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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Improving forest soil carbon models using spatial data and geostatistical approaches
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Improving forest soil carbon models using spatial data and geostatistical approaches

机译:利用空间数据和地统计学方法改善森林土壤碳模型

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Forest soils store large amounts of carbon (C), and stock changes in this C pool may significantly increase the CO2 concentration in the atmosphere. However, estimation of soil organic carbon (SOC) stocks and stock changes following land use transition to forestry is subject to large uncertainty. Many currently used geochemical modelling approaches, such as YASSO, are used to estimate regional changes in forest SOC stocks, but these are difficult to calibrate to reflect regional conditions because of limited availability of sufficient SOC data. In addition, most model frameworks give little consideration regarding the appropriate use of geospatial climatic and topographical data, as dependent variables in the model. As a result, many regional models may exhibit spatial autocorrelation (SAC) of residuals, which contributes to overall model error. In this paper, we develop a method for assessing SOC stock changes in Irish forests by compiling a spatial SOC database and using these data to calibrate and improve on an existing YASSO model. Careful consideration was given to the use of available climatic and digital elevation GIS data in YASSO with the aim of reducing SAC of model residuals and to more precisely predict soil- and site-specific variations in SOC stock changes following transition to forestry.Analysis of the complied national SOC database shows that stock changes in afforested mineral soils may increase or decrease depending on previous land use and soil type. During refinement of the YASSO model, conventional statistical approaches confirmed that model performance can be improved by using climatic GIS data at the appropriate scale (resolution), together with additional use of novel topographical spatial data. The current YASSO model does not use these topographical factors as dependent variables, nor is there any consideration given to the spatial or temporal resolution of GIS datasets used. Use of GIS geo-statistical approaches to determine if SAC was reduced, as the YASSO model accuracy was improved on, produced conflicting results. We suggest that the use of Anselin Local Moran's I outlier analysis may not be suitable for this purpose because it may falsely detect spatial outliers due to the presence of neighbouring points with very high or low residual values. In contrast, semi-variogram analysis appeared to be the most useful geo-statistical measure of the spatial dependency, distribution and scale at which residual SAC occurs. Use of fine resolution (50 m) slope and topographical position index (TPI) raster datasets to predict forest SOC stocks significantly improved the final YASSO model accuracy and precision. In addition, semi-variogram analysis confirmed that the final YASSO model residuals exhibited no spatial dependency and residual error was uniformly distributed over the entire sample area, from which the SOC database was derived. However, the final YASSO model we describe requires considerable refinement using more intensive sampling studies and independent validation before it can be applied at a national level. In the future, particular emphasis should be directed to sampling forest brown earth soils, which are suggested to result in a net emission of C following transition from grassland to forest land
机译:森林土壤中储存了大量的碳(C),并且该碳库中的库变化可能会大大增加大气中的CO2浓度。但是,在土地使用过渡到林业之后,对土壤有机碳(SOC)储量和储量变化的估算存在很大的不确定性。许多当前使用的地球化学建模方法(例如YASSO)用于估算森林SOC储量的区域变化,但是由于缺乏足够的SOC数据,因此很难进行校准以反映区域状况。此外,大多数模型框架都很少考虑适当使用地理空间气候和地形数据作为模型中的因变量。结果,许多区域模型可能表现出残差的空间自相关(SAC),这会导致整体模型误差。在本文中,我们通过建立空间SOC数据库并使用这些数据对现有的YASSO模型进行校准和改进,开发了一种评估爱尔兰森林SOC储量变化的方法。认真考虑了在YASSO中使用可用的气候和数字高程GIS数据,目的是减少模型残差的SAC,并更准确地预测过渡到林业后SOC量变化的土壤和场地特定变化。符合国家SOC要求的数据库显示,绿化矿质土壤的储量变化可能会根据以前的土地用途和土壤类型而增加或减少。在完善YASSO模型的过程中,传统的统计方法证实,通过使用适当比例(分辨率)的气候GIS数据以及额外使用新颖的地形空间数据,可以提高模型的性能。当前的YASSO模型没有使用这些地形因子作为因变量,也没有考虑使用的GIS数据集的时空分辨率。使用GIS地统计方法来确定是否降低了SAC(随着YASSO模型精度的提高)产生了矛盾的结果。我们建议使用Anselin Local Moran's I离群值分析可能不适合此目的,因为它可能会由于存在残留值很高或很低的相邻点而错误地检测到空间离群值。相比之下,半变异函数分析似乎是残留SAC发生的空间依赖性,分布和规模的最有用的地理统计度量。使用精细分辨率(50 m)的坡度和地形位置指数(TPI)栅格数据集来预测森林SOC储量,显着提高了最终YASSO模型的准确性和精度。此外,半变异函数分析证实,最终的YASSO模型残差没有空间依赖性,并且残差误差均匀地分布在整个样本区域中,由此得出了SOC数据库。但是,我们描述的最终YASSO模型需要使用更深入的抽样研究和独立验证进行大量改进,然后才能在国家一级应用。将来,应特别强调对森林棕壤土壤的采样,建议从草地过渡到林地后导致碳净排放

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