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Prediction of soil nutrients spatial distribution based on neural network model combined with goestatistics.

LI Qi-quan1, WANG Chang-quan1, ZHANG Wen-jiang2, YU Yong3, LI Bing1, YANG Juan1, BAI Gen-chuan1, CAI Yan1   

  1. (1College of Resources and Environment, Sichuan Agricultural University, Chengdu 611130, China; 2State Key Laboratory of Hydraulics and Mountain River Engineering, Sichuan University, Chengdu 610065, China; 3College of Forestry, Sichuan Agricultural University, Ya’an 625014, Sichuan, China)
  • Online:2013-02-18 Published:2013-02-18

Abstract:

In this study, a radial basis function neural network model combined with ordinary kriging (RBFNN_OK) was adopted to predict the spatial distribution of soil nutrients (organic matter and total N) in a typical hilly region of Sichuan Basin, Southwest China, and the performance of this method was compared with that of ordinary kriging (OK) and regression kriging (RK). All the three methods produced the similar soil nutrient maps. However, as compared with those obtained by multiple linear regression model, the correlation coefficients between the measured values and the predicted values of soil organic matter and total N obtained by neural network model increased by 12.3% and 16.5%, respectively, suggesting that neural network model could more accurately capture the complicated relationships between soil nutrients and quantitative environmental factors. The error analyses of the prediction values of 469 validation points indicated that the mean absolute error (MAE), mean relative error (MRE), and root mean squared error (RMSE) of RBFNN_OK were 6.9%, 7.4%, and 5.1% (for soil organic matter), and 4.9%, 6.1%, and 4.6% (for soil total N) smaller than those of OK (P<0.01), and 2.4%, 2.6%, and 1.8% (for soil organic matter), and 2.1%, 2.8%, and 2.2% (for soil total N) smaller than those of RK, respectively (P<0.05).