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比较普通克里金法和距离反比加权法在北京市土壤污染中的应用。

Comparing ordinary kriging and inverse distance weighting for soil as pollution in Beijing.

机构信息

Institute of Geographic Sciences and Natural Resources Research, Chinese, Beijing, 100101, China.

Beijing Key Laboratory of Remediation of Industrial Pollution Sites, Environmental Protection Research Institute of Light Industry, Beijing, 100089, China.

出版信息

Environ Sci Pollut Res Int. 2018 Jun;25(16):15597-15608. doi: 10.1007/s11356-018-1552-y. Epub 2018 Mar 23.

Abstract

Spatial interpolation method is the basis of soil heavy metal pollution assessment and remediation. The existing evaluation index for interpolation accuracy did not combine with actual situation. The selection of interpolation methods needs to be based on specific research purposes and research object characteristics. In this paper, As pollution in soils of Beijing was taken as an example. The prediction accuracy of ordinary kriging (OK) and inverse distance weighted (IDW) were evaluated based on the cross validation results and spatial distribution characteristics of influencing factors. The results showed that, under the condition of specific spatial correlation, the cross validation results of OK and IDW for every soil point and the prediction accuracy of spatial distribution trend are similar. But the prediction accuracy of OK for the maximum and minimum is less than IDW, while the number of high pollution areas identified by OK are less than IDW. It is difficult to identify the high pollution areas fully by OK, which shows that the smoothing effect of OK is obvious. In addition, with increasing of the spatial correlation of As concentration, the cross validation error of OK and IDW decreases, and the high pollution area identified by OK is approaching the result of IDW, which can identify the high pollution areas more comprehensively. However, because the semivariogram constructed by OK interpolation method is more subjective and requires larger number of soil samples, IDW is more suitable for spatial prediction of heavy metal pollution in soils.

摘要

空间插值方法是土壤重金属污染评估和修复的基础。现有的插值精度评价指标没有结合实际情况。插值方法的选择需要基于特定的研究目的和研究对象的特点。本文以北京市土壤 As 污染为例,基于交叉验证结果和影响因素的空间分布特征,评价了普通克里金(OK)和反距离加权(IDW)的预测精度。结果表明,在特定空间相关性条件下,OK 和 IDW 对每个土壤点的交叉验证结果和空间分布趋势的预测精度相似。但是,OK 对最大和最小的预测精度低于 IDW,而 OK 识别的高污染区数量少于 IDW。OK 很难完全识别高污染区,这表明 OK 的平滑效果明显。此外,随着 As 浓度空间相关性的增加,OK 和 IDW 的交叉验证误差减小,OK 识别的高污染区越来越接近 IDW 的结果,可以更全面地识别高污染区。然而,由于 OK 插值方法构建的半变异函数更具主观性且需要更多的土壤样本,因此 IDW 更适合土壤重金属污染的空间预测。

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