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Spatial sampling, landscape modeling, and interpretation of soil organic carbon on zero-order watersheds.

机译:零阶流域的空间采样,景观建模和土壤有机碳的解释。

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High-resolution (2 m) raster spatial models of soil organic carbon were created for zero-order watersheds at the North Appalachian Experimental Watershed in Coshocton, Ohio. Soil samples, management practice, and topographic parameters obtained from a digital elevation model were used to create spatial models through multivariate regression. Soil organic carbon was studied because of its importance in the global CO2 cycle and soil quality. Four small watersheds (5000 m2 to 10,000 m2) were studied, representing continuous no-till corn, conventional tillage, hay, and pasture management practices. Topographic information (slope, wetness index) was derived from a 2 m digital elevation model (DEM). Nearly 500 new soil samples were collected (30 cm depth). Sample locations were chosen using a rational scheme. Legacy and initial sample sets (61 legacy, 250 initial samples) were used to obtain preliminary information on the structure and predictors of spatial variability. Such information was used to design a final sample set (185 samples) that was compatible with statistical (ANOVA and least squares regression), and geostatistical (kriging) modeling techniques.; The results from statistical modeling were used to identify the major challenges to carbon mapping at regional scales for inventory purposes. Soil carbon exhibited a large amount of variability (4 kg C m−2) over small distances (101 meters). Carbon values assigned to county soil survey mapping units are based on few laboratory measurements that cannot properly account for such large gradients. Geostatistical autocorrelation ranged from 30 to 100 meters. Accordingly, the maximum sample spacing permitted for kriging was 30 meters. Kriging was excluded as a viable technique for county-scale carbon inventory because of the required sample intensity. Regression-based techniques were favored because of decreased sample requirements. Management (no-till vs. the others) was the most important predictor of soil carbon (from comparison of management model (ANOVA) to a coupled management-topographic model (multiple regression). Long-term no-till fields must be identified for accurate inventory at broad scales. Finally, local rises and pits (2–10 meters in wavelength) were the most predictive topographic features for soil carbon. High-resolution (10 m) DEMs are needed to capture this relationship.
机译:在俄亥俄州科肖克顿的北部阿巴拉契亚实验流域为零级流域创建了高分辨率(2 m)的土壤有机碳栅格空间模型。从数字高程模型获得的土壤样本,管理实践和地形参数用于通过多元回归创建空间模型。由于土壤有机碳在全球CO 2 循环和土壤质量中的重要性,因此对其进行了研究。研究了四个小流域(5000 m 2 至10,000 m 2 ),代表了连续免耕玉米,常规耕作,干草和牧场管理实践。地形信息(坡度,湿度指数)来自2 m数字高程模型(DEM)。收集了近500个新的土壤样品(深度30厘米)。使用合理的方案选择样本位置。传统和初始样本集(61个遗留样本,250个初始样本)用于获得有关空间变异的结构和预测因子的初步信息。这些信息用于设计与统计(ANOVA和最小二乘回归)和地统计(克里金法)建模技术兼容的最终样本集(185个样本)。统计模型的结果被用于识别针对清单目的的区域规模碳制图的主要挑战。土壤碳在小距离(10 1 米)上表现出较大的变异性(4 kg C m −2 )。分配给县土壤调查制图单位的碳值是基于很少能不能正确解释如此大的梯度的实验室测量值。地统计自相关范围为30至100米。因此,克里金法所允许的最大样本间距小于30米。由于要求的样本强度,克里格被排除为县级碳清单的可行技术。基于回归的技术由于减少了样本需求而受到青睐。管理(免耕与其他耕作)是土壤碳最重要的预测指标(从管理模型比较(ANOVA)到耦合管理地形模型(多元回归)),必须确定长期的免耕田地最后,局部上升和起伏(波长2-10米)是土壤碳的最可预测的地形特征,需要高分辨率(<10 m)的DEM来捕捉这种关系。

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