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基于可见光谱的不同质地土壤有机质快速测定
引用本文:宋海燕,秦刚,韩小平,刘海芹.基于可见光谱的不同质地土壤有机质快速测定[J].农业机械学报,2012,43(7):69-72.
作者姓名:宋海燕  秦刚  韩小平  刘海芹
作者单位:1. 山西农业大学工学院,太谷,030801
2. 山西农业大学林学院,太谷,030801
基金项目:“十一五”国家科技支撑计划资助项目(2009BADB5B03);山西省科技攻关项目(20100311066—5);山西农业大学科技创新项目(2010011)
摘    要:在可见光区域内对不同质地土壤(粘土、砂土、壤土)共156个样本的光谱特性进行了研究,并建立了不同质地土壤间有机质含量的互测模型。为了消除土壤质地对有机质含量预测的影响,引入了正交信号处理(OSC)谱图预处理方法。结果表明:粘土和壤土作为建模样本建立的土壤有机质偏最小二乘(PLS)和OSC-PLS校正模型的相关系数分别为0.809和0.823;砂土和壤土分别为0.837和0.734;粘土和砂土相应值分别为0.887和0.823。采用上述模型对另一质地土壤有机质含量进行预测,砂土的相关系数分别为0.572和0.864;粘土的相应值分别为0.555和0.540;壤土的相应值分别为0.643和0.721。预测效果说明OSC预处理可提高不同质地间土壤有机质的互预测能力。

关 键 词:土壤有机质  测定  可见光谱  正交信号处理  偏最小二乘法

Rapid Prediction of Soil Organic Matter by Using Visible Infrared Spectral Technology
Song Haiyan,Qin Gang,Han Xiaoping and Liu Haiqin.Rapid Prediction of Soil Organic Matter by Using Visible Infrared Spectral Technology[J].Transactions of the Chinese Society of Agricultural Machinery,2012,43(7):69-72.
Authors:Song Haiyan  Qin Gang  Han Xiaoping and Liu Haiqin
Institution:Shanxi Agricultural University;Shanxi Agricultural University;Shanxi Agricultural University;Shanxi Agricultural University
Abstract:A total of 156 soil samples with different textures(sand soil(51),clay soil(54) and land soil(51))were collected,and the spectra of all soil samples were scanned with spectrophotometer(ASD FieldSpec3) from 325 to 2500nm.Orthogonal signal correction(OSC) was applied to eliminate the influence of the textures.Soil organic matter(SOM) prediction models of different textural soil samples were then obtained by using partial least square analysis(PLS) and OSC-PLS.The result showed that when the calibration sample was clay and land soil,the correlation coefficients of PLS and OSC-PLS model were 0.809 and 0.823;when the calibration sample was sand and land soil,the correlation coefficients were 0.837 and 0.734;and when the calibration sample was clay and sand soil,the correlation coefficients were 0.887 and 0.823,respectively.SOM content of another textural soil samples were predicted by using above models,the result showed that the predictive correlation coefficients of PLS and OSC-PLS to sand soil were 0.572 and 0.864;to clay soil were 0.555 and 0.540;and to land soil were 0.643 and 0.721,respectively.The results indicate that OSC can eliminate the influence of texture and improve the prediction precision and solidity of the model.
Keywords:Soil organic matter  Prediction  Visible spectra  Orthogonal signal correction  Partial least square
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