PyRTlib: an educational Python-based library for non-scattering atmospheric microwave radiative transfer computations

IF 4 3区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Geoscientific Model Development Pub Date : 2024-03-12 DOI:10.5194/gmd-17-2053-2024
S. Larosa, Domenico Cimini, D. Gallucci, S. Nilo, F. Romano
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引用次数: 1

Abstract

Abstract. This article introduces PyRTlib, a new standalone Python package for non-scattering line-by-line microwave radiative transfer simulations. PyRTlib is a flexible and user-friendly tool for computing down- and upwelling brightness temperatures and related quantities (e.g., atmospheric absorption, optical depth, opacity, mean radiating temperature) written in Python, a language commonly used nowadays for scientific software development, especially by students and early-career scientists. PyRTlib allows for simulating observations from ground-based, airborne, and satellite microwave sensors in clear-sky and in cloudy conditions (under non-scattering Rayleigh approximation). The intention for PyRTlib is not to be a competitor to state-of-the-art atmospheric radiative transfer codes that excel in speed and/or versatility (e.g., ARTS, Atmospheric Radiative Transfer Simulator; RTTOV, Radiative Transfer for TOVS (Television Infrared Observation Satellite (TIROS) Operational Vertical Sounder)). The intention is to provide an educational tool, completely written in Python, to readily simulate atmospheric microwave radiative transfer from a variety of input profiles, including predefined climatologies, global radiosonde archives, and model reanalysis. The paper presents quick examples for the built-in modules to access popular open data archives. The paper also presents examples for computing the simulated brightness temperature for different platforms (ground-based, airborne, and satellite), using various input profiles, showing how to easily modify other relevant parameters, such as the observing angle (zenith, nadir, slant), surface emissivity, and gas absorption model. PyRTlib can be easily embedded in other Python codes needing atmospheric microwave radiative transfer (e.g., surface emissivity models and retrievals). Despite its simplicity, PyRTlib can be readily used to produce present-day scientific results, as demonstrated by two examples showing (i) an absorption model comparison and validation with ground-based radiometric observations and (ii) uncertainty propagation of spectroscopic parameters through the radiative transfer calculations following a rigorous approach. To our knowledge, the uncertainty estimate is not provided by any other currently available microwave radiative transfer code, making PyRTlib unique for this aspect in the atmospheric microwave radiative transfer code scenario.
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PyRTlib:基于 Python 的非散射大气微波辐射传递计算教育库
摘要本文介绍了用于非散射逐行微波辐射传递模拟的新的独立 Python 软件包 PyRTlib。PyRTlib 是一个灵活且用户友好的工具,用于计算下沉和上涌亮度温度及相关量(如大气吸收、光学深度、不透明度、平均辐射温度),该工具使用 Python 编写,Python 是当今科学软件开发中常用的语言,尤其适用于学生和初入职场的科学家。PyRTlib 可模拟地面、机载和卫星微波传感器在晴空和多云条件下(在非散射瑞利近似条件下)的观测结果。PyRTlib 的目的并不是要与在速度和/或多功能性方面最先进的大气辐射传输代码(如 ARTS,大气辐射传输模拟器;RTTOV,TOVS(电视红外观测卫星(TIROS)业务垂直探测仪)的辐射传输)竞争。其目的是提供一个完全用 Python 编写的教育工具,以便根据各种输入资料(包括预定义气候、全球无线电探空仪档案和模型再分析)轻松模拟大气微波辐射传输。论文介绍了内置模块访问流行开放数据档案的快速示例。论文还介绍了使用各种输入配置文件计算不同平台(地基、机载和卫星)模拟亮度温度的示例,展示了如何轻松修改其他相关参数,如观测角度(天顶、天底、斜角)、表面发射率和气体吸收模型。PyRTlib 可以很容易地嵌入到其他需要大气微波辐射传输的 Python 代码中(如表面发射率模型和检索)。尽管 PyRTlib 非常简单,但仍可随时用于生成当今的科学成果,以下两个示例就证明了这一点:(i) 吸收模型与地面辐射观测的比较和验证;(ii) 光谱参数的不确定性传播,通过辐射传递计算以严格的方法进行。据我们所知,目前可用的任何其他微波辐射传递代码都不提供不确定性估计,这使得 PyRTlib 在大气微波辐射传递代码领域独一无二。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Geoscientific Model Development
Geoscientific Model Development GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
8.60
自引率
9.80%
发文量
352
审稿时长
6-12 weeks
期刊介绍: Geoscientific Model Development (GMD) is an international scientific journal dedicated to the publication and public discussion of the description, development, and evaluation of numerical models of the Earth system and its components. The following manuscript types can be considered for peer-reviewed publication: * geoscientific model descriptions, from statistical models to box models to GCMs; * development and technical papers, describing developments such as new parameterizations or technical aspects of running models such as the reproducibility of results; * new methods for assessment of models, including work on developing new metrics for assessing model performance and novel ways of comparing model results with observational data; * papers describing new standard experiments for assessing model performance or novel ways of comparing model results with observational data; * model experiment descriptions, including experimental details and project protocols; * full evaluations of previously published models.
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