首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Aerosol lidar observations of atmospheric mixing in Los Angeles: Climatology and implications for greenhouse gas observations
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Aerosol lidar observations of atmospheric mixing in Los Angeles: Climatology and implications for greenhouse gas observations

机译:洛杉矶大气混合的气溶胶激光雷达观测:气候学及其对温室气体观测的启示

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Atmospheric observations of greenhouse gases provide essential information on sources and sinks of these key atmospheric constituents. To quantify fluxes from atmospheric observations, representation of transport-especially vertical mixing—is a necessity and often a source of error. We report on remotely sensed profiles of vertical aerosol distribution taken over a 2 year period in Pasadena, California. Using an automated analysis system, we estimate daytime mixing layer depth, achieving high confidence in the afternoon maximum on 51% of days with profiles from a Sigma Space Mini Micropulse LiDAR (MiniMPL) and on 36% of days with a Vaisala CL51 ceilometer. We note that considering ceilometer data on a logarithmic scale, a standard method, introduces, an offset in mixing height retrievals. The mean afternoon maximum mixing height is 770 m Above Ground Level in summer and 670 m in winter, with significant day-to-day variance (within season =220 m≈30%). Taking advantage of the MiniMPL’s portability, we demonstrate the feasibility of measuring the detailed horizontal structure of the mixing layer by automobile. We compare our observations to planetary boundary layer (PBL) heights from sonde launches, North American regional reanalysis (NARR), and a custom Weather Research and Forecasting (WRF) model developed for greenhouse gas (GHG) monitoring in Los Angeles. NARR and WRF PBL heights at Pasadena are both systematically higher than measured, NARR by 2.5 times; these biases will cause proportional errors in GHG flux estimates using modeled transport. We discuss how sustained lidar observations can be used to reduce flux inversion error by selecting suitable analysis periods, calibrating models, or characterizing bias for correction in post processing.
机译:大气中温室气体的观测提供了有关这些关键大气成分的源和汇的基本信息。为了量化来自大气观测的通量,必须采用传输形式(尤其是垂直混合)来表示,这通常是误差的来源。我们报告了在加利福尼亚州帕萨迪纳市进行的为期2年的垂直气溶胶分布的遥感概况。使用自动分析系统,我们可以估算白天的混合层深度,使用Sigma Space Mini Micropulse LiDAR(MiniMPL)的剖面图和使用Vaisala CL51云高仪的36%的白天,可以在下午的最高值上获得最高的置信度。我们注意到,考虑对数刻度的云高仪数据,这是一种标准方法,在混合高度检索中引入了偏移。夏季的平均下午最大混合高度在夏季高于地面770 m,在冬季则为670 m,并且日常变化很大(季节内= 220m≈30%)。利用MiniMPL的便携性,我们演示了用汽车测量混合层的详细水平结构的可行性。我们将观测结果与探空仪发射的行星边界层(PBL)高度,北美区域再分析(NARR)以及为洛杉矶的温室气体(GHG)监测开发的定制天气研究和预报(WRF)模型进行了比较。帕萨迪纳(Pasadena)的NARR和WRF PBL高度都系统地比实测值高2.5倍;这些偏差将导致使用模型传输的温室气体流量估算中的比例误差。我们讨论了如何通过选择合适的分析周期,校准模型或表征偏差以进行后期处理中的校正,来使用持续的激光雷达观测来减少通量反演误差。

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