- Ahmadi, F., F. Radmanesh and R. Mirabbasi. 2015. Comparison between genetic programming and support vector machine methods for daily river flow forecasting, case study: Barandoozchay River. Journal of Water and Soil, 28(6): 1162-1171 (in Persian).
- Alami, M.T., S. Sadeghfam, M.H. Fazelifard and L. Naghipour. 2014. Modeling the data series. University of Tabriz, 304 pages (in Persian).
- Danandeh Mehr, A. and M.R. Majdzadeh Tabatabai. 2010. Prediction of daily discharge trend of river flow based on genetic programming. Journal of Water and Soil, 24(2): 325-33 (in Persian).
- Dehghani, R., M.A. Ghorbani, M. Teshnelab and A. Rikhtehgar Gheasi. 2015. Comparison and evalution of bayesian neural network, gene expression programming, support vector machine and linear regression in river discharge estimation, case study: Sufi Chay Basin. The Iranian Society of Irrigation and Water Engineering, 5(20): 66-85 (in Persian).
- Feldkamp, L.A. and G.V. Puskorius. 1994. Training controllers for robustness: multi-stream DEW. In Proceedings of the IEEE International Conference on Neural Networks, Orlando, 6: 2377-2382.
- Ferreira, C. 2001. Gene expression programming: a new adaptive algorithm for solving problems. Complex System, 13:87-129.
- Ferreira, C. 2006. Gene expression programming: mathematical modeling by an artificial intelligence (studies in computational intelligence). Springer-Verlag New York, Inc., Secaucus, NJ, USA.
- Ghorbani, M.A. and R. Dehghani. 2016. Application of bayesian neural networks, support vector machines and gene expression programming analysis of rainfall–runoff monthly, case study: Kakarza River. Irrigation Science and Engineering, 39(2): 125-138 (in Persian).
- Golabi, M.R., A.M. Akhondali and F. Radmanesh. 2013. Comparison of the performance of different artificial neural network algorithms in seasonal rainfall modeling, case study: selected stations in Khuzestan Province. Journal of Applied Geosciences Research, 13(30): 151-169 (in Persian).
- Heimes, F. 1998. Extended Kalman Filter neural network training: experimental results and algorithm improvements. Systems, Man and Cybernetics, IEEE International Conference on San Diego, CA, USA.
- Karimi, S., J. Shiri, O. Kisi and A.A. Shiri. 2015. Short-term and long-term streamflow prediction by using 'wavelet–gene expression' programming approach. ISH Journal of Hydraulic Engineering, 3: 1-15 (in Persian).
- Motamednia, M., A. Nohegar, A. Malekian, M. Saberi and K. Karimi. 2017. Runoff prediction using intelligent models. Journal of Ecohydrology, 4(4): 955-968 (in Persian).
- Naeimi Kalourazi, Z., Kh. Ghorbani, M. Salarijazi and A.A. Dehghani. 2017. Investigation of effect of basin’s physiographic and climatic parameters in seasonal river flow simulation. Ecohydrology, 3(4): 545-555 (in Persian).
- Nash, J.E. and J.V. Sutcliffe. 1970. River flow forecasting through conceptual models part I, a discussion of principles. Journal of Hydrology, 10(3): 282–290.
- Noori, R., M.A. Abdoli, A. Ameri and M. Jalili-Ghazizade. 2008. Prediction of municipal solid waste generation with combination of support vector machine and principal component analysis, a case study of Mashhad. Environmental Progress and Sustainable Energy, 28(2): 249-258.
- Noori, N., L. Kalin. 2016. Coupling SWAT and ANN models for enhanced daily streamflow prediction. Journal of Hydrology, 533: 141–151.
- Noori, R., A. Karbassi, A. Farokhnia and M. Dehghani. 2009. Predicting the longitudinal dispersion coefficient using support vector machine and adaptive neuro-fuzzy inference system techniques. Environmental Engineering Science, 26(10): 1503-1510.
- Puskorius, G.V. and L.A. Feldkamp. 1991. Decoupled Extended Kalman Filter training of feed forward layered networks. In Proceedings of the International Joint Conference on Neural Networks, Seattle.
- Puskorius, G.V and L.A. Feldkamp. 1997. Multi-stream Extended Kalman Filter training for static and dynamic neural networks. In Proceedings of the IEEE International Conference on Systems, Man and Cybernetic, Orland.
- Singh, G., R.K. Panda and M. Lamers. 2015. Modeling of daily runoff from a small agricultural watershed using artificial neural network with resampling techniques. Journal of Hydroinformatics, 17(1): 56-74.
- Singhal, S. and L. Wu. 1989. Training multilayer perceptions the Extended Kalman Algorithm. Advances in Neural Information Processing Systems, San Meteo, CA: Morgan Kaufmann, 133-140.
- Solgi, A., H. Zarei and M.R. Golabi. 2017. Performance assessment of gene expression programming model using data preprocessing methods to modeling river flow. Journal of Water and Soil Conservation, 24(2): 185-201 (in Persian).
- Solgi, A., H. Zarei, M. Shehnidarabi and S. Alidadi. 2018. Monthly precipitation forecast using gene expression planning models and support vector machine. Journal of Applied Geosciences Research, 50: 91-103 (in Persian).
|