Juahir Hafizan, Zain Sharifuddin Md, Aris Ahmad Zaharin, Yusoff Mohd Kamil, Mokhtar Mazlin Bin
Department of Environmental Sciences, Faculty of Environmental Studies, Universiti Putra Malaysia, 43400 UPM Serdang, Selangor, Malaysia.
J Environ Monit. 2010 Jan;12(1):287-95. doi: 10.1039/b907306j. Epub 2009 Sep 4.
The present study deals with the assessment of Langat River water quality with some chemometrics approaches such as cluster and discriminant analysis coupled with an artificial neural network (ANN). The data used in this study were collected from seven monitoring stations under the river water quality monitoring program by the Department of Environment (DOE) from 1995 to 2002. Twenty three physico-chemical parameters were involved in this analysis. Cluster analysis successfully clustered the Langat River into three major clusters, namely high, moderate and less pollution regions. Discriminant analysis identified seven of the most significant parameters which contribute to the high variation of Langat River water quality, namely dissolved oxygen, biological oxygen demand, pH, ammoniacal nitrogen, chlorine, E. coli, and coliform. Discriminant analysis also plays an important role as an input selection parameter for an ANN of spatial prediction (pollution regions). The ANN showed better prediction performance in discriminating the regional area with an excellent percentage of correct classification compared to discriminant analysis. Multivariate analysis, coupled with ANN, is proposed, which could help in decision making and problem solving in the local environment.
本研究采用聚类分析、判别分析以及人工神经网络(ANN)等化学计量学方法对兰加特河水质进行评估。本研究使用的数据是环境部(DOE)在1995年至2002年的河流水质监测项目中从七个监测站收集的。该分析涉及23个物理化学参数。聚类分析成功地将兰加特河分为三大类,即高污染区、中度污染区和低污染区。判别分析确定了导致兰加特河水质变化最大的七个最重要参数,即溶解氧、生化需氧量、pH值、氨氮、氯、大肠杆菌和大肠菌群。判别分析作为空间预测人工神经网络(污染区域)的输入选择参数也起着重要作用。与判别分析相比,人工神经网络在区分区域方面表现出更好的预测性能,正确分类百分比很高。提出了将多变量分析与人工神经网络相结合的方法,这有助于当地环境中的决策和问题解决。