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首页> 外文期刊>Journal of Applied Meteorology and Climatology >Ground-Based Remote Sensing of the ABL Structure in Moscow and Its Use to Estimate Pollutant Surface Emission Rates
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Ground-Based Remote Sensing of the ABL Structure in Moscow and Its Use to Estimate Pollutant Surface Emission Rates

机译:莫斯科ABL结构的地面遥感及其在估算污染物表面排放率中的应用

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摘要

Currently used methods to estimate surface pollutant emissions require a set of specific air-sampling surveys. Data from a network of ground-based sodars and a network of air-quality stations in Moscow, Russia, are used to estimate the emission ratesof carbon monoxide (CO) and nitric oxide (NO). The sodar network, consisting of three "LATAN-3" Doppler sodars and three "MTP-5" microwave temperature profilers, is used to measure the vertical profiles of vertical and horizontal wind velocity, wind direction, and temperature, which are used to determine the average mixing-layer height. The network of ground-based air-quality stations, consisting of 17 automated stations distributed uniformly across Moscow, continuously measured the CO and NO concentrations. This study focuses on an anticyclonic episode of high surface pressure over Moscow during 30 July-1 August 2012. After sunrise, the solar-induced convection effectively moderated the pollutant levels in the lowest 100-200 m. After sunset, convective mixing stopped and the wind weakened, which allowed CO and NO to reach hazardous levels. With an assumption of an average mixing-layer height of 150 m, the resulting estimate of surface emission of CO is -6mugm~2s~l, whereas that for NO is -0.6mugm~2s~l.
机译:当前使用的估算表面污染物排放的方法需要一组特定的空气采样调查。来自俄罗斯莫斯科的地面声雷达网络和空气质量站网络的数据用于估算一氧化碳(CO)和一氧化氮(NO)的排放率。声纳网络由三个“ LATAN-3”多普勒声纳和三个“ MTP-5”微波温度廓线仪组成,用于测量垂直和水平风速,风向和温度的垂直廓线,用于确定平均混合层高度。地面空气质量监测站网络由在莫斯科均匀分布的17个自动化监测站组成,可连续测量CO和NO浓度。这项研究的重点是2012年7月30日至8月1日在莫斯科上空的高压反气旋事件。日出后,太阳对流有效地缓解了最低100-200 m处的污染物水平。日落之后,对流混合停止,风减弱,这使CO和NO达到危险水平。假设平均混合层高度为150 m,则对CO的表面排放的估算结果为-6mugm〜2s〜l,而对于NO的估算值为-0.6mugm〜2s〜l。

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