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首页> 外文期刊>Journal of the Air & Waste Management Association >A statistical model for predicting PM_(2.5) for the western United States
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A statistical model for predicting PM_(2.5) for the western United States

机译:预测美国西部PM_(2.5)的统计模型

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A new statistical model for predicting daily ground level fine scale particulate matter (PM2.5) concentrations at monitoring sites in the western United States was developed and tested operationally during the 2016 and 2017 wildfire seasons. The model is site-specific, using a multiple linear regression schema that relies on the previous day's PM2.5 value, along with fire and smoke related variables from satellite observations. Fire variables include fire radiative power (FRP) and the National Fire Danger Rating System Energy Release Component index. Smoke variables, in addition to ground monitored PM2.5, include aerosol optical depth (AOD) and smoke plume perimeters from the National Oceanic and Atmospheric Administration's Hazard Mapping System. The overall statistical model was inspired by a similar system developed for British Columbia (BC) by the BC Center for Disease Control, but it has been heavily modified and adapted to work in the United States. On average, our statistical model was able to explain 78% of the variance in daily ground level PM2.5. A novel method for implementation of this model as an operational forecast system was also developed and was tested and used during the 2016 and 2017 wildfire seasons. This method focused on producing a continuously-updating prediction that incorporated the latest information available throughout the day, including both updated remote sensing data and real-time PM2.5 observations. The diurnal pattern of performance of this model shows that even a few hours of data early in the morning can substantially improve model performance. Implications: Wildfire smoke events produce significant air quality impacts across the western United States each year impacting millions. We present and evaluate a statistical model for making updating predictions of fine particulate (PM2.5) levels during smoke events. These predictions run hourly and are being used by smoke incident specialists assigned to wildfire operations, and may be of interest to public health officials, air quality regulators, and the public. Predictions based on this model will be available on the web for the 2019 western U.S. wildfire season this summer.
机译:在2016年和2017年的野火季节期间,开发了一种新的统计模型来预测美国西部监测点的每日地面细颗粒物(PM2.5)浓度,并对其进行了测试。该模型是针对特定地点的,使用依赖于前一天的PM2.5值的多重线性回归方案,以及来自卫星观测的与火灾和烟雾相关的变量。火灾变量包括火灾辐射功率(FRP)和国家火灾危险等级系统能量释放成分指数。除地面监测的PM2.5外,烟雾变量还包括来自美国国家海洋与大气管理局的危害分布图系统的气溶胶光学深度(AOD)和烟羽周长。总体统计模型的灵感来自卑诗省疾病控制中心为不列颠哥伦比亚省(BC)开发的类似系统,但已对其进行了重大修改并使其适用于美国。平均而言,我们的统计模型能够解释每日地面PM2.5的78%差异。还开发了将这种模型用作运行预测系统的新颖方法,并已在2016年和2017年的野火季节进行了测试和使用。该方法着重于生成持续更新的预测,该预测结合了全天可用的最新信息,包括更新的遥感数据和实时PM2.5观测值。该模型的昼夜性能模式表明,即使是凌晨几个小时的数据也可以大大提高模型的性能。含义:野火烟雾事件每年在美国西部产生重大的空气质量影响,影响数百万。我们提出并评估一个统计模型,以便对烟雾事件期间的细颗粒(PM2.5)水平进行更新预测。这些预测每小时进行一次,并且由分配给野火行动的烟雾事件专家使用,并且可能对公共卫生官员,空气质量管理人员和公众感兴趣。基于此模型的预测将在今年夏季的2019年美国西部野火季节在线发布。

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