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利用航空摄影预测的表土有机碳图增强原生污水灌溉农田中金属污染物的空间估计。

Enhancing spatial estimates of metal pollutants in raw wastewater irrigated fields using a topsoil organic carbon map predicted from aerial photography.

作者信息

Bourennane H, Dère Ch, Lamy I, Cornu S, Baize D, van Oort F, King D

机构信息

INRA, Unité de Science du Sol, BP 20619 Ardon, Olivet Cedex 45166, France.

出版信息

Sci Total Environ. 2006 May 15;361(1-3):229-48. doi: 10.1016/j.scitotenv.2005.05.011. Epub 2005 Jul 1.

DOI:10.1016/j.scitotenv.2005.05.011
PMID:15993472
Abstract

Various approaches have been used to estimate metal pollutant element (TE) contents at unsampled locations in a 15-ha contaminated site located in the plain of Pierrelaye-Bessancourt (about 24 km Northwest of Paris). 87 samples of soil plough layer were randomly sampled at each mesh of a regular square grid over the whole study area and the total contents of Cd, Cr, Cu, Ni, Pb, and Zn were measured. A first set of 50 measurements, randomly selected from the 87 samples, was used for the prediction and another set of 37 measurements was kept for the validation. Topsoil organic carbon contents (SOC) were measured at 75 sites with 50 measurements sharing the same locations as TE. An aerial photography of the study area showing bare soils was selected for relating brightness intensities and SOC. Mapping procedures used were ordinary kriging (OK), cokriging (COK), collocated cokriging (CC), and kriging with external drift (KED). SOC maps used as exhaustively sampled information in KED and CC of TE were obtained by KED and CC procedures, respectively, accounting for 75 SOC measurements and the brightness intensities of numerical counts provided by the visible bands of the aerial photograph bare soils. Consequently, for each TE, four maps were generated: two maps resulting from KED and CC procedures (KED-SOC75P, CC-SOC75P), another one provided by standard cokriging (COK-TE50SOC75) accounting for TE prediction set plus 75 SOC measurements, and the last one corresponding to that estimated by ordinary kriging from only prediction set measurements (OK50). Three indices: (1) the mean prediction error (ME) and the mean absolute prediction error (|ME|); (2) the root mean square error (RMSE); and (3) the relative improvement (RI) of accuracy, as well as residuals analysis, were computed from the validation set (observed data) and predicted values. On the 37 test data, the results showed that the more accurate predictions were systematically those obtained by kriging accounting for SOC map predicted by KED from 75 SOC measurements and brightness values of the aerial photo (KED-SOC75P) followed closely by CC-SOC75P procedure, except for Cu and Zn where CC-SOC75P appeared to be slightly more accurate than KED-SOC75P. In regard to the RI of accuracy between prediction methods, the results confirmed once for all the benefit of accounting for SOC data set plus the exhaustively sampled information provided by the aerial photography regardless of the considered TE. Nevertheless, for Cd, Pb, and Zn, the RI of accuracy was less than 20% between the two most accurate methods (KED-SOC75P and CC-SOC75P) and standard cokriging in which the information provided by the aerial photography is ignored when mapping. The sensitivity of KED-SOC75P and CC-SOC75P approaches to the sampling density of the target variables (TE) was assessed using 10 random subsets of different sizes (25 and 33 observations) drawn from a prediction set that includes 50 data. Results have shown that the TE estimates by KED-SOC75P and CC-SOC75P approaches using only 25 TE samples were much more accurate than the estimates performed by OK50 and COK-TE50SOC75 approaches that use the whole samples of the prediction set. Moreover, the RI of accuracy was reduced by less than 15% if the original sampling density was reduced by a third.

摘要

在位于皮埃尔勒赖-贝桑库尔平原(巴黎西北约24公里处)的一个15公顷的受污染场地中,人们采用了各种方法来估算未采样地点的金属污染物元素(TE)含量。在整个研究区域的规则正方形网格的每个网格上随机采集了87个土壤耕层样本,并测量了镉、铬、铜、镍、铅和锌的总含量。从87个样本中随机选取的第一组50次测量用于预测,另一组37次测量用于验证。在75个地点测量了表土有机碳含量(SOC),其中50次测量与TE测量地点相同。选择了一张显示裸露土壤的研究区域航空照片,用于关联亮度强度和SOC。所使用的制图程序有普通克里金法(OK)、协同克里金法(COK)、同位协同克里金法(CC)和带外部漂移的克里金法(KED)。在KED和TE的CC中用作详尽采样信息的SOC图分别通过KED和CC程序获得,考虑了75次SOC测量以及航空照片裸露土壤可见波段提供的数值计数的亮度强度。因此,对于每种TE,生成了四张图:两张由KED和CC程序生成的图(KED-SOC75P、CC-SOC75P),另一张由标准协同克里金法(COK-TE50SOC75)生成,该方法考虑了TE预测集加上75次SOC测量,最后一张对应于仅根据预测集测量值通过普通克里金法估计的图(OK50)。根据验证集(观测数据)和预测值计算了三个指标:(1)平均预测误差(ME)和平均绝对预测误差(|ME|);(2)均方根误差(RMSE);(3)精度的相对提高(RI),以及残差分析。在37个测试数据上,结果表明,系统地说,更准确的预测是通过考虑由KED根据75次SOC测量和航空照片亮度值预测的SOC图的克里金法获得的(KED-SOC75P),紧随其后的是CC-SOC75P程序,但铜和锌的情况除外,在这两种元素上CC-SOC75P似乎比KED-SOC75P略准确。关于预测方法之间精度的RI,结果再次证实了考虑SOC数据集以及航空摄影提供的详尽采样信息的益处,无论所考虑的TE如何。然而,对于镉、铅和锌,两种最准确的方法(KED-SOC75P和CC-SOC75P)与标准克里金法之间的精度RI小于20%,在制图时标准克里金法忽略了航空摄影提供的信息。使用从包含50个数据的预测集中抽取的10个不同大小(25和33个观测值)的随机子集,评估了KED-SOC75P和CC-SOC75P方法对目标变量(TE)采样密度的敏感性。结果表明,仅使用25个TE样本的KED-SOC75P和CC-SOC75P方法对TE的估计比使用预测集全样本的OK50和COK-TE50SOC75方法更准确得多。此外,如果将原始采样密度降低三分之一,精度的RI降低不到15%。

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