Title of article
Prediction of soil cation exchange capacity using support vector regression optimized by genetic algorithm and adaptive network-based fuzzy inference system
Author/Authors
Shekofteh ، H. - University of Jiroft , Ramazani ، F. - University of Rafsanjan
Pages
10
From page
187
To page
196
Abstract
Soil cation exchange capacity (CEC) is a parameter that represents soil fertility. Being difficult to measure, pedotransfer functions (PTFs) can be routinely applied for prediction of CEC by soil physicochemical properties that can be easily measured. This study developed the support vector regression (SVR) combined with genetic algorithm (GA) together with the adaptive network-based fuzzy inference system (ANFIS) to predict soil CEC based on 104 soil samples collected from soil surface under four different land uses. The database was randomly split into training and testing datasets in proportion of 70:30. The results showed that both models were accurate in predicting the soil CEC; however, comparison of the performance criteria indicated that SVR results (R^2=0.84, RMSE=3.21 and MAPE=7.62) was more accurate than ANFIS results (R^2=0.81, RMSE=3.38 and MAPE=10.31). The results of sensitivity analysis showed that two parameters had the highest effect on both models were soil organic matter and clay content.
Keywords
Soil cation exchange capacity , Support vector regression , ANFIS , Genetic algorithm , Soil physiochemical properties
Journal title
DESERT
Serial Year
2017
Journal title
DESERT
Record number
2462850
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