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Assessment of bias-adjusted PM2.5 air quality forecasts over the continental United States during 2007

机译:评估2007年美国大陆上经偏校正后的PM 2.5 空气质量预报

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To develop fine particular matter (PM2.5) air quality forecasts, a National Air Quality Forecast Capability (NAQFC) system, which linked NOAA's North American Mesoscale (NAM) meteorological model with EPA's Community Multiscale Air Quality (CMAQ) model, was deployed in the developmental mode over the continental United States during 2007. This study investigates the operational use of a bias-adjustment technique called the Kalman Filter Predictor approach for improving the accuracy of the PM2.5 forecasts at monitoring locations. The Kalman Filter Predictor bias-adjustment technique is a recursive algorithm designed to optimally estimate bias-adjustment terms using the information extracted from previous measurements and forecasts. The bias-adjustment technique is found to improve PM2.5 forecasts (i.e. reduced errors and increased correlation coefficients) for the entire year at almost all locations. The NAQFC tends to overestimate PM2.5 during the cool season and underestimate during the warm season in the eastern part of the continental US domain, but the opposite is true for the pacific coast. In the Rocky Mountain region, the NAQFC system overestimates PM2.5 for the whole year. The bias-adjustment forecasts can quickly (after 2–3 days' lag) adjust to reflect the transition from one regime to the other. The modest computational requirements and systematical improvements in forecast results across all seasons suggest that this technique can be easily adapted to perform bias-adjustment for real-time PM2.5 air quality forecasts.
机译:为了建立特殊细小(PM 2.5 )空气质量预报,需要建立国家空气质量预报能力(NAQFC)系统,该系统将NOAA的北美中尺度(NAM)气象模型与EPA的社区多尺度空气质量(CMAQ) )模型在2007年期间以发展模式部署在美国大陆上。本研究调查了称为卡尔曼滤波预测器方法的偏差调整技术在提高PM 2.5 准确性方面的实际应用在监视位置进行预测。卡尔曼滤波器预测器偏差调整技术是一种递归算法,旨在使用从以前的测量和预测中提取的信息来最佳地估计偏差调整项。发现偏差调整技术可改善几乎所有位置全年的PM 2.5 预报(即减少误差和增加相关系数)。在凉爽的季节,NAQFC倾向于在美国大陆东部的东部高估PM 2.5 ,而在温暖的季节则低估PM 2.5 ,但在太平洋沿岸则相反。在落基山地区,NAQFC系统全年高估了PM 2.5 。偏差调整预测可以快速(在滞后2-3天后)进行调整,以反映从一种状态到另一种状态的过渡。整个季节的适度计算要求和系统性的预报结果改进表明,该技术可以轻松地应用于实时PM 2.5 空气质量预报的偏差调整。

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