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首页> 外文期刊>Soil Science >Estimating soil organic carbon across a large-scale region: a state-space modeling approach.
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Estimating soil organic carbon across a large-scale region: a state-space modeling approach.

机译:在大范围区域内估算土壤有机碳:一种状态空间建模方法。

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Soil organic carbon (SOC) plays a dynamic role in the global carbon cycle and is important in sustaining soil fertility and ecosystem productivity. Information about the spatial distribution of SOC across large-scale areas and its relationships with pertinent environmental factors is limited although required. In our study, a total of 283 sampling sites were investigated to estimate the spatial variation of SOC across the entire Loess Plateau (620,000 km2) of China. Two strategies, state-space modeling and classical linear regression, were used to quantify the relationships between SOC and selected soil properties (bulk density, soil pH, and clay and silt contents) and climatic (precipitation and temperature) and topographic (elevation) variables. The best state-space models explained more than 80% of the variation of SOC, whereas the best linear regression model explained less than 45% of the variation of SOC. The results showed that all state-space models described spatial variation of SOC much better than the equivalent linear-regression models. Soil-based properties were more important than climatic and topographic variables in identifying localized variation of SOC; the best bivariate and multivariate state-space models included bulk density, silt content, and soil pH. The state-space models performed even better when only 50% of the SOC data were used. However, when using only 25% of the data, the state-space models marginally yielded good estimates of SOC. State-space modeling is recommended as a useful tool for quantifying the spatial relationships between SOC and other environmental factors in large-scale regions.
机译:土壤有机碳(SOC)在全球碳循环中发挥着动态作用,对于维持土壤肥力和生态系统生产力至关重要。尽管需要,但有关大面积SOC的空间分布及其与相关环境因素的关系的信息有限。在我们的研究中,总共调查了283个采样点,以估​​算整个中国黄土高原(620,000 km 2 )的SOC的空间变化。使用状态空间建模和经典线性回归这两种策略来量化SOC与选定土壤特性(散装密度,土壤pH以及粘土和淤泥含量)以及气候(降水和温度)和地形(海拔)变量之间的关系。 。最佳状态空间模型解释了SOC的80%以上的变化,而最佳线性回归模型解释了SOC的不足45%的变化。结果表明,所有状态空间模型都比等效线性回归模型更好地描述了SOC的空间变化。在确定SOC的局部变化方面,土壤特性比气候和地形变量更重要。最佳的二元和多元状态空间模型包括堆积密度,淤泥含量和土壤pH值。当仅使用50%的SOC数据时,状态空间模型的性能甚至更好。但是,仅使用25%的数据时,状态空间模型就可以很好地估算出SOC。建议使用状态空间建模作为量化大型区域SOC与其他环境因素之间空间关系的有用工具。

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