Department of Environmental Science and Engineering, Fudan University, Shanghai 200433, China.
Tyndall Centre for Climate Change Research, School of Environmental Sciences, University of East Anglia, Norwich NR4 7TJ, United Kingdom.
Sci Total Environ. 2018 Feb 15;615:1155-1163. doi: 10.1016/j.scitotenv.2017.09.288. Epub 2017 Oct 17.
It is increasingly recognized that climate change could affect the quality of water through complex natural and anthropogenic mechanisms. Previous studies on climate change and water quality have mostly focused on assessing its impact on pollutant loads from agricultural runoff. A sub-daily SWAT model was developed to simulate the discharge, transport, and transformation of nitrogen from all known anthropogenic sources including industries, municipal sewage treatment plants, concentrated and scattered feedlot operations, rural households, and crop production in the Upper Huai River Basin. This is a highly polluted basin with total nitrogen (TN) concentrations frequently exceeding Class V of the Chinese Surface Water Quality Standard (GB3838-2002). Climate change projections produced by 16 Global Circulation Models (GCMs) under the RCP 4.5 and RCP 8.5 scenarios in the mid (2040-2060) and late (2070-2090) century were used to drive the SWAT model to evaluate the impacts of climate change on both the TN loads and the effectiveness of three water pollution control measures (reducing fertilizer use, constructing vegetative filter strips, and improving septic tank performance) in the basin. SWAT simulation results have indicated that climate change is likely to cause an increase in both monthly average and extreme TN loads in February, May, and November. The projected impact of climate change on TN loads in August is more varied between GCMs. In addition, climate change is projected to have a negative impact on the effectiveness of septic tanks in reducing TN loads, while its impacts on the other two measures are more uncertain. Despite the uncertainty, reducing fertilizer use remains the most effective measure for reducing TN loads under different climate change scenarios. Meanwhile, improving septic tank performance is relatively more effective in reducing annual TN loads, while constructing vegetative filter strips is more effective in reducing annual maximum monthly TN loads.
人们越来越认识到,气候变化可能通过复杂的自然和人为机制影响水质。以前关于气候变化和水质的研究主要集中在评估其对农业径流中污染物负荷的影响。本研究开发了一个亚日尺度 SWAT 模型,以模拟包括工业、城市污水处理厂、集约化和分散式养殖场、农村家庭以及流域内作物生产在内的所有人为氮源的排放、输移和转化。该流域是一个高度污染的流域,总氮(TN)浓度经常超过中国地表水质量标准(GB3838-2002)的 V 类。本研究使用 16 个全球环流模型(GCMs)在 RCP4.5 和 RCP8.5 情景下产生的气候变化情景预测,驱动 SWAT 模型来评估气候变化对 TN 负荷以及流域内三种水污染控制措施(减少化肥使用、构建植被过滤带和改善化粪池性能)的有效性的影响。SWAT 模拟结果表明,气候变化可能导致流域内 2 月、5 月和 11 月的月平均和极端 TN 负荷增加。不同 GCMs 对 8 月 TN 负荷的预测影响存在差异。此外,气候变化预计将降低化粪池减少 TN 负荷的有效性,而对其他两种措施的影响则更加不确定。尽管存在不确定性,但减少化肥使用仍是不同气候变化情景下减少 TN 负荷的最有效措施。同时,提高化粪池性能在减少年 TN 负荷方面相对更有效,而构建植被过滤带在减少年最大月 TN 负荷方面更有效。