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首页> 外文期刊>Atmospheric Measurement Techniques >Assessing snow extent data sets over North America to inform and improve trace gas retrievals from solar backscatter
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Assessing snow extent data sets over North America to inform and improve trace gas retrievals from solar backscatter

机译:评估北美的降雪范围数据集,以告知和改善从太阳反向散射中回收的痕量气体

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Accurate representation of surface reflectivity is essential to tropospheric trace gas retrievals from solar backscatter observations. Surface snow cover presents a significant challenge due to its variability and thus snow-covered scenes are often omitted from retrieval data sets; however, the high reflectance of snow is potentially advantageous for trace gas retrievals. We first examine the implications of surface snow on retrievals from the upcoming TEMPO geostationary instrument for North America. We use a radiative transfer model to examine how an increase in surface reflectivity due to snow cover changes the sensitivity of satellite retrievals to NOsub2/sub in the lower troposphere. We find that a substantial fraction (?50?%) of the TEMPO field of regard can be snow covered in January and that the average sensitivity to the tropospheric NOsub2/sub column substantially increases (doubles) when the surface is snow covered.We then evaluate seven existing satellite-derived or reanalysis snow extent products against ground station observations over North America to assess their capability of informing surface conditions for TEMPO retrievals. The Interactive Multisensor Snow and Ice Mapping System (IMS) had the best agreement with ground observations (accuracy of 93?%, precision of 87?%, recall of 83?%). Multiangle Implementation of Atmospheric Correction (MAIAC) retrievals of MODIS-observed radiances had high precision (90?% for Aqua and Terra), but underestimated the presence of snow (recall of 74?% for Aqua, 75?% for Terra). MAIAC generally outperforms the standard MODIS products (precision of 51?%, recall of 43?% for Aqua; precision of 69?%, recall of 45?% for Terra). The Near-real-time Ice and Snow Extent (NISE) product had good precision (83?%) but missed a significant number of snow-covered pixels (recall of 45?%). The Canadian Meteorological Centre (CMC) Daily Snow Depth Analysis Data set had strong performance metrics (accuracy of 91?%, precision of 79?%, recall of 82?%). We use the Fscore, which balances precision and recall, to determine overall product performance (F?=?85?%, 82 (82)?%, 81?%, 58?%, 46 (54)?% for IMS, MAIAC Aqua (Terra), CMC, NISE, MODIS Aqua (Terra), respectively) for providing snow cover information for TEMPO retrievals from solar backscatter observations. We find that using IMS to identify snow cover and enable inclusion of snow-covered scenes in clear-sky conditions across North America in January can increase both the number of observations by a factor of 2.1 and the average sensitivity to the tropospheric NOsub2/sub column by a factor of 2.7.
机译:表面反射率的准确表示对于从太阳反向散射观测中获取对流层痕量气体至关重要。地表积雪由于其可变性而面临着巨大挑战,因此,从检索数据集中通常会忽略积雪覆盖的场景。然而,雪的高反射率可能有利于痕量气体的回收。我们首先研究地表积雪对即将推出的北美TEMPO对地静止仪器取回物的影响。我们使用辐射传输模型来研究由于积雪导致的表面反射率增加如何改变对流层低层卫星取回对NO 2 的敏感性。我们发现,TEMPO视场的相当一部分(>?50?%)可能在一月被积雪覆盖,并且当对流层NO 2 列的平均灵敏度大大提高(翻倍)时,然后我们对照北美的地面站观测值评估了七个现有的卫星衍生或重新分析的降雪范围产品,以评估其为TEMPO检索提供地面条件的能力。交互式多传感器冰雪测绘系统(IMS)与地面观测结果具有最佳的一致性(准确性为93%,精度为87%,召回率为83%)。 MODIS观测到的辐射的多角度大气校正(MAIAC)检索具有较高的精度(Aqua和Terra的90 %%),但低估了雪的存在(Aqua的回收率为74%,Terra的回收率为75%)。 MAIAC通常优于标准的MODIS产品(精度为51%,Aqua的召回率为43%;精度为69%,Terra的召回率为45%)。接近实时的“冰雪覆盖率”(NISE)产品具有良好的精度(83%),但错过了大量的积雪像素(召回率为45%)。加拿大气象中心(CMC)的每日降雪深度分析数据集具有很强的性能指标(准确性为91%,精度为79%,召回率为82%)。我们使用Fscore(兼顾精度和召回率)来确定整体产品性能(对于IMS,MAIAC,F?=?85%,82(82)%,81​​%,58%,46(54)% Aqua(Terra),CMC,NISE,MODIS Aqua(Terra),分别为从太阳反向散射观测得到的TEMPO提供积雪信息。我们发现,使用IMS来识别积雪并在1月使整个北美地区晴空条件下的积雪场景能够将观测数量增加2.1倍,并且对对流层NO 的平均敏感性提高2 列乘以2.7。

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