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基于光谱吸收特征的土壤含水量预测模型研究
引用本文:金慧凝,张新乐,刘焕军,康 苒,付 强,宁东浩. 基于光谱吸收特征的土壤含水量预测模型研究[J]. 土壤学报, 2016, 53(3): 627-635. DOI: 10.11766/trxb201507020256
作者姓名:金慧凝  张新乐  刘焕军  康 苒  付 强  宁东浩
作者单位:东北农业大学资源与环境学院,哈尔滨,150030
基金项目:国家自然科学基金项目(40801167);黑龙江省普通高等学校新世纪优秀人才培养计划;黑龙江省博士后启动基金(LBH-Q13026)
摘    要:为了定量分析土壤含水量与反射光谱特征之间关系,并为土壤含水量速测提供理论依据。以黑土作为研究对象,测定实验室光谱反射率,利用去包络线方法提取反射光谱特征指标,建立土壤水分含量高光谱预测模型。结果表明:黑土含水量与1 420 nm、1 920 nm附近吸收谷的主要光谱特征(吸收谷深度、宽度、面积)呈显著正相关;1 920 nm附近吸收谷可作为黑土土壤水分的特征吸收谷,由其光谱特征参数预测黑土含水量;以1 920 nm附近吸收谷面积为自变量建立的一元线性回归模型预测精度高,输入量少,可以作为土壤含水量速测仪器研制的理论依据。

关 键 词:反射光谱  土壤水分  去包络线  吸收特征
收稿时间:2015-05-29
修稿时间:2015-11-27

Soil Moisture Predicting Model Based on Spectral Absorption Characteristics of the Soil
JIN Huining,ZHANG Xinle,LIU Huanjun,KANG Ran,FU Qiang and NING Donghao. Soil Moisture Predicting Model Based on Spectral Absorption Characteristics of the Soil[J]. Acta Pedologica Sinica, 2016, 53(3): 627-635. DOI: 10.11766/trxb201507020256
Authors:JIN Huining  ZHANG Xinle  LIU Huanjun  KANG Ran  FU Qiang  NING Donghao
Affiliation:NEAU,NEAU,NEAU,NEAU,NEAU,NEAU
Abstract:Soil moisture is predicted with spectroscopy based on the mechanism of moisture affecting characteristics of spectral reflectance of the soil, but most studies took reflectance as an independent variable in moisture predicting models, and paid only a little attention to absorption characteristics. In n this study 8 samples of black soil different in soil organic matter content were collected from its experiment field and prepared them into 102 soil samples using a new soil moisture adjusting method. The samples were then put individually into wide round glass disks. Spectral reflectances of the samples in the visible and near infrared region were measured with an ASD Field Spectroradiometer in the laboratory, yielding 10 spectral curves for each sample, of which a mean was worked out as the actual reflectance of the sample. Since the spectrometer responds unevenly to electromagnetic waves different in wavelength, spectral data need to be pre-processed for smoothing at a regular wavelength interval of 5 nm to diminish noise before data analysis. As the soil samples did not vary much in spectral characteristics, the continuum removal method was used to effectively make the characteristics of spectral adsorption and reflection prominent in the spectral curves. Soil spectral reflectance is comprehensive representation of soil physical and chemical parameters, and hence very sensitive to changes in soil organic matter (SOM) soil moisture, Fe, coarseness, mechanical composition and so on. However, the characteristic parameters of spectral adsorption valleys extracted with the continuum removal method reduced the sensitivities. The continuum removal method was applied with the aid of Software ENVI 4.6. The characteristic parameters of soil spectral adsorption that need to be extracted encompass area, depth and width of a spectral absorption valley. Correlation analysis was used to determine relationships of moisture content of the black soil with reflectance, spectral characteristic parameters and post-continuum-removal values. Based on the Simple Linear Regression, Stepwise Multiple Linear Regression(SMLR) and Partial Least Squares Regression(PLSR) method separately, high-spectrum models for prediction of black soil moisture content were built up using spectral reflectance, post-continuum-removal values and spectral adsorption characteristic parameters as independent variables, and moisture as dependent variable. Determination coefficient (R2) and RMSE were used to evaluate prediction accuracy of the models.. The higher the R2 and the more stable and accurate the model and the lower the RMSE. Results show that (1) the soil spectral curve of Black soil has five spectral absorption valleys located at 510, 615, 1420, 1920 and 2210 nm, separately; and in predicting soil soil moisture content in black soil, spectral characteristic parameters are higher in correlativity than spectral reflectance, especially at 1420 and 1920 nm; (2) the models based on Simple Linear Regression, Stepwise Multiple Linear Regression (SMLR) and Partial Least Squares Regression (PLSR), separately, are all applicable to prediction of soil moisture content in black soil; and (3) the model based on simple linear regression using the characteristic parameters of the spectral absorption valley at 1 920 nm as independent value is high in prediction accuracy and low in input volume, and hence can be used as the theoretical basis for developing instant soil moisture measuring instruments. The models established in this study are high in stability and accuracy, which may be attributed to their use of just one type of soil and the new soil moisture adjusting method. Therefore, it can be concluded that the soil moisture high-spectrum prediction model based on spectral adsorption characteristic parameters is high in accuracy and stability and can be used for instant prediction of soil water contents.
Keywords:Spectral reflectance  Soil moisture  Continuum removal  Absorption feature
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