首页 | 本学科首页   官方微博 | 高级检索  
     

Neural network ensemble residual kriging application for spatial variability of soil properties
引用本文:SHEN Zhang-Quan,SHI Jie-Bin,WANG Ke,KONG Fan-Sheng,J. S. BAILEY. Neural network ensemble residual kriging application for spatial variability of soil properties[J]. 土壤圈, 2004, 14(3): 289-296
作者姓名:SHEN Zhang-Quan  SHI Jie-Bin  WANG Ke  KONG Fan-Sheng  J. S. BAILEY
作者单位:[1]InstituteofRemoteSensingandInformationSystemApplication,ZhejiangUniversity,Hangzhou310029(China) [2]ZhejiangUniversityLibrary,Hangzhou310029(China) [3]CollegeofComputerScience,ZhejiangUniversity,Hangzhou310027(China) [4]DepartmentofAgricultureandRuralDevelopmentforNorthernIreland,AgriculturalandEnvironmentalScienceDivision,NewforgeLane,BelfastBT95PX(UK)
基金项目:*1Project supported in part by the National Natural Science Foundation of China (No.40201021) and Zhejiang Provincial Natural Science Foundation of China (No.402016).
摘    要:High quality, agricultural nutrient distribution maps are necessary for precision management, but depend on initial soil sample analyses and interpolation techniques. To examine the methodologies for and explore the capability of interpolating soil properties based on neural network ensemble residual kriging, a silage field at Hayes, Northern Ireland, UK, was selected for this study with all samples being split into independent training and validation data sets. The training data set, comprised of five soil properties: soil pH, soil available P, soil available K, soil available Mg and soil available S,was modeled for spatial variability using 1) neural network ensemble residual kriging, 2) neural network ensemble and 3) kriging with their accuracies being estimated by means of the validation data sets. Ordinary kriging of the residuals provided accurate local estimates, while final estimates were produced as a sum of the artificial neural network (ANN) ensemble estimates and the ordinary kriging estimates of the residuals. Compared to kriging and neural network ensemble,the neural network ensemble residual kriging achieved better or similar accuracy for predicting and estimating contour maps. Thus, the results demonstrated that ANN ensemble residual kriging was an efficient alternative to the conventional geo-statistical models that were usually used for interpolation of a data set in the soil science area.

关 键 词:全体神经网络 残留物 土壤性质 空间变量

Neural network ensemble residual kriging application for spatial variability of soil properties
SHEN Zhang-Quan,SHI Jie-Bin,WANG Ke,KONG Fan-Sheng and J. S. BAILEY. Neural network ensemble residual kriging application for spatial variability of soil properties[J]. Pedosphere, 2004, 14(3): 289-296
Authors:SHEN Zhang-Quan  SHI Jie-Bin  WANG Ke  KONG Fan-Sheng  J. S. BAILEY
Affiliation:Institute of Remote Sensing and Information System Application, Zhejiang University, Hangzhou 310029 (China). E-mail: zhqshen@xju.edu.cn;College of Computer Science, Zhejiang University, Hangzhou 310027 (China);Department of Agriculture and Rural Development for Northern Ireland;Institute of Remote Sensing and Information System Application, Zhejiang University, Hangzhou 310029 (China). E-mail: zhqshen@xju.edu.cn;College of Computer Science, Zhejiang University, Hangzhou 310027 (China);Department of Agriculture and Rural Development for Northern Ireland, Agricultural and Environmental Science Division, Newforge Lane, Belfast BT9 5PX (UK)
Abstract:High quality, agricultural nutrient distribution maps are necessary for precision management, but depend on initial soil sample analyses and interpolation techniques. To examine the methodologies for and explore the capability of interpolating soil properties based on neural network ensemble residual kriging, a silage field at Hayes, Northern Ireland, UK, was selected for this study with all samples being split into independent training and validation data sets. The training data set, comprised of five soil properties: soil pH, soil available P, soil available K, soil available Mg and soil available S,was modeled for spatial variability using 1) neural network ensemble residual kriging, 2) neural network ensemble and 3) kriging with their accuracies being estimated by means of the validation data sets. Ordinary kriging of the residuals provided accurate local estimates, while final estimates were produced as a sum of the artificial neural network (ANN) ensemble estimates and the ordinary kriging estimates of the residuals. Compared to kriging and neural network ensemble,the neural network ensemble residual kriging achieved better or similar accuracy for predicting and estimating contour maps. Thus, the results demonstrated that ANN ensemble residual kriging was an efficient alternative to the conventional geo-statistical models that were usually used for interpolation of a data set in the soil science area.
Keywords:kriging   neural networks ensemble   residual   soil properties   spatial variability
本文献已被 维普 等数据库收录!
点击此处可从《土壤圈》浏览原始摘要信息
点击此处可从《土壤圈》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号