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Dataset characteristics influence the performance of different interpolation methods for soil salinity spatial mapping

机译:数据集特征影响土壤盐分空间制图的不同插值方法的性能

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摘要

This study compared the performance of different interpolation methods for mapping soil salinity of three different agricultural fields having the same land use but different dataset characteristics. Four common spatial interpolation methods including global polynomial interpolation (GPI), inverse distance weighted (IDW), ordinary kriging (OK), and radial basis functions (RBF) were employed for mapping soil EC. The performance of interpolation methods in predicting soil EC was evaluated based on mean bias error, root mean square error, mean absolute percentage error, and coefficient of determinations criteria. Results showed that dataset characteristics, including central tendency and distribution, were significantly different among the studied fields. Experimental semivariogram and fitted model parameters indicated that three studied fields were also different in their spatial dependence strength. Considering all of the performance assessment measures used, the best interpolation method for fields A and C was OK and IDW for field B. The performance of interpolation methods was found to be affected by data characteristics of the studied fields, which were mostly ascribed to management practices. This study suggests in order to obtain accurate mapping of soil salinity in agricultural fields, it is essential to first find the best spatial interpolation method compatible with the characteristics of the collected data from the selected agricultural land.
机译:这项研究比较了不同插值方法在绘制三个土地面积相同但数据集特征不同的不同农业土壤盐分时的性能。四种通用的空间插值方法包括全局多项式插值(GPI),反距离加权(IDW),普通克里格法(OK)和径向基函数(RBF)用于绘制土壤EC。基于平均偏差误差,均方根误差,平均绝对百分比误差和确定系数标准,评估了插值方法在预测土壤EC方面的性能。结果表明,各研究领域之间的数据集特征(包括中心趋势和分布)显着不同。实验半变异函数和拟合模型参数表明,三个研究领域的空间依赖性强度也不同。考虑到所使用的所有性能评估方法,对于字段A和C而言,最佳插值方法为OK,对于字段B为IDW。发现插值方法的性能受所研究字段的数据特征的影响,这主要归因于管理实践。这项研究表明,为了获得准确的农田土壤盐分制图,必须首先找到与所选农地所收集数据的特征相适应的最佳空间插值方法。

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