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Neural network models to predict cation exchange capacity in arid regions of Iran
Authors:M Amini  K C Abbaspour  H Khademi  N Fathianpour  M Afyuni  & R Schulin
Institution:Department of Soil Science, College of Agriculture, Isfahan University of Technology, Isfahan, Iran,;Swiss Federal Institute for Environmental Science and Technology, EAWAG, 8600 Dübendorf, Switzerland,;Faculty of Mining Engineering, Isfahan University of Technology, Isfahan, Iran, and;Institute of Terrestrial Ecology, ETH Zürich, Grabenstrasse 11a, 8952 Schlieren, Switzerland
Abstract:Design and analysis of land‐use management scenarios requires detailed soil data. When such data are needed on a large scale, pedotransfer functions (PTFs) could be used to estimate different soil properties. Because existing regression‐based PTFs for estimating cation exchange capacity (CEC) do not, in general, apply well to arid areas, this study was conducted (i) to evaluate the existing models and (ii) to develop neural network‐based PTFs for predicting CEC in Aridisols of Isfahan in central Iran. As most researches have found a significant correlation between CEC and soil organic matter content (OM) and clay content, we also used these two variables for modelling of CEC. We tested several published PTFs and developed two neural network algorithms using multilayer perceptron and general regression neural networks based on a set of 170 soil samples. The data set was divided into two subsets for calibration and testing of the models. In general, the neural network‐based models provided more reliable predictions than the regression‐based PTFs.
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