TY - JOUR T1 - Evaluation of Artificial Neural Network Models for Prediction of Spatial Variability of Some Soil Chemical Properties AU - Saffari, Mahboub AU - Yasrebi, Jafar AU - Sarikhani, Farkhonde AU - Gazni, Reza AU - Moazallahi, Masome AU - Fathi, Hamed AU - Emadi, Mostafa JO - Research Journal of Biological Sciences VL - 4 IS - 7 SP - 815 EP - 820 PY - 2009 DA - 2001/08/19 SN - 1815-8846 DO - rjbsci.2009.815.820 UR - https://makhillpublications.co/view-article.php?doi=rjbsci.2009.815.820 KW - Artificial Neural Network (ANN) KW -soil chemical properties KW -multiple hidden layers KW -evaluation KW -Iran AB - Analysis and interpretation of spatial variability of soils properties is a keystone in site-specific management. The objectives of this study were to evaluate two different Artificial Neural Network (ANN) structures as single hidden-layer and multiple hidden-layer for estimation of spatial variability of some soil chemical properties. Soil samples were collected at approximately 60x60 m grids at 0-30 cm depth and coordinates of each of the 100 points were recorded with GPS. ANN models, applicable to each of these soils and consisting of two input parameters (X and Y coordinate system) were developed. The whole data is composed of 100 data points, which separated into two parts randomly: A training set consisting of 80% data points and a validation or testing set consisting of 20% data points. Generally, approximately the study highlights the superiority of the multiple hidden layers ANN model over single hidden layer ANN models (except Ca), for determining soil properties compacted to a given state. ER -