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Application of Principal Component Analysis & Multiple Regression Models in Surface Water Quality Assessment

机译:主成分分析与多元回归模型在地表水水质评价中的应用

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Principal component analysis (PCA) and multiple linear regressions were applied on the surface water quality data with the aim of identifying the pollution sources and their contribution toward water quality variation. Surface water samples were collected from four different sampling points along Jakara River. Fifteen physico-chemical water quality parameters were selected for analysis: dissolved oxygen (DO), biochemical oxygen demand (BOD5), chemical oxygen demand (COD), suspended solids (SS), pH, conductivity, salinity, temperature, nitrogen in the form of ammonia (NH3), turbidity, dissolved solids (DS), total solids (TS), nitrates (NO3), chloride (Cl) and phosphates (PO43-). PCA was used to investigate the origin of each water quality parameters and yielded five varimax factors with 83.1% total variance and in addition PCA identified five latent pollution sources namely: ionic, erosion, domestic, dilution effect and agricultural run-off. Multiple linear regressions identified the contribution of each variable with significant value (r 0.970, R2 0.942, p < 0.01).
机译:为了识别污染源及其对水质变化的贡献,对地表水水质数据进行了主成分分析(PCA)和多元线性回归。从Jakara河沿岸的四个不同采样点收集了地表水样本。选择了15个理化水质参数进行分析:溶解氧(DO),生化需氧量(BOD5),化学需氧量(COD),悬浮固体(SS),pH,电导率,盐度,温度,形式的氮氨(NH3),浊度,溶解固体(DS),总固体(TS),硝酸盐(NO3),氯化物(Cl)和磷酸盐(PO43-)。 PCA用于调查每个水质参数的来源,并产生了5个最大方差因子,总方差为83.1%,此外PCA还确定了五个潜在的污染源,即离子,侵蚀,家庭,稀释效应和农业径流。多元线性回归确定了每个变量的贡献值(r 0.970,R2 0.942,p <0.01)。

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