Zhao Yongcun, Xu Xianghua, Sun Weixia, Huang Biao, Darilek Jeremy Landon, Shi Xuezheng
State Key Laboratory of Soil and Sustainable Agriculture, Institute of Soil Science, Chinese Academy of Sciences, Nanjing, 210008, China.
Environ Monit Assess. 2008 Mar;138(1-3):343-55. doi: 10.1007/s10661-007-9802-3. Epub 2007 May 25.
Accurate characterization of heavy-metal contaminated areas and quantification of the uncertainties inherent in spatial prediction are crucial for risk assessment, soil remediation, and effective management recommendations. Topsoil samples (0-15 cm) (n=547) were collected from the Zhangjiagang suburbs of China. The sequential indicator co-simulation (SIcS) method was applied for incorporating the soft data derived from soil organic matter (SOM) to simulate Hg concentrations, map Hg contaminated areas, and evaluate the associated uncertainties. High variability of Hg concentrations was observed in the study area. Total Hg concentrations varied from 0.004 to 1.510 mg kg(-1) and the coefficient of variation (CV) accounts for 70%. Distribution patterns of Hg were identified as higher Hg concentrations occurred mainly at the southern part of the study area and relatively lower concentrations were found in north. The Hg contaminated areas, identified using the Chinese Environmental Quality Standard for Soils critical values through SIcS, were limited and distributed in the south where the SOM concentration is high, soil pH is low, and paddy soils are the dominant soil types. The spatial correlations between Hg and SOM can be preserved by co-simulation and the realizations generated by SIcS represent the possible spatial patterns of Hg concentrations without a smoothing effect. Once the Hg concentration critical limit is given, SIcS can be used to map Hg contaminated areas and quantitatively assess the uncertainties inherent in the spatial prediction by setting a given critical probability and calculating the joint probability of the obtained areas.
准确表征重金属污染区域并量化空间预测中固有的不确定性,对于风险评估、土壤修复及有效的管理建议而言至关重要。从中国张家港郊区采集了表土样本(0 - 15厘米)(n = 547)。应用序列指示协同模拟(SIcS)方法,纳入源自土壤有机质(SOM)的软数据,以模拟汞浓度、绘制汞污染区域图并评估相关不确定性。研究区域内汞浓度变化很大。总汞浓度在0.004至1.510毫克/千克(-1)之间变化,变异系数(CV)为70%。汞的分布模式表现为较高的汞浓度主要出现在研究区域的南部,而北部的浓度相对较低。通过SIcS使用中国土壤环境质量标准临界值确定的汞污染区域有限,分布在南部,那里SOM浓度高、土壤pH值低且水稻土是主要土壤类型。通过协同模拟可以保留汞与SOM之间的空间相关性,并且SIcS生成的实现结果代表了汞浓度可能的空间模式,而没有平滑效应。一旦给出汞浓度临界限值,SIcS可用于绘制汞污染区域图,并通过设定给定的临界概率并计算所得区域的联合概率,定量评估空间预测中固有的不确定性。