Alkarkhi Abbas F M, Ahmad Anees, Ismail Norli, Easa Azhar Mat
Environmental Technology Division, School of Industrial Technology, Universiti Sains Malaysia, 11800 Penang, Malaysia.
Environ Monit Assess. 2008 Aug;143(1-3):179-86. doi: 10.1007/s10661-007-9966-x. Epub 2007 Sep 27.
Multivariate statistical techniques such as multivariate analysis of variance (MANOVA) and discriminant analysis (DA) were applied for analyzing the data obtained from two rivers in the Penang State of Malaysia for the concentration of heavy metal ions (As, Cr, Cd, Zn, Cu, Pb, and Hg) using a flame atomic absorption spectrometry (F-AAS) for Cr, Cd, Zn, Cu, Pb, As and cold vapor atomic absorption spectrometry (CV-AAS) for Hg. The two locations of interest with 20 sampling points of each location were Kuala Juru (Juru River) and Bukit Tambun (Jejawi River). MANOVA showed a strong significant difference between the two rivers in terms of heavy metal concentrations in water samples. DA gave the best result to identify the relative contribution for all parameters in discriminating (distinguishing) the two rivers. It provided an important data reduction as it used four parameters (Zn, Pb, Cd and Cr) affording 100% correct assignations. Results indicated that the two rivers were different in terms of heavy metals concentrations in water, and the major difference was due to the contribution of Zn. A negative correlation was found between discriminate functions (DF) and Cr and As, whereas positive correlation was exhibited with other heavy metals. Therefore, DA allowed a reduction in the dimensionality of the data set, delineating a few indicator parameters responsible for large variations in heavy metal concentrations. Correlation matrix between the parameters exhibited a strong evidence of mutual dependence of these metals.
多元统计技术,如多元方差分析(MANOVA)和判别分析(DA),被用于分析从马来西亚槟城州的两条河流中获取的数据,这些数据是关于重金属离子(砷、铬、镉、锌、铜、铅和汞)的浓度,其中铬、镉、锌、铜、铅、砷采用火焰原子吸收光谱法(F-AAS)测定,汞采用冷蒸气原子吸收光谱法(CV-AAS)测定。两个感兴趣的地点,每个地点有20个采样点,分别是瓜拉朱律(朱律河)和武吉淡汶(杰贾维河)。MANOVA显示,两条河流的水样中重金属浓度存在显著差异。DA在区分(辨别)两条河流时,能给出所有参数相对贡献的最佳结果。它提供了重要的数据简化,因为它使用了四个参数(锌、铅、镉和铬),正确分类率达100%。结果表明,两条河流的水中重金属浓度不同,主要差异在于锌的贡献。判别函数(DF)与铬和砷呈负相关,而与其他重金属呈正相关。因此,DA能够降低数据集的维度,确定一些导致重金属浓度大幅变化的指示参数。参数之间的相关矩阵有力地证明了这些金属之间存在相互依赖关系。