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    How Suitable is Quantile Mapping For Postprocessing GCM Precipitation Forecasts?

    Source: Journal of Climate:;2017:;volume( 030 ):;issue: 009::page 3185
    Author:
    Zhao, Tongtiegang;Bennett, James C.;Wang, Q. J.;Schepen, Andrew;Wood, Andrew W.;Robertson, David E.;Ramos, Maria-Helena
    DOI: 10.1175/JCLI-D-16-0652.1
    Publisher: American Meteorological Society
    Abstract: AbstractGCMs are used by many national weather services to produce seasonal outlooks of atmospheric and oceanic conditions and fluxes. Postprocessing is often a necessary step before GCM forecasts can be applied in practice. Quantile mapping (QM) is rapidly becoming the method of choice by operational agencies to postprocess raw GCM outputs. The authors investigate whether QM is appropriate for this task. Ensemble forecast postprocessing methods should aim to 1) correct bias, 2) ensure forecasts are reliable in ensemble spread, and 3) guarantee forecasts are at least as skillful as climatology, a property called ?coherence.? This study evaluates the effectiveness of QM in achieving these aims by applying it to precipitation forecasts from the POAMA model. It is shown that while QM is highly effective in correcting bias, it cannot ensure reliability in forecast ensemble spread or guarantee coherence. This is because QM ignores the correlation between raw ensemble forecasts and observations. When raw forecasts are not significantly positively correlated with observations, QM tends to produce negatively skillful forecasts. Even when there is significant positive correlation, QM cannot ensure reliability and coherence for postprocessed forecasts. Therefore, QM is not a fully satisfactory method for postprocessing forecasts where the issues of bias, reliability, and coherence pre-exist. Alternative postprocessing methods based on ensemble model output statistics (EMOS) are available that achieve not only unbiased but also reliable and coherent forecasts. This is shown with one such alternative, the Bayesian joint probability modeling approach.
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      How Suitable is Quantile Mapping For Postprocessing GCM Precipitation Forecasts?

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    contributor authorZhao, Tongtiegang;Bennett, James C.;Wang, Q. J.;Schepen, Andrew;Wood, Andrew W.;Robertson, David E.;Ramos, Maria-Helena
    date accessioned2018-01-03T11:01:04Z
    date available2018-01-03T11:01:04Z
    date copyright1/20/2017 12:00:00 AM
    date issued2017
    identifier otherjcli-d-16-0652.1.pdf
    identifier urihttp://138.201.223.254:8080/yetl1/handle/yetl/4246088
    description abstractAbstractGCMs are used by many national weather services to produce seasonal outlooks of atmospheric and oceanic conditions and fluxes. Postprocessing is often a necessary step before GCM forecasts can be applied in practice. Quantile mapping (QM) is rapidly becoming the method of choice by operational agencies to postprocess raw GCM outputs. The authors investigate whether QM is appropriate for this task. Ensemble forecast postprocessing methods should aim to 1) correct bias, 2) ensure forecasts are reliable in ensemble spread, and 3) guarantee forecasts are at least as skillful as climatology, a property called ?coherence.? This study evaluates the effectiveness of QM in achieving these aims by applying it to precipitation forecasts from the POAMA model. It is shown that while QM is highly effective in correcting bias, it cannot ensure reliability in forecast ensemble spread or guarantee coherence. This is because QM ignores the correlation between raw ensemble forecasts and observations. When raw forecasts are not significantly positively correlated with observations, QM tends to produce negatively skillful forecasts. Even when there is significant positive correlation, QM cannot ensure reliability and coherence for postprocessed forecasts. Therefore, QM is not a fully satisfactory method for postprocessing forecasts where the issues of bias, reliability, and coherence pre-exist. Alternative postprocessing methods based on ensemble model output statistics (EMOS) are available that achieve not only unbiased but also reliable and coherent forecasts. This is shown with one such alternative, the Bayesian joint probability modeling approach.
    publisherAmerican Meteorological Society
    titleHow Suitable is Quantile Mapping For Postprocessing GCM Precipitation Forecasts?
    typeJournal Paper
    journal volume30
    journal issue9
    journal titleJournal of Climate
    identifier doi10.1175/JCLI-D-16-0652.1
    journal fristpage3185
    journal lastpage3196
    treeJournal of Climate:;2017:;volume( 030 ):;issue: 009
    contenttypeFulltext
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