School of Environment, State Key Joint Laboratory of Environment Simulation and Pollution Control, Tsinghua University, 100084, People's Republic of China; State Environmental Protection Key Laboratory of Sources and Control of Air Pollution Complex, Beijing 100084, People's Republic of China; Collaborative Innovation Centre for Regional Environmental Quality, Beijing 100084, People's Republic of China.
Ministry of Education Key Laboratory for Earth System Modelling, Centre for Earth System Science, Tsinghua University, Beijing 100084, People's Republic of China.
Environ Pollut. 2017 Jul;226:143-153. doi: 10.1016/j.envpol.2017.03.079. Epub 2017 Apr 15.
High resolution pollution maps are critical to understand the exposure and health effect of local residents to air pollution. Currently, none of the single technologies used to measure or estimate concentrations of pollutants can provide sufficient resolved exposure data. Land use regression (LUR) models were developed to combine ground-based measurements, satellite remote sensing (SRS) and air quality model (AQM), together with geographic and local source related spatial inputs, to generate high resolution pollution maps for both PM and NO in Pearl River Delta (PRD), China. Four sets of LUR models (LUR without SRS or AQM, with SRS only, with AQM only, and with both SRS and AQM), all including local traffic emissions and land use variables, were compared to evaluate the contribution of SRS and AQM data to the performance of LUR models in PRD region. For NO, the annual model with SRS estimate performed best, explaining 60.5% of the spatial variation. For PM, the annual model with traditional predictor variables without SRS or AQM estimates showed the best performance, explaining 88.4% of the spatial variation. Pollution surfaces at 200 m*200 m resolution were generated according to the best performed models.
高分辨率污染地图对于了解当地居民对空气污染的暴露和健康影响至关重要。目前,用于测量或估计污染物浓度的单一技术都无法提供足够分辨率的暴露数据。因此,人们开发了基于土地利用的回归(LUR)模型,将地面测量值、卫星遥感(SRS)和空气质量模型(AQM),以及与地理和本地源相关的空间输入相结合,为中国珠江三角洲(PRD)地区生成了 PM 和 NO 的高分辨率污染地图。本文比较了四组 LUR 模型(不包括 SRS 或 AQM 的 LUR、仅包括 SRS 的 LUR、仅包括 AQM 的 LUR 以及同时包括 SRS 和 AQM 的 LUR),所有模型都包含本地交通排放和土地利用变量,以评估 SRS 和 AQM 数据对 LUR 模型在 PRD 地区性能的贡献。对于 NO,具有 SRS 估算值的年度模型表现最佳,解释了 60.5%的空间变化。对于 PM,不包括 SRS 或 AQM 估计值的传统预测变量的年度模型表现最佳,解释了 88.4%的空间变化。根据表现最佳的模型,生成了 200m*200m 分辨率的污染面图。