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太湖感潮河网区闸坝工程建成后水体水质评价与预测。

Evaluation and prediction of water quality in the dammed estuaries and rivers of Taihu Lake.

机构信息

School of Geography, Nanjing Normal University, Nanjing, 210023, People's Republic of China.

Key Laboratory of Virtual Geographic Environment, (Nanjing Normal University), Ministry of Education, Nanjing, 210023, People's Republic of China.

出版信息

Environ Sci Pollut Res Int. 2022 Feb;29(9):12832-12844. doi: 10.1007/s11356-020-12063-6. Epub 2021 Jan 6.

Abstract

Proper evaluation of water quality is pertinent to estuarine habitat restoration. Identifying the degrading factors of the water environment and predicting the trend of eutrophication are key to restore the habitat. Through trophic level index (TLI), water quality index (WQI), modified Nemerow pollution index (NPI), and the Random Forest (RF) model, water samples collected from various estuaries of Taihu Lake from 2017 to 2019 were evaluated. To predict the water quality development, four scenarios were set viz. S1: add or remove an ecological buffer, S2: increase or reduce the external nutrients, S3: open or close the dam/gate, and S4: increase or decrease the internal release. In Wuli Lake, the nutrient concentrations in the river regions were higher than in the lake regions, while a contrary trend was observed in Gonghu Bay. The estuarine water quality in the dry season (WQI = 40.91, NPI = 1.73) was merely worse than that in the wet season (WQI = 47.27, NPI = 1.67). On the other hand, the eutrophic status in the wet season (TLI = 57.93) was worse than that in the dry season (TLI = 57.23). The estuarine water quality of Taihu Lake has improved from 2017 to 2019 but still belongs to medium level. The principal component analysis (PCA) revealed that dam construction, land use types, unstable hydrodynamic conditions, and trumpet-shaped estuary were the main factors that aggravated the water quality degradation. The RF model has strong forecasting capabilities for estuarine water quality. When the estuaries are close to residential and industrial districts, controlling the surface runoff and improving sewage treatment efficiency are the most effective measures to improve the water quality. In the estuaries, the sediments are usually disturbed by the wind-waves. Conclusively, reducing sediment disturbance and internal contamination accumulation via biological and engineering measures is the key to estuarine restoration.

摘要

水质的恰当评估与河口生境的恢复息息相关。识别水环境的退化因素并预测富营养化的趋势是恢复生境的关键。本研究通过营养状态指数(TLI)、水质指数(WQI)、修正的内梅罗污染指数(NPI)和随机森林(RF)模型,对 2017 年至 2019 年期间取自太湖各个河口的水样进行了评估。为了预测水质的发展情况,设定了四个情景,分别是:S1:增加或去除生态缓冲区,S2:增加或减少外部营养物质,S3:打开或关闭水坝/水闸,以及 S4:增加或减少内部释放。在五里湖,河流区域的营养物浓度高于湖泊区域,而在贡湖湾则观察到相反的趋势。枯水期(WQI=40.91,NPI=1.73)的河口水质仅略差于丰水期(WQI=47.27,NPI=1.67)。另一方面,丰水期(TLI=57.93)的富营养化状况比枯水期(TLI=57.23)更差。太湖河口的水质从 2017 年到 2019 年有所改善,但仍处于中等水平。主成分分析(PCA)表明,水坝建设、土地利用类型、不稳定的水动力条件和喇叭形河口是加剧水质恶化的主要因素。RF 模型对河口水质具有较强的预测能力。当河口靠近居民区和工业区时,控制地表径流和提高污水处理效率是改善水质的最有效措施。在河口,沉积物通常受到风浪的干扰。综上所述,通过生物和工程措施减少沉积物的干扰和内部污染的积累是河口恢复的关键。

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