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Predicting Total Organic Carbons and Nitrogens in Grassland Soil Using Wavelet Analysis and Hyperspectral Technology

机译:采用小波分析和高光谱技术预测草地土壤中总有机碳和氮化碳

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摘要

the assessment of greenhouse gas emissions from soils requires an accurate knowledge on the fate of carbon and nitrogen in soils. Traditional analysis can not be used to assess carbon and nitrogen over large geographical areas. For this reason, hyper spectral remote sensing techniques for predicting soil organic carbon (SOC) and total nitrogen (TN) on a large scale have received much attention. This study mainly focused upon capturing the feature values of soil organic carbon and total nitrogen, and predicting SOC and TN by applying wavelet analysis to reflectance spectra. Results indicated that the maximum correlation coefficient between SOC, TN, and wavelet coefficient were more than 0.96 compared to the relationship between SOC, TN, and spectral reflectance (r=- 0.79 for SOC, r=-0.40 for TN), especially for TN (the maximum negative correlation coefficient r=-0.964). For SOC+TN and SOC/TN, due to SOC contents accounted for a large proportion of soil composition compared to TN, their spectral feature were affected by SOC in soil samples. In addition, wavelet analysis also enhanced the features of SOC+TN and SOC/TN obviously. These results suggested that wavelet analysis was a better method for capturing the absorption features of soil composition using hyper spectral remote sensing data, and predicting the changes of C and N in terrestrial ecosystems.
机译:对土壤的温室气体排放评估需要准确了解土壤中碳和氮的命运。传统分析不能用于评估大型地理区域的碳和氮。因此,用于预测土壤有机碳(SOC)和总氮(TN)大规模的超光谱遥感技术得到了很多关注。本研究主要集中在捕获土壤有机碳和总氮的特征值,并通过向反射光谱施加小波分析来预测SOC和TN。结果表明,与SOC,TN和SCOC,R = -0.40对于TN的SOC,R = -0.40的r = -0.79之间的关系相比,SOC,TN和小波系数之间的最大相关系数大于0.96。特别适用于TN (最大负相关系数R = -0.964)。对于SOC + TN和SOC / TN,由于与TN相比,由于SOC内容占土壤成分的大部分,其光谱特征受到土壤样本中的SOC的影响。此外,小波分析还显然还增强了SOC + TN和SOC / TN的特征。这些结果表明小波分析是使用超光谱遥感数据捕获土壤组合物的吸收特征的更好方法,并预测陆地生态系统中的C和N的变化。

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