Spatio-Temporal Variation Characteristics of Water Quality and Its Response to Climate: A Case Study in Yihe River Basin

J. Ren, H. Liu, S. Ding, Z. Cao, Civil, Zhengzhou China Law
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引用次数: 2

Abstract

. Spatial-temporal patterns of river water quality, the identification of pollution sources and contaminated areas are crucial to water environment protection and sustainable development of the river basin. In this study, spatial-temporal characteristics of river water quality in the Yihe river basin were investigated through multivariate analysis methods, including principal component analysis (PCA), cluster analysis (CA), discriminant analysis (DA), and one-way ANOVA. The water quality indicators (Hydrogen ion concentration (pH), electric conductivity (EC), dissolved oxygen (DO), turbidity, chemical oxygen demand (COD), total phosphorus (TP), and ammonia nitrogen (NH 4+ -N)) were investigated at 17 sampling sites in three periods (i.e., high-, mean-, low flow period) during 2016 ~ 2017. The results show that: (1) PCA served to extract and recognize the most significant indicators affecting water quality in the Yihe river basin, i.e., pH, EC, COD, and NH 4+ -N. (2) CA divided the Yihe river basin into three groups with similar water quality features, namely the upper, middle, and lower reaches. (3) DA demonstrated strong dimensionality reduction ability with the accuracy of clustering was 94.1%, and only a few indicators (i.e., DO, EC, turbidity, NH 4+ -N, and TP) could reflect the spatial variations in water quality. (4) One-way ANOVA indicated that the water quality was the worst in the lower reach of Yihe river basin during the mean-flow period, fol- lowed by which in the upper and middle reaches during the high-flow period. (5) The spatiotemporal characteristics of water quality were mainly restrained by human factors (e.g., the construction of highway and agricultural activities), climate change (e.g., precipitation and temperature), and natural environments (e.g., topography).
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水质时空变化特征及其对气候的响应——以沂河流域为例
. 河流水质时空格局、污染源和污染区域的识别对水环境保护和流域可持续发展至关重要。本文采用主成分分析(PCA)、聚类分析(CA)、判别分析(DA)和单因素方差分析(one-way ANOVA)等多元分析方法,对沂河流域河流水质的时空特征进行了研究。在2016 ~ 2017年高、中、低流量3个时段,对17个采样点的水质指标(氢离子浓度(pH)、电导率(EC)、溶解氧(DO)、浊度、化学需氧量(COD)、总磷(TP)、氨氮(nh4 + - n)进行了研究。结果表明:(1)主成分分析法能够提取和识别影响沂河流域水质最显著的指标,即pH、EC、COD和nh4 + -N。(2) CA将沂河流域划分为水质特征相近的上、中、下游三组。(3)数据分析具有较强的降维能力,聚类精度为94.1%,只有DO、EC、浊度、nh4 + -N和TP等指标能够反映水质的空间变化。(4)单因素方差分析表明,平均流量期宜河流域下游水质最差,高流量期中上游水质最差。(5)水质时空特征主要受人为因素(如公路建设和农业活动)、气候变化(如降水和温度)和自然环境(如地形)的制约。
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