• Title of article

    An evaluation of genetic algorithm method compared to geostatistical and neural network methods to estimate saturated soil hydraulic conductivity using soil texture

  • Author/Authors

    Hosseini ، Y. - University of Mohaghegh Ardabili , Hosseini ، Y. - University of Mohaghegh Ardabili , Sedghi ، R. - Islamic Azad University, Ardabil Branch , Sedghi ، R. - Islamic Azad University, Ardabil Branch , Bairami ، S. - Islamic Azad University, Ardabil Branch , Bairami ، S. - Islamic Azad University, Ardabil Branch

  • Pages
    14
  • From page
    91
  • To page
    104
  • Abstract
    ABSTRACTDetermining hydraulic conductivity of soil is difficult, expensive, and timeconsuming. In this study, Algorithm Genetic and geostatistical analysis and Neural Networks method are used to estimate soil saturated hydraulic conductivity using the properties of particle size distribution. The data were gathered from 134soil profiles from soil and lander form studies of the Ardabil Agricultural Organization. Results showed that Or denary cokriging has the best fit for the geostatistical methods. The bestfitted vario gram was the exponential model with anugget effect of 0 cm day1 and sill of 156 cm day1 which is the strength of the spatial structure and full effect of the structural components on the vario gram model for the region; also, in the or denary cokriging method, an accurate estimate was obtained using R2 = 0.93 and RMSE = 3.21.Multilayer perceptron (MLP) network used the Levenberg Marquardt (trainlm) algorithm with are gression coefficient (R2) of 0.997 and Root Mean Square Error (RMSE) of 1.22 to estimate the hydraulic conductivity of saturated soil. For GA model, parameters of root mean square error (RMSE) cm day1 and the coefficient of determination (R2) were determined as 1.35 and 0.926, respectively. Performance evaluation of the models showed that the Neural Networks model compared with geostatistical analysis and genetic algorithm was able to predict soil hydraulic conductivity with high and more accuracy and results of this method was closer to the measurement results.
  • Keywords
    Keywords: , Geostatistics , Saturated hydraulic conductivity Neural Network Methods (ANN) Cokriging , Genetic Algorithm
  • Journal title
    Iran Agricultural Research
  • Serial Year
    2017
  • Journal title
    Iran Agricultural Research
  • Record number

    2455348