Spatial Interpolation of Soil Texture Using Compositional Kriging and Regression Kriging with Consideration of the Characteristics of Compositional Data and Environment Variables

The spatial interpolation for soil texture does not necessarily satisfy the constant sum and nonnegativity constraints. Meanwhile, although numeric and categorical variables have been used as auxiliary variables to improve prediction accuracy of soil attributes such as soil organic matter, they (esp...

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Main Authors: Shi-wen ZHANG, Chong-yang SHEN, Xiao-yang CHEN, Hui-chun YE, Yuan-fang HUANG, Shuang LAI
Format: Article
Language:English
Published: Elsevier 2013-09-01
Series:Journal of Integrative Agriculture
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2095311913603950
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spelling doaj-c47e6282e08241fa8f3b9c4fc0ce8d242021-06-07T06:48:48ZengElsevierJournal of Integrative Agriculture2095-31192013-09-0112916731683Spatial Interpolation of Soil Texture Using Compositional Kriging and Regression Kriging with Consideration of the Characteristics of Compositional Data and Environment VariablesShi-wen ZHANG0Chong-yang SHEN1Xiao-yang CHEN2Hui-chun YE3Yuan-fang HUANG4Shuang LAI5China Agricultural University/Key Laboratory of Arable Land Conservation (North China), Minstry of Agriculture/Key Laboratory of Agricultural Land Quality Monitoring, Ministry of Land and Resources, Beijing 100193, P.R. China; School of Earth and Environment, Anhui University of Science and Technology, Huainan 232001, P.R. China; ZHANG Shi-wen, Tel: +86-554-6668430, Correspondence HUANG Yuan-fang, Tel: +86-10-62732963, Fax: +86-10-62733596China Agricultural University/Key Laboratory of Arable Land Conservation (North China), Minstry of Agriculture/Key Laboratory of Agricultural Land Quality Monitoring, Ministry of Land and Resources, Beijing 100193, P.R. ChinaSchool of Earth and Environment, Anhui University of Science and Technology, Huainan 232001, P.R. ChinaChina Agricultural University/Key Laboratory of Arable Land Conservation (North China), Minstry of Agriculture/Key Laboratory of Agricultural Land Quality Monitoring, Ministry of Land and Resources, Beijing 100193, P.R. ChinaChina Agricultural University/Key Laboratory of Arable Land Conservation (North China), Minstry of Agriculture/Key Laboratory of Agricultural Land Quality Monitoring, Ministry of Land and Resources, Beijing 100193, P.R. China; ZHANG Shi-wen, Tel: +86-554-6668430, Correspondence HUANG Yuan-fang, Tel: +86-10-62732963, Fax: +86-10-62733596Afforestation Management Office, Sichuan Forestry Department, Chengdu 610081, P.R. ChinaThe spatial interpolation for soil texture does not necessarily satisfy the constant sum and nonnegativity constraints. Meanwhile, although numeric and categorical variables have been used as auxiliary variables to improve prediction accuracy of soil attributes such as soil organic matter, they (especially the categorical variables) are rarely used in spatial prediction of soil texture. The objective of our study was to comparing the performance of the methods for spatial prediction of soil texture with consideration of the characteristics of compositional data and auxiliary variables. These methods include the ordinary kriging with the symmetry logratio transform, regression kriging with the symmetry logratio transform, and compositional kriging (CK) approaches. The root mean squared error (RMSE), the relative improvement value of RMSE and Aitchison's distance (DA) were all utilized to assess the accuracy of prediction and the mean squared deviation ratio was used to evaluate the goodness of fit of the theoretical estimate of error. The results showed that the prediction methods utilized in this paper could enable interpolation results of soil texture to satisfy the constant sum and nonnegativity constraints. Prediction accuracy and model fitting effect of the CK approach were better, suggesting that the CK method was more appropriate for predicting soil texture. The CK method is directly interpolated on soil texture, which ensures that it is optimal unbiased estimator. If the environment variables are appropriately selected as auxiliary variables, spatial variability of soil texture can be predicted reasonably and accordingly the predicted results will be satisfied.http://www.sciencedirect.com/science/article/pii/S2095311913603950compositional krigingauxiliary variablesregression krigingsymmetry logratio transform
collection DOAJ
language English
format Article
sources DOAJ
author Shi-wen ZHANG
Chong-yang SHEN
Xiao-yang CHEN
Hui-chun YE
Yuan-fang HUANG
Shuang LAI
spellingShingle Shi-wen ZHANG
Chong-yang SHEN
Xiao-yang CHEN
Hui-chun YE
Yuan-fang HUANG
Shuang LAI
Spatial Interpolation of Soil Texture Using Compositional Kriging and Regression Kriging with Consideration of the Characteristics of Compositional Data and Environment Variables
Journal of Integrative Agriculture
compositional kriging
auxiliary variables
regression kriging
symmetry logratio transform
author_facet Shi-wen ZHANG
Chong-yang SHEN
Xiao-yang CHEN
Hui-chun YE
Yuan-fang HUANG
Shuang LAI
author_sort Shi-wen ZHANG
title Spatial Interpolation of Soil Texture Using Compositional Kriging and Regression Kriging with Consideration of the Characteristics of Compositional Data and Environment Variables
title_short Spatial Interpolation of Soil Texture Using Compositional Kriging and Regression Kriging with Consideration of the Characteristics of Compositional Data and Environment Variables
title_full Spatial Interpolation of Soil Texture Using Compositional Kriging and Regression Kriging with Consideration of the Characteristics of Compositional Data and Environment Variables
title_fullStr Spatial Interpolation of Soil Texture Using Compositional Kriging and Regression Kriging with Consideration of the Characteristics of Compositional Data and Environment Variables
title_full_unstemmed Spatial Interpolation of Soil Texture Using Compositional Kriging and Regression Kriging with Consideration of the Characteristics of Compositional Data and Environment Variables
title_sort spatial interpolation of soil texture using compositional kriging and regression kriging with consideration of the characteristics of compositional data and environment variables
publisher Elsevier
series Journal of Integrative Agriculture
issn 2095-3119
publishDate 2013-09-01
description The spatial interpolation for soil texture does not necessarily satisfy the constant sum and nonnegativity constraints. Meanwhile, although numeric and categorical variables have been used as auxiliary variables to improve prediction accuracy of soil attributes such as soil organic matter, they (especially the categorical variables) are rarely used in spatial prediction of soil texture. The objective of our study was to comparing the performance of the methods for spatial prediction of soil texture with consideration of the characteristics of compositional data and auxiliary variables. These methods include the ordinary kriging with the symmetry logratio transform, regression kriging with the symmetry logratio transform, and compositional kriging (CK) approaches. The root mean squared error (RMSE), the relative improvement value of RMSE and Aitchison's distance (DA) were all utilized to assess the accuracy of prediction and the mean squared deviation ratio was used to evaluate the goodness of fit of the theoretical estimate of error. The results showed that the prediction methods utilized in this paper could enable interpolation results of soil texture to satisfy the constant sum and nonnegativity constraints. Prediction accuracy and model fitting effect of the CK approach were better, suggesting that the CK method was more appropriate for predicting soil texture. The CK method is directly interpolated on soil texture, which ensures that it is optimal unbiased estimator. If the environment variables are appropriately selected as auxiliary variables, spatial variability of soil texture can be predicted reasonably and accordingly the predicted results will be satisfied.
topic compositional kriging
auxiliary variables
regression kriging
symmetry logratio transform
url http://www.sciencedirect.com/science/article/pii/S2095311913603950
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AT huichunye spatialinterpolationofsoiltextureusingcompositionalkrigingandregressionkrigingwithconsiderationofthecharacteristicsofcompositionaldataandenvironmentvariables
AT yuanfanghuang spatialinterpolationofsoiltextureusingcompositionalkrigingandregressionkrigingwithconsiderationofthecharacteristicsofcompositionaldataandenvironmentvariables
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