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Spatio-Temporal Patterns and Source Identification of Water Pollution in Lake Taihu (China)

机译:spatio-Temporal patterns and source Identification of Water pollution in Lake Taihu (China)

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摘要

Various multivariate methods were used to analyze datasets of river water quality for 11 variables measured at 20 different sites surrounding Lake Taihu from 2006 to 2010 (13,200 observations), to determine temporal and spatial variations in river water quality and to identify potential pollution sources. Hierarchical cluster analysis (CA) grouped the 12 months into two periods (May to November, December to the next April) and the 20 sampling sites into two groups (A and B) based on similarities in river water quality characteristics. Discriminant analysis (DA) was important in data reduction because it used only three variables (water temperature, dissolved oxygen (DO) and five-day biochemical oxygen demand (BOD5)) to correctly assign about 94% of the cases and five variables (petroleum, volatile phenol, dissolved oxygen, ammonium nitrogen and total phosphorus) to correctly assign >88.6% of the cases. In addition, principal component analysis (PCA) identified four potential pollution sources for Clusters A and B: industrial source (chemical-related, petroleum-related or N-related), domestic source, combination of point and non-point sources and natural source. The Cluster A area received more industrial and domestic pollution-related agricultural runoff, whereas Cluster B was mainly influenced by the combination of point and non-point sources. The results imply that comprehensive analysis by using multiple methods could be more effective for facilitating effective management for the Lake Taihu Watershed in the future.
机译:2006年至2010年,采用多种方法对太湖周围20个不同地点测量的11个变量的河水质量数据集进行了分析(13,200个观测值),以确定河水水质的时空变化并确定潜在的污染源。基于河流水质特征的相似性,层次聚类分析(CA)将12个月分为两个时期(5月至11月,12月至次年4月),并将20个采样点分为两组(A和B)。判别分析(DA)在数据减少中非常重要,因为它仅使用三个变量(水温,溶解氧(DO)和五天生化需氧量(BOD5))正确分配了约94%的病例和五个变量(石油,挥发性苯酚,溶解氧,铵态氮和总磷)正确地确定了> 88.6%的情况。此外,主成分分析(PCA)确定了A组和B组的四个潜在污染源:工业源(化学相关,石油相关或N相关),生活源,点和非点源组合以及自然源。 A组区域收到更多与工业和家庭污染有关的农业径流,而B组区域主要受点源和非点源组合的影响。结果表明,采用多种方法进行综合分析可能会更有效地促进将来对太湖流域的有效管理。

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