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Modeling the feedback between aerosol and meteorological variables in the atmospheric boundary layer during a severe fog–haze event over the North China Plain

机译:在北方北方平原的严重雾霾事件中,在大气边界层中建模气溶胶与气象变量的反馈

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The feedback between aerosol and meteorological variables in the atmospheric boundary layer over the North China Plain (NCP) is analyzed by conducting numerical experiments with and without the aerosol direct and indirect effects via a coupled meteorology and aerosol/chemistry model (WRF-Chem). The numerical experiments are performed for the period of 2–26 January 2013, during which a severe fog–haze event (10–15 January 2013) occurred, with the simulated maximum hourly surface PM2.5 concentration of ~600 ug m?3, minimum atmospheric visibility of ~0.3 km, and 10–100 hours of simulated hourly surface PM2.5 concentration above 300 ug m?3 over NCP. A comparison of model results with aerosol feedback against observations indicates that the model can reproduce the spatial and temporal characteristics of temperature, relative humidity (RH), wind, surface PM2.5 concentration, atmospheric visibility, and aerosol optical depth reasonably well. Analysis of model results with and without aerosol feedback shows that during the fog–haze event aerosols lead to a significant negative radiative forcing of ?20 to ?140 W m?2 at the surface and a large positive radiative forcing of 20–120 W m?2 in the atmosphere and induce significant changes in meteorological variables with maximum changes during 09:00–18:00 local time (LT) over urban Beijing and Tianjin and south Hebei: the temperature decreases by 0.8–2.8 °C at the surface and increases by 0.1–0.5 °C at around 925 hPa, while RH increases by about 4–12% at the surface and decreases by 1–6% at around 925 hPa. As a result, the aerosol-induced equivalent potential temperature profile change shows that the atmosphere is much more stable and thus the surface wind speed decreases by up to 0.3 m s?1 (10%) and the atmosphere boundary layer height decreases by 40–200 m (5–30%) during the daytime of this severe fog–haze event. Owing to this more stable atmosphere during 09:00–18:00, 10–15~January, compared to the surface PM2.5 concentration from the model results without aerosol feedback, the average surface PM2.5 concentration increases by 10–50 μg m?3 (2–30%) over Beijing, Tianjin, and south Hebei and the maximum increase of hourly surface PM2.5 concentration is around 50 (70%), 90 (60%), and 80 μg m?3 (40%) over Beijing, Tianjin, and south Hebei, respectively. Although the aerosol concentration is maximum at nighttime, the mechanism of feedback, by which meteorological variables increase the aerosol concentration most, occurs during the daytime (around 10:00 and 16:00 LT). The results suggest that aerosol induces a more stable atmosphere, which is favorable for the accumulation of air pollutants, and thus contributes to the formation of fog–haze events.
机译:通过通过耦合气象和气溶胶/化学模型(WRF-Chem)进行和无气泡直接和间接影响,通过用气溶胶直接和间接影响来分析气溶胶和气象变量的反馈。数值实验是在2013年1月2日至26日的情况下进行的,在此期间发生严重的雾霾事件(2013年1月10日至15日),具有模拟的最大小时表面PM2.5浓度〜600 ug m?3,最小大气可视性〜0.3 km,和10-100小时的模拟每小时表面PM2.5浓度超过300μm≤3上方NCP。模型结果与气溶胶反馈的模型结果表明,该模型可以合理地再现温度,相对湿度(RH),风,表面PM2.5浓度,大气可视性和气溶胶光学深度的空间和时间特征。在没有气溶胶反馈的情况下分析模型结果显示,在雾霾事件期间气溶胶导致α20至140Wm≤2的显着负辐射强制效应,大辐射强制为20-120 w m ?2在大气中,在北京和天津和南河北省的当地时间(LT)时,在09:00-18:00期间,促进气象变量的显着变化:在城市和天津和南河北省的情况下:表面的温度降低0.8-2.8°C在925 HPA左右增加0.1-0.5°C,而RH在表面上增加约4-12%,大约925 HPA在1-6%下降。结果,气溶胶诱导的等效潜在温度曲线变化表明,大气更稳定,因此表面风速达到0.3ms?1(10%),大气边界层高度降低40-200 M(5-30%)在这种严重的雾霾事件的白天期间。由于这种更稳定的氛围在09:00-18:00,10-15〜1月期间,与表面PM2.5浓度与模型结果相比,没有气溶胶反馈,平均表面PM2.5浓度增加10-50μg在北京,天津和南河北的3(2-30%),每小时表面PM2.5浓度的最大增加约为50(70%),90(60%)和80μgm?3(40 %)分别在北京,天津和南河北。虽然气溶胶浓度在夜间最大值,但反馈机制,流气变量大多数增加气溶胶浓度,在白天(约10:00和16:00)发生。结果表明,气溶胶诱导更稳定的气氛,这有利于空气污染物的积累,从而有助于形成雾霾事件。

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