Zhang Xiuying, Lin Fenfang, Jiang Yugen, Wang Ke, Wong Mike T F
Institution of Remote Sensing & Information System Application, Zhejiang University, Hangzhou 310029, China.
Environ Pollut. 2008 Dec;156(3):1260-7. doi: 10.1016/j.envpol.2008.03.009. Epub 2008 May 2.
Recent enhanced urbanization and industrialization in China have greatly influenced soil Cu content. To better understand the magnitude of Cu contamination in soil, it is essential to understand its spatial distribution and estimate its values at unsampled points. However, Kriging often can not achieve satisfactory estimates when soil Cu data have weak spatial dependence. The proposed classification and regression tree method (CART) simulated Cu content using environmental variables, and it had no special data requirements. The Cu concentration classes estimated by CART had accuracy in attribution to the right classes of 80.5%, this is 29.3% better than ordinary Kriging method. Moreover, CART provides some insight into the sources of current soil Cu contents. In our study, low soil Cu accumulation was driven by terrain characteristic, agriculture land uses, and soil properties; while high Cu concentration resulted from industrial and agricultural land uses.
近年来,中国城市化和工业化进程加快,对土壤铜含量产生了重大影响。为了更好地了解土壤中铜污染的程度,有必要了解其空间分布并估计未采样点的值。然而,当土壤铜数据的空间依赖性较弱时,克里金法往往无法获得令人满意的估计结果。本文提出的分类回归树法(CART)利用环境变量模拟铜含量,对数据无特殊要求。CART法估计的铜浓度类别归属于正确类别的准确率为80.5%,比普通克里金法高出29.3%。此外,CART法为当前土壤铜含量的来源提供了一些见解。在我们的研究中,低土壤铜积累是由地形特征、农业土地利用和土壤性质驱动的;而高铜浓度则是由工业和农业土地利用造成的。