Kelly James T, Jang Carey J, Timin Brian, Gantt Brett, Reff Adam, Zhu Yun, Long Shicheng, Hanna Adel
Office of Air Quality Planning and Standards, U.S. Environmental Protection Agency, Research Triangle Park, NC, USA.
College of Environment and Energy, South China University of Technology, Guangzhou Higher Education Mega Center, Guangzhou, China.
Atmos Environ X. 2019 Apr;2. doi: 10.1016/j.aeaoa.2019.100019. Epub 2019 Feb 12.
PM concentration fields that correspond to just meeting national ambient air quality standards (NAAQS) are useful for characterizing exposure in regulatory assessments. Computationally efficient methods that incorporate predictions from photochemical grid models (PGM) are needed to realistically project baseline concentration fields for these assessments. Thorough cross validation (CV) of hybrid spatial prediction models is also needed to better assess their predictive capability in sparsely monitored areas. In this study, a system for generating, evaluating, and projecting PM spatial fields to correspond with just meeting the PM NAAQS is developed and demonstrated. Results of ten-fold CV based on standard and spatial cluster withholding approaches indicate that performance of three spatial prediction models improves with decreasing distance to the nearest neighboring monitor, improved PGM performance, and increasing distance from sources of PM heterogeneity (e.g., complex terrain and fire). An air quality projection tool developed here is demonstrated to be effective for quickly projecting PM spatial fields to just meet NAAQS using realistic spatial response patterns based on air quality modeling. PM tends to be most responsive to primary PM emissions in urban areas, whereas response patterns are relatively smooth for NOx and SO emission changes. On average, PM is more responsive to changes in anthropogenic primary PM emissions than NOx and SO emissions in the contiguous U.S.
对应于刚好达到国家环境空气质量标准(NAAQS)的颗粒物(PM)浓度场,对于在监管评估中表征暴露情况很有用。需要采用结合光化学网格模型(PGM)预测结果的计算高效方法,来实际预测这些评估的基线浓度场。还需要对混合空间预测模型进行全面的交叉验证(CV),以更好地评估其在监测稀疏地区的预测能力。在本研究中,开发并展示了一个用于生成、评估和预测与刚好达到PM NAAQS相对应的PM空间场的系统。基于标准和空间聚类保留方法的十折交叉验证结果表明,三种空间预测模型的性能随着与最近邻监测站距离的减小、PGM性能的提高以及与PM异质性源(如复杂地形和火灾)距离的增加而提升。这里开发的空气质量预测工具被证明能够有效地利用基于空气质量建模的实际空间响应模式,快速预测PM空间场以刚好达到NAAQS。在城市地区,PM往往对一次PM排放最为敏感,而对于氮氧化物(NOx)和硫氧化物(SO)排放变化,响应模式相对较为平稳。在美国本土,平均而言,PM对人为一次PM排放变化的响应比对NOx和SO排放变化的响应更敏感。