, n is the number of output neurons, w kj is the weight connecting the jth neuron in the hidden layer and kth neuron in the output layer, f h is the activation function for the hidden neuron, m is the number of hidden neurons, w ji is the weight connecting the ith neuron in the input layer and jth neuron in the hidden layer, x i is the ith input variable, w jb is the bias for the jth hidden neuron, and w kb is the bias for the kth output neuron [29,30]. Learning the ANN model is a training process entailing the search for the optimal weight vector used in Equation (1).…”
Section: Artificial Neural Networkmentioning
confidence: 99%
“…whereŷ k is the forecasted kth output value, f 0 is the activation function for the output neuron, n is the number of output neurons, w kj is the weight connecting the jth neuron in the hidden layer and kth neuron in the output layer, f h is the activation function for the hidden neuron, m is the number of hidden neurons, w ji is the weight connecting the ith neuron in the input layer and jth neuron in the hidden layer, x i is the ith input variable, w jb is the bias for the jth hidden neuron, and w kb is the bias for the kth output neuron [29,30]. Learning the ANN model is a training process entailing the search for the optimal weight vector used in Equation (1).…”
Section: Artificial Neural Networkmentioning
confidence: 99%
“…One major drawback of FFNNs is that they cannot preserve previous information, resulting in inefficiencies in handling sequential data (J. Supreetha et al, 2020). To leverage the performance of FFNNs, the delay time in the network response needs to be estimated in advance.…”
Section: Introductionmentioning
confidence: 99%
“…However, standard RNNs suffer from the exploding and vanishing gradient issues and often fail to exploit long-term dependencies between sequences, which is expected in the response of wtd a to pr a . These issues can be overcome by a variant of standard RNNs named Long Short-Term Memory (LSTM) networks (Supreetha et al, 2020). Although RNNs have been employed extensively in other science fields, particularly in natural language processing (D. , their application in hydrology is still in its infancy and has only recently received increasing attention (e.g., Kratzert et al, 2018;Shen, 2018;J.…”
Section: Introductionmentioning
confidence: 99%
“…The performance of the DEM improvement scheme was evaluated through visual clarifying, scatterplots, and two statistical measures, the mean error (ME) and root mean square error (RMSE) [4,14,24,38,39].…”
Section: Evaluation Methodsmentioning
confidence: 99%