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Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation Impact Metric Govindan Kutty M and Xuguang Wang University of Oklahoma, Norman, OK, USA EnKF workshop, May 22, 2012 1

Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

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Page 1: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation Impact Metric

Govindan Kutty M and Xuguang Wang

University of Oklahoma, Norman, OK, USA

EnKF workshop, May 22, 2012

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Page 2: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

Introduction

Numerical weather prediction models, in various operational weather forecast centers assimilate millions of observations each day from satellite as well as in-situ platforms

The impact of observations in a data assimilation platform may be different for

Various satellite platforms

Different data assimilation system

The ways in which impacts are assessed

Hybrid GSI-EnKF DA for NCEP GFS has been developed (Wang et al. 2012). Studies have shown that the hybrid improved forecasts.

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Introduction

Wang et al., 2012

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Page 4: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

Introduction

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Introduction

Various methods have been used to assess the impacts of observations

Observing system experiments (OSE, eg; Zapotocny et al., 2007 )

Adjoint method (eg; Galero et al., 2008)

Ensemble based methods (eg; Liu and Kalnay, 2008 )

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Page 6: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

Experimental design

Test period : 15 December 2009 – 31 January 2010 Model: Global Forecast System (GFS) with resolution T190L64 Observations denied : AMSU, Rawinsonde Data Assimilation method:

GSI Hybrid GSI-EnKF

6 experiments for OSE GSI assimilating all observations (gsi) GSI denied Rawinsonde (gsi noraob) GSI denied AMSU (gsi noamsu) Hybrid assimilating all observations (hybrid) Hybrid denied Rawinsonde (hybrid noraob) Hybrid denied AMSU (hybrid noamsu)

Ensemble based observation impact estimate (Liu and Kalnay, 2008, Kalnay, 2011)

Estimate of rawinsonde temp. impact for temperature and wind forecast 6

Page 7: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

RMSE of global forecasts w.r.t ECMWF analysis

72hr wind 72hr temperature 72hr specific humidity

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Page 8: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

RMSE of global forecasts w.r.t conventional observations

24hr wind 24hr temperature

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Page 9: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

Zonally averaged impact (wind RMSE diff.) – 72hr

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Page 10: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

Zonally averaged impact (temp RMSE diff.) – 72hr

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Zonally averaged Impact (Sp.hum. RMSE diff.) -72 hr

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Page 12: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

Anomaly correlation for geopotential height (GSI)

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Anomaly correlation for geopotential height (Hybrid)

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Page 14: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

Relative impact for geopotential height (500hPa)

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Ensemble based impact estimate for Hybrid system

1000hPa

925hPa

850hPa

700hPa

500hPa

300hPa

250hPa

200hPa

global

-0.0035 -0.0030 -0.0025 -0.0020 -0.0015 -0.0010 -0.0005 0.0000

estimate actual

error reduction / gridpoint (K2)

1000hPa

925hPa

850hPa

700hPa

500hPa

300hPa

250hPa

200hPa

global

-0.008 -0.006 -0.004 -0.002 0.000

estimate actual

error reduction /grid point (ms-1)2

Rawinsonde temp. impact for 24 hour temp. forecast

Rawinsonde temp. impact for 24 hour wind forecast

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Ensemble based impact for Hybrid system - 5 day forecast (Adaptive localization)

0 2 4 6 8 10 12

Adaptive localisation Significance test actual

error reduction (K2)16

Page 17: Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation

Summary and ongoing work

OSE

Forecast by Hybrid is better than GSI in both control and data denial experiments Magnitude and distribution of observation impact may depend on observation and

data assimilation methods The relative impact between the AMSU and Rawinsonde may vary for different data

assimilation and verification methods

Ensemble based observation impact for hybrid Initial result and adaptive localization tests are promising.

Ongoing work Extend OSE using hybrid DA (including ensemble-4DVAR) for other data sets in the

NCEP operational system Tests of other adaptive localization methods for ensemble based observation impact

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18(Kelly et al., 2007)