pyPDAF.PDAF.localomi_assimilate_en3dvar_lestkf

pyPDAF.PDAF.localomi_assimilate_en3dvar_lestkf()

3DEnVar for a single DA step where the ensemble anomaly is generated by LESTKF using diagnoal observation error covariance matrix.

The background error covariance matrix is estimated by ensemble. The 3DEnVar only calculates the analysis of the ensemble mean. An LESTKF is used to generate ensemble perturbations. This function should be called at each model time step.

The function is a combination of pyPDAF.PDAF.localomi_put_state_en3dvar_lestkf() and pyPDAF.PDAF.get_state().

The user-supplied function are executed in the following sequence:
  1. py__collect_state_pdaf

  2. py__prepoststep_state_pdaf

  3. py__init_dim_obs_pdaf

  4. py__obs_op_pdaf

  5. Starting the iterative optimisation:
    1. py__cvt_ens_pdaf

    2. py__obs_op_lin_pdaf

    3. py__obs_op_adj_pdaf

    4. py__cvt_adj_ens_pdaf

    5. core DA algorithm

  6. py__cvt_ens_pdaf

  7. Perform LESTKF:
    1. py__init_n_domains_p_pdaf

    2. py__init_dim_obs_pdaf

    3. py__obs_op_pdaf (for each ensemble member)

    4. loop over each local domain:
      1. py__init_dim_l_pdaf

      2. py__init_dim_obs_l_pdaf

      3. core DA algorithm

  8. py__prepoststep_state_pdaf

  9. py__distribute_state_pdaf

  10. py__next_observation_pdaf

Parameters:
  • py__collect_state_pdaf (Callable[dim_p:int, state_p : ndarray[tuple[dim_p], np.float64]]) –

    Routine to collect a state vector

    Callback Parameters
    • dim_pint
      • pe-local state dimension

    • state_pndarray[tuple[dim_p], np.float64]
      • local state vector

    Callback Returns
    • state_pndarray[tuple[dim_p], np.float64]
      • local state vector

  • py__distribute_state_pdaf (Callable[dim_p:int, state_p : ndarray[tuple[dim_p], np.float64]]) –

    Routine to distribute a state vector

    Callback Parameters
    • dim_pint
      • pe-local state dimension

    • state_pndarray[tuple[dim_p], np.float64]
      • local state vector

    Callback Returns
    • state_pndarray[tuple[dim_p], np.float64]
      • local state vector

  • py__init_dim_obs_pdaf (Callable[step:int, dim_obs_p:int]) –

    Initialize dimension of full observation vector

    Callback Parameters
    • stepint
      • current time step

    • dim_obs_pint
      • dimension of observation vector

    Callback Returns
    • dim_obs_pint
      • dimension of observation vector

  • py__obs_op_f_pdaf (Callable[step:int, dim_p:int, dim_obs_p:int, state_p : ndarray[tuple[dim_p], np.float64], m_state_p : ndarray[tuple[dim_obs_p], np.float64]]) –

    Full observation operator

    Callback Parameters
    • stepint
      • Current time step

    • dim_pint
      • Size of state vector (local part in case of parallel decomposed state)

    • dim_obs_pint
      • Size of observation vector

    • state_pndarray[tuple[dim_p], np.float64]
      • Model state vector

    • m_state_pndarray[tuple[dim_obs_p], np.float64]
      • Observed state vector (i.e. the result after applying the observation operator to state_p)

    Callback Returns
    • m_state_pndarray[tuple[dim_obs_p], np.float64]
      • Observed state vector (i.e. the result after applying the observation operator to state_p)

  • py__cvt_ens_pdaf (Callable[iter:int, dim_p:int, dim_ens:int, dim_cvec_ens:int, ens_p : ndarray[tuple[dim_p, dim_ens], np.float64], v_p : ndarray[tuple[dim_cvec_ens], np.float64], Vv_p : ndarray[tuple[dim_p], np.float64]]) –

    Apply control vector transform matrix to control vector

    Callback Parameters
    • iterint
      • Iteration of optimization

    • dim_pint
      • PE-local dimension of state

    • dim_ensint
      • Ensemble size

    • dim_cvec_ensint
      • Dimension of control vector

    • ens_pndarray[tuple[dim_p, dim_ens], np.float64]
      • PE-local ensemble

    • v_pndarray[tuple[dim_cvec_ens], np.float64]
      • PE-local control vector

    • Vv_pndarray[tuple[dim_p], np.float64]
      • PE-local state increment

    Callback Returns
    • Vv_pndarray[tuple[dim_p], np.float64]
      • PE-local state increment

  • py__cvt_adj_ens_pdaf (Callable[iter:int, dim_p:int, dim_ens:int, dim_cv_ens_p:int, ens_p : ndarray[tuple[dim_p, dim_ens], np.float64], Vcv_p : ndarray[tuple[dim_p], np.float64], cv_p : ndarray[tuple[dim_cv_ens_p], np.float64]]) –

    Apply adjoint control vector transform matrix

    Callback Parameters
    • iterint
      • Iteration of optimization

    • dim_pint
      • PE-local observation dimension

    • dim_ensint
      • Ensemble size

    • dim_cv_ens_pint
      • PE-local dimension of control vector

    • ens_pndarray[tuple[dim_p, dim_ens], np.float64]
      • PE-local ensemble

    • Vcv_pndarray[tuple[dim_p], np.float64]
      • PE-local input vector

    • cv_pndarray[tuple[dim_cv_ens_p], np.float64]
      • PE-local result vector

    Callback Returns
    • cv_pndarray[tuple[dim_cv_ens_p], np.float64]
      • PE-local result vector

  • py__obs_op_lin_pdaf (Callable[step:int, dim_p:int, dim_obs_p:int, state_p : ndarray[tuple[dim_p], np.float64], m_state_p : ndarray[tuple[dim_obs_p], np.float64]]) –

    Linearized observation operator

    Callback Parameters
    • stepint
      • Current time step

    • dim_pint
      • PE-local dimension of state

    • dim_obs_pint
      • Dimension of observed state

    • state_pndarray[tuple[dim_p], np.float64]
      • PE-local model state

    • m_state_pndarray[tuple[dim_obs_p], np.float64]
      • PE-local observed state

    Callback Returns
    • m_state_pndarray[tuple[dim_obs_p], np.float64]
      • PE-local observed state

  • py__obs_op_adj_pdaf (Callable[step:int, dim_p:int, dim_obs_p:int, state_p : ndarray[tuple[dim_p], np.float64], m_state_p : ndarray[tuple[dim_obs_p], np.float64]]) –

    Adjoint observation operator

    Callback Parameters
    • stepint
      • Current time step

    • dim_pint
      • PE-local dimension of state

    • dim_obs_pint
      • Dimension of observed state

    • state_pndarray[tuple[dim_p], np.float64]
      • PE-local model state

    • m_state_pndarray[tuple[dim_obs_p], np.float64]
      • PE-local observed state

    Callback Returns
    • state_pndarray[tuple[dim_p], np.float64]
      • PE-local model state

  • py__init_n_domains_p_pdaf (Callable[step:int, n_domains_p:int]) –

    Provide number of local analysis domains

    Callback Parameters
    • stepint
      • current time step

    • n_domains_pint
      • pe-local number of analysis domains

    Callback Returns
    • n_domains_pint
      • pe-local number of analysis domains

  • py__init_dim_l_pdaf (Callable[step:int, domain_p:int, dim_l:int]) –

    Init state dimension for local ana. domain

    Callback Parameters
    • stepint
      • current time step

    • domain_pint
      • current local analysis domain

    • dim_lint
      • local state dimension

    Callback Returns
    • dim_lint
      • local state dimension

  • py__init_dim_obs_l_pdaf (Callable[domain_p:int, step:int, dim_obs_f:int, dim_obs_l:int]) –

    Initialize local dimimension of obs. vector

    Callback Parameters
    • domain_pint
      • index of current local analysis domain

    • stepint
      • current time step

    • dim_obs_fint
      • full dimension of observation vector

    • dim_obs_lint
      • local dimension of observation vector

    Callback Returns
    • dim_obs_lint
      • local dimension of observation vector

  • py__prepoststep_pdaf (Callable[step:int, dim_p:int, dim_ens:int, dim_ens_p:int, dim_obs_p:int, state_p : ndarray[tuple[dim_p], np.float64], uinv : ndarray[tuple[dim_ens-1, dim_ens-1], np.float64], ens_p : ndarray[tuple[dim_p, dim_ens], np.float64], flag:int]) –

    User supplied pre/poststep routine

    Callback Parameters
    • stepint
      • current time step (negative for call after forecast)

    • dim_pint
      • pe-local state dimension

    • dim_ensint
      • size of state ensemble

    • dim_ens_pint
      • pe-local size of ensemble

    • dim_obs_pint
      • pe-local dimension of observation vector

    • state_pndarray[tuple[dim_p], np.float64]
      • pe-local forecast/analysis state (the array ‘state_p’ is not generally not initialized in the case of seik. it can be used freely here.)

    • uinvndarray[tuple[dim_ens-1, dim_ens-1], np.float64]
      • inverse of matrix u

    • ens_pndarray[tuple[dim_p, dim_ens], np.float64]
      • pe-local state ensemble

    • flagint
      • pdaf status flag

    Callback Returns
    • state_pndarray[tuple[dim_p], np.float64]
      • pe-local forecast/analysis state (the array ‘state_p’ is not generally not initialized in the case of seik. it can be used freely here.)

    • uinvndarray[tuple[dim_ens-1, dim_ens-1], np.float64]
      • inverse of matrix u

    • ens_pndarray[tuple[dim_p, dim_ens], np.float64]
      • pe-local state ensemble

  • py__next_observation_pdaf (Callable[stepnow:int, nsteps:int, doexit:int, time:float]) –

    Provide time step, time and dimension of next observation

    Callback Parameters
    • stepnowint
      • number of the current time step

    • nstepsint
      • number of time steps until next obs

    • doexitint
      • whether to exit forecasting (1 for exit)

    • timefloat
      • current model (physical) time

    Callback Returns
    • nstepsint
      • number of time steps until next obs

    • doexitint
      • whether to exit forecasting (1 for exit)

    • timefloat
      • current model (physical) time

  • outflag (int) – Status flag

Returns:

outflag – Status flag

Return type:

int