Wu Jiansheng, Li Jiacheng, Peng Jian, Li Weifeng, Xu Guang, Dong Chengcheng
The Key Laboratory for Environmental and Urban Sciences, School of Urban Planning and Design, Shenzhen Graduate School, Peking University, Shenzhen, 518055, China.
Environ Sci Pollut Res Int. 2015 May;22(9):7045-61. doi: 10.1007/s11356-014-3893-5. Epub 2014 Dec 10.
Fine particulate matter (PM2.5) is the major air pollutant in Beijing, posing serious threats to human health. Land use regression (LUR) has been widely used in predicting spatiotemporal variation of ambient air-pollutant concentrations, though restricted to the European and North American context. We aimed to estimate spatiotemporal variations of PM2.5 by building separate LUR models in Beijing. Hourly routine PM2.5 measurements were collected at 35 sites from 4th March 2013 to 5th March 2014. Seventy-seven predictor variables were generated in GIS, including street network, land cover, population density, catering services distribution, bus stop density, intersection density, and others. Eight LUR models were developed on annual, seasonal, peak/non-peak, and incremental concentration subsets. The annual mean concentration across all sites is 90.7 μg/m(3) (SD = 13.7). PM2.5 shows more temporal variation than spatial variation, indicating the necessity of building different models to capture spatiotemporal trends. The adjusted R (2) of these models range between 0.43 and 0.65. Most LUR models are driven by significant predictors including major road length, vegetation, and water land use. Annual outdoor exposure in Beijing is as high as 96.5 μg/m(3). This is among the first LUR studies implemented in a seriously air-polluted Chinese context, which generally produce acceptable results and reliable spatial air-pollution maps. Apart from the models for winter and incremental concentration, LUR models are driven by similar variables, suggesting that the spatial variations of PM2.5 remain steady for most of the time. Temporal variations are explained by the intercepts, and spatial variations in the measurements determine the strength of variable coefficients in our models.
细颗粒物(PM2.5)是北京的主要空气污染物,对人类健康构成严重威胁。土地利用回归(LUR)已被广泛用于预测环境空气污染物浓度的时空变化,不过此前仅限于欧洲和北美地区。我们旨在通过在北京建立单独的LUR模型来估算PM2.5的时空变化。在2013年3月4日至2014年3月5日期间,在35个站点收集了每小时的常规PM2.5测量数据。在地理信息系统(GIS)中生成了77个预测变量,包括街道网络、土地覆盖、人口密度、餐饮服务分布、公交站点密度、交叉路口密度等。基于年度、季节、高峰/非高峰以及增量浓度子集开发了8个LUR模型。所有站点的年均浓度为90.7μg/m³(标准差=13.7)。PM2.5的时间变化大于空间变化,这表明有必要建立不同的模型来捕捉时空趋势。这些模型的调整后R²在0.43至0.65之间。大多数LUR模型由重要预测变量驱动,包括主要道路长度、植被和水域土地利用。北京的年度室外暴露量高达96.5μg/m³。这是在空气污染严重的中国背景下开展的首批LUR研究之一,总体上产生了可接受的结果和可靠的空间空气污染地图。除了冬季和增量浓度模型外,LUR模型由相似的变量驱动,这表明PM2.5的空间变化在大多数时间保持稳定。时间变化由截距解释,测量中的空间变化决定了我们模型中变量系数的强度。