...
首页> 外文期刊>Atmospheric chemistry and physics >Investigating the observed sensitivities of air-quality extremes to meteorological drivers via quantile regression
【24h】

Investigating the observed sensitivities of air-quality extremes to meteorological drivers via quantile regression

机译:通过分位数回归调查观察到的极端空气质量对气象驾驶员的敏感性

获取原文
获取原文并翻译 | 示例
           

摘要

Air pollution variability is strongly dependent on meteorology. However, quantifying the impacts of changes in regional climatology on pollution extremes can be difficult due to the many non-linear and competing meteorological influences on the production, transport, and removal of pollutant species. Furthermore, observed pollutant levels at many sites show sensitivities at the extremes that differ from those of the overall mean, indicating relationships that would be poorly characterized by simple linear regressions. To address this challenge, we apply quantile regression to observed daily ozone (O-3) and fine particulate matter (PM2.5) levels and reanalysis meteorological fields in the USA over the past decade to specifically identify the meteorological sensitivities of higher pollutant levels. From an initial set of over 1700 possible meteorological indicators (including 28 meteorological variables with 63 different temporal options), we generate reduced sets of O-3 and PM2.5 indicators for both summer and winter months, analyzing pollutant sensitivities to each for response quantiles ranging from 2 to 98 %. Primary covariates connected to high-quantile O-3 levels include temperature and relative humidity in the summer, while winter O-3 levels are most commonly associated with incoming radiation flux. Covariates associated with summer PM2.5 include temperature, wind speed, and tropospheric stability at many locations, while stability, humidity, and planetary boundary layer height are the key covariates most frequently associated with winter PM2.5. We find key differences in covariate sensitivities across regions and quantiles. For example, we find nationally averaged sensitivities of 95th percentile summer O-3 to changes in maximum daily temperature of approximately 0.9 ppb A degrees C-1, while the sensitivity of 50th percentile summer O-3 (the annual median) is only 0.6 ppb A degrees C-1. This gap points to differing sensitivities within various percentiles of the pollutant distribution, highlighting the need for statistical tools capable of identifying meteorological impacts across the entire response spectrum.
机译:空气污染的变化性很大程度上取决于气象学。但是,由于对生产,运输和清除污染物种类有许多非线性和竞争性的气象影响,因此难以量化区域气候变化对极端污染的影响。此外,在许多站点观察到的污染物水平在极端情况下都显示出与总体平均值不同的灵敏度,表明通过简单的线性回归无法很好地描述这种关系。为了应对这一挑战,我们将分位数回归应用于过去十年来在美国观察到的每日臭氧(O-3)和细颗粒物(PM2.5)水平以及再分析气象学领域,以明确确定较高污染物水平的气象敏感性。从最初的1700多种可能的气象指标(包括28种气象变量,具有63种不同的时间选项)中,我们生成了夏季和冬季月份的O-3和PM2.5指标减少的集合,分析了污染物对响应分位数的敏感性范围从2%到98%。与高分位数O-3水平相关的主要协变量包括夏季的温度和相对湿度,而冬季O-3水平最通常与入射辐射通量相关。与夏季PM2.5相关的协变量包括许多地方的温度,风速和对流层稳定性,而稳定性,湿度和行星边界层高度是与冬季PM2.5最相关的关键协变量。我们发现跨地区和分位数的协变量敏感性之间的关键差异。例如,我们发现第95个百分位数的夏季O-3对最高日温度变化约为0.9 ppb A-1 C的全国平均敏感性,而第50个百分位数的夏季O-3(年度中位数)的敏感性仅为0.6 ppb摄氏度C-1。这种差距表明污染物分布的不同百分位数内的敏感性不同,这突出表明需要能够识别整个响应范围内的气象影响的统计工具。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号