Feedforward backpropagation, genetic algorithm approaches for predicting reference evapotranspiration

Water scarcity is a global concern, as the demand for water is increasing tremendously and poor management of water resources will accelerates dramatically the depletion of available water. The precise prediction of evapotranspiration (ET), that consumes almost 100% of the supplied irrigation water, is one of the goals that should be adopted in order to avoid more squandering of water especially in arid and semiarid regions. The capabilities of feedforward backpropagation neural networks (FFBP) in predicting reference evapotranspiration (ET0) are evaluated in this paper in comparison with the empirical FAO Penman-Monteith (P-M) equation, later a model of FFBP+Genetic Algorithm (GA) is implemented for the same evaluation purpose. The study location is the main station in Iraq, namely Baghdad Station. Records of weather variables from the related meteorological station, including monthly mean records of maximum air temperature (Tmax), minimum air temperature (Tmin), sunshine hours (Rn), relative humidity (Rh) and wind speed (U2), from the related meteorological station are used in the prediction of ET0 values. The performance of both simulation models were evaluated using statistical coefficients such as the root of mean squared error (RMSE), mean absolute error (MAE) and coefficient of determination (R2). The results of both models are promising, however the hybrid model shows higher efficiency in predicting ET0 and could be recommended for modeling of ET0 in arid and semiarid regions.

[1]  I A Basheer,et al.  Artificial neural networks: fundamentals, computing, design, and application. , 2000, Journal of microbiological methods.

[2]  O. Kisi,et al.  Daily reference evapotranspiration modeling by using genetic programming approach in the Basque Country (Northern Spain) , 2012 .

[3]  Yi Zhao,et al.  A protein secondary structure prediction framework based on the Extreme Learning Machine , 2008, Neurocomputing.

[4]  Gorka Landeras,et al.  Comparison of artificial neural network models and empirical and semi-empirical equations for daily reference evapotranspiration estimation in the Basque Country (Northern Spain) , 2008 .

[5]  Jacek M. Zurada,et al.  Introduction to artificial neural systems , 1992 .

[6]  Hossein Tabari,et al.  Multilayer perceptron for reference evapotranspiration estimation in a semiarid region , 2012, Neural Computing and Applications.

[7]  Guang-Bin Huang,et al.  Extreme learning machine: a new learning scheme of feedforward neural networks , 2004, 2004 IEEE International Joint Conference on Neural Networks (IEEE Cat. No.04CH37541).

[8]  Moncef Gabbouj,et al.  Evolutionary artificial neural networks by multi-dimensional particle swarm optimization , 2009, Neural Networks.

[9]  M Pinet Ministry of Transportation Ontario - Advancement in Winter Road Safety , 2008 .

[10]  Antonia Azzini,et al.  A New Genetic Approach for Neural Network Design , 2008, Engineering Evolutionary Intelligent Systems.

[11]  Ozgur Kisi,et al.  Adaptive Neurofuzzy Computing Technique for Evapotranspiration Estimation , 2007 .

[12]  Orazio Giustolisi,et al.  Comparison of three data-driven techniques in modelling the evapotranspiration process. , 2010 .

[13]  N. Draper,et al.  Applied Regression Analysis. , 1967 .

[14]  N. S. Raghuwanshi,et al.  Artificial neural networks approach in evapotranspiration modeling: a review , 2010, Irrigation Science.

[15]  Hiromitsu Saegusa,et al.  Runoff analysis in humid forest catchment with artificial neural network , 2000 .

[16]  Richard G. Allen,et al.  Estimating Reference Evapotranspiration Under Inaccurate Data Conditions , 2002 .

[17]  Narendra Singh Raghuwanshi,et al.  Estimating Evapotranspiration using Artificial Neural Network , 2002 .

[18]  O. Kisi The potential of different ANN techniques in evapotranspiration modelling , 2008 .

[19]  Brad Warner,et al.  Understanding Neural Networks as Statistical Tools , 1996 .

[20]  L. S. Pereira,et al.  Crop evapotranspiration : guidelines for computing crop water requirements , 1998 .

[21]  Charles M. Bachmann,et al.  Neural Networks and Their Applications , 1994 .

[22]  Marzieh Mokarram,et al.  Model for Prediction of Evapotranspiration Using MLP Neural Network , 2012 .

[23]  James L. McClelland Parallel Distributed Processing , 2005 .

[24]  Ö. Kisi Generalized regression neural networks for evapotranspiration modelling , 2006 .