Evaluation of WRF-Chem air quality forecasts during the AEROMMA and STAQS 2023 field campaigns.

IF 2.1 4区 环境科学与生态学 Q3 ENGINEERING, ENVIRONMENTAL
Juanito Jerrold Mariano Acdan, R Bradley Pierce, Shi Kuang, Todd McKinney, Darby Stevenson, Michael J Newchurch, Gabriele Pfister, Siqi Ma, Daniel Tong
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引用次数: 0

Abstract

A real-time air quality forecasting system was developed using the Weather Research and Forecasting model coupled with Chemistry (WRF-Chem) to provide support for flight planning activities during the NOAA Atmospheric Emissions and Reactions Observed from Megacities to Marine Areas (AEROMMA) and NASA Synergistic TEMPO Air Quality Science (STAQS) 2023 field campaigns. The forecasting system operated on two separate domains centered on Chicago, IL, and New York City, NY, and provided 72-hour predictions of atmospheric composition, aerosols, and clouds. This study evaluates the Chicago-centered forecasting system's 1-, 2-, and 3-day ozone (O3) forecast skill for Chiwaukee Prairie, WI, a rural area downwind of Chicago that often experiences high levels of O3 pollution. Comparisons to vertical O3 profiles collected by a Tropospheric Ozone Lidar Network (TOLNet) instrument revealed that forecast skill decreases as forecast lead time increases. When compared to surface measurements, the forecasting system tended to underestimate O3 concentrations on high O3 days and overestimate on low O3 days at Chiwaukee Prairie regardless of forecast lead time. Using July 25, 2023, as a case study, analyses show that the forecasts underestimated peak O3 levels at Chiwaukee Prairie during this regionwide bad air quality day. Wind speed and direction data indicates that this underestimation can partially be attributed to lake breeze simulation errors. Surface fine particulate matter (PM2.5) measurements, Geostationary Operational Environmental Satellite-16 (GOES-16) aerosol optical depth (AOD) data, and back trajectories from the NOAA Hybrid Single-Particle Lagrangian Integrated Trajectory (HYSPLIT) model show that transported Canadian wildfire smoke impacted the Lake Michigan region on this day. Errors in the forecasted chemical composition and transport of the smoke plumes also contributed to underpredictions of O3 levels at Chiwaukee Prairie on July 25, 2023. The results of this work help identify improvements that can be made for future iterations of the WRF-Chem forecasting system.Implications: Air quality forecasting is an important tool that can be used to inform the public about upcoming high pollution days so that individuals may plan accordingly to limit their exposure to health-damaging air pollutants. Forecasting also helps scientists make decisions about where to make observations during air quality field campaigns. A variety of observational datasets were used to evaluate the accuracy of an air quality forecasting system that was developed for NOAA and NASA field campaigns that occurred in the summer of 2023. These evaluations inform areas of improvement for future development of this air quality forecasting system.

在 AEROMMA 和 STAQS 2023 实地活动期间对 WRF-Chem 空气质量预测的评估。
利用结合化学的天气研究和预报模型(WRF-Chem)开发了一个实时空气质量预报系统,为诺阿大气排放和从特大城市到海洋地区观测到的反应(AEROMMA)和美国国家航空航天局协同 TEMPO 空气质量科学(STAQS)2023 实地活动期间的飞行计划活动提供支持。该预报系统在以伊利诺斯州芝加哥市和纽约州纽约市为中心的两个独立域上运行,提供大气成分、气溶胶和云的 72 小时预测。本研究评估了以芝加哥为中心的预报系统对威斯康星州奇沃基草原的 1 天、2 天和 3 天臭氧(O3)预报技能,奇沃基草原是芝加哥下风向的一个农村地区,经常出现高浓度的 O3 污染。与对流层臭氧激光雷达网络(TOLNet)仪器收集的垂直臭氧剖面图进行比较后发现,随着预报准备时间的增加,预报技能也在降低。与地面测量结果相比,无论预报准备时间长短,预报系统都倾向于低估奇瓦基大草原高臭氧浓度日的臭氧浓度,而高估低臭氧浓度日的臭氧浓度。以 2023 年 7 月 25 日为例,分析表明预报低估了奇瓦基草原在这一区域性空气质量恶劣天的臭氧峰值水平。风速和风向数据表明,这种低估部分归因于湖风模拟误差。地表细颗粒物(PM2.5)测量数据、地球静止业务环境卫星-16(GOES-16)气溶胶光学深度(AOD)数据以及来自 NOAA 混合单粒子拉格朗日综合轨迹(HYSPLIT)模型的回溯轨迹显示,加拿大野火烟雾在这一天影响了密歇根湖地区。烟羽的化学成分和传输预报中的误差也导致了对 2023 年 7 月 25 日奇沃基草原 O3 水平的预报不足。这项工作的结果有助于确定 WRF-Chem 预报系统未来迭代的改进措施:空气质量预报是一项重要工具,可用于向公众通报即将到来的高污染日,以便个人制定相应的计划,限制接触对健康有害的空气污染物。预报还有助于科学家在空气质量实地观测活动中决定在哪里进行观测。我们使用了各种观测数据集来评估空气质量预报系统的准确性,该系统是为 2023 年夏季开展的 NOAA 和 NASA 实地观测活动而开发的。这些评估为今后开发该空气质量预报系统提供了改进领域。
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来源期刊
Journal of the Air & Waste Management Association
Journal of the Air & Waste Management Association ENGINEERING, ENVIRONMENTAL-ENVIRONMENTAL SCIENCES
CiteScore
5.00
自引率
3.70%
发文量
95
审稿时长
3 months
期刊介绍: The Journal of the Air & Waste Management Association (J&AWMA) is one of the oldest continuously published, peer-reviewed, technical environmental journals in the world. First published in 1951 under the name Air Repair, J&AWMA is intended to serve those occupationally involved in air pollution control and waste management through the publication of timely and reliable information.
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