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Assessment of Beijing surface water quality based on principal factor analysis and cluster analysis

机译:基于主因子分析和聚类分析的北京市地表水水质评价

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According to the field data of surface water quality from Beijing Water Authority, this paper demonstrates a case study on how to utilize principle factor analysis and hierarchical cluster analysis to extract a limited number of principal factors that can best describe the original data and to identify the patterns of surface water quality pollution. 10 auto-monitoring sites dispense in Beijing are selected as study objects, and according to actual monitoring data of comprehensive database from Beijing Water Authority, 9 indicators including: WT, PH, NO3N, NH4N, DO, CNDR, TRB, DLS and CHLA are selected for principle factor analysis and hierarchical cluster analysis. Based on the monitoring data during 2010, principle factor analysis is utilized to reflect those chemical data with the greatest correlation, and the results identify four principal factors representing 92.432% of cumulative variance (or total information). By utilizing principle factor analysis, thermal pollution factor, nitrate pollution factor, plankton pollution factor and ammonia nitrogen pollution factor reasonably interpret the main factors of surface water quality pollution. Based on factors' scores, the level of the comprehensive water quality pollution about the 10 current auto-monitoring sites is obtained, by which condition of surface water quality pollution is sorted. The results show that Gaobeidian and Sanjiadian are heavily polluted, which are tally with Beijing Water Resources Bulletin of 2010. Further more, in support of the results obtained by principle factor analysis, 5 clusters are assigned by HCA to evaluate the similarities of water quality among the 10 auto-monitoring sites. In allusion to the different patterns of surface water quality pollution and the influencing factors, suitable microscopic measures can be proposed for different areas, which can provide a base for macroscopic planning of the city.
机译:根据北京市水务局的地表水水质实地数据,本文以案例分析为例,说明如何利用主因子分析和层次聚类分析来提取有限数量的主因子,这些主因子可以最好地描述原始数据并识别出原水。地表水水质污染的模式。选择北京的10个自动监测点作为研究对象,并根据北京市水务局综合数据库的实际监测数据,确定WT,PH,NO 3 N,NH 4 N,DO,CNDR,TRB,DLS和CHLA进行主因子分析和层次聚类分析。根据2010年的监测数据,利用主因子分析来反映那些具有最大相关性的化学数据,结果确定了代表92.432%累积方差(或总信息)的四个主因子。通过运用主因子分析,热污染因子,硝酸盐污染因子,浮游生物污染因子和氨氮污染因子可以合理地解释地表水水质污染的主要因素。根据因子得分,得出当前10个自动监测点的综合水质污染水平,并分类为地表水水质污染状况。结果表明,高碑店和三家店受到严重污染,与2010年《北京水资源通报》相符。此外,为支持通过主因子分析获得的结果,HCA分配了5个聚类,以评估水质之间的相似性。 10个自动监视站点。针对地表水水质污染的不同模式及其影响因素,可以针对不同地区提出合适的微观措施,为城市宏观规划提供依据。

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