Islamic Azad University, Marvdasht, Fars, Iran.
J Environ Manage. 2010 Mar-Apr;91(4):852-60. doi: 10.1016/j.jenvman.2009.11.001. Epub 2009 Dec 28.
In this paper, principal component analysis (PCA) and hierarchical cluster analysis (CA) methods have been used to investigate the water quality of Jajrood River (Iran) and to assess and discriminate the relative magnitude of anthropogenic and "natural" influences on the quality of river water. T, EC, pH, TDS, NH(4), NO(3), NO(2), Turb., T.Hard., Ca, Mg, Na, K, Cl, SO(4), SiO(2) as physicochemical and TC, FC as biochemical variables have been analyzed in the water samples collected every month over a three-year period from 18 sampling stations along a 50 km section of Jajrood River that is under the influence of anthropogenic and natural changes. Exploratory analysis of experimental data has been carried out by means of PCA and CA in an attempt to discriminate sources of variation in water quality. PCA has allowed identification of a reduced number of mean 5 varifactors, pointing out 85% of both temporal and spatial changes. CA classified similar water quality stations and indicated Out-Meygoon as the most polluted one. Ahar, Baghgol, Rooteh, Befor Zaygan, Fasham, Roodak and Lashgarak were identified as affected by organic pollution. A Scree plot of stations in the first and second extracted components on PCA also gave us a classification of stations due to the similarity of pollution sources. CA and PCA led to similar results, though Out-Meygoon was identified as the most polluted station in both methods. Box-plots showed that PCA could approximately demonstrate temporal and spatial variations. CA gave us an overview of the problem and helped us to classify and better explain the PCA results.
本文采用主成分分析(PCA)和层次聚类分析(CA)方法研究了 Jajrood 河(伊朗)的水质,并评估和区分了人为和“自然”因素对河水质量的相对影响程度。在三年的时间里,从受人为和自然变化影响的 Jajrood 河 50 公里河段的 18 个采样点采集水样,分析了 T、EC、pH、TDS、NH(4)、NO(3)、NO(2)、Turb.、T.Hard.、Ca、Mg、Na、K、Cl、SO(4)、SiO(2)等理化参数以及 TC、FC 等生化变量。通过 PCA 和 CA 对实验数据进行了探索性分析,试图区分水质变化的来源。PCA 允许识别出数量较少的均值 5 个变异因素,指出了 85%的时间和空间变化。CA 对水质相似的采样点进行了分类,并指出 Out-Meygoon 是污染最严重的一个。PCA 第一和第二提取分量上的采样点 scree 图也对我们进行了分类,因为污染来源相似。CA 和 PCA 得到了相似的结果,尽管 Out-Meygoon 被确定为这两种方法中污染最严重的站点。箱线图表明,PCA 可以大致说明时间和空间的变化。CA 给出了问题的概述,并帮助我们对 PCA 结果进行分类和更好地解释。