Guangqing Zhou, Institute of Atmospheric Physics (IAP), Chinese Academy of Sciences (CAS) Bali, Indonesia 4 Sep. 2007 On Data Assimilation/Reanalysis:

Slides:



Advertisements
Similar presentations
An atmosphere-ocean coupled regional climate model for the Mediterranean Alberto Elizalde Daniela Jacob Uwe Mikolajewicz Max Planck Institute for Meterology.
Advertisements

OSE meeting GODAE, Toulouse 4-5 June 2009 Interest of assimilating future Sea Surface Salinity measurements.
WP4 Task T4.2 WP4-T4.2 : Establishment of validation criteria of multidisciplinary information products
A thermodynamic model for estimating sea and lake ice thickness with optical satellite data Student presentation for GGS656 Sanmei Li April 17, 2012.
Experiments with Monthly Satellite Ocean Color Fields in a NCEP Operational Ocean Forecast System PI: Eric Bayler, NESDIS/STAR Co-I: David Behringer, NWS/NCEP/EMC/GCWMB.
Assimilation of Sea Surface Temperature into a Northwest Pacific Ocean Model using an Ensemble Kalman Filter B.-J. Choi Kunsan National University, Korea.
1 CODATA 2006 October 23-25, 2006, Beijing Cryospheric Data Assimilation An Integrated Approach for Generating Consistent Cryosphere Data Set Xin Li World.
1 Evaluation of two global HYCOM 1/12º hindcasts in the Mediterranean Sea Cedric Sommen 1 In collaboration with Alexandra Bozec 2 and Eric Chassignet 2.
Observation Plans in Indian Ocean Jianping Li 1), Yu Weidong 2) and Guoxiong Wu 1) 1) LASG, Institute of Atmospheric Physics (IAP), Chinese Academy of.
Circulation in the atmosphere
Building Bluelink David Griffin, Peter Oke, Andreas Schiller et al. March 2007 CSIRO Marine and Atmospheric Research.
Medspiration user meeting, dec 4-6 Use of Medspiration and GHRSST data in the Northern Seas Jacob L. Høyer & Søren Andersen Center for Ocean and Ice, Danish.
THE BEST ANALYZED AIR- SEA FLUXES FOR SEASONAL FORECASTING 2.12 Glenn H. White, W. Wang, S. Saha, D. Behringer, S. Nadiga and H.-L. Pan Global Climate.
Climate modeling Current state of climate knowledge – What does the historical data (temperature, CO 2, etc) tell us – What are trends in the current observational.
SMOS – The Science Perspective Matthias Drusch Hamburg, Germany 30/10/2009.
Princeton University Global Evaluation of a MODIS based Evapotranspiration Product Eric Wood Hongbo Su Matthew McCabe.
Brian Ancell, Cliff Mass, Gregory J. Hakim University of Washington
Are the results of PILPS or GSWP affected by the lack of land surface- atmosphere feedback? Is the use of offline land surface models in LDAS making optimal.
2008 Intensive Observation Period in Arid/Semi-arid China—MAIRS Contribution to AMY Ailikun, Congbin FU International Program Office of MAIRS Chinese Academy.
Characterization and causes of variability of sea level and thermocline depth in the tropical South Indian Ocean Laurie Trenary University of Colorado.
Applications and Limitations of Satellite Data Professor Ming-Dah Chou January 3, 2005 Department of Atmospheric Sciences National Taiwan University.
International CLIVAR Working Group for Seasonal-to- Interannual Prediction (WGSIP) Ben Kirtman (Co-Chair WGSIP) George Mason University Center for Ocean-Land-Atmosphere.
Guangqing Zhou, Jiang Zhu, and colleagues Institute of Atmospheric Physics (IAP), Chinese Academy of Sciences Beijing China Data management and Ocean data.
Collaborative Research: Toward reanalysis of the Arctic Climate System—sea ice and ocean reconstruction with data assimilation Synthesis of Arctic System.
Zenghong Liu & Jianping Xu State Key Lab of Satellite Ocean Environment Dynamics The Second Institute of Oceanography, SOA GOVST-V , Beijing.
IGST Meeting June 2-4, 2008 The GMAO’s Ocean Data Assimilation & SI Forecasts Michele Rienecker, Christian Keppenne, Robin Kovach Jossy Jacob, Jelena Marshak.
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.
Low Frequency Variability of Subtropical North Pacific Ocean Circulation and Its Impacts on the Dynamic Environment of the Marginal Seas (NPOIMS) Chief.
Translation to the New TCO Panel Beverly Law Prof. Global Change Forest Science Science Chair, AmeriFlux Network Oregon State University.
Dataset Development within the Surface Processes Group David I. Berry and Elizabeth C. Kent.
SEADATANET Kick-Off Meeting Heraklion 8-10 June 2006 National Institute of Geophisics and Volcanology, Italy (INGV) SEADATANET Joint Reasearch Activities.
West African Monsoon Modeling and Evaluation (WAMME) Project Yongkang Xue, Bill Lau, Kerry Cook With contributions from many collaborators C20C Workshop.
Observation Plans in West Pacific Jianping Li 1), Guoxiong Wu 1) and Fan Wang 2) 1) LASG, Institute of Atmospheric Physics (IAP), Chinese Academy of Sciences.
R.Sutton RT4 coordinated experiments Rowan Sutton Centre for Global Atmospheric Modelling Department of Meteorology University of Reading.
IGARSS 2011, Jul. 26, Vancouver 1 Improving Land Surface Energy and Water Fluxes Simulation over the Tibetan Plateau with Using a Land Data Assimilation.
CPPA Past/Ongoing Activities - Ocean-Atmosphere Interactions - Address systematic ocean-atmosphere model biases - Eastern Pacific Investigation of Climate.
Modern Era Retrospective-analysis for Research and Applications: Introduction to NASA’s Modern Era Retrospective-analysis for Research and Applications:
Assimilation of HF radar in the Ligurian Sea Spatial and Temporal scale considerations L. Vandenbulcke, A. Barth, J.-M. Beckers GHER/AGO, Université de.
2nd GODAE Observing System Evaluation Workshop - June Ocean state estimates from the observations Contributions and complementarities of Argo,
Understanding hydrologic changes: application of the VIC model Vimal Mishra Assistant Professor Indian Institute of Technology (IIT), Gandhinagar
Activities of the GEWEX Hydrometeorology Panel GHP: LBA as component of GHP J. A. Marengo CPTEC/INPE São Paulo, Brazil J. Roads Scripps Institution of.
Applications of a Regional Climate Model to Study Climate Change over Southern China Keith K. C. Chow Hang-Wai Tong Johnny C. L. Chan CityU-IAP Laboratory.
An evaluation of satellite derived air-sea fluxes through use in ocean general circulation model Vijay K Agarwal, Rashmi Sharma, Neeraj Agarwal Meteorology.
Graduate Course: Advanced Remote Sensing Data Analysis and Application A COMPARISON OF LATENT HEAT FLUXES OVER GLOBAL OCEANS FOR FOUR FLUX PRODUCTS Shu-Hsien.
Ocean Analysis and Reanalysis: Phil Arkin, ESSIC, University of Maryland Background Concept and Implementation Issues.
AMY Some concluding remarks Howard Cattle. AMY AMY brings together some 21 regional projects plus other national and international programme contributions.
ICDC7, Boulder September 2005 Estimation of atmospheric CO 2 from AIRS infrared satellite radiances in the ECMWF data assimilation system Richard.
Evaluation of the Real-Time Ocean Forecast System in Florida Atlantic Coastal Waters June 3 to 8, 2007 Matthew D. Grossi Department of Marine & Environmental.
Ocean Surface heat fluxes
Indian Ocean modeling: successes, problems and prospects IO Modeling Workshop November 29 – December 3, 2004.
Ocean Climate Simulations with Uncoupled HYCOM and Fully Coupled CCSM3/HYCOM Jianjun Yin and Eric Chassignet Center for Ocean-Atmospheric Prediction Studies.
Assimilating Satellite Sea-Surface Salinity in NOAA Eric Bayler, NESDIS/STAR Dave Behringer, NWS/NCEP/EMC Avichal Mehra, NWS/NCEP/EMC Sudhir Nadiga, IMSG.
The Mediterranean Forecasting INGV-Bologna.
Ocean Data Assimilation for SI Prediction at NCEP David Behringer, NCEP/EMC Diane Stokes, NCEP/EMC Sudhir Nadiga, NCEP/EMC Wanqiu Wang, NCEP/EMC US GODAE.
An advanced snow parameterization for the models of atmospheric circulation Ekaterina E. Machul’skaya¹, Vasily N. Lykosov ¹Hydrometeorological Centre of.
VOCALS-UK Len Shaffrey and Thomas Toniazzo Walker Institute, University of Reading John Constable ‘Cloud Study’ 1822.
TS 15 The Great Salt Lake System ASLO 2005 Aquatic Sciences Meeting Climatology and Variability of Satellite-derived Temperature of the Great Salt Lake.
Ocean Monitoring and Forecasting A Commercial Perspective Dr Ralph Rayner Ocean Numerics/Fugro GEOS.
Information on a potential CEOS Sea Surface Temperature Virtual Constellation (SST-VC) Craig Donlon (ESA) Kenneth S. Casey (NOAA) CEOS Plenary, Rio De.
Status and Outlook Evaluating CFSR Air-Sea Heat, Freshwater, and Momentum Fluxes in the context of the Global Energy and Freshwater Budgets PI: Lisan.
Users Requirements The inconsistencies between the UR and GCOS-2006 identified in some of the URDs will be reduced with the new iteration of the GCOS.
AOMIP and FAMOS are supported by the National Science Foundation
Panel: Bill Large, Bob Weller, Tim Liu, Huug Van den Dool, Glenn White
Y. Xue1, C. Wen1, X. Yang2 , D. Behringer1, A. Kumar1,
Modeling the Atmos.-Ocean System
Long Range Forecast Transient Intercomparison Project (LRFTIP-A)
66-SE-CMEMS-CALL2: Lot-3 Benefits of dynamically modelled river discharge input for ocean and coupled atmosphere-land-ocean systems Hao Zuo, Fredrik Wetterhall,
NOAA Objective Sea Surface Salinity Analysis P. Xie, Y. Xue, and A
Joint Proposal to WGOMD for a community ocean model experiment
Presentation transcript:

Guangqing Zhou, Institute of Atmospheric Physics (IAP), Chinese Academy of Sciences (CAS) Bali, Indonesia 4 Sep On Data Assimilation/Reanalysis: Ocean and Plateau

AIPO: Ocean CEOP/WEBS: Tibet Plateau Two Projects will deliver Data Assimilation/Reanalysis

Goals: 1.To improve understanding of the oceanic circulation around Indian Ocean, South China Sea and West Pacific areas, 2.and the water and energy cycles on plateau surface and in the atmosphere 3.and their impacts on Asian Monsoon via data assimilation/ reanalysis.

Objectives: To provide the assimilated data : (1)AIPO will establish an at least 15 year high resolution oceanic reanalysis data Area: 25 º S-40ºN and 30ºE-180ºE Grid: 0.25º in latitude and longitude Period: ? (2) CEOP/WEBS will establish a 10-year high resolution plateau-covering data set Area: Tibet Palteau Grid: 0.5º in latitude and longitude with an 1-hour interval Period:

Research Activities: On the ocean data assimilation: (1) to validate and evaluate the existing remote-sensing sea surface parameter products, determine their multi-scale properties and uncertainties. Then to develop a method which can merge multi-source remote sensing observations and to generate a high resolution and regular-covering remote- sensing sea surface parameters. (2) to analyze the different in situ observations and determine their relative errors, and establish the relations between sea temperature and salinity.

Research Activities: (3) to validate the ocean model, determine the simulation errors and uncertainties, and develop a new background error covariance model which can describe more accurately the properties in AIPO area by ensemble method. (4) to establish a data set of high resolution sea surface parameters from multi-source remote-sensing observations and an at least 15 year ( ) and high resolution (0.25° grid size expected) oceanic reanalysis product for the region of 25°S-40°N and 30°E-180°E by assimilating in situ and satellite data via ensemble method. (5) to validate and evaluate these assimilation/reanalysis data.

Research Activities: On the plateau covering data assimilation: (1) to validate the land data assimilation system at The University of Tokyo (LDAS-UT), which is to be used to produce surface water and energy budget. The system has been validated at the CEOP-Tibet mesoscale area with affluent in situ data. More validations will be conducted based on CEOP data. (2) to analyze and correct the LDAS forcing data: The LDAS-UT is driven by precipitation, radiation, wind, air temperature and humidity. These data can be provided by GCMs, reanalysis, or satellite retrieval. It is important to select appropriate data type to drive the LDAS-UT, since their accuracy is different. By Combining the remote-sensing data, in situ data and reanalysis, to generate a more reliable and accurate forcing data set ( ).

Research Activities: (3) to establish a 10-year plateau soil water and flux budget data set ( ), with a spatial resolution of 0.5 degree, and a temporal resolution of 1 hour, by assimilating the satellite microwave data. (4) to analyze water and energy cycles on plateau surface. (5) to analyze the atmosphere heating over the plateau, with particular attention to their climatology and temporal variability. No more information was obtained from CEOP/WEBS

Implementation: Financial Support: Ocean assimilation: in frame of AIPO supported by China Gov. Plateau assimilation: in frame of CEOP/WEBS Data Requirements: Ocean data assimilation: XBT, CDT, ARGO, TAO, GHRSST, satellite altimeter, and high resolution forcing data (ECMWF or other?) etc. New field or experiment observations also needed Plateau covering assimilation: satellite microwave brightness temperature, in situ data, ???? Model: Ocean assimilation: HYCOM with Ensemble Kalman Filter and OI Plateau assimilation: LDAS-UT

Implementation: Periods: AIPO: CEOP/WEBS: ????.?? - ????.?? Data Release (plan) : Ocean Assimilated DATA: 2011 (?) Plateau Assimilated DATA: ????? Data Format and Access (proposed) : NetCDF with full documentations (metadata) via FTP and DODS Restriction for Data Use after release (proposed) : No for Scientific Researches and non-commercial use, for commercial use, decided by producers Acknowledgement and citation, Feedback

Huge and difficult Tasks for Data Managements: Some Comments 1.In first step, we should know:  what kinds of data we want and need in AMY? real time or/and delayed data: ??? operational or/and experimental: ??? what types of data we can and need to collect and archive? two aspects: technique capability now among AMY-related projects data providers: -- What kinds of data can be provided by various project voluntarily? If is there a big gap between what we want and what we can? I suggest: detail information of data should be supplied to the DMWG by every project which wants to contribute to AMY: what data? Exchange and Usage limitation? Existing or planning? how to access these data (existing data)? the persons responsible for the data management and access in the projects, etc.

Huge and difficult Tasks for Data Managements: Some Comments 2.Policy and Strategy: Dr Masuda has done excellent works policy and agreement should be accepted and followed by each data provider! and Can be operated easily and smoothly! 3.At this stage, distributed depositaries of data in individual project may be feasible, We need a catalog with information of the data which will be exchanged and shared: classification, metadata (documentation), access link, responsible persons for the data, etc. 4.Second Step, if possible, to integrate and archive the exchanged data to some key data centers Budget support: Important for maintaining, at least in AMY period. How to integrate: Technical Standard for data collection, archiving and dissemination. 5.Coordination with other groups! Modeling and Hindcast data to be archived ?

A part of AIPO project Ocean data assimilation supporting Chinese climate research Ocean-Atmosphere Interaction over the Joining Area of Asia and Indian-Pacific Ocean (AIPO) and Its Impact on the Short-Term Climate Variation in China Some Progress in Ocean Data Assimilation

Model Area Data Assimilation area with high resolution 1/4 Model area used for nesting (3/4)

Model: HYCOM with ¾ resolution Area: 30E-70W, 50S-60N Forcing: 6-hour ECMWF Temp., SLP, dew-point temp., wind stress, etc. River Fresh Water: Seasonal Lateral Boundary: release to GDEM data Period: Model Validation with larger area

model woa01 Annually mean SSS

Annually mean S at depth 150m model woa01

model woa01 Annually mean T at depth 250m

Annual T at 5N in Indian Ocean model woa

T along the Equator in Pacific Ocean model woa

表层流场 JanJul

Assimilation Technique Checking - Ensemble Kalman Filter in Pacific SST correlation between selected points and their vicinity

RMS errors (unit: ℃ and psu) a) surface temperature, b) surface salinity, c) temperature in the layer ( ), d) salinity in the layer ( ), e) temperature in the layer ( ), f) salinity in the layer ( ).

Thank you !