Feng Zhang and Aris Georgakakos School of Civil and Environmental Engineering, Georgia Institute of Technology Sample of Chart Subheading Goes Here Comparing.

Slides:



Advertisements
Similar presentations
Climate Change Decision Support System Climate Services Webinar Jay Day December 2010.
Advertisements

Comparing statistical downscaling methods: From simple to complex
Earth Science & Climate Change
A statistical method for calculating the impact of climate change on future air quality over the Northeast United States. Collaborators: Cynthia Lin, Katharine.
REFERENCES 1. Chandler, R. E. & Wheater, H. S. (2002) Analysis of rainfall variability using generalized linear models: a case study from the west of Ireland.
Human-induced changes in the hydrological cycle of the western United States Tim Barnett 1, David Pierce 1, Hugo Hildalgo 1, Tapash Das 1, Celine Bonfils.
Alan F. Hamlet Eric P. Salathé Matt Stumbaugh Se-Yeun Lee Seshu Vaddey U.S. Army Corps of Engineers JISAO Climate Impacts Group Dept. of Civil and Environmental.
Dennis P. Lettenmaier Alan F. Hamlet JISAO Center for Science in the Earth System Climate Impacts Group and Department of Civil and Environmental Engineering.
Progress in Downscaling Climate Change Scenarios in Idaho Brandon C. Moore.
Global catchment based comparison of observed and HadGEM modelled precipitation, temperature and Köppen climate type Murray Peel 1, Thomas McMahon 1 &
Development of GCM Based Climate Scenarios Richard Palmer, Kathleen King, Courtney O’Neill, Austin Polebitski, and Lee Traynham Department of Civil and.
Crop Physical System of Dams and Reservoirs Climate change impacts on water supply and irrigation water demand in the Columbia River Basin Jennifer Adam.
Arctic Land Surface Hydrology: Moving Towards a Synthesis Global Datasets.
WFM 6311: Climate Risk Management © Dr. Akm Saiful Islam WFM 6311: Climate Change Risk Management Akm Saiful Islam Lecture-4: Module- 3 Regional Climate.
Eric Salathé Climate Impacts Group (JISAO/SMA) University of Washington Constructing regional climate change scenarios.
Washington State Climate Change Impacts Assessment: Implications of 21 st century climate change for the hydrology of Washington Marketa M Elsner 1 with.
The Canadian Climate Impacts Scenarios (CCIS) Project is funded by the Climate Change Action Fund and provides climate change scenarios and related information.
SECC – CCSP Meeting November 7, 2008 Downscaling GCMs to local and regional levels Institute of Food and Agricultural Sciences Guillermo A. Baigorria
Simulating the future climate of the Great Lakes using Regional Climate Models Frank Seglenieks Boundary Waters Issues Unit, MSC Methods of Projecting.
NCPP – needs, process components, structure of scientific climate impacts study approach, etc.
Potential effects of climate change on the Columbia River Basin: Hydrology and water resources Dennis P. Lettenmaier Department of Civil and Environmental.
1. Introduction 3. Global-Scale Results 2. Methods and Data Early spring SWE for historic ( ) and future ( ) periods were simulated. Early.
Land Use, Land Cover, and the Impacts of Climate Change in Agriculture Hexbin plot of MLCT raw vs. NLCD (left) and of MLCT adjusted crop versus Agland2000.
Preliminary Results of Global Climate Simulations With a High- Resolution Atmospheric Model P. B. Duffy, B. Govindasamy, J. Milovich, K. Taylor, S. Thompson,
Where the Research Meets the Road: Climate Science, Uncertainties, and Knowledge Gaps First National Expert and Stakeholder Workshop on Water Infrastructure.
Downscaling and its limitation on climate change impact assessments Sepo Hachigonta University of Cape Town South Africa “Building Food Security in the.
Assessment of the impacts of and adaptations to climate change in the plantation sector, with particular reference to coconut and tea, in Sri Lanka. AS-12.
Assessing the impacts of climate change on Atbara flows using bias-corrected GCM scenarios SIGMED and MEDFRIEND International Scientific Workshop Relations.
15 december 2009 Usefulness of GCM data for predicting global hydrological changes Frederiek Sperna Weiland Rens van Beek Jaap Kwadijk Marc Bierkens.
The hydrological cycle of the western United States is expected to be significantly affected by climate change (IPCC-AR4 report). Rising temperature and.
Validation of NARCCAP climate products for forest resource applications in the southeast United States. Willis Shem 1, Thomas Mote 2, Marshall Shepherd.
Understanding hydrologic changes: application of the VIC model Vimal Mishra Assistant Professor Indian Institute of Technology (IIT), Gandhinagar
A significant amount of climate data are available: DETERMINING CLIMATE CHANGE SCENARIOS AND PROJECTIONS It can be time-consuming to manage and interpret.
Climate Scenario and Uncertainties in the Caribbean Chen,Cassandra Rhoden,Albert Owino Anthony Chen,Cassandra Rhoden,Albert Owino Climate Studies Group.
Office of Research and Development National Exposure Research Laboratory, Atmospheric Modeling and Analysis Division Using Dynamical Downscaling to Project.
COST 723 WORKSHOP – SOFIA, BULGARIA MAY 2006 USE OF RADIOSONDE DATA FOR VALIDATION OF REGIONAL CLIMATE MODELLING SIMULATIONS OVER CYPRUS Panos Hadjinicolaou.
1 Greenhouse Gas Emissions, Global Climate Models, and California Climate Change Impacts.
Mike Dettinger USGS, La Jolla, CA DOWNSCALING to local climate.
Impact of the changes of prescribed fire emissions on regional air quality from 2002 to 2050 in the southeastern United States Tao Zeng 1,3, Yuhang Wang.
© Crown copyright Met Office Downscaling ability of the HadRM3P model over North America Wilfran Moufouma-Okia and Richard Jones.
The Canadian Climate Impacts Scenarios (CCIS) Project is funded by the Climate Change Action Fund and provides climate change scenarios and related information.
John Mejia and K.C. King, Darko Koracin Desert Research Institute, Reno, NV 4th NARCCAP Workshop, Boulder, CO, April,
Robust Simulation of Future Hydrologic Extremes in BC under Climate Change Arelia T. Werner Markus A. Schnorbus and Rajesh R. Shrestha.
Alan F. Hamlet Andy Wood Dennis P. Lettenmaier JISAO Center for Science in the Earth System Climate Impacts Group and the Department.
Impacts of Landuse Management and Climate Change on Landslides Susceptibility over the Olympic Peninsula of Washington State Muhammad Barik and Jennifer.
High resolution extreme temperature scenarios over North America NARCCAP 4 th users’ workshop Apr , 2012 Guilong Li Atmospheric Science and Application.
Eric Salathé JISAO Climate Impacts Group University of Washington Rick Steed UW Yongxin Zhang CIG, NCAR Cliff Mass UW Regional Climate Modeling and Projected.
Using Satellite Data and Fully Coupled Regional Hydrologic, Ecological and Atmospheric Models to Study Complex Coastal Environmental Processes Funded by.
Sensitivity of Colorado Stream Flows to Climate Change Dennis P. Lettenmaier Department of Civil and Environmental Engineering University of Washington.
DOWNSCALING GLOBAL MEDIUM RANGE METEOROLOGICAL PREDICTIONS FOR FLOOD PREDICTION Nathalie Voisin, Andy W. Wood, Dennis P. Lettenmaier University of Washington,
VERIFICATION OF A DOWNSCALING SEQUENCE APPLIED TO MEDIUM RANGE METEOROLOGICAL PREDICTIONS FOR GLOBAL FLOOD PREDICTION Nathalie Voisin, Andy W. Wood and.
Long-lead streamflow forecasts: 2. An approach based on ensemble climate forecasts Andrew W. Wood, Dennis P. Lettenmaier, Alan.F. Hamlet University of.
Approach We use CMIP5 simulations and specifically designed NCAR/DOE CESM1-CAM5 experiments to determine differential impacts at the grid-box levels (in.
NOAA Northeast Regional Climate Center Dr. Lee Tryhorn NOAA Climate Literacy Workshop April 2010 NOAA Northeast Regional Climate.
Assessment of high-resolution simulations of precipitation and temperature characteristics over western Canada using WRF model Asong. Z.E
Tanya L. Spero1, Megan S. Mallard1, Stephany M
Global Circulation Models
Spatial downscaling on gridded precipitation over India
Overview of Downscaling
Considerations in Using Climate Change Information in Hydrologic Models and Water Resources Assessments JISAO Center for Science in the Earth System Climate.
Downscaling sea level rise in the Mediterranean Sea under different future climate change scenarios ( ) Kareem M. Tonbol (Ph.D.) Assistant Professor.
Nathalie Voisin, Andy W. Wood and Dennis P. Lettenmaier
On HRM3 (a.k.a. HadRM3P, a.k.a. PRECIS) North American simulations
Hydrology and Water Management Applications of GCIP Research
Hydrologic response of Pacific Northwest Rivers to climate change
University of Washington Center for Science in the Earth System
Stochastic Storm Rainfall Simulation
N. Voisin, J.C. Schaake and D.P. Lettenmaier
EC Workshop on European Water Scenarios Brussels 30 June 2003
Presentation transcript:

Feng Zhang and Aris Georgakakos School of Civil and Environmental Engineering, Georgia Institute of Technology Sample of Chart Subheading Goes Here Comparing Joint Variable Spatial Downscaling Results with NARCCAP Datasets Introduction General Circulation Models (GCMs) are broadly used as an important tool for qualitative impact assessment. The GCMs represent (through a large system of partial differential equations) the coupled atmospheric and oceanic processes currently understood to govern the Earth’s climate. Low Resolution ~200km x 200km Monthly & Few Daily High Resolution ~12km x 12km Monthly & Daily At present, GCMs run on global scales at relatively low spatial resolutions (~100x100 km2 to ~250x250 km2). Because of their coarse spatial resolution, GCM outputs are usually inadequate to capture the spatial variability at regional or local scales with higher resolution (~4x4 km2 to ~12x12 km2) necessary for hydrological applications. Joint Variable Spatial Downscaling (JVSD), a new statistical technique for downscaling gridded climatic variables, is developed to generate high resolution gridded datasets for regional watershed modeling and assessments. The proposed approach differs from previous statistical downscaling methods in that multiple climatic variables are downscaled simultaneously and consistently to produce realistic climate projections. It has two major steps: bias correction and spatial downscaling. Introduction Upscaling and Differentiation Figure 2 Joint Variable Spatial Downscaling Flowchart Figure 1 Low & High Resolution Grids Fut → Con → Obs Figure 3 Bivariate Empirical Cumulative Frequency Curves for Original (Top) and Differenced (Bottom) Time Series of Temperature and Precipitation Figure 4 Joint Frequency Distribution Mapping Figure 3 shows that, (1)The joint frequency distributions of temperature and precipitation are different in the control and future runs; and (2)The relationship of the joint frequency distributions (of control versus future data) is appreciably different in the first versus the second 50-year period, indicating that the joint frequency distribution is non-stationary; and (3)The differenced sequences exhibit very good correspondence between control and future runs, for both future periods. This result and conclusion has been tested and shown to hold for all 13 GCMs available through IPCC. Bias Correction Spatial Downscaling 30-day T-P 10-day T-P 5-day T-P 1-day T-P Spatially Downscaled T-P Fields Historical Analog Approach Contemporaneous for all GCM Basin Coverage Figure 5 Spatial Downscaling using Historical Analog Approach Downscaling Results for CGCM3.1-run1 (A1B Scenario) DJF MAM JJA SON r Comparison With Dynamic Downscaling Results Climate Change Assessment for ACF Basins (1)Creating a differenced series of future temperature and precipitation; (2)Finding the joint frequency of the contemporaneous differenced data values; (3)Considering that this joint frequency is the same in the future differenced series as it is in the control differenced series; and (4)Mapping each joint frequency point of the GCM control distribution to a corresponding point on the joint frequency distribution of the observed differenced series. (1)Pattern matching is performed simultaneously for temperature and precipitation fields; (2)Pattern matching is performed simultaneously for all GCM cells that cover the region of interest; and (3)Future temperature and precipitation fields that fall outside the historical range are accommodated by expanding the range of historical analogues. Figure 6 Temperature/precipitation distributions over the ACF basin and the southeast US. Monthly precipitation fields are aggregated by season (DJF, MAM, JJA, and SON in rows 1, 2, 3, and 4 respectively). The columns depict observations for the period 01/ /1999 (Column 1); JVSD downscaled data using input from the 20CM3 experiment for the period 01/ /1999 (Column 2); JVSD downscaled data using input from the CGCM3.1-run1A1B Scenario for the period 01/ /2049 (Column 3); and JVSD downscaled data using input from the CGCM3.1-run1 A1B Scenario for the period 01/ /2099 (Column 4). Figure 7 Comparison Process of JVSD with Dynamic Downscaling Methods from the NARCCAP Dataset (CRCM/CGCM3) for the Future Period ) Reference: NARCCAP: Figure 8 Comparisons of Downscaled Temperature/Precipitation Frequencies for ACF Watersheds based on NARCCAP Methods, BCSD, JVSD with no bias correction, and JVSD with bias correction Reference: Wood, A. W., L. R. Leung, V. Sridhar and D. P. Lettenmaier, (2004). "Hydrologic Implications of Dynamical and Statistical Approaches to Downscaling Climate Model Outputs." Climatic Change : Figure 9 Box Plots of Monthly Historical vs. Future (A1B and A2) Watershed Precipitation and Temperature: H denotes the historical period ( ); FF the first future period ( ); and FS the second future period ( ). Left – Buford Watershed; Right – Woodruff Watershed. Reference: F. Zhang and A. Georgakakos, (2010). "Joint Variable Spatial Downscaling“,Climatic Change, submitted SPONSORS