Eva Kowalczyk
Commonwealth Scientific and Industrial Research Organisation
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Publication
Featured researches published by Eva Kowalczyk.
Journal of Hydrometeorology | 2006
Randal D. Koster; Y. C. Sud; Zhichang Guo; Paul A. Dirmeyer; Gordon B. Bonan; Keith W. Oleson; Edmond Chan; Diana Verseghy; Peter M. Cox; Harvey Davies; Eva Kowalczyk; C. T. Gordon; Shinjiro Kanae; David M. Lawrence; Ping Liu; David Mocko; Cheng-Hsuan Lu; K. L. Mitchell; Sergey Malyshev; B. J. McAvaney; Taikan Oki; Tomohito J. Yamada; A. J. Pitman; Christopher M. Taylor; Ratko Vasic; Yongkang Xue
Abstract The Global Land–Atmosphere Coupling Experiment (GLACE) is a model intercomparison study focusing on a typically neglected yet critical element of numerical weather and climate modeling: land–atmosphere coupling strength, or the degree to which anomalies in land surface state (e.g., soil moisture) can affect rainfall generation and other atmospheric processes. The 12 AGCM groups participating in GLACE performed a series of simple numerical experiments that allow the objective quantification of this element for boreal summer. The derived coupling strengths vary widely. Some similarity, however, is found in the spatial patterns generated by the models, with enough similarity to pinpoint multimodel “hot spots” of land–atmosphere coupling. For boreal summer, such hot spots for precipitation and temperature are found over large regions of Africa, central North America, and India; a hot spot for temperature is also found over eastern China. The design of the GLACE simulations are described in full detai...
Journal of Climate | 1997
T. H. C Hen; A. Henderson-Sellers; P. C. D. Milly; A. J. Pitman; A. C. M. Beljaars; Jan Polcher; Aaron Boone; Sam Chang; F. C Hen; C. E. Desborough; Robert E. Dickinson; Michael B. Ek; J. R. Garratt; N. Gedney; Jinwon Kim; Randal D. Koster; Eva Kowalczyk; K. Laval; J. Lean; Dennis P. Lettenmaier; Xu Liang; Kenneth E. Mitchell; Olga N. Nasonova; J. Noilhan; Alan Robock; Cynthia Rosenzweig; John C. Schaake; C. A. Schlosser; Y. S Hao; Andrey B. Shmakin
In the Project for Intercomparison of Land-Surface Parameterization Schemes phase 2a experiment, meteorological data for the year 1987 from Cabauw, the Netherlands, were used as inputs to 23 land-surface flux schemes designed for use in climate and weather models. Schemes were evaluated by comparing their outputs with long-term measurements of surface sensible heat fluxes into the atmosphere and the ground, and of upward longwave radiation and total net radiative fluxes, and also comparing them with latent heat fluxes derived from a surface energy balance. Tuning of schemes by use of the observed flux data was not permitted. On an annual basis, the predicted surface radiative temperature exhibits a range of 2 K across schemes, consistent with the range of about 10 W m22 in predicted surface net radiation. Most modeled values of monthly net radiation differ from the observations by less than the estimated maximum monthly observational error (6 10 Wm 2 2). However, modeled radiative surface temperature appears to have a systematic positive bias in most schemes; this might be explained by an error in assumed emissivity and by models’ neglect of canopy thermal heterogeneity. Annual means of sensible and latent heat fluxes, into which net radiation is partitioned, have ranges across schemes of
Journal of Hydrometeorology | 2001
A. G. Slater; C. A. Schlosser; C. E. Desborough; A. J. Pitman; A. Henderson-Sellers; Alan Robock; K. Ya; Kenneth E. Mitchell; Aaron Boone; Harald Braden; F. C Hen; P. M. C Ox; P. de Rosnay; Robert E. Dickinson; Qingyun Duan; Jared K. Entin; N. Gedney; Jinwon Kim; V. K Oren; Eva Kowalczyk; Olga N. Nasonova; J. Noilhan; S. Schaake; Andrey B. Shmakin; Diana Verseghy; P. W Etzel; Y. X Ue; Qingcun Zeng
Twenty-one land surface schemes (LSSs) performed simulations forced by 18 yr of observed meteorological data from a grassland catchment at Valdai, Russia, as part of the Project for the Intercomparison of Land-Surface Parameterization Schemes (PILPS) Phase 2(d). In this paper the authors examine the simulation of snow. In comparison with observations, the models are able to capture the broad features of the snow regime on both an intra- and interannual basis. However, weaknesses in the simulations exist, and early season ablation events are a significant source of model scatter. Over the 18-yr simulation, systematic differences between the models’ snow simulations are evident and reveal specific aspects of snow model parameterization and design as being responsible. Vapor exchange at the snow surface varies widely among the models, ranging from a large net loss to a small net source for the snow season. Snow albedo, fractional snow cover, and their interplay have a large effect on energy available for ablation, with differences among models most evident at low snow depths. The incorporation of the snowpack within an LSS structure affects the method by which snow accesses, as well as utilizes, available energy for ablation. The sensitivity of some models to longwave radiation, the dominant winter radiative flux, is partly due to a stability-induced feedback and the differing abilities of models to exchange turbulent energy with the atmosphere. Results presented in this paper suggest where weaknesses in macroscale snow modeling lie and where both theoretical and observational work should be focused to address these weaknesses.
Australian Meteorological and Oceanographic Journal | 2013
Dave Bi; Martin Dix; Simon J. Marsland; Siobhan O'Farrell; Harun Rashid; Petteri Uotila; A Hirst; Eva Kowalczyk; M Golebiewski; Arnold Sullivan; Hailin Yan; N Hannah; Charmaine N. Franklin; Zhian Sun; P. F. Vohralik; Ian Watterson; X Zhou; R Fiedler; Mark Collier; Y Ma; J Noonan; Lauren Stevens; Peter Uhe; H Zhu; S Griffies; R Hill; C Harris; Kamal Puri
4OASIS3.2–5 coupling framework. The primary goal of the ACCESS-CM development is to provide the Australian climate community with a new generation fully coupled climate model for climate research, and to participate in phase five of the Coupled Model Inter-comparison Project (CMIP5). This paper describes the ACCESS-CM framework and components, and presents the control climates from two versions of the ACCESS-CM, ACCESS1.0 and ACCESS1.3, together with some fields from the 20 th century historical experiments, as part of model evaluation. While sharing the same ocean sea-ice model (except different setups for a few parameters), ACCESS1.0 and ACCESS1.3 differ from each other in their atmospheric and land surface components: the former is configured with the UK Met Office HadGEM2 (r1.1) atmospheric physics and the Met Office Surface Exchange Scheme land surface model version 2, and the latter with atmospheric physics similar to the UK Met Office Global Atmosphere 1.0 includ ing modifications performed at CAWCR and the CSIRO Community Atmosphere Biosphere Land Exchange land surface model version 1.8. The global average annual mean surface air temperature across the 500-year preindustrial control integrations show a warming drift of 0.35 °C in ACCESS1.0 and 0.04 °C in ACCESS1.3. The overall skills of ACCESS-CM in simulating a set of key climatic fields both globally and over Australia significantly surpass those from the preceding CSIRO Mk3.5 model delivered to the previous coupled model inter-comparison. However, ACCESS-CM, like other CMIP5 models, has deficiencies in various as pects, and these are also discussed.
Journal of Hydrometeorology | 2006
Sonia I. Seneviratne; Randal D. Koster; Zhichang Guo; Paul A. Dirmeyer; Eva Kowalczyk; David M. Lawrence; Ping Liu; David Mocko; Cheng-Hsuan Lu; Keith W. Oleson; Diana Verseghy
Abstract Soil moisture memory is a key aspect of land–atmosphere interaction and has major implications for seasonal forecasting. Because of a severe lack of soil moisture observations on most continents, existing analyses of global-scale soil moisture memory have relied previously on atmospheric general circulation model (AGCM) experiments, with derived conclusions that are probably model dependent. The present study is the first survey examining and contrasting global-scale (near) monthly soil moisture memory characteristics across a broad range of AGCMs. The investigated simulations, performed with eight different AGCMs, were generated as part of the Global Land–Atmosphere Coupling Experiment. Overall, the AGCMs present relatively similar global patterns of soil moisture memory. Outliers are generally characterized by anomalous water-holding capacity or biases in radiation forcing. Water-holding capacity is highly variable among the analyzed AGCMs and is the main factor responsible for intermodel diffe...
Annals of Glaciology | 2004
Pierre Etchevers; E. Martin; Ross Brown; Charles Fierz; Yves Lejeune; Eric Bazile; Aaron Boone; Yongjiu Dai; Richard Essery; Alberto Fernandez; Yeugeniy M. Gusev; Rachel E. Jordan; Victor Koren; Eva Kowalczyk; N. Olga Nasonova; R. David Pyles; Adam Schlosser; Andrey B. Shmakin; Tatiana G. Smirnova; Ulrich Strasser; Diana Verseghy; Takeshi Yamazaki; Zong-Liang Yang
Abstract Many snow models have been developed for various applications such as hydrology, global atmospheric circulation models and avalanche forecasting. The degree of complexity of these models is highly variable, ranging from simple index methods to multi-layer models that simulate snow-cover stratigraphy and texture. In the framework of the Snow Model Intercomparison Project (SnowMIP), 23 models were compared using observed meteorological parameters from two mountainous alpine sites. The analysis here focuses on validation of snow energy-budget simulations. Albedo and snow surface temperature observations allow identification of the more realistic simulations and quantification of errors for two components of the energy budget: the net short- and longwave radiation. In particular, the different albedo parameterizations are evaluated for different snowpack states (in winter and spring). Analysis of results during the melting period allows an investigation of the different ways of partitioning the energy fluxes and reveals the complex feedbacks which occur when simulating the snow energy budget. Particular attention is paid to the impact of model complexity on the energy-budget components. The model complexity has a major role for the net longwave radiation calculation, whereas the albedo parameterization is the most significant factor explaining the accuracy of the net shortwave radiation simulation.
Monthly Weather Review | 2000
C. Adam Schlosser; Andrew G. Slater; Alan Robock; A. J. Pitman; Nina A. Speranskaya; K. L. Mitchell; Aaron Boone; Harald Braden; Fei Chen; Peter M. Cox; Patricia de Rosnay; C. E. Desborough; Robert E. Dickenson; Yongjiu Dai; Qingyun Duan; Jared K. Entin; Pierre Etchevers; Yeugeniy M. Gusev; Florence Habets; Jinwon Kim; Victor Koren; Eva Kowalczyk; Olga N. Nasonova; J. Noilhan; John C. Schaake; Andrey B. Shmakin; Tatiana G. Smirnova; Peter J. Wetzel; Yongkang Xue; Zong-Liang Yang
The Project for the Intercomparison of Land-Surface Parameterization Schemes (PILPS) aims to improve understanding and modeling of land surface processes. PILPS phase 2(d) uses a set of meteorological and hydrological data spanning 18 yr (1966‐83) from a grassland catchment at the Valdai water-balance research site in Russia. A suite of stand-alone simulations is performed by 21 land surface schemes (LSSs) to explore the LSSs’ sensitivity to downward longwave radiative forcing, timescales of simulated hydrologic variability, and biases resulting from single-year simulations that use recursive spinup. These simulations are the first in PILPS to investigate the performance of LSSs at a site with a well-defined seasonal snow cover and frozen soil. Considerable model scatter for the control simulations exists. However, nearly all the LSS scatter in simulated root-zone soil moisture is contained within the spatial variability observed inside the catchment. In addition, all models show a considerable sensitivity to longwave forcing for the simulation of the snowpack, which during the spring melt affects runoff, meltwater infiltration, and subsequent evapotranspiration. A greater sensitivity of the ablation, compared to the accumulation, of the winter snowpack to the choice of snow parameterization is found. Sensitivity simulations starting at prescribed conditions with no spinup demonstrate that the treatment of frozen soil (moisture) processes can affect the long-term variability of the models. The single-year recursive runs show large biases, compared to the corresponding year of the control run, that can persist through the entire year and underscore the importance of performing multiyear simulations.
Journal of Hydrometeorology | 2003
Lifeng Luo; Alan Robock; Konstantin Y. V Innikov; C. Adam Schlosser; Andrew G. Slater; Aaron Boone; Harald Braden; Peter M. Cox; Patricia de Rosnay; Robert E. Dickinson; Yongjiu Dai; Qingyun Duan; Pierre Etchevers; A. Henderson-Sellers; N. Gedney; Yevgeniy M. Gusev; Florence Habets; Jinwon Kim; Eva Kowalczyk; Kenneth E. Mitchell; Olga N. Nasonova; J. Noilhan; A. J. Pitman; John C. Schaake; Andrey B. Shmakin; Tatiana G. Smirnova; Peter J. Wetzel; Yongkang Xue; Zong-Liang Yang; Qingcun Zeng
The Project for Intercomparison of Land-Surface Parameterization Schemes phase 2(d) experiment at Valdai, Russia, offers a unique opportunity to evaluate land surface schemes, especially snow and frozen soil parameterizations. Here, the ability of the 21 schemes that participated in the experiment to correctly simulate the thermal and hydrological properties of the soil on several different timescales was examined. Using observed vertical profiles of soil temperature and soil moisture, the impact of frozen soil schemes in the land surface models on the soil temperature and soil moisture simulations was evaluated. It was found that when soil-water freezing is explicitly included in a model, it improves the simulation of soil temperature and its variability at seasonal and interannual scales. Although change of thermal conductivity of the soil also affects soil temperature simulation, this effect is rather weak. The impact of frozen soil on soil moisture is inconclusive in this experiment due to the particular climate at Valdai, where the top 1mo fsoil is very close to saturation during winter and the range for soil moisture changes at the time of snowmelt is very limited. The results also imply that inclusion of explicit snow processes in the models would contribute to substantially improved simulations. More sophisticated snow models based on snow physics tend to produce better snow simulations, especially of snow ablation. Hysteresis of snowcover fraction as a function of snow depth is observed at the catchment but not in any of the models.
Journal of Hydrometeorology | 2007
Gab Abramowitz; A. J. Pitman; Hoshin V. Gupta; Eva Kowalczyk; Ying-Ping Wang
A neural network–based flux correction technique is applied to three land surface models. It is then used to show that the nature of systematic model error in simulations of latent heat, sensible heat, and the net ecosystem exchange of CO2 is shared between different vegetation types and indeed different models .B y manipulating the relationship between the dataset used to train the correction technique and that used to test it, it is shown that as much as 45% of per-time-step model root-mean-square error in these flux outputs is due to systematic problems in those model processes insensitive to changes in vegetation parameters. This is shown in the three land surface models using flux tower measurements from 13 sites spanning 2 vegetation types. These results suggest that efforts to improve the representation of fundamental processes in land surface models, rather than parameter optimization, are the key to the development of land surface model ability.
Australian Meteorological and Oceanographic Journal | 2013
Eva Kowalczyk; Lauren Stevens; R Law; M Dix; Y Wang; I Harman; K Haynes; J Srbinovsky; B Pak; T Ziehn
The land surface component of the Australian Community Climate and Earth System Simulator (ACCESS) is one difference between the two versions of ACCESS used to run simulations for the Coupled Model Intercomparison Project (CMIP5). The Met Office Surface Exchange Scheme (MOSES) and the Community Atmosphere Biosphere Land Exchange (CABLE) model are described and compared. The impact on the simulated present day land surface climatology is assessed, in both atmosphere only and coupled model cases. Analysis is focused on seasonal mean precipitation and screen-level temperature, both globally and for Australia. Many of the biases from observations are common across both ACCESS versions and both atmosphere only and coupled cases. Where the simulations from the two versions differ, the choice of land surface model is often only a small contributor with changes to the cloud simulation also important. Differences that can be traced to the land surface model include warm biases with CABLE due to underestimation of surface albedo, better timing of northern hemisphere snowmelt and smaller seasonal and diurnal temperature ranges with CABLE than MOSES.
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Commonwealth Scientific and Industrial Research Organisation
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View shared research outputsCommonwealth Scientific and Industrial Research Organisation
View shared research outputsCommonwealth Scientific and Industrial Research Organisation
View shared research outputsCommonwealth Scientific and Industrial Research Organisation
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