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土地利用、气候和不透水表面因素对城市雨水水质的影响:一项荟萃分析。

Effects of land use, climate, and imperviousness on urban stormwater quality: A meta-analysis.

机构信息

Department of Food, Agricultural, and Biological Engineering, The Ohio State University, 590 Woody Hayes Dr., Columbus, OH 43210, USA.

Department of Food, Agricultural, and Biological Engineering, The Ohio State University, 590 Woody Hayes Dr., Columbus, OH 43210, USA; Department of Civil, Environmental, and Geodetic Engineering, The Ohio State University, 2070 Neil Ave., Columbus, OH 43210, USA.

出版信息

Sci Total Environ. 2022 Feb 25;809:152206. doi: 10.1016/j.scitotenv.2021.152206. Epub 2021 Dec 7.

Abstract

Many natural and anthropogenic factors cause degradation of urban stormwater quality, resulting in negative consequences to receiving waters. In order to improve water quality models at a variety of scales, accurate estimates of pollutant (nutrients, total suspended solids, and heavy metal) concentrations are needed using potential explanatory variables. To this end, a meta-analysis was performed on aggregated stormwater quality data from the published literature from 360 urban catchments worldwide to understand how urban land use and land cover (LULC), climate (i.e., Kӧppen-Geiger zone), and imperviousness (1) affect runoff quality, and (2) whether they are able to predict stormwater pollutant concentrations. Runoff pollutant concentrations were more influenced by LULC and climate than imperviousness. Differences in LULC significantly affected the generation of metals and some nitrogen species. Road, city center, and commercial LULCs generally produced the most elevated pollutant concentrations. Changes in climate zones resulted in significant differences in concentrations of nutrients and metals. Continental and arid climate zones produced runoff with the highest pollutant concentrations. Rainfall patterns seemed to have a more important role in affecting runoff quality than seasonal temperature. Differences in imperviousness only significantly affected chromium and nickel concentrations, although increased imperviousness led to slightly (not significantly) elevated concentrations of nutrients, suspended solids, and other heavy metals. Multiple linear regression models were created to predict the quality of urban runoff. Predictive equations were significant (p < 0.05) for 67% of the pollutants analyzed (ammonia, total Kjeldahl nitrogen, total nitrogen, total phosphorus, cadmium, nickel, lead, and zinc) suggesting that LULC, climate, and imperviousness are useful predictors of stormwater quality when local field monitoring or modeling is not practical. This study provides useful relationships to better inform urban stormwater quality models and regulations such as total maximum daily loads.

摘要

许多自然和人为因素导致城市雨水水质恶化,对受纳水体造成负面影响。为了在各种尺度上改进水质模型,需要使用潜在的解释变量来准确估计污染物(养分、总悬浮固体和重金属)浓度。为此,对来自全球 360 个城市集水区的已发表文献中汇总的雨水水质数据进行了荟萃分析,以了解城市土地利用和土地覆被(LULC)、气候(即 Kӧppen-Geiger 区)和不透水率如何影响径流水质,以及它们是否能够预测雨水污染物浓度。径流水质污染物浓度受 LULC 和气候的影响大于不透水率。LULC 的差异显著影响金属和一些氮物种的产生。道路、市中心和商业区的 LULC 通常产生最高的污染物浓度。气候带的变化导致养分和金属浓度的显著差异。大陆和干旱气候带产生的径流水具有最高的污染物浓度。降雨模式似乎比季节性温度对影响径流水质的作用更为重要。不透水率的差异仅显著影响铬和镍的浓度,尽管不透水率的增加略微(但不显著)提高了养分、悬浮固体和其他重金属的浓度。建立了多元线性回归模型来预测城市径流水质。对于分析的 67%的污染物(氨、总凯氏氮、总氮、总磷、镉、镍、铅和锌),预测方程具有显著意义(p<0.05),这表明 LULC、气候和不透水率是在无法进行现场监测或建模的情况下,预测雨水水质的有用指标。本研究提供了有用的关系,以更好地为城市雨水水质模型和法规(如最大日负荷总量)提供信息。

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