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Dive into the research topics where Siegfried D. Schubert is active.

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Featured researches published by Siegfried D. Schubert.


Journal of Climate | 2011

MERRA: NASA’s Modern-Era Retrospective Analysis for Research and Applications

Michele M. Rienecker; Max J. Suarez; Ronald Gelaro; Ricardo Todling; Julio T. Bacmeister; Emily Liu; Michael G. Bosilovich; Siegfried D. Schubert; Lawrence L. Takacs; Gi-Kong Kim; Stephen Bloom; Junye Chen; Douglas W. Collins; Austin Conaty; Arlindo da Silva; Wei Gu; Joanna Joiner; Randal D. Koster; Robert Lucchesi; Andrea Molod; Tommy Owens; Steven Pawson; Philip J. Pegion; Christopher R. Redder; Rolf H. Reichle; Franklin R. Robertson; Albert G. Ruddick; Meta Sienkiewicz; John S. Woollen

AbstractThe Modern-Era Retrospective Analysis for Research and Applications (MERRA) was undertaken by NASA’s Global Modeling and Assimilation Office with two primary objectives: to place observations from NASA’s Earth Observing System satellites into a climate context and to improve upon the hydrologic cycle represented in earlier generations of reanalyses. Focusing on the satellite era, from 1979 to the present, MERRA has achieved its goals with significant improvements in precipitation and water vapor climatology. Here, a brief overview of the system and some aspects of its performance, including quality assessment diagnostics from innovation and residual statistics, is given.By comparing MERRA with other updated reanalyses [the interim version of the next ECMWF Re-Analysis (ERA-Interim) and the Climate Forecast System Reanalysis (CFSR)], advances made in this new generation of reanalyses, as well as remaining deficiencies, are identified. Although there is little difference between the new reanalyses i...


Journal of Climate | 2006

Tropical Intraseasonal Variability in 14 IPCC AR4 Climate Models Part I: Convective Signals

Jia-Lin Lin; George N. Kiladis; Brian E. Mapes; Klaus M. Weickmann; Kenneth R. Sperber; Wuyin Lin; Matthew C. Wheeler; Siegfried D. Schubert; Anthony D. Del Genio; Leo J. Donner; Seita Emori; Jean-Francois Gueremy; Frederic Hourdin; Philip J. Rasch; Erich Roeckner; J. F. Scinocca

Abstract This study evaluates the tropical intraseasonal variability, especially the fidelity of Madden–Julian oscillation (MJO) simulations, in 14 coupled general circulation models (GCMs) participating in the Intergovernmental Panel on Climate Change (IPCC) Fourth Assessment Report (AR4). Eight years of daily precipitation from each model’s twentieth-century climate simulation are analyzed and compared with daily satellite-retrieved precipitation. Space–time spectral analysis is used to obtain the variance and phase speed of dominant convectively coupled equatorial waves, including the MJO, Kelvin, equatorial Rossby (ER), mixed Rossby–gravity (MRG), and eastward inertio–gravity (EIG) and westward inertio–gravity (WIG) waves. The variance and propagation of the MJO, defined as the eastward wavenumbers 1–6, 30–70-day mode, are examined in detail. The results show that current state-of-the-art GCMs still have significant problems and display a wide range of skill in simulating the tropical intraseasonal va...


Science | 2004

On the Cause of the 1930s Dust Bowl

Siegfried D. Schubert; Max J. Suarez; Philip J. Pegion; Randal D. Koster; Julio T. Bacmeister

During the 1930s, the United States experienced one of the most devastating droughts of the past century. The drought affected almost two-thirds of the country and parts of Mexico and Canada and was infamous for the numerous dust storms that occurred in the southern Great Plains. In this study, we present model results that indicate that the drought was caused by anomalous tropical sea surface temperatures during that decade and that interactions between the atmosphere and the land surface increased its severity. We also contrast the 1930s drought with other North American droughts of the 20th century.


Bulletin of the American Meteorological Society | 1993

An assimilated dataset for Earth science applications

Siegfried D. Schubert; Richard B. Rood; James Pfaendtner

The Data Assimilation Office at NASAs Goddard Space Flight Center is currently producing a multiyear gridded global atmospheric dataset for use in climate research, including tropospheric chemistry applications. The data, which are being made available to the scientific community, are well suited for climate research since they are produced by a fixed assimilation system designed to minimize the spinup in the hydrological cycle. By using a nonvarying system, the variability due to algorithm change is eliminated and geophysical variability can be more confidently isolated. The analysis incorporates rawinsonde reports, satellite retrievals of geopotential thickness, cloud-motion winds, and aircraft, ship, and rocketsonde reports. At the lower boundary, the assimilating atmospheric general circulation model is constrained by the observed sea surface temperature and soil moisture derived from observed surface air temperature and precipitation fields. The available output data include all prognostic variables...


Bulletin of the American Meteorological Society | 2014

The North American Multimodel Ensemble: Phase-1 Seasonal-to-Interannual Prediction; Phase-2 toward Developing Intraseasonal Prediction

Ben P. Kirtman; Dughong Min; Johnna M. Infanti; James L. Kinter; Daniel A. Paolino; Qin Zhang; Huug van den Dool; Suranjana Saha; Malaquias Mendez; Emily Becker; Peitao Peng; Patrick Tripp; Jin Huang; David G. DeWitt; Michael K. Tippett; Anthony G. Barnston; Shuhua Li; Anthony Rosati; Siegfried D. Schubert; Michele M. Rienecker; Max J. Suarez; Zhao E. Li; Jelena Marshak; Young Kwon Lim; Joseph Tribbia; Kathleen Pegion; William J. Merryfield; Bertrand Denis; Eric F. Wood

The recent U.S. National Academies report, Assessment of Intraseasonal to Interannual Climate Prediction and Predictability, was unequivocal in recommending the need for the development of a North American Multimodel Ensemble (NMME) operational predictive capability. Indeed, this effort is required to meet the specific tailored regional prediction and decision support needs of a large community of climate information users. The multimodel ensemble approach has proven extremely effective at quantifying prediction uncertainty due to uncertainty in model formulation and has proven to produce better prediction quality (on average) than any single model ensemble. This multimodel approach is the basis for several international collaborative prediction research efforts and an operational European system, and there are numerous examples of how this multimodel ensemble approach yields superior forecasts compared to any single model. Based on two NOAA Climate Test bed (CTB) NMME workshops (18 February and 8 April 2...


Journal of Climate | 2004

Causes of Long-Term Drought in the U.S. Great Plains

Siegfried D. Schubert; M Ax J. Suarez; P Hilip J. Pegion; Randal D. Koster; Julio T. B Acmeister; Nasa Gsfc

The United States Great Plains (USGP) experienced a number of multi-year droughts during the last century, most notably the droughts of the 1930s and 1950s. This study examines the causes of such droughts using ensembles of long term (1930-1999) simulations carried out with the NASA Seasonal-to-Interannual Prediction Project (NSIPP-1) atmospheric general circulation model (AGCM) forced with observed sea surface temperatures (SSTs). The results show that the model produces long-term (multi-year) variations in the USGP precipitation that are similar to those observed. A correlative analysis suggests that the ensemble mean low frequency (time scales longer than about 6 years) rainfall variations in the USGP are linked to a pan-Pacific pattern of SST variability that is the leading empirical orthogonal function (EOF) in the low frequency SST data. The link between the SST and the Great Plains precipitation is confirmed in idealized AGCM simulations, in which the model is forced by the 2 polarities of the pan-Pacific SST pattern. The idealized simulations further show that it is primarily the tropical part of the SST anomalies that influence the USGP. As such, the USGP tend to have above normal precipitation when the tropical Pacific SSTs are above normal, while there is a tendency for drought when the tropical SSTs are cold. The upper tropospheric response to the pan-Pacific SST EOF shows a global-scale pattern with a strong wave response in the Pacific and a substantial zonally-symmetric component in which USGP pluvial (drought) conditions are associated with reduced (enhanced) heights throughout the extra-tropics. The potential predictability of rainfall in the USGP associated with SSTs is rather modest, with on average about 1/3 of the total low frequency rainfall variance forced by SST anomalies. Further idealized experiments with climatological SST, suggest that the remaining low frequency variance in the USGP precipitation is the result of interactions with soil moisture. In particular, simulations with soil moisture feedback show a six-fold increase in the variance in annual USGP precipitation compared with simulations in which the soil feedback is excluded. In addition to increasing variance, the interactions with the soil introduce year-to-year memory in the hydrological cycle that is consistent with a red noise process, in which the low frequencies in the deep soil are the result of integrating a net forcing (precipitation-evaporation-runoff) that is white noise on interannual time scales. As such, the role of low frequency SST variability is to introduce a bias to the net forcing on the soil moisture that drives the random process preferentially to either wet or dry conditions.


Bulletin of the American Meteorological Society | 2000

Dynamical Seasonal Prediction

J. Shukla; Jeffrey L. Anderson; D. P. Baumhefner; Čedomir Branković; Y. Chang; Eugenia Kalnay; Lawrence Marx; T. N. Palmer; Daniel A. Paolino; J. Ploshay; Siegfried D. Schubert; David M. Straus; M. Suarez; Joseph Tribbia

Abstract Dynamical Seasonal Prediction (DSP) is an informally coordinated multi-institution research project to investigate the predictability of seasonal mean atmospheric circulation and rainfall. The basic idea is to test the feasibility of extending the technology of routine numerical weather prediction beyond the inherent limit of deterministic predictability of weather to produce numerical climate predictions using state-of-the-art global atmospheric models. Atmospheric general circulation models (AGCMs) either forced by predicted sea surface temperature (SST) or as part of a coupled forecast system have shown in the past that certain regions of the extratropics, in particular, the Pacific-North America (PNA) region during Northern Hemisphere winter, can be predicted with significant skill especially during years of large tropical SST anomalies. However, there is still a great deal of uncertainty about how much the details of various AGCMs impact conclusions about extratropical seasonal prediction an...


Journal of Climate | 2017

The Modern-Era Retrospective Analysis for Research and Applications, Version 2 (MERRA-2)

Ronald Gelaro; Will McCarty; Max J. Suarez; Ricardo Todling; Andrea Molod; Lawrence L. Takacs; C. A. Randles; Anton Darmenov; Michael G. Bosilovich; Rolf H. Reichle; Krzysztof Wargan; L. Coy; Richard I. Cullather; C. Draper; Santha Akella; Virginie Buchard; Austin Conaty; Arlindo da Silva; Wei Gu; Gi-Kong Kim; Randal D. Koster; Robert Lucchesi; Dagmar Merkova; J. E. Nielsen; Gary Partyka; Steven Pawson; William M. Putman; Michele M. Rienecker; Siegfried D. Schubert; Meta Sienkiewicz

The Modern-Era Retrospective Analysis for Research and Applications, Version 2 (MERRA-2) is the latest atmospheric reanalysis of the modern satellite era produced by NASAs Global Modeling and Assimilation Office (GMAO). MERRA-2 assimilates observation types not available to its predecessor, MERRA, and includes updates to the Goddard Earth Observing System (GEOS) model and analysis scheme so as to provide a viable ongoing climate analysis beyond MERRAs terminus. While addressing known limitations of MERRA, MERRA-2 is also intended to be a development milestone for a future integrated Earth system analysis (IESA) currently under development at GMAO. This paper provides an overview of the MERRA-2 system and various performance metrics. Among the advances in MERRA-2 relevant to IESA are the assimilation of aerosol observations, several improvements to the representation of the stratosphere including ozone, and improved representations of cryospheric processes. Other improvements in the quality of MERRA-2 compared with MERRA include the reduction of some spurious trends and jumps related to changes in the observing system, and reduced biases and imbalances in aspects of the water cycle. Remaining deficiencies are also identified. Production of MERRA-2 began in June 2014 in four processing streams, and converged to a single near-real time stream in mid 2015. MERRA-2 products are accessible online through the NASA Goddard Earth Sciences Data Information Services Center (GES DISC).


Journal of Climate | 2009

MJO Simulation Diagnostics

Duane E. Waliser; Kenneth R. Sperber; Harry H. Hendon; Daehyun Kim; Eric D. Maloney; Matthew C. Wheeler; Klaus M. Weickmann; Chidong Zhang; Leo J. Donner; J. Gottschalck; Wayne Higgins; I-S Kang; D. Legler; Mitchell W. Moncrieff; Siegfried D. Schubert; W Stern; F. Vitart; Bin Wang; Wanqiu Wang; Steven J. Woolnough

The Madden–Julian oscillation (MJO) interacts with and influences a wide range of weather and climate phenomena (e.g., monsoons, ENSO, tropical storms, midlatitude weather), and represents an important, and as yet unexploited, source of predictability at the subseasonal time scale. Despite the important role of the MJO in climate and weather systems, current global circulation models (GCMs) exhibit considerable shortcomings in representing this phenomenon. These shortcomings have been documented in a number of multimodel comparison studies over the last decade. However, diagnosis of model performance has been challenging, and model progress has been difficult to track, because of the lack of a coherent and standardized set of MJO diagnostics. One of the chief objectives of the U.S. Climate Variability and Predictability (CLIVAR) MJO Working Group is the development of observation-based diagnostics for objectively evaluating global model simulations of the MJO in a consistent framework. Motivation for this activity is reviewed, and the intent and justification for a set of diagnostics is provided, along with specification for their calculation, and illustrations of their application. The diagnostics range from relatively simple analyses of variance and correlation to more sophisticated space–time spectral and empirical orthogonal function analyses. These diagnostic techniques are used to detect MJO signals, to construct composite life cycles, to identify associations of MJO activity with the mean state, and to describe interannual variability of the MJO.


Bulletin of the American Meteorological Society | 2013

Monitoring and Understanding Changes in Heat Waves, Cold Waves, Floods, and Droughts in the United States: State of Knowledge

Thomas C. Peterson; Richard R. Heim; Robert M. Hirsch; Dale P. Kaiser; Harold E. Brooks; Noah S. Diffenbaugh; Randall M. Dole; Jason P. Giovannettone; Kristen Guirguis; Thomas R. Karl; Richard W. Katz; Kenneth E. Kunkel; Dennis P. Lettenmaier; Gregory J. McCabe; Christopher J. Paciorek; Karen R. Ryberg; Siegfried D. Schubert; Viviane B. S. Silva; Brooke C. Stewart; Aldo V. Vecchia; Gabriele Villarini; Russell S. Vose; John E. Walsh; Michael F. Wehner; David M. Wolock; Klaus Wolter; Connie A. Woodhouse; Donald J. Wuebbles

Weather and climate extremes have been varying and changing on many different time scales. In recent decades, heat waves have generally become more frequent across the United States, while cold waves have been decreasing. While this is in keeping with expectations in a warming climate, it turns out that decadal variations in the number of U.S. heat and cold waves do not correlate well with the observed U.S. warming during the last century. Annual peak flow data reveal that river flooding trends on the century scale do not show uniform changes across the country. While flood magnitudes in the Southwest have been decreasing, flood magnitudes in the Northeast and north-central United States have been increasing. Confounding the analysis of trends in river flooding is multiyear and even multidecadal variability likely caused by both large-scale atmospheric circulation changes and basin-scale “memory” in the form of soil moisture. Droughts also have long-term trends as well as multiyear and decadal variability...

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Max J. Suarez

Goddard Space Flight Center

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Randal D. Koster

Goddard Space Flight Center

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Hailan Wang

University of Maryland

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Myong-In Lee

Ulsan National Institute of Science and Technology

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Max Suarez

Goddard Space Flight Center

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Philip J. Pegion

Goddard Space Flight Center

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Yehui Chang

Goddard Space Flight Center

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Duane E. Waliser

California Institute of Technology

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