协同开发用于检索大气气溶胶和云的激光雷达处理管道(LPP)

IF 1.8 4区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY
J. Pallotta, S. A. de Carvalho, F. Lopes, A. Cacheffo, E. Landulfo, H. Barbosa
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引用次数: 0

摘要

摘要大气激光雷达可以同时以高时空分辨率测量云和气溶胶,因此有助于了解云-气溶胶的相互作用,这是未来气候预测的主要不确定性来源。然而,大气激光雷达通常是定制的,它们之间存在显著差异。从这个意义上说,激光雷达网络发挥着至关重要的作用,因为它们协调不同小组的努力,为保证质量的常规测量提供指导,并为并排仪器比较提供机会,并执行算法验证,所有这些都旨在使网络中异构仪器的物理检索均质化。在这里,我们提供了激光雷达处理管道(LPP)的高级概述,这是拉丁美洲正在进行的协作和开源协调工作。LPP是一个工具集合,其最终目标是处理典型激光雷达测量分析的所有步骤。模块化和可配置的框架是通用的,足以适用于任何激光雷达仪器。第一个公开发布的LPP版本产生了0级(原始和元数据)、1级(平均和层掩模)和2级(气溶胶光学特性)的数据文件。我们通过模拟和测量的弹性激光雷达信号的定量和定性分析来评估LPP的性能。对于具有恒定激光雷达比(LR)的无噪声合成532 nm弹性信号,边界层内气溶胶消光的均方根误差(RMSE)约为0.1%。相比之下,从具有可变LR的噪声弹性信号中获取气溶胶后向散射的RMSE为11%,这主要是由于在反演中假设LR恒定。LPP应用于圣保罗的测量,进一步受到同一位置AERONET数据的限制,在532 nm处获得了69.9±5.2 sr的激光雷达比,与报道的城市气溶胶值一致。在亚马逊上空,对6公里厚的多层卷云的分析发现,云的光学深度约为0.46,这也与之前的研究一致。从这项工作中,我们确定了对新功能的需求,并讨论了指导未来发展的路线图,以适应我们社区的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative development of the Lidar Processing Pipeline (LPP) for retrievals of atmospheric aerosols and clouds
Abstract. Atmospheric lidars can simultaneously measure clouds and aerosols with high temporal and spatial resolution and hence help understand cloud–aerosol interactions, which are the source of major uncertainties in future climate projections. However, atmospheric lidars are typically custom-built, with significant differences between them. In this sense, lidar networks play a crucial role as they coordinate the efforts of different groups, provide guidelines for quality-assured routine measurements and opportunities for side-by-side instrument comparisons, and enforce algorithm validation, all aiming to homogenize the physical retrievals from heterogeneous instruments in a network. Here we provide a high-level overview of the Lidar Processing Pipeline (LPP), an ongoing, collaborative, and open-source coordinated effort in Latin America. The LPP is a collection of tools with the ultimate goal of handling all the steps of a typical analysis of lidar measurements. The modular and configurable framework is generic enough to be applicable to any lidar instrument. The first publicly released version of the LPP produces data files at levels 0 (raw and metadata), 1 (averaging and layer mask), and 2 (aerosol optical properties). We assess the performance of the LPP through quantitative and qualitative analyses of simulated and measured elastic lidar signals. For noiseless synthetic 532 nm elastic signals with a constant lidar ratio (LR), the root mean square error (RMSE) in aerosol extinction within the boundary layer is about 0.1 %. In contrast, retrievals of aerosol backscatter from noisy elastic signals with a variable LR have an RMSE of 11 %, mostly due to assuming a constant LR in the inversion. The application of the LPP for measurements in São Paulo, further constrained by co-located AERONET data, retrieved a lidar ratio of 69.9 ± 5.2 sr at 532 nm, in agreement with reported values for urban aerosols. Over the Amazon, analysis of a 6 km thick multi-layer cirrus found a cloud optical depth of about 0.46, also in agreement with previous studies. From this exercise, we identify the need for new features and discuss a roadmap to guide future development, accommodating the needs of our community.
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来源期刊
Geoscientific Instrumentation Methods and Data Systems
Geoscientific Instrumentation Methods and Data Systems GEOSCIENCES, MULTIDISCIPLINARYMETEOROLOGY-METEOROLOGY & ATMOSPHERIC SCIENCES
CiteScore
3.70
自引率
0.00%
发文量
23
审稿时长
37 weeks
期刊介绍: Geoscientific Instrumentation, Methods and Data Systems (GI) is an open-access interdisciplinary electronic journal for swift publication of original articles and short communications in the area of geoscientific instruments. It covers three main areas: (i) atmospheric and geospace sciences, (ii) earth science, and (iii) ocean science. A unique feature of the journal is the emphasis on synergy between science and technology that facilitates advances in GI. These advances include but are not limited to the following: concepts, design, and description of instrumentation and data systems; retrieval techniques of scientific products from measurements; calibration and data quality assessment; uncertainty in measurements; newly developed and planned research platforms and community instrumentation capabilities; major national and international field campaigns and observational research programs; new observational strategies to address societal needs in areas such as monitoring climate change and preventing natural disasters; networking of instruments for enhancing high temporal and spatial resolution of observations. GI has an innovative two-stage publication process involving the scientific discussion forum Geoscientific Instrumentation, Methods and Data Systems Discussions (GID), which has been designed to do the following: foster scientific discussion; maximize the effectiveness and transparency of scientific quality assurance; enable rapid publication; make scientific publications freely accessible.
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