School of Life Science, Nanjing University, Hankou Road 22, Nanjing 210093, China.
Environ Monit Assess. 2013 May;185(5):3897-908. doi: 10.1007/s10661-012-2838-z. Epub 2012 Sep 1.
This paper presents a study dealing with soil organic carbon (SOC) estimation of soil through the combination of soil spectroscopy and multivariate stepwise linear regression. Soil samples were collected in the three sub-regions, dominated by brown calcic soil, in the northern Tianshan Mountains, China. Spectral measurements for all soil samples were performed in a controlled laboratory environment by a portable ASD FieldSpec FR spectrometer (350-2,500 nm). Twelve types of transformations were applied to the soil reflectance to remove the noise and to linearize the correlation between reflectance and SOC content. Based on the spectral reflectance and its derivatives, hyperspectral models can be built using correlation analysis and multivariable statistical methods. The results show that the main response range of soil organic carbon is between 400 and 750 nm. Correlation analysis indicated that SOC has stronger correlation with the second derivative than with the original reflectance and other transformations data. The two models developed with laboratory spectra gave good predictions of SOC, with root mean square error (RMSE) <5.0. The use of the full visible near-infrared spectral range gave better SOC predictions than using visible separately. The multivariate stepwise linear regression of second derivate model (model A) is optimal for estimating SOC content, with a determination coefficient of 0.894 and RMSE of 0.322. The results of this research study indicated that, for the grassland regions, combining soil spectroscopy and mathematical statistical methods does favor accurate prediction of SOC.
本文通过土壤光谱学和多元逐步线性回归相结合,研究了土壤有机碳(SOC)的估算。土壤样本采集于中国天山北麓的三个以棕色钙质土为主的亚区。所有土壤样本的光谱测量均在受控的实验室环境中通过便携式 ASD FieldSpec FR 光谱仪(350-2500nm)进行。对土壤反射率进行了 12 种变换,以去除噪声并使反射率与 SOC 含量之间的相关性线性化。基于光谱反射率及其导数,可以通过相关分析和多变量统计方法构建高光谱模型。结果表明,土壤有机碳的主要响应范围在 400nm-750nm 之间。相关分析表明,SOC 与二阶导数的相关性强于原始反射率和其他变换数据。使用实验室光谱开发的两个模型对 SOC 具有很好的预测能力,均方根误差(RMSE)<5.0。使用全可见近红外光谱范围比单独使用可见光范围更能准确预测 SOC。二阶导数模型(模型 A)的多元逐步线性回归是估计 SOC 含量的最佳方法,决定系数为 0.894,RMSE 为 0.322。本研究结果表明,对于草原地区,结合土壤光谱学和数学统计方法有利于 SOC 的准确预测。