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Spatial prediction of soil organic matter in northern Kazakhstan based on topographic and vegetation information.

机译:基于地形和植被信息的哈萨克斯坦北部土壤有机质空间预测。

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摘要

This study aimed to improve the accuracy of spatial prediction for soil organic matter, potential mineralizable carbon (PMC) and soil organic carbon (SOC), using secondary information, namely topographic and vegetation information, in northern Kazakhstan. Secondary information included elevation (ELEV), mean curvature (MEANC), compound topographic index (CTI) and slope (SLOPE) obtained from a digital elevation model, and enhanced vegetation index (VI) values obtained from a moderate resolution imaging spectroradiometer (MODIS). The prediction methods were statistical (multiple linear regression between soil organic matter and secondary information) and geostatistical algorithms (regression-kriging Model-C and simple kriging with varying local means [SKlm]). The VI, ELEV and MEANC were selected as the independent variables for predicting PMC and SOC. However, MEANC showed an opposite effect on PMC and SOC accumulation patterns. Model validity revealed that SKlm was the most appropriate method for predicting PMC and SOC spatial patterns because model validity revealed the smallest errors for this method. Maps from the kriged estimates showed that a combination of secondary information and geostatistical techniques can improve the accuracy of spatial prediction in study areas..
机译:这项研究旨在利用哈萨克斯坦北部的次要信息,即地形和植被信息,提高土壤有机质,潜在可矿化碳(PMC)和土壤有机碳(SOC)的空间预测准确性。次要信息包括从数字高程模型获得的海拔(ELEV),平均曲率(MEANC),复合地形指数(CTI)和坡度(SLOPE),以及从中分辨率成像光谱仪(MODIS)获得的增强植被指数(VI)值。预测方法是统计学的(土壤有机质和次要信息之间的多元线性回归)和地统计学的算法(回归克里格模型C和具有不同局部平均值的简单克里格法[SKlm])。选择VI,ELEV和MEANC作为预测PMC和SOC的自变量。但是,MEANC对PMC和SOC累积模式显示出相反的影响。模型有效性表明,SKlm是预测PMC和SOC空间模式的最合适方法,因为模型有效性表明该方法的误差最小。克里特估算的地图显示,辅助信息和地统计技术的组合可以提高研究区域中空间预测的准确性。

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