Water pollution scenarios and response options for China

环境科学 污染 中国 电流(流体) 水污染 水资源管理 废水 水资源 情景分析 环境保护 环境经济学 业务 环境工程 经济 地理 工程类 电气工程 环境化学 考古 化学 生物 生态学 财务
作者
Haoyuan Feng,Joep F. Schyns,Maarten S. Krol,Mengjie Yang,Han Su,Yaoyi Liu,Yongpeng Lv,Xuebin Zhang,Kai Yang,Yue Che
出处
期刊:Science of The Total Environment [Elsevier BV]
卷期号:914: 169807-169807 被引量:32
标识
DOI:10.1016/j.scitotenv.2023.169807
摘要

China has formulated several policies to alleviate the water pollution load, but few studies have quantitatively analyzed their impacts on future water pollution loads in China. Based on grey water footprint (GWF) assessment and scenario simulation, we analyze the water pollution (including COD, NH3-N, TN and TP) in China from 2021 to 2035 under different scenarios for three areas: consumption-side, production-side and terminal treatment. We find that under the current policy scenario, the GWF of COD, NH3-N, TN, and TP in China could be reduced by 15.0 % to 39.9 %; the most effective measures for GWF reduction are diet structure change (in the consumption-side area), and the wastewater treatment rate and livestock manure utilization improvement (in the terminal treatment area). However, the GWF will still increase in 8 provinces, indicating that the current implemented policy is not universally effective in reducing GWF across all provinces. Under the technical improvement scenario, the GWF of the four pollutants will decrease by 54.9 %–71.1 % via improvements in the current measures related to current policies and new measures in the production-side area and the terminal treatment area; thus, GWF reduction is possible in all 31 provinces. However, some policies face significant challenges in achieving full implementation, and certain policies are only applicable to a subset of provinces. Our detailed analysis of future water pollution scenarios and response options to reduce pollution loads can help to inform the protection of freshwater resources in China and quantitatively assess the effectiveness of policies in other fields.
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