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Spectral Estimation of Soil Properties in Siberian Tundra Soils and Relations with Plant Species Composition

机译:西伯利亚苔原土壤性质的光谱估计及其与植物物种组成的关系

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Predicted global warming will be most pronounced in the Arctic and will severely affect permafrost environments. Due to its large spatial extent and large stocks of soil organic carbon, changes to organic matter decomposition rates and associated carbon fluxes in Arctic permafrost soils will significantly impact the global carbon cycle. We explore the potential of soil spectroscopy to estimate soil carbon properties and investigate the relation between soil properties and vegetation composition. Soil samples are collected in Siberia, and vegetation descriptions are made at each sample point. First, laboratory-determined soil properties are related to the spectral reflectance of wet and dried samples using partial least squares regression (PLSR) and stepwise multiple linear regression (SMLR). SMLR, using selected wavelengths related with C and N, yields high calibration accuracies for C and N. PLSR yields a good prediction model for K and a moderate model for pH. Using these models, soil properties are determined for a larger number of samples, and soil properties are related to plant species composition. This analysis shows that variation of soil properties is large within vegetation classes, but vegetation composition can be used for qualitative estimation of soil properties.
机译:预计的全球变暖将在北极地区最为明显,并将严重影响多年冻土环境。由于其广阔的空间范围和大量的土壤有机碳,北极多年冻土中有机质分解速率和相关碳通量的变化将对全球碳循环产生重大影响。我们探索了土壤光谱学估计土壤碳特性的潜力,并研究了土壤特性与植被组成之间的关系。在西伯利亚收集土壤样品,并在每个采样点进行植被描述。首先,使用偏最小二乘回归(PLSR)和逐步多元线性回归(SMLR),实验室确定的土壤性质与干湿样品的光谱反射率有关。 SMLR使用与C和N有关的选定波长,可以对C和N产生较高的校准精度。PLSR可以为K提供良好的预测模型,并为pH提供适度的模型。使用这些模型,可以确定大量样品的土壤特性,并且土壤特性与植物物种组成有关。该分析表明,在植被类别内土壤性质的变化很大,但是植被组成可用于土壤性质的定性估计。

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