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中国东北农田土壤质量评价的最小数据集选择
作者姓名:CHEN Yu-Dong  WANG Huo-Yan  ZHOU Jian-Min  XING Lu  ZHU Bai-Shu  ZHAO Yong-Cun  CHEN Xiao-Qin
作者单位:Institute of Soil Science,Chinese Academy of Science;University of Chinese Academy of Sciences;Southwest University,College of Resources and Environment
基金项目:Supported by the Knowledge Innovation Program of Chinese Academy of Sciences(No.KSCX1-YW-09-02);the National Basic Research Program of China(No.2013CB127401);the National Natural Science Foundation of China(No.41271309);the International Plant Nutrition Institute (IPNI) China Program
摘    要:Soil quality assessment provides a tool for agriculture managers and policy makers to gain a better understanding of how various agricultural systems afect soil resources.Soil quality of Hailun County,a typical soybean (Glycine max L.Merill) growing area located in Northeast China,was evaluated using soil quality index(SQI)methods.Each SQI was computed using a minimum data set(MDS) selected using principal components analysis(PCA)as a data reduction technique.Eight MDS indicators were selected from 20 physical and chemical soil measurements.The MDS accounted for 74.9% of the total variance in the total data set(TDS).The SQI values for 88 soil samples were evaluated with linear scoring techniques and various weight methods.The results showed that SQI values correlated well with soybean yield (r=0.658**) when indicators in MDS were weighted by the regression coefcient computed for each yield and index.Stepwise regression between yield and principal components (PCs) indicated that available boron(AvB),available phosphorus (AvP),available potassium (AvK),available iron (AvFe) and texture were the main factors limiting soybean yield.The method used to select an MDS could not only appropriately assess soil quality but also be used as a powerful tool for soil nutrient diagnosis at the regional level.

关 键 词:norm  value  principal  component  analysis  soil  quality  index  stepwise  regression
收稿时间:18 March 2013

Minimum data set for assessing soil quality in farmland of Northeast China
CHEN Yu-Dong,WANG Huo-Yan,ZHOU Jian-Min,XING Lu,ZHU Bai-Shu,ZHAO Yong-Cun,CHEN Xiao-Qin.Minimum data set for assessing soil quality in farmland of Northeast China[J].Pedosphere,2013,23(5):564-576.
Authors:CHEN Yu-Dong  WANG Huo-Yan  ZHOU Jian-Min  XING Lu  ZHU Bai-Shu  ZHAO Yong-Cun and CHEN Xiao-Qin
Institution:Institute of Soil Science, Chinese Academy of Science, Nanjing 210008 (China) ;University of Chinese Academy of Sciences, Beijing 100049 (China);Institute of Soil Science, Chinese Academy of Science, Nanjing 210008 (China);Institute of Soil Science, Chinese Academy of Science, Nanjing 210008 (China);Institute of Soil Science, Chinese Academy of Science, Nanjing 210008 (China); University of Chinese Academy of Sciences, Beijing 100049 (China);Institute of Soil Science, Chinese Academy of Science, Nanjing 210008 (China) ;Southwest University, College of Resources and Environment, Chongqing 400719 (China);Institute of Soil Science, Chinese Academy of Science, Nanjing 210008 (China);Institute of Soil Science, Chinese Academy of Science, Nanjing 210008 (China)
Abstract:Soil quality assessment provides a tool for agriculture managers and policy makers to gain a better understanding of how various agricultural systems affect soil resources. Soil quality of Hailun County, a typical soybean (Glycine max L. Merill) growing area located in Northeast China, was evaluated using soil quality index (SQI) methods. Each SQI was computed using a minimum data set (MDS) selected using principal components analysis (PCA) as a data reduction technique. Eight MDS indicators were selected from 20 physical and chemical soil measurements. The MDS accounted for 74.9% of the total variance in the total data set (TDS). The SQI values for 88 soil samples were evaluated with linear scoring techniques and various weight methods. The results showed that SQI values correlated well with soybean yield (r = 0.658**) when indicators in MDS were weighted by the regression coefficient computed for each yield and index. Stepwise regression between yield and principal components (PCs) indicated that available boron (AvB), available phosphorus (AvP), available potassium (AvK), available iron (AvFe) and texture were the main factors limiting soybean yield. The method used to select an MDS could not only appropriately assess soil quality but also be used as a powerful tool for soil nutrient diagnosis at the regional level.
Keywords:norm value  principal component analysis  soil quality index  stepwise regression
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