2007
DOI: 10.1002/hyp.6812
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Hydrological time‐series modelling using an adaptive neuro‐fuzzy inference system

Abstract: Abstract:Accurate forecasting of hydrological time-series is a quite important issue for a wise and sustainable use of water resources. In this study, an adaptive neuro-fuzzy inference system (ANFIS) approach is used to construct a time-series forecasting system. In particular, the applicability of an ANFIS to the forecasting of the time-series is investigated. To illustrate the applicability and capability of an ANFIS, the River Great Menderes, located in western Turkey, is chosen as a case study area. The ad… Show more

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Cited by 85 publications
(33 citation statements)
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“…It is clearly seen that the reported RMSE performance is statically significant by considering the Diebold and Mariano [39] perspective stat ranging of −1.2 to +1.0. 2 …”
Section: Artificial Neural Network (Ann)mentioning
confidence: 99%
See 1 more Smart Citation
“…It is clearly seen that the reported RMSE performance is statically significant by considering the Diebold and Mariano [39] perspective stat ranging of −1.2 to +1.0. 2 …”
Section: Artificial Neural Network (Ann)mentioning
confidence: 99%
“…This model presents the parsimony and produces the rational results for linear time series data. In recent years, the use of statistical forecasting approaches has been challenged by the artificial intelligence approaches [1][2][3][4][5]. All the studies reviewed so far, there are limits to how far the statistical forecasting approaches can be applied.…”
Section: Introductionmentioning
confidence: 99%
“…Adaptative Neuro-Fuzzy Inference System (ANFIS) is one of the hybrid neuro-fuzzy inference expert systems and it works in Takagi-Sugeno-type fuzzy inference system. The technique provide a method for the fuzzy modeling procedure to learn information about a data set, in order to compute the membership function parameters that best allow the associated fuzzy inference system to track the given input/output data [12][13]. This learning method works in a manner similar to that of neural networks.…”
Section: Adaptive Neuro Fuzzy Inference System (Anfis)mentioning
confidence: 99%
“…Most studies suggest that the ratio of splitting for training and testing should be [70:30, 80:20, or 90:10]. The selection of the ratio could be based on the particular problem under consideration (Zhang et al, 1998;Firat, 2007;Kisi, 2008;Wang et al, 2009). Before the training process begins, data normalisation is often performed.…”
Section: The Study Area and Datamentioning
confidence: 99%
“…The empirical results from three well-known real datasets showed that the proposed input variables can be an effective way to improve the forecasting accuracy achieved by ANN. The use of input variables from the data values of previous time series and the optimum number of input variables determined by trial and error has been reported by Firat (2007Firat ( , 2008, Firat and Gungor (2007), Sivapragasam and Liong (2005), Juhos et al (2008), Partal and Kisi (2007), among others.…”
Section: Input Determinationmentioning
confidence: 99%