Huo Xiao-Ni, Li Hong, Sun Dan-Feng, Zhou Lian-Di, Li Bao-Guo
Beijing Academy of Agriculture and Forestry, Beijing 100089, China.
Int J Environ Res Public Health. 2012 Mar;9(3):995-1017. doi: 10.3390/ijerph9030995. Epub 2012 Mar 19.
Production of high quality interpolation maps of heavy metals is important for risk assessment of environmental pollution. In this paper, the spatial correlation characteristics information obtained from Moran's I analysis was used to supplement the traditional geostatistics. According to Moran's I analysis, four characteristics distances were obtained and used as the active lag distance to calculate the semivariance. Validation of the optimality of semivariance demonstrated that using the two distances where the Moran's I and the standardized Moran's I, Z(I) reached a maximum as the active lag distance can improve the fitting accuracy of semivariance. Then, spatial interpolation was produced based on the two distances and their nested model. The comparative analysis of estimation accuracy and the measured and predicted pollution status showed that the method combining geostatistics with Moran's I analysis was better than traditional geostatistics. Thus, Moran's I analysis is a useful complement for geostatistics to improve the spatial interpolation accuracy of heavy metals.
高质量重金属插值地图的生成对于环境污染风险评估至关重要。本文利用从莫兰指数(Moran's I)分析中获得的空间相关特征信息来补充传统的地质统计学方法。根据莫兰指数分析,得到了四个特征距离,并将其用作有效滞后距离来计算半方差。对半方差最优性的验证表明,将莫兰指数和标准化莫兰指数Z(I)达到最大值时的两个距离用作有效滞后距离,可以提高半方差的拟合精度。然后,基于这两个距离及其嵌套模型进行空间插值。对估计精度以及实测和预测污染状况的对比分析表明,将地质统计学与莫兰指数分析相结合的方法优于传统地质统计学方法。因此,莫兰指数分析是对地质统计学的有益补充,可提高重金属空间插值的精度。