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Featured researches published by Peter J. Gleckler.


Proceedings of the National Academy of Sciences of the United States of America | 2009

Selecting global climate models for regional climate change studies

David W. Pierce; Tim P. Barnett; Benjamin D. Santer; Peter J. Gleckler

Regional or local climate change modeling studies currently require starting with a global climate model, then downscaling to the region of interest. How should global models be chosen for such studies, and what effect do such choices have? This question is addressed in the context of a regional climate detection and attribution (D&A) study of January-February-March (JFM) temperature over the western U.S. Models are often selected for a regional D&A analysis based on the quality of the simulated regional climate. Accordingly, 42 performance metrics based on seasonal temperature and precipitation, the El Nino/Southern Oscillation (ENSO), and the Pacific Decadal Oscillation are constructed and applied to 21 global models. However, no strong relationship is found between the score of the models on the metrics and results of the D&A analysis. Instead, the importance of having ensembles of runs with enough realizations to reduce the effects of natural internal climate variability is emphasized. Also, the superiority of the multimodel ensemble average (MM) to any 1 individual model, already found in global studies examining the mean climate, is true in this regional study that includes measures of variability as well. Evidence is shown that this superiority is largely caused by the cancellation of offsetting errors in the individual global models. Results with both the MM and models picked randomly confirm the original D&A results of anthropogenically forced JFM temperature changes in the western U.S. Future projections of temperature do not depend on model performance until the 2080s, after which the better performing models show warmer temperatures.


Proceedings of the National Academy of Sciences of the United States of America | 2007

Identification of human-induced changes in atmospheric moisture content

Benjamin D. Santer; Carl A. Mears; Frank J. Wentz; Karl E. Taylor; Peter J. Gleckler; T. M. L. Wigley; Tim P. Barnett; James S. Boyle; Wolfgang Brüggemann; Nathan P. Gillett; Stephen A. Klein; Gerald A. Meehl; Toru Nozawa; David W. Pierce; Peter A. Stott; Warren M. Washington; Michael F. Wehner

Data from the satellite-based Special Sensor Microwave Imager (SSM/I) show that the total atmospheric moisture content over oceans has increased by 0.41 kg/m2 per decade since 1988. Results from current climate models indicate that water vapor increases of this magnitude cannot be explained by climate noise alone. In a formal detection and attribution analysis using the pooled results from 22 different climate models, the simulated “fingerprint” pattern of anthropogenically caused changes in water vapor is identifiable with high statistical confidence in the SSM/I data. Experiments in which forcing factors are varied individually suggest that this fingerprint “match” is primarily due to human-caused increases in greenhouse gases and not to solar forcing or recovery from the eruption of Mount Pinatubo. Our findings provide preliminary evidence of an emerging anthropogenic signal in the moisture content of earths atmosphere.


Proceedings of the National Academy of Sciences of the United States of America | 2006

Forced and unforced ocean temperature changes in Atlantic and Pacific tropical cyclogenesis regions

B. D. Santer; T. M. L. Wigley; Peter J. Gleckler; Céline Bonfils; Michael F. Wehner; Krishna AchutaRao; Tim P. Barnett; James S. Boyle; Wolfgang Brüggemann; M. Fiorino; Nathan P. Gillett; James E. Hansen; P. D. Jones; Stephen A. Klein; Gerald A. Meehl; S. C. B. Raper; Richard W. Reynolds; Karl E. Taylor; Warren M. Washington

Previous research has identified links between changes in sea surface temperature (SST) and hurricane intensity. We use climate models to study the possible causes of SST changes in Atlantic and Pacific tropical cyclogenesis regions. The observed SST increases in these regions range from 0.32°C to 0.67°C over the 20th century. The 22 climate models examined here suggest that century-timescale SST changes of this magnitude cannot be explained solely by unforced variability of the climate system. We employ model simulations of natural internal variability to make probabilistic estimates of the contribution of external forcing to observed SST changes. For the period 1906–2005, we find an 84% chance that external forcing explains at least 67% of observed SST increases in the two tropical cyclogenesis regions. Model “20th-century” simulations, with external forcing by combined anthropogenic and natural factors, are generally capable of replicating observed SST increases. In experiments in which forcing factors are varied individually rather than jointly, human-caused changes in greenhouse gases are the main driver of the 20th-century SST increases in both tropical cyclogenesis regions.


Proceedings of the National Academy of Sciences of the United States of America | 2009

Incorporating model quality information in climate change detection and attribution studies

B. D. Santer; Karl E. Taylor; Peter J. Gleckler; Céline Bonfils; Tim P. Barnett; David W. Pierce; T. M. L. Wigley; Carl A. Mears; Frank J. Wentz; Wolfgang Brüggemann; N. P. Gillett; Stephen A. Klein; Susan Solomon; Peter A. Stott; Michael F. Wehner

In a recent multimodel detection and attribution (D&A) study using the pooled results from 22 different climate models, the simulated “fingerprint” pattern of anthropogenically caused changes in water vapor was identifiable with high statistical confidence in satellite data. Each model received equal weight in the D&A analysis, despite large differences in the skill with which they simulate key aspects of observed climate. Here, we examine whether water vapor D&A results are sensitive to model quality. The “top 10” and “bottom 10” models are selected with three different sets of skill measures and two different ranking approaches. The entire D&A analysis is then repeated with each of these different sets of more or less skillful models. Our performance metrics include the ability to simulate the mean state, the annual cycle, and the variability associated with El Niño. We find that estimates of an anthropogenic water vapor fingerprint are insensitive to current model uncertainties, and are governed by basic physical processes that are well-represented in climate models. Because the fingerprint is both robust to current model uncertainties and dissimilar to the dominant noise patterns, our ability to identify an anthropogenic influence on observed multidecadal changes in water vapor is not affected by “screening” based on model quality.


Journal of Geophysical Research | 2011

Separating signal and noise in atmospheric temperature changes: The importance of timescale

Benjamin D. Santer; Carl A. Mears; Charles Doutriaux; Peter Caldwell; Peter J. Gleckler; T. M. L. Wigley; Susan Solomon; N. P. Gillett; Detelina P. Ivanova; Thomas R. Karl; John R. Lanzante; Gerald A. Meehl; Peter A. Stott; Karl E. Taylor; Peter W. Thorne; Michael F. Wehner; Frank J. Wentz

We compare global-scale changes in satellite estimates of the temperature of the lower troposphere (TLT) with model simulations of forced and unforced TLT changes. While previous work has focused on a single period of record, we select analysis timescales ranging from 10 to 32 years, and then compare all possible observed TLT trends on each timescale with corresponding multi-model distributions of forced and unforced trends. We use observed estimates of the signal component of TLT changes and model estimates of climate noise to calculate timescale-dependent signal-to-noise ratios (S/N). These ratios are small (less than 1) on the 10-year timescale, increasing to more than 3.9 for 32-year trends. This large change in S/N is primarily due to a decrease in the amplitude of internally generated variability with increasing trend length. Because of the pronounced effect of interannual noise on decadal trends, a multi-model ensemble of anthropogenically-forced simulations displays many 10-year periods with little warming. A single decade of observational TLT data is therefore inadequate for identifying a slowly evolving anthropogenic warming signal. Our results show that temperature records of at least 17 years in length are required for identifying human effects on global-mean tropospheric temperature. Copyright 2011 by the American Geophysical Union.


Journal of Advances in Modeling Earth Systems | 2014

The effect of horizontal resolution on simulation quality in the Community Atmospheric Model, CAM5.1

Michael F. Wehner; Kevin A. Reed; Fuyu Li; Prabhat; Julio T. Bacmeister; Cheng Ta Chen; Christopher J. Paciorek; Peter J. Gleckler; Kenneth R. Sperber; William D. Collins; Andrew Gettelman; Christiane Jablonowski

We present an analysis of version 5.1 of the Community Atmospheric Model (CAM5.1) at a high horizontal resolution. Intercomparison of this global model at approximately 0.25°, 1°, and 2° is presented for extreme daily precipitation as well as for a suite of seasonal mean fields. In general, extreme precipitation amounts are larger in high resolution than in lower-resolution configurations. In many but not all locations and/or seasons, extreme daily precipitation rates in the high-resolution configuration are higher and more realistic. The high-resolution configuration produces tropical cyclones up to category 5 on the Saffir-Simpson scale and a comparison to observations reveals both realistic and unrealistic model behavior. In the absence of extensive model tuning at high resolution, simulation of many of the mean fields analyzed in this study is degraded compared to the tuned lower-resolution public released version of the model.


Journal of Climate | 2006

Anthropogenic Warming of the Oceans: Observations and Model Results

David W. Pierce; Tim P. Barnett; Krishna AchutaRao; Peter J. Gleckler; Jonathan M. Gregory; Warren M. Washington

Abstract Observations show the oceans have warmed over the past 40 yr, with appreciable regional variation and more warming at the surface than at depth. Comparing the observations with results from two coupled ocean–atmosphere climate models [the Parallel Climate Model version 1 (PCM) and the Hadley Centre Coupled Climate Model version 3 (HadCM3)] that include anthropogenic forcing shows remarkable agreement between the observed and model-estimated warming. In this comparison the models were sampled at the same locations as gridded yearly observed data. In the top 100 m of the water column the warming is well separated from natural variability, including both variability arising from internal instabilities of the coupled ocean–atmosphere climate system and that arising from volcanism and solar fluctuations. Between 125 and 200 m the agreement is not significant, but then increases again below this level, and remains significant down to 600 m. Analysis of PCM’s heat budget indicates that the warming is dr...


Water Resources Research | 2006

Evaluation of continental precipitation in 20th century climate simulations: The utility of multimodel statistics

Thomas J. Phillips; Peter J. Gleckler

At the request of the Intergovernmental Panel on Climate Change (IPCC), simulations of 20th-century climate have been performed recently with some 20 global coupled ocean-atmosphere models. In view of its central importance for biological and socio-economic systems, model-simulated continental precipitation is evaluated relative to three observational estimates at both global and regional scales. Many models are found to display systematic biases, deviating markedly from the observed spatial variability and amplitude/phase of the seasonal cycle. However, the point-wise ensemble mean of all the models usually shows better statistical agreement with the observations than does any single model. Deficiencies of current models that may be responsible for the simulated precipitation biases as well as possible reasons for the improved estimate afforded by the multi-model ensemble mean are discussed. Implications of these results for water-resource managers also are briefly addressed.


Proceedings of the National Academy of Sciences of the United States of America | 2013

Identifying human influences on atmospheric temperature.

Benjamin D. Santer; Jeffrey F. Painter; Carl A. Mears; Charles Doutriaux; Peter Caldwell; Julie M. Arblaster; Philip Cameron-Smith; N. P. Gillett; Peter J. Gleckler; John R. Lanzante; Judith Perlwitz; Susan Solomon; Peter A. Stott; Karl E. Taylor; Laurent Terray; Peter W. Thorne; Michael F. Wehner; Frank J. Wentz; Tom M. L. Wigley; Laura Wilcox; Cheng-Zhi Zou

We perform a multimodel detection and attribution study with climate model simulation output and satellite-based measurements of tropospheric and stratospheric temperature change. We use simulation output from 20 climate models participating in phase 5 of the Coupled Model Intercomparison Project. This multimodel archive provides estimates of the signal pattern in response to combined anthropogenic and natural external forcing (the fingerprint) and the noise of internally generated variability. Using these estimates, we calculate signal-to-noise (S/N) ratios to quantify the strength of the fingerprint in the observations relative to fingerprint strength in natural climate noise. For changes in lower stratospheric temperature between 1979 and 2011, S/N ratios vary from 26 to 36, depending on the choice of observational dataset. In the lower troposphere, the fingerprint strength in observations is smaller, but S/N ratios are still significant at the 1% level or better, and range from three to eight. We find no evidence that these ratios are spuriously inflated by model variability errors. After removing all global mean signals, model fingerprints remain identifiable in 70% of the tests involving tropospheric temperature changes. Despite such agreement in the large-scale features of model and observed geographical patterns of atmospheric temperature change, most models do not replicate the size of the observed changes. On average, the models analyzed underestimate the observed cooling of the lower stratosphere and overestimate the warming of the troposphere. Although the precise causes of such differences are unclear, model biases in lower stratospheric temperature trends are likely to be reduced by more realistic treatment of stratospheric ozone depletion and volcanic aerosol forcing.


Nature | 2006

Volcanoes and climate: Krakatoa's signature persists in the ocean

Peter J. Gleckler; T. M. L. Wigley; B. D. Santer; Jonathan M. Gregory; Krishna AchutaRao; Karl E. Taylor

We have analysed a suite of 12 state-of-the-art climate models and show that ocean warming and sea-level rise in the twentieth century were substantially reduced by the colossal eruption in 1883 of the volcano Krakatoa in the Sunda strait, Indonesia. Volcanically induced cooling of the ocean surface penetrated into deeper layers, where it persisted for decades after the event. This remarkable effect on oceanic thermal structure is longer lasting than has previously been suspected and is sufficient to offset a large fraction of ocean warming and sea-level rise caused by anthropogenic influences.

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Karl E. Taylor

Lawrence Livermore National Laboratory

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Krishna AchutaRao

Lawrence Livermore National Laboratory

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Benjamin D. Santer

Lawrence Livermore National Laboratory

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David W. Pierce

Scripps Institution of Oceanography

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K. E. Taylor

University of California

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Charles Doutriaux

Lawrence Livermore National Laboratory

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Tim P. Barnett

Scripps Institution of Oceanography

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T. M. L. Wigley

National Center for Atmospheric Research

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Michael F. Wehner

Lawrence Livermore National Laboratory

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Paul J. Durack

Lawrence Livermore National Laboratory

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