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Mapping soil organic carbon using auxiliary environmental covariates in a typical watershed in the Loess Plateau of China: a comparative study based on three kriging methods and a soil land inference model (SoLIM)

机译:黄土高原典型流域利用辅助环境协变量绘制土壤有机碳图:基于三种克里格法和土壤土地推断模型(SoLIM)的比较研究

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摘要

Detailed maps of regional spatial distribution of soil organic carbon (SOC) are needed to guide sustainable soil uses and management decisions. Interpolation methods based on spatial auto-correlations, environmental covariates, or hybrid methods are commonly used to predict SOC maps. Many of these methods perform well for gentle terrains. However, it is unknown how these methods perform to capture SOC variations in complex terrains, especially areas of which land uses are interrupted by human activities, such as the Loess Plateau of China. This study compared four interpolations or predictive methods including ordinary kriging (OK), regression kriging, ordinary kriging integrated with land-use type (OK_LU) and a soil land inference model (SoLIM). The purpose of this study is to find appropriate methods, which are suitable to the complex terrain in Loess Plateau region of China. The study area was a typical watershed in Loess Plateau with complex hilly-gully terrain and various land-use types. A field sampling dataset of 200 points was partitioned into 1/2 for model building and 1/2 for accuracy validation in a random way. Nine environmental covariates were selected: land-use types, digital elevation model, solar radiation, slope degree, slope aspect, plan curvature, profile curvature, surface area ratio, and topographic wetness index. The mean absolute percentage error, root mean square error, and goodness-of-prediction statistic value were selected to evaluate mapping results. The results showed that the use of easily obtained environmental covariates, land-use types and terrain variables improved accuracies of SOC interpolation, which will be of interests for related research of similar environments in the Loess Plateau. SoLIM and OK_LU can be two suitable and efficient methods, which produced detailed, reasonable maps with higher accuracy and prediction effectiveness, for the study area and similar areas in the Loess Plateau.
机译:需要详细的土壤有机碳(SOC)区域空间分布图,以指导可持续的土壤利用和管理决策。基于空间自相关,环境协变量或混合方法的插值方法通常用于预测SOC映射。这些方法中的许多方法对于平缓的地形都表现良好。但是,尚不清楚这些方法如何捕获复杂地形中的SOC变化,特别是在土地利用受到人类活动干扰的区域(例如中国黄土高原)。这项研究比较了四种插值或预测方法,包括普通克里格法(OK),回归克里格法,结合土地利用类型的普通克里格法(OK_LU)和土壤土地推断模型(SoLIM)。本研究的目的是寻找适合中国黄土高原地区复杂地形的方法。研究区域是黄土高原的典型流域,丘陵沟壑复杂,土地利用类型多种多样。将200个点的现场采样数据集以随机方式分为用于模型构建的1/2和用于精度验证的1/2。选择了9个环境协变量:土地利用类型,数字高程模型,太阳辐射,坡度,坡度,平面曲率,剖面曲率,表面积比和地形湿度指数。选择平均绝对百分比误差,均方根误差和预测优度统计值以评估映射结果。结果表明,易于获得的环境协变量,土地利用类型和地形变量的使用提高了SOC插值的准确性,这将对黄土高原类似环境的相关研究感兴趣。 SoLIM和OK_LU可以是两种合适且有效的方法,可以为黄土高原研究区和类似地区生成详细,合理的地图,具有更高的准确性和预测效果。

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