4DVar Tutorial Introduction

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4-Dimensional Variational (4D-Var) Data Assimilation Tutorial


This tutorial shows several examples of ROMS 4D-Var data assimilation algorithms in the California Current System (CCS), 1/3 degree resolution (WC13).



Model Set-up

The WC13 model domain is shown in Fig. 1 and has open boundaries along the northern, western, and southern edges of the model domain.

Fig. 1: Model Bathymetry with 37°N Transect and Target Area

In the tutorial, you will perform a 4D-Var data assimilation cycle that spans the period 3-6 January, 2004. The 4D-Var control vector δz is comprised of increments to the initial conditions, δx(t0), surface forcing, δf(t), and open boundary conditions, δb(t). The prior initial conditions, xb(t0), are taken from the sequence of 4D-Var experiments described by Moore et al. (2011b) in which data were assimilated every 7 days during the period July 2002- December 2004. The prior surface forcing, fb(t), takes the form of surface wind stress, heat flux, and a freshwater flux computed using the ROMS bulk flux formulation, and using near surface air data from COAMPS (Doyle et al., 2009). Clamped open boundary conditions are imposed on (u,v) and tracers, and the prior boundary conditions, bb(t), are taken from the global ECCO product (Wunsch and Heimbach, 2007). The free-surface height and vertically integrated velocity components are subject to the usual Chapman and Flather radiation conditions at the open boundaries. The prior surface forcing and open boundary conditions are provided daily and linearly interpolated in time. Similarly, the increments δf(t) and δb(t) are also computed daily and linearly interpolated in time.

The observations assimilated into the model are satellite SST, satellite SSH in the form of a gridded product from Aviso, and hydrographic observations of temperature and salinity collected from Argo floats and during the GLOBEC/LTOP and CalCOFI cruises off the coast of Oregon and southern California, respectively. The observation locations are illustrated in Fig. 2.

Figure 2: WC13 Observations
a) Aviso SSH
b) Blended SST
c) In Situ Temperature
d) In Situ Salinity

Download Lectures and Exercises

The workshop Agenda can be found here. Links to the 2019 ROMS 4D-Var workshop lectures are provided below. These lectures are meant to supplement this 4D-Var tutorial.

  • Lecture 1:   PDF   4D-Var: Some Basics
  • Lecture 2:   PDF   The Mechanics of 4D-Var
  • Lecture 3:   PDF   Dual 4D-Var
  • Lecture 4:   PDF   Observing System Simulation Experiments (OSSEs)
  • Lecture 5:   PDF   Observation Impact & Observation Sensitivity
  • Lecture 6:   PDF       The MARACOOS analysis-forecast system
  • Lecture 7:   PDF   Array Modes
  • Lecture 8:   PDF       The West Coast Ocean Forecasting System (WCOFS)
  • Lecture 9:   PDF       The CeNCOOS and PacIOOS analysis-forecast systems

Below are the tutorials pertinent to the 2019 ROMS 4D-Var workshop:

  • Tutorial 01:   PDF   Explanation of cpp options, ocean.in, s4dvar.in (I4DVAR)
  • Tutorial 02:   PDF   Multiple outer loops
  • Tutorial 03:     Discussion of exercises 1 and 2
  • Tutorial 04:   PDF   Calculation of prior error standard deviations
  • Tutorial 05:   PDF   Explanation of cpp options, ocean.in, s4dvar.in (RBL4D-Var)
  • Tutorial 06:   PDF   Semi-variograms
  • Tutorial 07:   PDF   ERDDAP data server and management tools
  • Tutorial 08:     Discussion of exercises 3 & 4
  • Tutorial 09:   PDF   Computing normalization coefficients for covariance models
  • Tutorial 10:   PDF_Arango | PDF_Wilkin   Building your observation files
  • Tutorial 11:   PDF   Observation Impact & Observation Sensitivity
  • Tutorial 12:     Discussion of exercise 5
  • Tutorial 13:   PDF   Using ERDDAP to view observation impact information
  • Tutorial 14:     Discussion of exercise 6 & 7
  • Tutorial 15:     Putting it all together

Below are the exercises pertinent to the 2019 ROMS 4D-Var workshop:

  • Exercise 1:   PDF   Incremental, Strong Constraint 4D-Var
  • Exercise 2:   PDF   I4D-Var with Multiple Outer-loops
  • Exercise 3:   PDF   Dual Formulation 4D-Var - RBL4D-Var
  • Exercise 4:   PDF   Weak Constraint Dual Formulation 4D-Var
  • Exercise 5:   PDF   Analysis Cycle Observation Impacts
  • Exercise 6:   PDF   Analysis Cycle Observation Sensitivity
  • Exercise 7:   PDF   Reduced-Rank Array Modes
  • Exercise 8:   PDF   Forecast Cycle Observation Impacts
  • Exercise 9:   PDF   Forecast Cycle Observation Sensitivities

Below are the homeworks pertinent to the 2019 ROMS 4D-Var workshop:

  • Homework 1:     Building the standard deviation file for user model configuration
  • Homework 2:     Building the file of normalization coefficients for the prior error covariance matrix for user model configuration
  • Homework 3:     Build observation file for user model configuration

Download Tutorial Files

All of the data files and scripts necessary to run the 4D-Var tests discussed in this tutorial are available from the ROMS Subversion (SVN) repository. To download, execute the following command (replacing joe_roms with your ROMS username):

> svn checkout --username joe_roms https://www.myroms.org/svn/src/test my_test

or

> svn checkout https://www.myroms.org/svn/src/test my_test

if your local username in your machine matches your ROMS username.

Tutorial Directory Structure

When the checkout is complete, you will have the following directory structure under your my_test directory.

 /WC13                                 Main California Current System 4D-Var applications
      /ARRAY_MODES                     Stabilized representer matrix array modes and clipping
      /Data                            Input data directory
      /Functionals                     Analytical expressions header files
      /I4DVAR                          Primal form of incremental, strong constraint 4D-Var, I4D-Var
      /Normalization                   4D-Var error covariance normalization coefficients
      /plotting                        4D-Var plotting scripts (Matlab and ROMS plotting package)
      /RBL4DVAR                        Dual form of 4D-Var, Restricted B-preconditioned Lanczos Analysis System, RBL4D-Var
      /RBL4DVAR_analysis_impact        RBL4D-Var analysis observation impact
      /RBL4DVAR_analysis_sensitivity   RBL4D-Var analysis observation sensitivity (adjoint of RBL4D-Var)
      /RBL4DVAR_forecast_impact        RBL4D-Var forecast observation impact
      /RBL4DVAR_forecast_sensitivity   RBL4D-Var forecast observation sensitivity (adjoint of RBL4D-Var)
 

Mostly all the directories have a Readme file with detailed instructions for configuring, compiling, running, and plotting the results.

References

The technical description of the algorithms and application used in this tutorial are described in Moore et al. (2011a, b, c).