Title of article :
Estimation of barley yield under irrigation with wastewater using RBF and GFF models of artificial neural network
Author/Authors :
Choopan ، Yahya - Gorgan University of Agriculture Sciences and Natural Resources , Emami ، Somayeh - University of Tabriz
Pages :
7
From page :
73
To page :
79
Abstract :
In this study, barley yield has been estimated via radial basis function network (RBF) and feedforward neural networks (GFF) models of artificial neural network (ANNs) in TorbatHeydarieh of Iran. For this purpose, a dataset consists of 200 data at three levels of irrigation with well water, industrial wastewater (sugar factory wastewater), a combination of well water and wastewater in two levels (complete irrigation and irrigation with 75 % water stress) and soil characteristics of area were used as input parameters. To achieve this goal, based on the number of data and inputs, 200 barley field experiments data set were used, of which 80 % (160 data) was used for the training and 20 % (40 data) for the testing the network. The results showed that RBF model has high potential in estimating barley yield with Levenberg Marquardt training and 4 hidden layers. Also the values of statistical parameters R2 and RMSE were 0.81 and the 33.12, respectively. In general, the results showed that ANNs model is able to better estimate the barley yield when irrigation water level parameter with well water is selected as input.
Keywords :
Artificial neural network , Barely yield , RBF model , GFF model , Modeling
Journal title :
Journal of Applied Research in Water and Wastewater
Serial Year :
2019
Journal title :
Journal of Applied Research in Water and Wastewater
Record number :
2461280
Link To Document :
بازگشت