Predictive mapping of soil total nitrogen at a regional scale: A comparison between geographically weighted regression and cokriging

被引:135
|
作者
Wang, Ku [1 ]
Zhang, Chuanrong [2 ]
Li, Weidong [2 ]
机构
[1] Minjiang Univ, Dept Geog Sci, Fuzhou 350108, Fujian, Peoples R China
[2] Univ Connecticut, Dept Geog, Ctr Environm Sci & Engn, Storrs, CT 06269 USA
基金
中国国家自然科学基金;
关键词
Environmental management; Geographically weighted regression; Ordinary cokriging; Predictive mapping; Soil nitrogen; Soil properties; SPATIALLY VARYING RELATIONSHIPS; LAND-USE TYPES; ORGANIC-MATTER; WATER-QUALITY; INTERPOLATION; DESIGN; MODELS; IMPACT; STOCKS;
D O I
10.1016/j.apgeog.2013.04.002
中图分类号
P9 [自然地理学]; K9 [地理];
学科分类号
0705 ; 070501 ;
摘要
Accurately mapping the spatial distribution of soil total nitrogen is important to precision agriculture and environmental management. Geostatistical methods have been frequently used for predictive mapping of soil properties. Recently, a local regression method, geographically weighted regression (GWR), got the attention of environmentalists as an alternative in spatial modeling of environmental attributes, due to its capability of incorporating various auxiliary variables with spatially varied correlation coefficients. The objective of this study is to compare GWR and ordinary cokriging (OCK) in predictive mapping of soil total nitrogen (TN) using multiple environmental variables. 353 soil Samples within the surface horizon of 0-20 cm in a study area were collected, and their TN contents were measured for calibrating and validating the GWR and OCK interpolations. The environmental variables finally chosen as auxiliary data include elevation, land use types, and soil types. Results indicate that, although OCK is slightly better than GWR in global accuracy of soil TN prediction (the adjusted R-2 for GWR and OCK are 0.5746 and 0.6858, respectively), the soil TN map interpolated by GWR shows many details reflecting the spatial variations of major auxiliary variables while OCK smoothes out almost all local details. Geographically weighted regression could account for both the spatial trend and local variations, whilst OCK had difficulties to capture local variations. It is concluded that GWR is a more promising spatial interpolation method compared to OCR in predicting soil TN and potentially other soil properties, if a suitable set of auxiliary variables are available and selected. Published by Elsevier Ltd.
引用
收藏
页码:73 / 85
页数:13
相关论文
共 50 条
  • [1] Prediction of soil properties by using geographically weighted regression at a regional scale
    Tan, Xing
    Guo, Peng-Tao
    Wu, Wei
    Li, Mao-Fen
    Liu, Hong-Bin
    SOIL RESEARCH, 2017, 55 (04) : 318 - 331
  • [2] Soil apparent electrical conductivity and geographically weighted regression for mapping soil
    Terron, J. M.
    Marques da Silva, J. R.
    Moral, F. J.
    Garcia-ferrer, Alfonso
    PRECISION AGRICULTURE, 2011, 12 (05) : 750 - 761
  • [3] Soil apparent electrical conductivity and geographically weighted regression for mapping soil
    J. M. Terrón
    J. R. Marques da Silva
    F. J. Moral
    Alfonso García-Ferrer
    Precision Agriculture, 2011, 12 : 750 - 761
  • [4] Modeling and Predictive Mapping of Soil Organic Carbon Density in a Small-Scale Area Using Geographically Weighted Regression Kriging Approach
    Liu, Tao
    Zhang, Huan
    Shi, Tiezhu
    SUSTAINABILITY, 2020, 12 (22) : 1 - 12
  • [5] Mapping soil organic carbon and total nitrogen in croplands of the Corn Belt of Northeast China based on geographically weighted regression kriging model
    Li, Xiaoyan
    Shang, Beibei
    Wang, Dongyan
    Wang, Zongming
    Wen, Xin
    Kang, Yingdong
    COMPUTERS & GEOSCIENCES, 2020, 135
  • [6] Modeling Fire Occurrence at the City Scale: A Comparison between Geographically Weighted Regression and Global Linear Regression
    Song, Chao
    Kwan, Mei-Po
    Zhu, Jiping
    INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH, 2017, 14 (04)
  • [7] Comparison of Artificial Neural Networks, Geographically Weighted Regression and Cokriging Methods for Predicting the Spatial Distribution of Soil Macronutrients(N, P, and K)
    Samad EMAMGHOLIZADEH
    Shahin SHAHSAVANI
    Mohamad Amin ESLAMI
    Chinese Geographical Science, 2017, 27 (05) : 747 - 759
  • [8] Comparison of Artificial Neural Networks, Geographically Weighted Regression and Cokriging Methods for Predicting the Spatial Distribution of Soil Macronutrients(N, P, and K)
    Samad EMAMGHOLIZADEH
    Shahin SHAHSAVANI
    Mohamad Amin ESLAMI
    Chinese Geographical Science, 2017, (05) : 747 - 759
  • [9] Comparison of artificial neural networks, geographically weighted regression and Cokriging methods for predicting the spatial distribution of soil macronutrients (N, P, and K)
    Emamgholizadeh, Samad
    Shahsavani, Shahin
    Eslami, Mohamad Amin
    CHINESE GEOGRAPHICAL SCIENCE, 2017, 27 (05) : 747 - 759
  • [10] Comparison of artificial neural networks, geographically weighted regression and Cokriging methods for predicting the spatial distribution of soil macronutrients (N, P, and K)
    Samad Emamgholizadeh
    Shahin Shahsavani
    Mohamad Amin Eslami
    Chinese Geographical Science, 2017, 27 : 747 - 759