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多分析方法估算 2017 年北加州野火的区域健康影响。

A multi-analysis approach for estimating regional health impacts from the 2017 Northern California wildfires.

机构信息

Pacific Northwest Research Station, US Department of Agriculture Forest Service, Seattle, WA, USA.

Meteorology and Climate Science, San Jose State University, San Jose, CA, USA.

出版信息

J Air Waste Manag Assoc. 2021 Jul;71(7):791-814. doi: 10.1080/10962247.2021.1891994.

Abstract

Smoke impacts from large wildfires are mounting, and the projection is for more such events in the future as the one experienced October 2017 in Northern California, and subsequently in 2018 and 2020. Further, the evidence is growing about the health impacts from these events which are also difficult to simulate. Therefore, we simulated air quality conditions using a suite of remotely-sensed data, surface observational data, chemical transport modeling with WRF-CMAQ, one data fusion, and three machine learning methods to arrive at datasets useful to air quality and health impact analyses. To demonstrate these analyses, we estimated the health impacts from smoke impacts during wildfires in October 8-20, 2017, in Northern California, when over 7 million people were exposed to Unhealthy to Very Unhealthy air quality conditions. We investigated using the 5-min available GOES-16 fire detection data to simulate timing of fire activity to allocate emissions hourly for the WRF-CMAQ system. Interestingly, this approach did not necessarily improve overall results, however it was key to simulating the initial 12-hr explosive fire activity and smoke impacts. To improve these results, we applied one data fusion and three machine learning algorithms. We also had a unique opportunity to evaluate results with temporary monitors deployed specifically for wildfires, and performance was markedly different. For example, at the permanent monitoring locations, the WRF-CMAQ simulations had a Pearson correlation of 0.65, and the data fusion approach improved this (Pearson correlation = 0.95), while at the temporary monitor locations across all cases, the best Pearson correlation was 0.5. Overall, WRF-CMAQ simulations were biased high and the geostatistical methods were biased low. Finally, we applied the optimized PM exposure estimate in an exposure-response function. Estimated mortality attributable to PM exposure during the smoke episode was 83 (95% CI: 0, 196) with 47% attributable to wildland fire smoke.: Large wildfires in the United States and in particular California are becoming increasingly common. Associated with these large wildfires are air quality and health impact to millions of people from the smoke. We simulated air quality conditions using a suite of remotely-sensed data, surface observational data, chemical transport modeling, one data fusion, and three machine learning methods to arrive at datasets useful to air quality and health impact analyses from the October 2017 Northern California wildfires. Temporary monitors deployed for the wildfires provided an important model evaluation dataset. Total estimated regional mortality attributable to PM exposure during the smoke episode was 83 (95% confidence interval: 0, 196) with 47% of these deaths attributable to the wildland fire smoke. This illustrates the profound effect that even a 12-day exposure to wildland fire smoke can have on human health.

摘要

随着 2017 年 10 月北加州和随后的 2018 年和 2020 年发生的此类事件越来越多,大型野火产生的烟雾影响也在不断增加。此外,越来越多的证据表明,这些事件对健康的影响也很难模拟。因此,我们使用一系列遥感数据、地面观测数据、WRF-CMAQ 化学输送模型、一种数据融合和三种机器学习方法来模拟空气质量条件,以得出对空气质量和健康影响分析有用的数据集。为了演示这些分析,我们估计了 2017 年 10 月 8 日至 20 日北加州野火期间烟雾对健康的影响,当时超过 700 万人暴露在不健康到非常不健康的空气质量条件下。我们使用 5 分钟可用的 GOES-16 火灾探测数据来模拟火灾活动的时间,以便为 WRF-CMAQ 系统分配每小时的排放量。有趣的是,这种方法并不一定能提高整体结果,但对模拟最初 12 小时的爆炸式火灾活动和烟雾影响至关重要。为了改进这些结果,我们应用了一种数据融合和三种机器学习算法。我们还有机会使用专门针对野火部署的临时监测器来评估结果,性能明显不同。例如,在永久性监测点,WRF-CMAQ 模拟的皮尔逊相关系数为 0.65,而数据融合方法提高了这一系数(皮尔逊相关系数=0.95),而在所有情况下的临时监测点,最佳的皮尔逊相关系数为 0.5。总体而言,WRF-CMAQ 模拟结果偏高,而地质统计学方法结果偏低。最后,我们将优化后的 PM 暴露估计值应用于暴露反应函数中。烟雾事件期间归因于 PM 暴露的死亡率估计为 83(95%置信区间:0,196),其中 47%归因于野火烟雾。美国,特别是加利福尼亚州的大型野火越来越常见。与这些大型野火相关的是烟雾对数百万人的空气质量和健康影响。我们使用一系列遥感数据、地面观测数据、化学输送模型、一种数据融合和三种机器学习方法来模拟 2017 年 10 月北加州野火期间的空气质量条件,以得出对空气质量和健康影响分析有用的数据集。专门针对野火部署的临时监测器提供了一个重要的模型评估数据集。烟雾事件期间归因于 PM 暴露的总区域死亡率估计为 83(95%置信区间:0,196),其中 47%的死亡归因于野火烟雾。这说明了即使是 12 天的野火烟雾暴露对人类健康也会产生深远的影响。

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