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利用多元统计技术研究中国沱河流域地表水的空间变异和污染源解析。

Spatial variation and source apportionment of surface water pollution in the Tuo River, China, using multivariate statistical techniques.

机构信息

School of Environment and Resource, Southwest University of Science and Technology, Mianyang, 621000, China.

School of Chemistry and Chemical Engineering, Sichuan University of Arts and Science, Dazhou, 635000, China.

出版信息

Environ Monit Assess. 2020 Nov 3;192(12):745. doi: 10.1007/s10661-020-08706-3.

Abstract

The increasingly serious water pollution of rivers has attracted wide attention from all countries in the world. Investigating spatial variations of water pollution and source apportionment is particularly important for the effective management of river quality. The water samples collected every two months at 31 sampling sites containing 12 water quality parameters during 2018 and 2019 were analyzed to investigate the spatial patterns and the apportionment of the pollutants in the Tuo River. Cluster analysis (CA), pollution index (PI), factor analysis (FA), principal component analysis (PCA), and absolute principal component score-multiple linear regression (APCS-MLR) were used in the current study. The PI found that the Tuo River was most severely polluted with phosphorus and nitrogen. Additionally, compared with that in 2018, the water quality in the Tuo River has significantly improved in 2019. The CA divided the sampling sites into three categories, which are defined as clean, low-polluted, and moderate-polluted areas, respectively. FA/PCA resulted in four latent pollution sources, explaining 74.09% of the total variance. The contributions of the identified pollution sources to pollutants were realized using APCS-MLR. Most variables were mainly affected by the pollution of agricultural runoff, industrial wastewater, domestic sewage, and soil weathering. According to the results, we can also find that agricultural runoff and industrial wastewater were dominating in the Tuo River. These results provide a scientific basis for formulating more reasonable and strict pollution control strategies for the Tuo River.

摘要

河流的水污染日益严重,引起了世界各国的广泛关注。调查水污染的空间变化和污染源分配对于有效管理河流水质尤为重要。本研究采集了 2018 年和 2019 年期间每月两次在 31 个采样点采集的包含 12 个水质参数的水样,以调查托河流域的污染物空间分布特征及来源分配。本研究采用了聚类分析(CA)、污染指数(PI)、因子分析(FA)、主成分分析(PCA)和绝对主成分得分-多元线性回归(APCS-MLR)等方法。PI 发现,托河流域磷和氮污染最严重。此外,与 2018 年相比,2019 年托河流域水质明显改善。CA 将采样点分为清洁区、低污染区和中污染区三类。FA/PCA 产生了四个潜在的污染源,解释了总方差的 74.09%。通过 APCS-MLR 实现了对识别出的污染源对污染物的贡献。大多数变量主要受农业径流污染、工业废水、生活污水和土壤风化的影响。根据结果,我们还可以发现农业径流和工业废水是托河流域的主要污染源。这些结果为制定更合理、更严格的托河流域污染控制策略提供了科学依据。

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