School of Statistics and Mathematics, Central University of Finance and Economics, Beijing, 100081, China.
Environ Monit Assess. 2024 Sep 4;196(10):892. doi: 10.1007/s10661-024-12990-8.
Extreme pollution has become a significant environmental problem in China in recent years, which is hazardous to human health and daily life. Noticing the importance of investigating the causes of extreme pollution, this paper classifies cities across China into eight categories (four groups plus two scenarios) based on the generalized extreme value (GEV) distribution using hourly station-level concentration data, and a series of multi-choice models are employed to assess the probabilities that cities fall into different categories. Various factors such as precursor pollutants and socio-economic factors are considered after controlling for meteorological conditions in each model. It turns out that concentration, concentration, and population density are the top three factors contributing most to the log ratios. Moreover, in both left- and right-skewed cases, the influence of a one-unit increase of concentration on the relative probability of cities falling into different groups shows an increasing trend, while those of concentration show a decreasing trend. At the same time, the higher the extreme pollution level, the bigger the effect of and concentrations on the probability of cities falling into normalized scenarios. The multivariate logit model is used for prediction and policy simulations. In summary, by analyzing the influences of various factors and the heterogeneity of their influence patterns, this paper provides valuable insights in formulating effective emission reduction policies.
近年来,极端污染在中国已成为一个严重的环境问题,对人类健康和日常生活构成威胁。鉴于研究极端污染成因的重要性,本文使用逐时站点浓度数据,基于广义极值(GEV)分布,将中国各城市分为八类(四类加两种情景),并采用一系列多选模型来评估城市落入不同类别的概率。在每个模型中,除了气象条件外,还考虑了前体污染物和社会经济因素等各种因素。结果表明,浓度、浓度和人口密度是对对数比贡献最大的前三个因素。此外,在左偏和右偏情况下,浓度增加一个单位对城市落入不同组的相对概率的影响呈递增趋势,而浓度的影响则呈递减趋势。同时,极端污染水平越高,浓度和浓度对城市落入归一化情景的概率的影响越大。本文使用多元逻辑回归模型进行预测和政策模拟。总之,通过分析各种因素的影响及其影响模式的异质性,本文为制定有效的减排政策提供了有价值的见解。