Selection of a suitable model for the prediction of soil water content in north of Iran

Multiple Linear Regression (MLR), Artificial Neural Network (ANN) and Rosetta model were employed to develop pedotransfers functions (PTFs) for soil moisture prediction using available soil properties for northern soils of Iran. The Rosetta model is based on ANN works in a hierarchical approach to p...

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Main Authors: Leila Esmaeelnejad, Hassan Ramezanpour, Javad Seyedmohammadi, Mahmood Shabanpour
Format: Article
Language:English
Published: Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria 2015-03-01
Series:Spanish Journal of Agricultural Research
Subjects:
Online Access:http://revistas.inia.es/index.php/sjar/article/view/6111/2242
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spelling doaj-c9af017543d04c53a627eb5b7a991bd92020-11-24T22:59:50ZengInstituto Nacional de Investigación y Tecnología Agraria y AlimentariaSpanish Journal of Agricultural Research1695-971X2171-92922015-03-01131e120210.5424/sjar/2015131-6111 Selection of a suitable model for the prediction of soil water content in north of Iran Leila Esmaeelnejad0Hassan Ramezanpour1Javad Seyedmohammadi2Mahmood Shabanpour3University of Tehran, College of Agriculture and Natural Resources, Faculty of Agricultural Engineering and Technology, Soil Science Department. Karaj, Iran University of Guilan, Agriculture Faculty, Soil Science Department. Rasht, IranUniversity of Guilan, Agriculture Faculty, Soil Science Department. Rasht, IranUniversity of Guilan, Agriculture Faculty, Soil Science Department. Rasht, IranMultiple Linear Regression (MLR), Artificial Neural Network (ANN) and Rosetta model were employed to develop pedotransfers functions (PTFs) for soil moisture prediction using available soil properties for northern soils of Iran. The Rosetta model is based on ANN works in a hierarchical approach to predict water retention curves. For this purpose, 240 soil samples were selected from the south of Guilan province, Gilevan region, northern Iran. The data set was divided into two subsets for calibration and testing of the models. The general performance of PTFs was evaluated using coefficient of determination (R2), root mean square error (RMSE) and mean biased error between the observed and predicted values. Results showed that ANN with two hidden layers, Tan-sigmoid and linear functions for hidden and output layers respectively, performed better than the others in predicting soil moisture. In the other hand, ANN can model non-linear functions and showed to perform better than MLR. After ANN, MLR had better accuracy than Rosetta. The developed PTFs resulted in more accurate estimation at matric potentials of 100, 300, 500, 1000, 1500 kPa. Whereas, Rosetta model resulted in slightly better estimation than derived PTFs at matric potentials of 33 kPa. This research can provide the scientific basis for the study of soil hydraulic properties and be helpful for the estimation of soil water retention in other places with similar conditions, too. http://revistas.inia.es/index.php/sjar/article/view/6111/2242multiple linear regressionneural networkspedotransfer functionRosettasoil moisture curve
collection DOAJ
language English
format Article
sources DOAJ
author Leila Esmaeelnejad
Hassan Ramezanpour
Javad Seyedmohammadi
Mahmood Shabanpour
spellingShingle Leila Esmaeelnejad
Hassan Ramezanpour
Javad Seyedmohammadi
Mahmood Shabanpour
Selection of a suitable model for the prediction of soil water content in north of Iran
Spanish Journal of Agricultural Research
multiple linear regression
neural networks
pedotransfer function
Rosetta
soil moisture curve
author_facet Leila Esmaeelnejad
Hassan Ramezanpour
Javad Seyedmohammadi
Mahmood Shabanpour
author_sort Leila Esmaeelnejad
title Selection of a suitable model for the prediction of soil water content in north of Iran
title_short Selection of a suitable model for the prediction of soil water content in north of Iran
title_full Selection of a suitable model for the prediction of soil water content in north of Iran
title_fullStr Selection of a suitable model for the prediction of soil water content in north of Iran
title_full_unstemmed Selection of a suitable model for the prediction of soil water content in north of Iran
title_sort selection of a suitable model for the prediction of soil water content in north of iran
publisher Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria
series Spanish Journal of Agricultural Research
issn 1695-971X
2171-9292
publishDate 2015-03-01
description Multiple Linear Regression (MLR), Artificial Neural Network (ANN) and Rosetta model were employed to develop pedotransfers functions (PTFs) for soil moisture prediction using available soil properties for northern soils of Iran. The Rosetta model is based on ANN works in a hierarchical approach to predict water retention curves. For this purpose, 240 soil samples were selected from the south of Guilan province, Gilevan region, northern Iran. The data set was divided into two subsets for calibration and testing of the models. The general performance of PTFs was evaluated using coefficient of determination (R2), root mean square error (RMSE) and mean biased error between the observed and predicted values. Results showed that ANN with two hidden layers, Tan-sigmoid and linear functions for hidden and output layers respectively, performed better than the others in predicting soil moisture. In the other hand, ANN can model non-linear functions and showed to perform better than MLR. After ANN, MLR had better accuracy than Rosetta. The developed PTFs resulted in more accurate estimation at matric potentials of 100, 300, 500, 1000, 1500 kPa. Whereas, Rosetta model resulted in slightly better estimation than derived PTFs at matric potentials of 33 kPa. This research can provide the scientific basis for the study of soil hydraulic properties and be helpful for the estimation of soil water retention in other places with similar conditions, too.
topic multiple linear regression
neural networks
pedotransfer function
Rosetta
soil moisture curve
url http://revistas.inia.es/index.php/sjar/article/view/6111/2242
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