Faculty of Natural Resources, University of Zabol, 98615, Zabol, Iran.
Environ Monit Assess. 2013 Oct;185(10):8649-58. doi: 10.1007/s10661-013-3201-8. Epub 2013 Apr 21.
This study investigates the applicability of multivariate statistical techniques including cluster analysis (CA), discriminant analysis (DA), and factor analysis (FA) for the assessment of seasonal variations in the surface water quality of tropical pastures. The study was carried out in the TPU catchment, Kuala Lumpur, Malaysia. The dataset consisted of 1-year monitoring of 14 parameters at six sampling sites. The CA yielded two groups of similarity between the sampling sites, i.e., less polluted (LP) and moderately polluted (MP) at temporal scale. Fecal coliform (FC), NO3, DO, and pH were significantly related to the stream grouping in the dry season, whereas NH3, BOD, Escherichia coli, and FC were significantly related to the stream grouping in the rainy season. The best predictors for distinguishing clusters in temporal scale were FC, NH3, and E. coli, respectively. FC, E. coli, and BOD with strong positive loadings were introduced as the first varifactors in the dry season which indicates the biological source of variability. EC with a strong positive loading and DO with a strong negative loading were introduced as the first varifactors in the rainy season, which represents the physiochemical source of variability. Multivariate statistical techniques were effective analytical techniques for classification and processing of large datasets of water quality and the identification of major sources of water pollution in tropical pastures.
本研究探讨了多元统计技术(包括聚类分析(CA)、判别分析(DA)和因子分析(FA))在评估热带牧场地表水季节性变化中的适用性。该研究在马来西亚吉隆坡的 TPU 集水区进行。数据集包括在六个采样点进行的为期 1 年的 14 个参数监测。CA 在时间尺度上产生了两组采样点之间的相似性,即污染较少(LP)和中度污染(MP)。粪大肠菌群(FC)、NO3、DO 和 pH 在旱季与溪流分组显著相关,而 NH3、BOD、大肠杆菌和 FC 在雨季与溪流分组显著相关。区分时间尺度聚类的最佳预测因子分别为 FC、NH3 和 E. coli。FC、E. coli 和 BOD 具有很强的正负荷,被引入到旱季的第一个变异因子中,这表明了变异性的生物来源。EC 具有很强的正负荷和 DO 具有很强的负负荷,被引入到雨季的第一个变异因子中,代表了变异性的理化来源。多元统计技术是对水质大数据进行分类和处理以及识别热带牧场主要水污染来源的有效分析技术。