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利用多元统计分析方法,识别并评估中国东北辽东湾附近一条受污染河流的主要污染源。

Using multivariate statistical analyses to identify and evaluate the main sources of contamination in a polluted river near to the Liaodong Bay in Northeast China.

机构信息

Key Laboratory of Water Cycle and Related Land Surface Processes, Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing, 100101, China.

Key Laboratory of Water Cycle and Related Land Surface Processes, Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing, 100101, China.

出版信息

Environ Pollut. 2019 Feb;245:1058-1070. doi: 10.1016/j.envpol.2018.11.099. Epub 2018 Nov 29.

Abstract

Using multivariate statistical analysis, the study evaluated anthropogenic sources of river water contamination and their relationships with river water quality in the Haicheng River basin near to the Liaodong Bay in Northeast China. The results showed that nitrogen (N) and phosphorous (P) were identified as the main pollutants in the river water by factor analysis. Human population and elevational gradient were all significantly correlated with N, P, and other water quality variables in correlation analysis and explained chemical oxygen demand (COD), N, and P variables from 23.9% (TN) to 53.1% (NH-N) of the total variances in regression analysis, indicating that population and its distribution were all responsible for river contaminations, especially for COD, N, and P contaminations. The excessive applications of fertilizers and pesticides were all positively correlated with nitrogen variables and nitrogen pollution factor in correlation analysis, suggesting that agricultural activities were contributed to the river nitrogen pollution. Due to inadequate or lack wastewater treatment facilities, huge amounts of domestic sewage and industrial effluents were released into the river, becoming the predominant anthropogenic sources for the river water deterioration of COD, N, and P. Multivariate statistical analysis provided useful tools to correlate sources of contamination with water quality data. This approach will provide a better management for river pollution control in a human-driven river ecosystem.

摘要

本研究采用多元统计分析方法,评估了人为因素对辽东湾附近海城河流域河水污染的来源及其与河水水质的关系。研究结果表明,因子分析表明氮(N)和磷(P)是河水的主要污染物。相关分析表明,人口和海拔梯度与 N、P 和其他水质变量显著相关,回归分析解释了化学需氧量(COD)、N 和 P 变量总方差的 23.9%(TN)至 53.1%(NH-N),表明人口及其分布是造成河水污染的主要原因,尤其是 COD、N 和 P 污染。化肥和农药的过度使用与氮变量和氮污染因子在相关分析中呈正相关,表明农业活动是造成河流氮污染的原因之一。由于缺乏或缺乏污水处理设施,大量的生活污水和工业废水被排放到河流中,成为 COD、N 和 P 河水恶化的主要人为污染源。多元统计分析为污染源与水质数据的相关性提供了有用的工具。这种方法将为人类驱动的河流生态系统的河流污染控制提供更好的管理。

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