Spatial pattern of soil organic carbon acquired from hyperspectral imagery at reynolds creek critical zone observatory (RC-CZO)

Aihua Li, Ryan Will, N. Glenn, S. Benner, L. Spaete
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Abstract

Soil Organic Carbon (SOC) is a key soil property and is important for understanding carbon storage and soil-vegetation dynamics. Hyperspectral imagery (imaging spectroscopy) providing detailed spectral signatures of vegetation and soil make it possible to continuously map SOC content over a watershed scale. In this paper, the Next Generation Airborne Visible / Infrared Imaging Spectrometer (AVTPJSng) was used with an unmixing algorithm, the Multiple Endmember Spectral Mixture Analysis, to differentiate fractional cover of healthy vegetation, stressed vegetation and soil at the Reynolds Creek Critical Zone Observatory (PC-CZO). The fractional cover information was used to remove noisy spectra and the resulting residual spectra were used to predict SOC by Partial Least Squares Regression (PLSP). The results showed that the root mean standard error and mean bias of the predicted SOC (%) are 0.75 and 2.4, respectively. We found the best relationship between SOC and spectra after filtering out the influence of green vegetation from mixed spectra. The resulting residual, spectra comprised of stressed vegetation and soil, contained enough information for mapping SOC distribution within the shrub dominated regions of the watershed. This may provide a method to better understand the interaction of soil and vegetation in semiarid ecosystems.
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雷诺溪临界带观测站(RC-CZO)高光谱影像土壤有机碳空间格局研究
土壤有机碳(SOC)是土壤的一项重要性质,对了解土壤碳储量和土壤植被动态具有重要意义。高光谱成像(成像光谱)提供了植被和土壤的详细光谱特征,使连续绘制流域尺度上的有机碳含量成为可能。利用新一代机载可见/红外成像光谱仪(AVTPJSng),结合多端元光谱混合分析(Multiple Endmember Spectral Mixture Analysis)解调算法,对Reynolds Creek临界带观测站(PC-CZO)的健康植被、应力植被和土壤覆盖度进行了区分。利用分数覆盖信息去除噪声光谱,并利用残差光谱通过偏最小二乘回归(PLSP)预测SOC。结果表明,预测SOC(%)的均方根标准误差和平均偏差分别为0.75和2.4。在混合光谱中滤除绿色植被的影响后,发现有机碳与光谱之间的关系最佳。得到的残余光谱由受胁迫的植被和土壤组成,包含了足够的信息,用于绘制流域灌木占主导地位地区的有机碳分布。这可能为更好地了解半干旱生态系统中土壤与植被的相互作用提供一种方法。
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