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Evaluation and Comparison of Ordinary Kriging and Inverse Distance Weighting Methods for Prediction of Spatial Variability of Some Soil Chemical Parameters

机译:预测土壤化学参数空间变异性的普通克里格法和反距离加权法的比较

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Analysis and interpretation of spatial variability of soils properties is a keystone in site-specific management. The objective of this study was to determine degree of spatial variability of soil chemical properties with Ordinary Kriging (OK) and Inverse Distance Weighting (IDW) methods. Spatial distributions for 6 soil chemical properties were examined in a fallow land in Bajgah, Fars province, Iran. Soil samples were collected at approximately 60?0 m grids at 0-30 cm depth and coordinates of each of the 100 points were recorded with GPS. Kriging and inverse-distance weighting are two commonly used techniques for characterizing this spatial variability and interpolating between sampled points. Data were interpolated with OK and IDW with powers of 1-5. All studied soil chemical parameters were strongly spatially dependent, but the range of spatial dependence was found to vary within the soil parameters. Phosphorous had the shortest range of spatial dependence (49.50 m) and pH had the longest (109.50 m). The accuracy of OK predictions was generally unaffected by the coefficient of variation. We concluded, for all soil chemical properties, OK performed much better than the five IDW procedures in this study.
机译:土壤特性空间变异性的分析和解释是特定地点管理的基石。这项研究的目的是使用普通克里格法(OK)和反距离权重(IDW)方法确定土壤化学性质的空间变异程度。在伊朗法尔斯省Bajgah的休耕地中检查了6种土壤化学性质的空间分布。在0-30 cm深度的约60?0 m网格处收集土壤样品,并使用GPS记录每100个点的坐标。 Kriging和反距离加权是两种常用的技术,用于表征这种空间变异性并在采样点之间进行插值。用OK和IDW以1-5的幂对数据进行插值。所有研究的土壤化学参数都强烈地与空间相关,但是发现空间相关性的范围在土壤参数内变化。磷的空间依赖性范围最短(49.50 m),pH值最长(109.50 m)。 OK预测的准确性通常不受变异系数的影响。我们得出的结论是,对于所有土壤化学性质,OK均比本研究中的五个IDW程序好得多。

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