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Use of principal component analysis, factor analysis and discriminant analysis to evaluate spatial and temporal variations in water quality of the Mekong River

机译:使用主成分分析,因子分析和判别分析来评估湄公河水质的时空变化

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Multivariate statistical techniques, such as principal component analysis (PCA), factor analysis (FA) and discriminant analysis (DA), were applied for the evaluation of temporal/spatial variations and the interpretation of a large complex water quality dataset of the Mekong River using data sets generated during 6 years (1995-2000) of monitoring of 18 parameters (16,848 observations) at 13 different sites. The results of PCA/FA revealed that most of the variations are explained by dissolved mineral salts along the whole Mekong River and in individual stations. Discriminant analysis showed the best results for data reduction and pattern recognition during both spatial and temporal analysis. Spatial DA revealed 8 parameters (total suspended solids, calcium, sodium, alkalinity, chloride, iron, nitrate nitrogen, total phosphorus) and 12 parameters (total suspended solids, calcium, sodium, potassium, alkalinity, chloride, sulfate, iron, nitrate nitrogen, total phosphorus, silicon, dissolved oxygen) are responsible for significant variations between monitoring regions and countries, respectively. Temporal DA revealed 3 parameters (conductivity, alkalinity, nitrate nitrogen) between monitoring regions; 3 parameters (total suspended solids, conductivity, silicon) in midstream region; and 2 parameters (conductivity, silicon) in upstream, lower stream and delta region which are the most significant parameters to discriminate between the four different seasons (spring, summer, autumn, winter). Thus, this study illustrates the usefulness of principal component analysis, factor analysis and discriminant analysis for the analysis and interpretation of complex datasets and in water quality assessment, identification of pollution sources/factors, and understanding of temporal and spatial variations of water quality for effective river water quality management.
机译:多变量统计技术,例如主成分分析(PCA),因子分析(FA)和判别分析(DA),被用于评估时空变化以及使用以下方法解释湄公河的大型复杂水质数据集这些数据集是在6年(1995-2000年)期间对13个不同站点的18个参数(16,848个观测值)进行监控生成的。 PCA / FA的结果表明,大部分变化是由整个湄公河和各个站点中溶解的矿物盐造成的。判别分析显示了在空间和时间分析过程中数据缩减和模式识别的最佳结果。空间DA显示8个参数(总悬浮固体,钙,钠,碱度,氯化物,铁,硝酸盐氮,总磷)和12个参数(总悬浮固体,钙,钠,钾,碱度,氯化物,硫酸盐,铁,硝酸盐氮,总磷,硅,溶解氧)分别导致监测区域和国家之间的重大差异。时间DA揭示了监测区域之间的3个参数(电导率,碱度,硝酸盐氮);中游区域的3个参数(总悬浮固体,电导率,硅);上游,下游和三角洲地区的2个参数(电导率,硅)是区分四个不同季节(春季,夏季,秋季,冬季)的最重要参数。因此,本研究说明了主成分分析,因子分析和判别分析在分析和解释复杂数据集以及水质评估,识别污染源/因子以及理解水质时空变化方面的有效性。河流水质管理。

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