首页> 外文期刊>Atmospheric Measurement Techniques >Shallow cumuli cover and its uncertainties from ground-based lidar-radar data and sky images
【24h】

Shallow cumuli cover and its uncertainties from ground-based lidar-radar data and sky images

机译:浅水泵盖及其基于地面激光雷达数据和天空图像的不确定性

获取原文
获取原文并翻译 | 示例
       

摘要

Cloud cover estimates of single-layer shallow cumuli obtained from narrow field-of-view (FOV) lidar-radar and wide-FOV total sky imager (TSI) data are compared over an extended period (2000-2017 summers) at the established United States Atmospheric Radiation Measurement mid-continental Southern Great Plains site. We quantify the impacts of two factors on hourly and sub-hourly cloud cover estimates: (1) instrument-dependent cloud detection and data merging criteria and (2) FOV configuration. Enhanced observations at this site combine the advantages of the ceilometer, micropulse lidar (MPL) and cloud radar in merged data products. Data collected by these three instruments are used to calculate narrow-FOV cloud fraction (CF) as a temporal fraction of cloudy returns within a given period. Sky images provided by TSI are used to calculate the wide-FOV fractional sky cover (FSC) as a fraction of cloudy pixels within a given image. To assess the impact of the first factor on CF obtained from the merged data products, we consider two additional subperiods (2000-2010 and 2011-2017 summers) that mark significant instrumentation and algorithmic advances in the cloud detection and data merging. We demonstrate that CF obtained from ceilometer data alone and FSC obtained from sky images provide the most similar and consistent cloud cover estimates; hourly bias and root-mean-square difference (RMSD) are within 0.04 and 0.12, respectively. However, CF from merged MPL-ceilometer data provides the largest estimates of the multiyear mean cloud cover, about 0.12 (35 %) and 0.08 (24 %) greater than FSC for the first and second subperiods, respectively. CF from merged ceilometer-MPLradar data has the strongest subperiod dependence with a bias of 0.08 (24 %) compared to FSC for the first subperiod and shows no bias for the second subperiod. The strong period dependence of CF obtained from the combined ceilometerMPL-radar data is likely results from a change in what sensors are relied on to detect clouds below 3 km. After 2011, the MPL stopped being used for cloud top height detection below 3 km, leaving the radar as the only sensor used in cloud top height retrievals. To quantify the FOV impact, a narrowFOV FSC is derived from the TSI images. We demonstrate that FOV configuration does not modify the bias but impacts the RMSD (0.1 hourly, 0.15 sub-hourly). In particular, the FOV impact is significant for sub-hourly observations, where 41% of narrow- and wide-FOV FSC differ by more than 0.1. A new "quick-look" tool is introduced to visualize impacts of these two factors through integration of CF and FSC data with novel TSI-based images of the spatial variability in cloud cover. The influence of cloud field organization, such cloud streets parallel to the wind direction, on narrow- and wide-FOV cloud cover estimates can be visually assessed.
机译:从窄视场的视场(FOV)激光雷达雷达和宽FOV总天空成像器得到的单层浅的积云云层覆盖估计(TSI)数据通过在所建立的联合延长的时间(2000年至2017年的夏天)相比美国大气辐射测量纬度大陆南部大平原的网站。我们量化的两个因素对每小时和子每小时云层估计的影响:(1)仪器有关的云检测和数据合并的标准和(2)FOV配置。在这个网站增强观察结合云高仪,微脉冲激光雷达(MPL)和云雷达的优势,在合并后的数据产品。由这三个仪器收集的数据被用于计算窄FOV云分数(CF),其为给定的时间内返回混浊的时间分数。由TSI提供天空图像被用于计算宽FOV分数天空盖(FSC)为一个给定的图像内的模糊像素的分数。为了评估从合并数据产品获得CF上的第一因素的影响,我们认为标志着显著仪器和云中检测和数据融合算法的进步另外两个子时期(2000- 2010年和2011-2017年的夏天)。我们表明,CF从云高仪的数据单独获得和FSC获得来自天空的图像提供了最相似和一致的云层估计;每小时偏差和根均方差(RMSD)分别是内0.04和0.12。然而,CF从合并的MPL-云高计数据提供了多年的平均云盖的最大估计,约0.12(35%)和0.08(24%)比FSC较大者为第一和第二子周期,分别。相比FSC用于第一子周期和显示没有偏压的第二子周期CF从合并的云高计-MPLradar数据具有为0.08(24%)的偏置的最强子周期依赖性。从合并的ceilometerMPL雷达数据获得CF的旺盛期依赖性从什么传感器依靠检测3公里下面云的变化可能的结果。 2011后,将MPL停止被用于云顶部高度检测3公里下面,留下雷达如在云顶部高度检索的唯一传感器使用。为了量化FOV的影响,一个narrowFOV FSC从TSI图像导出。我们证明FOV配置不会改变偏见,但影响的RMSD(0.1小时,0.15分每小时)。特别地,该FOV影响是用于子每小时的观测数据,其中窄和宽FOV FSC的41%由大于0.1不同显著。一种新的“快看”工具引入通过与云空间变异的新的基于TSI图像CF和FSC数据的集成可视化这两个因素的影响。云场组织的影响,例如云街道平行于风向,在窄和宽FOV云层估计可以视觉评估。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号