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Observations of tropical cirrus by elastic backscatter lidars and the development of a cloud and aerosol retrieval algorithm for Raman lidars.

机译:弹性后向散射激光雷达对热带卷云的观测以及拉曼激光雷达的云和气溶胶检索算法的发展。

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摘要

Tropical cirrus cloud properties from elastic backscatter lidars---namely the Atmospheric Radiation Measurement (ARM) program's ground-based micropulse lidars (MPL) and the spaceborne Cloud-Aerosol Lidar Infrared Pathfinder Satellite Observations (CALIPSO) lidar---are examined. The MPL detects significantly less cirrus clouds relative to CALIPSO, particularly during the daytime. However, the MPL samples enough cirrus at night to provide similar statistics of macrophysical and optical properties as CALIPSO. Both sets of lidar observations are supplemented with cloud radar observations to calculate radiative heating rate profiles from a ground-based and spaceborne perspective. The inferred radiative effect of clouds is much smaller when using the ground-based data, mostly due to the lack of cirrus detected by the MPL. The relatively new and more advance ARM Raman lidar (RL) is shown to be more sensitive to cirrus than the ARM MPL and detects a similar amount of cirrus as CALIPSO. Daytime measurements using the RL elastic channel are relatively unaffected by the solar background and are therefore suited for checking the observed diurnal cycles from the MPL and CALIPSO. Comparisons with RL observations show that the geometrical thickness of cirrus from the MPL and CALIPSO datasets are biased thin during the daytime due to increased noise.;Various upgrades since its conception have made the ARM RL a viable tool for cloud studies as demonstrated by this thesis. Since the ARM RL was not originally designed for cloud observations, the current automated processing algorithms do not identify all clouds nor attempt to retrieve cloud extinction profiles. Therefore an improved Feature detection and EXtinction retrieval (FEX) algorithm is developed. The approach of FEX is to use multiple quantities to identify features (clouds and aerosols) using range-dependent context-sensitive detection thresholds. The use of multiple quantities provides complementary depictions of cloud and aerosol locations. The extinction profiles are directly retrieved using the Raman method, which are supplemented by other retrieval methods developed for elastic backscatter lidars. A classification of feature type is made guided by the atmosphere's thermodynamic state and the feature's scattering properties. The contribution of multiple scattering, which is significant for hydrometeors, is explicitly considered for each of the ARM RL channels. The FEX framework is also suitable for other advance lidars, i.e. high spectral resolution lidars (HSRL). The continuously operated, automated ARM RLs paired with FEX provide an enormous wealth of water vapor, temperature, aerosol and cloud data unmatched by other remote sensing systems.
机译:检查了弹性后向散射激光雷达的热带卷云特性-即大气辐射测量(ARM)程序的地面微脉冲激光雷达(MPL)和星云-气溶胶激光雷达红外探路者卫星观测(CALIPSO)激光雷达-。与CALIPSO相比,MPL检测到的卷云明显更少,尤其是在白天。但是,MPL在晚上对足够的卷云进行了采样,以提供与CALIPSO相似的宏观物理和光学特性统计数据。两组激光雷达观测资料都辅以云雷达观测资料,以从地面和星载角度计算辐射加热速率曲线。使用地面数据时,推断出的云辐射效应要小得多,这主要是由于MPL检测不到卷云。与ARM MPL相比,相对较新且更先进的ARM拉曼激光雷达(RL)对卷云更敏感,并且可以检测到与CALIPSO类似数量的卷云。使用RL弹性通道的日间测量相对不受太阳背景的影响,因此适合检查从MPL和CALIPSO观测到的昼夜周期。与RL观测值的比较表明,由于噪声增加,白天MPL和CALIPSO数据集的卷云的几何厚度偏向较薄;自从其概念的各种升级使ARM RL成为云研究的可行工具,如本文所论证的那样。由于ARM RL最初并不是为观察云而设计的,因此当前的自动处理算法无法识别所有云,也无法尝试获取云的灭绝资料。因此,开发了一种改进的特征检测和消灭检索(FEX)算法。 FEX的方法是使用多个量,通过与范围相关的上下文相关检测阈值来识别特征(云和气溶胶)。使用多个数量可提供云和气溶胶位置的补充描述。消光轮廓可以使用拉曼方法直接获取,并通过为弹性后向散射激光雷达开发的其他获取方法进行补充。根据大气的热力学状态和特征的散射特性对特征类型进行分类。对于每个ARM RL通道,都明确考虑了多重散射的影响,这对水凝物很重要。 FEX框架还适用于其他高级激光雷达,即高光谱分辨率激光雷达(HSRL)。连续运行的自动化ARM RL与FEX结合使用,可提供大量水蒸气,温度,气溶胶和云数据,这是其他遥感系统无法比拟的。

著录项

  • 作者

    Thorsen, Tyler J.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Atmospheric sciences.;Remote sensing.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 257 p.
  • 总页数 257
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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