首页> 外文期刊>Atmospheric Measurement Techniques >Advancements in the Aerosol Robotic Network (AERONET) Version 3 database - automated near-real-time quality control algorithm with improved cloud screening for Sun photometer aerosol optical depth (AOD) measurements
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Advancements in the Aerosol Robotic Network (AERONET) Version 3 database - automated near-real-time quality control algorithm with improved cloud screening for Sun photometer aerosol optical depth (AOD) measurements

机译:气溶胶机器人网络(AERONET)版本3数据库的进步 - 自动近实时质量控制算法,改进的云筛选太阳光度计气雾光学深度(AOD)测量

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Aerosol Robotic Network (AERONET) has provided highly accurate, ground-truth measurements of the aerosol optical depth (AOD) using Cimel Electronique Sun-sky radiometers for more than 25 years. In Version 2 (V2) of the AERONET database, the near-real-time AOD was semiautomatically quality controlled utilizing mainly cloud-screening methodology, while additional AOD data contaminated by clouds or affected by instrument anomalies were removed manually before attaining quality-assured status (Level 2.0). The large growth in the number of AERONET sites over the past 25 years resulted in significant burden to the manual quality control of millions of measurements in a consistent manner. The AERONET Version 3 (V3) algorithm provides fully automatic cloud screening and instrument anomaly quality controls. All of these new algorithm updates apply to near-real-time data as well as post-field-deployment processed data, and AERONET reprocessed the database in 2018. A full algorithm redevelopment provided the opportunity to improve data inputs and corrections such as unique filter-specific temperature characterizations for all visible and near-infrared wavelengths, updated gaseous and water vapor absorption coefficients, and ancillary data sets. The Level 2.0 AOD quality-assured data set is now available within a month after post-field calibration, reducing the lag time from up to several months. Near-real-time estimated uncertainty is determined using data qualified as V3 Level 2.0 AOD and considering the difference between the AOD computed with the pre-field calibration and AOD computed with pre-field and post-field calibration. This assessment provides a near-real-time uncertainty estimate for which average differences of AOD suggest a +0.02 bias and one sigma uncertainty of 0.02, spectrally, but the bias and uncertainty can be significantly larger for specific instrument deployments. Long-term monthly averages analyzed for the entire V3 and V2 databases produced average differences (V3-V2) of +0.002 with a +/- 0.02 SD (standard deviation), yet monthly averages calculated using time-matched observations in both databases were analyzed to compute an average difference of -0.002 with a +/- 0.004 SD. The high statistical agreement in multiyear monthly averaged AOD validates the advanced automatic data quality control algorithms and suggests that migrating research to the V3 database will corroborate most V2 research conclusions and likely lead to more accurate results in some cases.
机译:气溶胶机器人网络(AEROONET)使用Cimel Electronique Sun-Sky辐射仪超过25年,提供了高度准确的气溶胶光学深度(AOD)的高精度,地面测量。在AeroNet数据库的第2版(V2)中,近实时AOD是半剖析的质量控制,主要用于云筛选方法,而在获得质量保证状态之前,手动除去由云或受仪器异常影响的额外AOD数据(2.0级)。过去25岁的机动仪网站数量的大幅增长导致了以一致的方式对数百万次测量的手动质量控制显着负担。 AERONET版本3(V3)算法提供全自动云筛选和仪器异常质量控制。所有这些新算法的更新适用于近实时数据以及场地部署处理数据,AerOnet在2018年再加工数据库。重新开发的完整算法提供了改进数据输入和校正(如唯一过滤器)的机会适用于所有可见和近红外波长的特异性温度特性,更新的气体和水蒸气吸收系数和辅助数据集。 2.0级AOD质量保证的数据集现在在现场校准后一个月内可用,从而将延迟时间从最多几个月减少。使用限定为V3级2.0 AOD的数据确定近实时估计的不确定性,并考虑使用预现场校准和AOD计算的AOD之间的差异,以及现场校准。该评估提供了一个近实时的不确定度估计,AOD的平均差异建议+0.02偏差和一个SIGMA不确定度为0.02,光谱,但对于特定仪器部署,偏差和不确定性可以显着更大。为整个V3和V2数据库分析的长期每月平均分析的平均差异(V3-V2)+0.002的+ / 0.02 SD(标准偏差),还分析了在两个数据库中使用时间匹配的观测计算的每月平均值使用+/- 0.004 SD计算-0.002的平均差异。多年月度平均AOD中的高统计协议验证了先进的自动数据质量控制算法,并提出将研究迁移到V3数据库,将证实大多数V2研究结论,并且可能导致一些情况下的更准确的结果。

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