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Influence of air quality model resolution on uncertainty associated with health impacts

机译:空气质量模型解决对与健康影响相关的不确定性的影响

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We use regional air quality modeling to evaluate the impact of model resolution on uncertainty associated with the human health benefits resulting from proposed air quality regulations. Using a regional photochemical model (CAMx), we ran a modeling episode with meteorological inputs simulating conditions as they occurred during August through September 2006 (a period representative of conditions leading to high ozone), and two emissions inventories (a 2006 base case and a 2018 proposed control scenario, both for Houston, Texas) at 36, 12, 4 and 2 km resolution. The base case model performance was evaluated for each resolution against daily maximum 8-h averaged ozone measured at monitoring stations. Results from each resolution were more similar to each other than they were to measured values. Population-weighted ozone concentrations were calculated for each resolution and applied to concentration response functions (with 95% confidence intervals) to estimate the health impacts of modeled ozone reduction from the base case to the control scenario. We found that estimated avoided mortalities were not significantly different between the 2, 4 and 12 km resolution runs, but the 36 km resolution may over-predict some potential health impacts. Given the cost/benefit analysis requirements motivated by Executive Order 12866 as it applies to the Clean Air Act, the uncertainty associated with human health impacts and therefore the results reported in this study, we conclude that health impacts calculated from population weighted ozone concentrations obtained using regional photochemical models at 36 km resolution fall within the range of values obtained using fine (12 km or finer) resolution modeling. However, in some cases, 36 km resolution may not be fine enough to statistically replicate the results achieved using 2, 4 or 12 km resolution. On average, when modeling at 36 km resolution, an estimated 5 deaths per week during the May through September ozone season are avoided because of ozone reductions resulting from the proposed emissions reductions (95% confidence interval was 2–8). When modeling at 2, 4 or 12 km finer scale resolution, on average 4 deaths are avoided due to the same reductions (95% confidence interval was 1–7). Study results show that ozone modeling at a resolution finer than 12 km is unlikely to reduce uncertainty in benefits analysis for this specific region. We suggest that 12 km resolution may be appropriate for uncertainty analyses of health impacts due to ozone control scenarios, in areas with similar chemistry, meteorology and population density, but that resolution requirements should be assessed on a case-by-case basis and revised as confidence intervals for concentration-response functions are updated.
机译:我们使用区域空气质量建模来评估模型解决对与拟议空气质量法规产生的人体健康益处相关的不确定性的影响。使用区域光化学模型(CAMX),我们通过2006年8月期间的气象投入模拟了气象投入的建模集,如2006年9月(一期代表导致高臭氧的条件)和两个排放库存(A 2006基本案) 2018年拟议在36,12,4和2公里的休斯顿德克萨斯州的控制场景。针对在监测站测量的每日最大8-H平均臭氧的每个分辨率评估基本情况模型性能。每个分辨率的结果与测量值相比,每个分辨率更相似。为每个分辨率计算种群加权臭氧浓度,并施加到浓度响应函数(具有95%的置信区间)来估计从基本情况到控​​制方案的模型臭氧降低的健康影响。我们发现,2,4和12公里的分辨率之间,估计避免的死亡率并没有显着差异,但36公里的分辨率可能会过度预测一些潜在的健康影响。鉴于执行订单12866的成本/效益分析要求,因为它适用于清洁空气法,与人体健康影响相关的不确定性,因此在本研究中报告的结果,我们得出结论,从使用的人口加权臭氧浓度计算的健康影响36公里分辨率的区域光化学型号落在使用精细(12公里或更精细)的分辨率建模的值范围内。但是,在某些情况下,36公里的分辨率可能不足以足以统计地复制使用2,4或12km分辨率所实现的结果。平均地,当在36公里的分辨率建模时,由于所提出的排放减少造成的臭氧减少(95%置信区间为2-8),避免了估计每周5月份臭氧季节的5人死亡。当在2,4或12公里的尺度分辨率上进行建模时,由于相同的减少(95%置信区间为1-7),平均避免了4个死亡。研究结果表明,在比12公里更精细的分辨率下臭氧建模不太可能降低该特定区域的益处的不确定性。我们认为,由于臭氧控制场景,在具有相似化学,气象和人口密度的地区,12公里的分辨率可能适用于健康影响的不确定性分析,但应根据具体情况评估解决方案要求并根据具体情况进行评估并修订更新集中响应函数的置信区间。

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