论文标题
对基于模型的PM $ _ {2.5} $估算在美国西部野火烟雾剧集期间的曝光评估估计值的评估
Evaluation of Model-Based PM$_{2.5}$ Estimates for Exposure Assessment During Wildfire Smoke Episodes in the Western U.S
论文作者
论文摘要
研究野火烟雾的健康影响需要有关人们在空间和时间上接触细颗粒物(PM $ _ {2.5} $)的数据。近年来,使用机器学习模型来填补监视数据中的空白已变得普遍。但是,目前尚不清楚这些模型能够在PM $ _ {2.5} $中捕获峰值的峰值。在这里,我们评估了由Di等人创建的两组高覆盖和高分辨率机器学习PM $ _ {2.5} $数据集的准确性。 (2021)和Reid等。 (2021)。通常,与美国森林服务部部署的移动烟雾监视器的独立验证数据相比,REID估计值比DI估计值更准确。但是,这两种模型往往在高污垢天中严重低估了PM $ _ {2.5} $。我们的发现补充了其他最近的研究,要求在美国西部增加空气污染监测,并支持将特定于野火的监测观测值和预测变量纳入基于模型的PM $ _ {2.5} $的估计。最后,我们呼吁对机器学习派生的曝光数据集进行更严格的错误量化,并特别注意极端事件。
Investigating the health impacts of wildfire smoke requires data on people's exposure to fine particulate matter (PM$_{2.5}$) across space and time. In recent years, it has become common to use machine learning models to fill gaps in monitoring data. However, it remains unclear how well these models are able to capture spikes in PM$_{2.5}$ during and across wildfire events. Here, we evaluate the accuracy of two sets of high-coverage and high-resolution machine learning-derived PM$_{2.5}$ data sets created by Di et al. (2021) and Reid et al. (2021). In general, the Reid estimates are more accurate than the Di estimates when compared to independent validation data from mobile smoke monitors deployed by the US Forest Service. However, both models tend to severely under-predict PM$_{2.5}$ on high-pollution days. Our findings complement other recent studies calling for increased air pollution monitoring in the western US and support the inclusion of wildfire-specific monitoring observations and predictor variables in model-based estimates of PM$_{2.5}$. Lastly, we call for more rigorous error quantification of machine-learning derived exposure data sets, with special attention to extreme events.