Prediction of factors affecting water resources systems is important for their design and operation. In hydrology, wavelet analysis (WA) is known as a new method for time series analysis. In this study, WA was combined with an artificial neural network (ANN) for prediction of precipitation at Varayeneh station, western Iran. The results obtained were compared with the adaptive neural fuzzy inference system (ANFIS) and ANN. Moreover, data on relative humidity and temperature were employed in addition to rainfall data to examine their influence on precipitation forecasting. Overall, this study concluded that the hybrid WANN model outperformed the other models in the estimation of maxima and minima, and is the best at forecasting precipitation. Furthermore, training and transfer functions are recommended for similar studies of precipitation forecasting.
CITATION STYLE
Solgi, A., Nourani, V., & Bagherian Marzouni, M. (2017). Evaluation of nonlinear models for precipitation forecasting. Hydrological Sciences Journal, 62(16), 2695–2704. https://doi.org/10.1080/02626667.2017.1392529
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