Prediction of Stream Flow Using Intelligent Hybrid Models in Monthly Scale (Case study: Zarrin roud River)
Subject Areas : Water Resource ManagementBabak Mohammadi 1 , Roozbeh Moazenzadeh 2
1 - Master of water resources engineering, Department of Water engineering, Faculty of Agricultural, University of Tabriz, Tabriz, Iran *(Corresponding author).
2 - Assistant Professor, Department of Soil and Water, Faculty of Agriculture, Shahrood University of Technology, Shahrood, Iran.
Keywords: particle swarm, Entropy, discharge, Simulated annealing, Hybrid Algorithms,
Abstract :
Background and Objective: Selecting appropriate inputs for intelligent models are important because it reduces the cost and saves time and increases accuracy and efficiency of its models. The aim of the present study is the use of Shannon entropy to select the optimum combination of input variables in the simulation of monthly flow by meteorological parameters. Method: In this study, meteorological data and monthly time series of discharge of Zarrinrood River (Safavankeh Station) in East Azarbaijan from 1336 to 2015 were used. The meteorological parameters and the month of the year were considered as inputs in the entropy method to determine the effective composition. Results: Shannon entropy results showed that the rainfall parameters, month of year and temperature provide better results for modeling. The simulations were performed using intelligent hybrid models of particle swarm hybrid algorithm and hybrid simulation hybrid algorithm. Discussion and Conclusion: The results showed that among these models with the same input structure, the hybrid algorithm simulation based on the support vector machine had better performance for simulating the flow rate compared to other intelligent hybrid models. The results also show that the entropy method is good for selecting the best input combination in smart models.
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- Farajzadeh, J., FakheriFard, A. and Lotfi, S. 2014. Modeling of monthly rainfall and runoff of Urmia lake basin using feed-forward neural network and time series analysis model. Water Resources and Industry.7 (8).38-48.
- Hassan, R. Cohanim, B. Weck, O. 2004. A copmarison of particle swarm optimization and the genetic algorithm. American Institute of Aeronautics and Astronautics. 4(1).12-33.
- Chau, K. 2006. Particle swarm optimization training algorithm for ANNs in stage prediction of Shing Mun River. Journal of hydrology 329(3): 363-367
- Chau, K. 2007. A split-step particle swarm optimization algorithm in river stage forecasting. Journal of hydrology, 346(3): 131-135.
- Harmancioglu, N. B. and N. Alpaslan. 1992. Water quality monitoring network design: A problem of multi-objective decision making. Water Resour. Bull. 28(1): 179-192.
- Guey-Shin S, Bai-You C, Chi TC, Pei HY.Tsun KC. 2011. Applying Factor Analysis Combined with Kriging and Information Entropy Theory for Mapping and Evaluating the Stability of Groundwater Quality Variation in Taiwan. International Journal Environmental Resources Public Health, 8: 1084-1109
- Singh, V. P. and K. Singh. 1985. Derivation of the Pearson type (PT)-III distribution by using the principle of maximum entropy (POME). J. Hydrol. 80: 197–214.
- Misra, D. T., Oommen. A., Agarwal. A., Mishra. S.K. 2009. Application and analysis of Support Vector machine based simulation for runoff and sediment yiel. Biosystems Engineering, 103, 527-535.
- Carmona, G., Molina. J.L., Bromley. J., Varela-Ortega. C., Garcia-Arostegu. J.L., 2011. Object Orientedbayesian network for participatory water management: Two case Studise in Spain. Jornal of Water resources planning and managemen, 137, 366-376.
- Karamouz, M., A. K. Nokhandan, R. Kerachian and C. Maksimovic. 2009. Design of on-line river water quality monitoring systems using the entropy theory: a casestudy. Environ. Monit.Assess. 155(1-4): 63-81.
- Karimi Hoeesini,A.,2009.Compare the methods of locating the rain-gauge stations in the GIS environment.
- Chen, sh., 2015. Mining Informative Hydrologic Data by Using Support Vector Machines and Elucidating Mined Data according to Infoarmation Entropy, 17, 1023 – 1041.
- Amorocho, J. and B. Espildora. 1973. Entropy in the assessment of uncertainty in hydrologic systems and models. Water Resour. Res. 9(6): 1551-1522.
- 14- Chiang ,W , Hui-Chung, Y. 2014. Spatiotemporal Scaling Effect on Rainfall Network Design Using Entropy. Entropy, 16 , 4626-4647.
- Remesan, R. Shamim, M.A. and Han, D. 2008. Model data selection using gamma test for daily solar radiation estimation. Hydrological Processes, 22: 4301-4309.
- Harmancioglu, N. B. 1984. Entropy concept as used in determination of optimum sampling intervals. Proc. of Hydrosoft 84, International Conf. on Hydraulic Engineering Software, September 10-14, 1984. Portoroz, Yugoslavia, pp. 6-99 and 6-110.
- Kennedy, J. Russell, E 2011. Particle swarm optimization. Encyclopedia of machine learning, Springer: 760-766
- Dawson, C.W., Abrahart, R.J., Shamseldin, A.Y. and R.L. Wibly. 2006, Flood estimation at ungauged sites using artificial neural networks. Journal of Hydrology. 319 (1-4): 391-409.
- Chen, sh. 2016. Apllication Hydrologic Data Mining Using Articiial Nerual Network, Entropy. 12, 83 –98.
- Masoumi, F., Karachian, R., 1387. Evaluating the efficiency of groundwater quality monitoring systems using discrete entropy theory. Case Study: Tehran Aquifer, Water and Wastewater Journal, Volume 19, Issue 1, 12-2 (In Persian).
- Gonzalez R. C. and Perez V. S., (2001). Two procedures for stochastic simulation of vuggy formations, SPE 69663, Latin American and Caribbean Petroleum Engineering Conference, Buenos Aires, Argentina, pp. 25–28 March.
- Tran N. H. and Tran K., 2007. Combination of fuzzy ranking and simulated annealing to improve discrete fracture inversion Elsevier”, Mathematical and Computer Modeling, Vol. 45, pp. 1010– 1020.
- Fabian V., 1997. Simulated annealing simulated computers & mathematics with applications, Vol. 33, No. 1/2, pp.81-94.
- Pai, PF.; WC. Hong. 2007. A recurrent support vector regression model in rainfall forecasting. Hydrological Process, 21:819-827.
- Dibike, Y., Velickov, S., Solomatine, D., Abbott, M., 2001. Model induction with of support vector machines: Introduction and applications. Journal of Computing in Civil Engineering, Vol. 15, PP. 208- 216.
- Coulibaly, P., Anctil, F., Bobée, B., 2000. Daily reservoir inflow forecasting using artificial neural networks with stopped training approach. Journal of Hydrology, Vol. 230, PP. 244-257.
- ASCE Task Committee on Application of Artificial Neural Networks in Hydrology. 2000. Artificial neural networks in hydrology. I preliminary concepts. Journal of Hydrologic Engineering, Vol.5, PP.115-123.
- Shannon CE, Weaver W. 1949. The Mathematical Theory of Communication. University of Illinois Press: Urbana, IL.