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Spatial and temporal estimates of population exposure to wildfire smoke during the Washington state 2012 wildfire season using blended model, satellite, and in situ data

机译:使用混合模型,卫星和原位数据,对华盛顿州2012年野火季节期间野火烟气人口的时空估计

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In the western U.S., smoke from wild and prescribed fires can severely degrade air quality. Due to changes in climate and land management, wildfires have increased in frequency and severity, and this trend is expected to continue. Consequently, wildfires are expected to become an increasingly important source of air pollutants in the western U.S. Hence, there is a need to develop a quantitative understanding of wildfire‐smoke‐specific health effects. A necessary step in this process is to determine who was exposed to wildfire smoke, the concentration of the smoke during exposure, and the duration of the exposure. Three different tools have been used in past studies to assess exposure to wildfire smoke: in situ measurements, satellite‐based observations, and chemical‐transport model (CTM) simulations. Each of these exposure‐estimation tools has associated strengths and weakness. We investigate the utility of blending these tools together to produce estimates of PM2.5 exposure from wildfire smoke during the Washington 2012 fire season. For blending, we use a ridge‐regression model and a geographically weighted ridge‐regression model. We evaluate the performance of the three individual exposure‐estimate techniques and the two blended techniques by using leave‐one‐out cross validation. We find that predictions based on in situ monitors are more accurate for this particular fire season than the CTM simulations and satellite‐based observations because of the large number of monitors present; therefore, blending provides only marginal improvements above the in situ observations. However, we show that in hypothetical cases with fewer surface monitors, the two blending techniques can produce substantial improvement over any of the individual tools.
机译:在美国西部,来自野火和明火的烟雾会严重降低空气质量。由于气候和土地管理的变化,野火的发生频率和严重性有所增加,预计这一趋势将持续下去。因此,预计野火将成为美国西部越来越重要的空气污染物来源。因此,有必要对野火烟对健康的影响有定量的了解。此过程中的必要步骤是确定谁暴露于野火烟雾中,暴露期间烟雾的浓度以及暴露持续时间。在过去的研究中,使用了三种不同的工具来评估野火烟雾的暴露:原位测量,基于卫星的观测以及化学传输模型(CTM)模拟。这些暴露估计工具中的每一个都有各自的优点和缺点。我们调查了将这些工具混合在一起以评估华盛顿2012年火季野火烟雾中PM2.5暴露的效用。对于融合,我们使用了岭回归模型和地理加权的岭回归模型。我们使用留一法交叉验证来评估三种单独的暴露估计技术和两种混合技术的性能。我们发现,由于存在大量的监控器,因此对于特定的火灾季节,基于现场监控器的预测比CTM模拟和基于卫星的观测更加准确。因此,混合只能提供比原位观测值略微改善的效果。但是,我们表明,在假设的情况下,表面监控器较少的情况下,两种混合技术都可以对任何单个工具产生实质性的改进。

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