Piairo Helena, Menezes Raquel, Sousa Inês, Figueira Rui, Sérgio Cecília
Department of Mathematics and Applications, University of Minho, Campus de Azurém, 4800-058, Guimarãs, Potugal,
Environ Sci Pollut Res Int. 2014 Dec;21(23):13420-33. doi: 10.1007/s11356-014-3125-z. Epub 2014 Jul 11.
The use of mosses as biomonitors operates as an indicator of their concentration in the environment, becoming a methodology which provides a significant interpretation in terms of environmental quality. The different types of pollution are variables that can not be measured directly in the environment - latent variables. Therefore, we propose the use of factor analysis to estimate these variables in order to use them for spatial modelling. On the contrary, the main aim of the commonly used principal components analysis method is to explain the variability of observed variables and it does not permit to explicitly identify the different types of environmental contamination. We propose to model the concentration of each heavy metal as a linear combination of its main sources of pollution, similar to the case of multiple regression where these latent variables are identified as covariates, though these not being observed. Moreover, through the use of geostatistical methodologies, we suggest to obtain maps of predicted values for the different sources of pollution. With this, we summarize the information acquired from the concentration measurements of the various heavy metals, and make possible to easily determine the locations that suffer from a particular source of pollution.
将苔藓用作生物监测器可作为其在环境中浓度的指标,成为一种能对环境质量作出重要解读的方法。不同类型的污染是无法在环境中直接测量的变量——潜在变量。因此,我们建议使用因子分析来估计这些变量,以便将其用于空间建模。相反,常用的主成分分析方法的主要目的是解释观测变量的变异性,它不允许明确识别不同类型的环境污染。我们建议将每种重金属的浓度建模为其主要污染源的线性组合,类似于多元回归的情况,其中这些潜在变量被识别为协变量,尽管它们无法观测到。此外,通过使用地统计方法,我们建议获取不同污染源的预测值地图。这样,我们总结了从各种重金属浓度测量中获得的信息,并使得能够轻松确定受特定污染源影响的位置。