Center for Environmental Remediation, Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing 100101, PR China.
Chemosphere. 2011 Jan;82(3):468-76. doi: 10.1016/j.chemosphere.2010.09.053. Epub 2010 Oct 20.
Mapping the spatial distribution of contaminants in soils is the basis of pollution evaluation and risk control. Interpolation methods are extensively applied in the mapping processes to estimate the heavy metal concentrations at unsampled sites. The performances of interpolation methods (inverse distance weighting, local polynomial, ordinary kriging and radial basis functions) were assessed and compared using the root mean square error for cross validation. The results indicated that all interpolation methods provided a high prediction accuracy of the mean concentration of soil heavy metals. However, the classic method based on percentages of polluted samples, gave a pollution area 23.54-41.92% larger than that estimated by interpolation methods. The difference in contaminated area estimation among the four methods reached 6.14%. According to the interpolation results, the spatial uncertainty of polluted areas was mainly located in three types of region: (a) the local maxima concentration region surrounded by low concentration (clean) sites, (b) the local minima concentration region surrounded with highly polluted samples; and (c) the boundaries of the contaminated areas.
绘制土壤污染物的空间分布是进行污染评价和风险控制的基础。插值方法广泛应用于绘制过程中,以估计未采样点的重金属浓度。通过交叉验证的均方根误差评估和比较了插值方法(反距离加权、局部多项式、普通克里金和径向基函数)的性能。结果表明,所有插值方法都能高度准确地预测土壤重金属的平均浓度。然而,基于污染样本百分比的经典方法估计的污染面积比插值方法大 23.54-41.92%。这四种方法在污染面积估计上的差异达到了 6.14%。根据插值结果,污染区域的空间不确定性主要位于三种类型的区域:(a)局部最大值浓度区域被低浓度(清洁)点包围,(b)局部最小值浓度区域被高度污染的样本包围;和(c)污染区域的边界。