Articles | Volume 16, issue 1
https://doi.org/10.5194/hess-16-255-2012
https://doi.org/10.5194/hess-16-255-2012
Research article
 | 
25 Jan 2012
Research article |  | 25 Jan 2012

A spatial neural fuzzy network for estimating pan evaporation at ungauged sites

C.-H. Chung, Y.-M. Chiang, and F.-J. Chang

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Subject: Hydrometeorology | Techniques and Approaches: Modelling approaches
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Cited articles

Allen, R. G., Pereira, S. L., Raes, D., and Smith, M.: Crop evapotranspiration, Guidelines for computing crop water requirements, Irrigation and Drainage Paper No. 56, FAO, Rome, 1998.
Antar, M. A., Elassiouti, I., and Allam, M. N.: Rainfall-runoff modelling using artificial neural networks technique: a Blue Nile catchment case study, Hydrol. Process., 20, 1201–1216, 2006.
Chang, F. J. and Chang, Y. T.: Adaptive neuro-fuzzy inference system for prediction of water level in reservoir, Adv. Water Res., 29, 1–10, 2006.
Chang, F. J., Chang, L. C., Kao, H.-S., and Wu, G.-R.: Assessing the effort of meteorological variables for evaporation estimation by self-organizing map neural network, J. Hydrol., 384, 118–129, 2010.
Chang, L. C. and Chang, F. J.: Intelligent control for modelling of real-time reservoir operation, Hydrol. Process., 15, 1621–1634, 2001.
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