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contributor authorBerner, Judith
contributor authorAchatz, Ulrich
contributor authorBatté, Lauriane
contributor authorBengtsson, Lisa
contributor authorCámara, Alvaro de la
contributor authorChristensen, Hannah M.
contributor authorColangeli, Matteo
contributor authorColeman, Danielle R. B.
contributor authorCrommelin, Daan
contributor authorDolaptchiev, Stamen I.
contributor authorFranzke, Christian L. E.
contributor authorFriederichs, Petra
contributor authorImkeller, Peter
contributor authorJärvinen, Heikki
contributor authorJuricke, Stephan
contributor authorKitsios, Vassili
contributor authorLott, François
contributor authorLucarini, Valerio
contributor authorMahajan, Salil
contributor authorPalmer, Timothy N.
contributor authorPenland, Cécile
contributor authorSakradzija, Mirjana
contributor authorvon Storch, Jin-Song
contributor authorWeisheimer, Antje
contributor authorWeniger, Michael
contributor authorWilliams, Paul D.
contributor authorYano, Jun-Ichi
date accessioned2017-06-09T16:46:19Z
date available2017-06-09T16:46:19Z
date copyright2017/03/01
date issued2016
identifier issn0003-0007
identifier otherams-73800.pdf
identifier urihttp://onlinelibrary.yabesh.ir/handle/yetl/4215953
description abstracthe last decade has seen the success of stochastic parameterizations in short-term, medium-range, and seasonal forecasts: operational weather centers now routinely use stochastic parameterization schemes to represent model inadequacy better and to improve the quantification of forecast uncertainty. Developed initially for numerical weather prediction, the inclusion of stochastic parameterizations not only provides better estimates of uncertainty, but it is also extremely promising for reducing long-standing climate biases and is relevant for determining the climate response to external forcing. This article highlights recent developments from different research groups that show that the stochastic representation of unresolved processes in the atmosphere, oceans, land surface, and cryosphere of comprehensive weather and climate models 1) gives rise to more reliable probabilistic forecasts of weather and climate and 2) reduces systematic model bias. We make a case that the use of mathematically stringent methods for the derivation of stochastic dynamic equations will lead to substantial improvements in our ability to accurately simulate weather and climate at all scales. Recent work in mathematics, statistical mechanics, and turbulence is reviewed; its relevance for the climate problem is demonstrated; and future research directions are outlined.
publisherAmerican Meteorological Society
titleStochastic Parameterization: Toward a New View of Weather and Climate Models
typeJournal Paper
journal volume98
journal issue3
journal titleBulletin of the American Meteorological Society
identifier doi10.1175/BAMS-D-15-00268.1
journal fristpage565
journal lastpage588
treeBulletin of the American Meteorological Society:;2016:;volume( 098 ):;issue: 003
contenttypeFulltext


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