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Modeling and mapping of cadmium in soils based on qualitative and quantitative auxiliary variables in a cadmium contaminated area

机译:基于定性和定量辅助变量的镉污染区土壤中镉的建模和绘图

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摘要

The aim of this study was to measure the improvement in mapping accuracy of spatial distribution of Cd in soils by using geostatistical methods combined with auxiliary factors, especially qualitative variables. Significant correlations between Cd content and correlation environment variables that are easy to obtain (such as topographic factors, distance to residential area, land use types and soil types) were analyzed systematically and quantitatively. Based on 398 samples collected from a Cd contaminated area (Hunan Province, China), we estimated the spatial distribution of Cd in soils by using spatial interpolation models, including ordinary kriging (OK), and regression kriging (RK) with each auxiliary variable, all quantitative variables (RKWQ) and all auxiliary variables (RKWA). Results showed that mapping with RK was more consistent with the sampling data of the spatial distribution of Cd in the study area than mapping with OK. The performance indicators (smaller mean error, mean absolute error, root mean squared error values and higher relative improvement of RK than OK) indicated that the introduction of auxiliary variables can improve the prediction accuracy of Cd in soils for which the spatial structure could not be well captured by point-based observation (nugget to sill ratio = 0.76) and strong relationships existed between variables to be predicted and auxiliary variables. The comparison of RKWA with RKWQ further indicated that the introduction of qualitative variables improved the prediction accuracy, and even weakened the effects of quantitative factors. Furthermore, the significantly different relative improvement with similar R2 and varying spatial dependence showed that a reasonable choice of auxiliary variables and analysis of spatial structure of regression residuals are equally important to ensure accurate predictions.
机译:这项研究的目的是通过结合辅助因素,特别是定性变量的地统计学方法来测量土壤中Cd的空间分布制图准确性的提高。系统地和定量地分析了镉含量与易于获得的相关环境变量之间的显着相关性(例如地形因素,到居民区的距离,土地利用类型和土壤类型)。根据从Cd污染地区(中国湖南省)收集的398个样本,我们使用空间插值模型(包括普通克里格法(OK)和回归克里金法(RK)和每个辅助变量)估算了土壤中Cd的空间分布,所有定量变量(RKWQ)和所有辅助变量(RKWA)。结果表明,用RK作图比用OK作图更符合研究区Cd空间分布的采样数据。性能指标(较小的平均误差,平均绝对误差,均方根误差值以及相对于OK的RK的相对改进更高)表明,引入辅助变量可以提高土壤中镉的预测精度,而土壤的空间结构是无法确定的。通过基于点的观测得到很好的结果(掘金与门槛之比= 0.76),并且要预测的变量和辅助变量之间存在很强的关系。 RKWA与RKWQ的比较进一步表明,定性变量的引入提高了预测的准确性,甚至减弱了定量因素的影响。此外,具有相似的R2和变化的空间依赖性的显着不同的相对改善表明,辅助变量的合理选择和回归残差的空间结构分析对于确保准确的预测同样重要。

著录项

  • 来源
    《The Science of the Total Environment》 |2017年第15期|430-439|共10页
  • 作者单位

    Beijing Research Center for Agricultural Standards and Testing, Beijing Academy of Agriculture and Forestry Sciences, Beijing 100097, China,Beijing Municipal Key Laboratory of Agriculture Environment Monitoring, Beijing 100097, China;

    Beijing Research Center for Agricultural Standards and Testing, Beijing Academy of Agriculture and Forestry Sciences, Beijing 100097, China,Beijing Municipal Key Laboratory of Agriculture Environment Monitoring, Beijing 100097, China,Collaborative Innovation Center for Key Technology of Smart Irrigation District in Hubei, Yichang 443002, China;

    Beijing Research Center for Agricultural Standards and Testing, Beijing Academy of Agriculture and Forestry Sciences, Beijing 100097, China,Beijing Municipal Key Laboratory of Agriculture Environment Monitoring, Beijing 100097, China;

    Agro-Environmental Protection Institute of Ministry of Agriculture, Tianjin 300191, China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    heavy metals; spatial prediction; environmental variable; variability; regression kriging;

    机译:重金属;空间预测环境变量变化性;回归克里金法;

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