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    Optimal Estimation Retrievals and Their Uncertainties: What Every Atmospheric Scientist Should Know

    Source: Bulletin of the American Meteorological Society:;2020:;volume( 101 ):;issue: 009::page E1512
    Author:
    Maahn, Maximilian;Turner, David D.;Löhnert, Ulrich;Posselt, Derek J.;Ebell, Kerstin;Mace, Gerald G.;Comstock, Jennifer M.
    DOI: 10.1175/BAMS-D-19-0027.1
    Publisher: American Meteorological Society
    Abstract: Remote sensing instruments are heavily used to provide observations for both the operational and research communities. These sensors do not provide direct observations of the desired atmospheric variables, but instead, retrieval algorithms are necessary to convert the indirect observations into the variable of interest. It is critical to be aware of the underlying assumptions made by many retrieval algorithms, including that the retrieval problem is often ill posed and that there are various sources of uncertainty that need to be treated properly. In short, the retrieval challenge is to invert a set of noisy observations to obtain estimates of atmospheric quantities. The problem is often complicated by imperfect forward models, by imperfect prior knowledge, and by the existence of nonunique solutions. Optimal estimation (OE) is a widely used physical retrieval method that combines measurements, prior information, and the corresponding uncertainties based on Bayes’s theorem to find an optimal solution for the atmospheric state. Furthermore, OE also allows the relative contributions of the different sources of error to the uncertainty in the final retrieved atmospheric state to be understood. Here, we provide a novel Python library to illustrate the use of OE for inverse problems in the atmospheric sciences. We introduce two example problems: how to retrieve drop size distribution parameters from radar observations and how to retrieve the temperature profile from ground-based microwave sensors. Using these examples, we discuss common pitfalls, how the various error sources impact the retrieval, and how the quality of the retrieval results can be quantified.
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      Optimal Estimation Retrievals and Their Uncertainties: What Every Atmospheric Scientist Should Know

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    contributor authorMaahn, Maximilian;Turner, David D.;Löhnert, Ulrich;Posselt, Derek J.;Ebell, Kerstin;Mace, Gerald G.;Comstock, Jennifer M.
    date accessioned2022-01-30T18:07:40Z
    date available2022-01-30T18:07:40Z
    date copyright9/14/2020 12:00:00 AM
    date issued2020
    identifier issn0003-0007
    identifier otherbamsd190027.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4264534
    description abstractRemote sensing instruments are heavily used to provide observations for both the operational and research communities. These sensors do not provide direct observations of the desired atmospheric variables, but instead, retrieval algorithms are necessary to convert the indirect observations into the variable of interest. It is critical to be aware of the underlying assumptions made by many retrieval algorithms, including that the retrieval problem is often ill posed and that there are various sources of uncertainty that need to be treated properly. In short, the retrieval challenge is to invert a set of noisy observations to obtain estimates of atmospheric quantities. The problem is often complicated by imperfect forward models, by imperfect prior knowledge, and by the existence of nonunique solutions. Optimal estimation (OE) is a widely used physical retrieval method that combines measurements, prior information, and the corresponding uncertainties based on Bayes’s theorem to find an optimal solution for the atmospheric state. Furthermore, OE also allows the relative contributions of the different sources of error to the uncertainty in the final retrieved atmospheric state to be understood. Here, we provide a novel Python library to illustrate the use of OE for inverse problems in the atmospheric sciences. We introduce two example problems: how to retrieve drop size distribution parameters from radar observations and how to retrieve the temperature profile from ground-based microwave sensors. Using these examples, we discuss common pitfalls, how the various error sources impact the retrieval, and how the quality of the retrieval results can be quantified.
    publisherAmerican Meteorological Society
    titleOptimal Estimation Retrievals and Their Uncertainties: What Every Atmospheric Scientist Should Know
    typeJournal Paper
    journal volume101
    journal issue9
    journal titleBulletin of the American Meteorological Society
    identifier doi10.1175/BAMS-D-19-0027.1
    journal fristpageE1512
    journal lastpageE1523
    treeBulletin of the American Meteorological Society:;2020:;volume( 101 ):;issue: 009
    contenttypeFulltext
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    DSpace software copyright © 2002-2015  DuraSpace
    نرم افزار کتابخانه دیجیتال "دی اسپیس" فارسی شده توسط یابش برای کتابخانه های ایرانی | تماس با یابش
    yabeshDSpacePersian