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Assessment of Water Quality using Multivariate Statistical Techniques: A Case Study of the Nakdong River Basin, Korea

机译:用多元统计技术评估水质:以韩国洛东河流域为例

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摘要

This study estimated spatial and seasonal variation of water quality to understand characteristics of Nakdong river basin, Korea. All together 11 parameters (discharge, water temperature, dissolved oxygen, 5-day biochemical oxygen demand, chemical oxygen demand, pH, suspended solids, electrical conductivity, total nitrogen, total phosphorus, and total organic carbon) at 22 different sites for the period of 2003-2011 were analyzed using multivariate statistical techniques (duster analysis, principal component analysis and factor analysis). Hierarchical cluster analysis grouped whole river basin into three zones, i.e., relatively less polluted (LP), medium polluted (MP) and highly polluted (HP) based on similarity of water quality characteristics. The results of factor analysis/principal component analysis explained up to 83.0%, 81.7% and 82.7% of total variance in water quality data of LP, MP, and HP zones, respectively. The rotated components of PCA obtained from factor analysis indicate that the parameters responsible for water quality variations were mainly related to discharge and total pollution loads (non-point pollution source) in LP, MP and HP areas; organic and nutrient pollution in LP and HP zones; and temperature, DO and TN in LP zone. This study demonstrates the usefulness of multivariate statistical techniques for analysis and interpretation of multi-parameter, multi-location and multi-year data sets.
机译:本研究估算了水质的时空变化,以了解韩国洛东河流域的特征。在此期间内,在22个不同地点汇总了11个参数(排放量,水温,溶解氧,5天生化需氧量,化学需氧量,pH,悬浮固体,电导率,总氮,总磷和总有机碳)使用多元统计技术(除尘器分析,主成分分析和因子分析)分析了2003-2011年的数据。层次聚类分析基于水质特征的相似性,将整个流域分为三个区域,即污染程度相对较低(LP),中等污染程度(MP)和高污染程度(HP)。因子分析/主要成分分析的结果分别解释了LP,MP和HP区水质数据的总差异分别高达83.0%,81.7%和82.7%。通过因子分析得到的PCA的旋转分量表明,造成水质变化的参数主要与LP,MP和HP地区的排放和总污染负荷(非点源污染)有关。 LP和HP区域的有机物和营养物污染;和温度,溶解氧和总氮在LP区。这项研究证明了多元统计技术对于分析和解释多参数,多位置和多年数据集的有用性。

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