首页> 外文期刊>Atmospheric Measurement Techniques >Footprint-scale cloud type mixtures and their impacts on Atmospheric Infrared Sounder cloud property retrievals
【24h】

Footprint-scale cloud type mixtures and their impacts on Atmospheric Infrared Sounder cloud property retrievals

机译:足迹型云类型混合物及其对大气红外发声器云属性检索的影响

获取原文
获取原文并翻译 | 示例
           

摘要

A method is described to classify cloud mixtures of cloud top types, termed cloud scenes, using cloud type classification derived from the CloudSat radar (2B-CLDCLASS). The scale dependence of the cloud scenes is quantified. For spatial scales at 45 km (15 km), only 18 (10) out of 256 possible cloud scenes account for 90% of all observations and contain one, two, or three cloud types. The number of possible cloud scenes is shown to depend on spatial scale with a maximum number of 210 out of 256 possible scenes at a scale of 105 km and fewer cloud scenes at smaller and larger scales. The cloud scenes are used to assess the characteristics of spatially collocated Atmospheric Infrared Sounder (AIRS) thermodynamic-phase and ice cloud property retrievals within scenes of varying cloud type complexity. The likelihood of ice and liquid-phase detection strongly depends on the CloudSat-identified cloud scene type collocated with the AIRS footprint. Cloud scenes primarily consisting of cirrus, nimbostratus, altostratus, and deep convection are dominated by ice-phase detection, while stratocumulus, cumulus, and altocumulus are dominated by liquid- and undetermined-phase detection. Ice cloud particle size and optical thickness are largest for cloud scenes containing deep convection and cumulus and are smallest for cirrus. Cloud scenes with multiple cloud types have small reductions in information content and slightly higher residuals of observed and modeled radiance compared to cloud scenes with single cloud types. These results will help advance the development of temperature, specific humidity, and cloud property retrievals from hyperspectral infrared sounders that include cloud microphysics in forward radiative transfer models.
机译:描述了一种方法来使用从CloudSAT雷达(2B-CLDClass)导出的云类型分类来对云顶类型的云混合物进行分类。量化云场景的尺度依赖性。对于45公里(15公里)的空间鳞片,256个可能的云场景中只有18(10)个,占所有观察的90%,并且包含一个,两个或三种云类型。可能的云场景的数量被显示为依赖于空间刻度,最大数量为256个可能的场景,比例为105km,较小的云场景较小。云场景用于评估空间并置的大气红外发声器(空气)热力学相位和冰云属性检索的特性,在不同云型复杂性的场景中。冰和液相检测的可能性强烈取决于CloudSat识别的云场景类型与烟雾占用空间。云场景主要由Cirrus,Nimbostratus,Altostratus和深对流组成,由冰相检测为主导,而Stratocumulus,积云和长轴由液体和未确定相检测主导。冰云粒度和光学厚度最大的云场景最大,用于含有深度对流和积云的云场景,对于卷路最小。与具有单云类型的云场景相比,具有多种云类型的云场景较少减少信息内容和观察和建模辐射的略高,与云场景相比。这些结果将有助于从高光谱红外探测器中推进温度,特定湿度和云属性检索的发展,该散热器包括云微妙的前向辐射转移模型。

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