mirror of
https://github.com/triqs/dft_tools
synced 2024-12-28 07:13:41 +01:00
149 lines
5.4 KiB
Python
149 lines
5.4 KiB
Python
from pytriqs.applications.dft.sumk_dft import *
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from pytriqs.applications.dft.converters.wien2k_converter import *
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from pytriqs.applications.impurity_solvers.hubbard_I.hubbard_solver import Solver
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import os
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dft_filename = os.getcwd().rpartition('/')[2]
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beta = 40
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U_int = 6.00
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J_hund = 0.70
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Loops = 5 # Number of DMFT sc-loops
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mixing = 0.7 # Mixing factor
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DC_type = 0 # 0...FLL, 1...Held, 2... AMF, 3...Lichtenstein
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chemical_potential_init=0.0 # initial chemical potential
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# Convert DMFT input:
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Converter = Wien2kConverter(filename=dft_filename)
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Converter.convert_dft_input()
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mpi.barrier()
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#check if there are previous runs:
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previous_runs = 0
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previous_present = False
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if mpi.is_master_node():
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f = HDFArchive(dft_filename+'.h5','a')
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if 'dmft_output' in f:
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ar = f['dmft_output']
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if 'iterations' in ar:
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previous_present = True
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previous_runs = ar['iterations']
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else:
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f.create_group('dmft_output')
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del f
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previous_runs = mpi.bcast(previous_runs)
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previous_present = mpi.bcast(previous_present)
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# Init the SumK class
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SK=SumkDFT(hdf_file=dft_filename+'.h5',use_dft_blocks=False)
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Norb = SK.corr_shells[0]['dim']
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l = SK.corr_shells[0]['l']
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# Init the Hubbard-I solver:
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S = Solver(beta = beta, l = l)
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chemical_potential=chemical_potential_init
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# load previous data: old self-energy, chemical potential, DC correction
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if previous_present:
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if mpi.is_master_node():
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ar = HDFArchive(dft_filename+'.h5','a')
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S.Sigma << ar['dmft_output']['Sigma']
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del ar
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SK.chemical_potential,SK.dc_imp,SK.dc_energ = SK.load(['chemical_potential','dc_imp','dc_energ'])
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S.Sigma << mpi.bcast(S.Sigma)
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SK.chemical_potential = mpi.bcast(SK.chemical_potential)
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SK.dc_imp = mpi.bcast(SK.dc_imp)
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SK.dc_energ = mpi.bcast(SK.dc_energ)
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# DMFT loop:
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for iteration_number in range(1,Loops+1):
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itn = iteration_number + previous_runs
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# put Sigma into the SumK class:
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SK.set_Sigma([ S.Sigma ])
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# Compute the SumK, possibly fixing mu by dichotomy
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chemical_potential = SK.calc_mu( precision = 0.000001 )
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# Density:
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S.G <<= SK.extract_G_loc()[0]
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mpi.report("Total charge of Gloc : %.6f"%S.G.total_density())
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# calculated DC at the first run to have reasonable initial non-interacting atomic level positions
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if ((iteration_number==1)and(previous_present==False)):
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dc_value_init=U_int/2.0
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dm=S.G.density()
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SK.calc_dc( dm, U_interact = U_int, J_hund = J_hund, orb = 0, use_dc_formula = DC_type, use_dc_value=dc_value_init)
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# calculate non-interacting atomic level positions:
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eal = SK.eff_atomic_levels()[0]
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S.set_atomic_levels( eal = eal )
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# solve it:
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S.solve(U_int = U_int, J_hund = J_hund, verbosity = 1)
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# Now mix Sigma and G with factor Mix, if wanted:
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if (iteration_number>1 or previous_present):
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if (mpi.is_master_node() and (mixing<1.0)):
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ar = HDFArchive(dft_filename+'.h5','a')
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mpi.report("Mixing Sigma and G with factor %s"%mixing)
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S.Sigma << mixing * S.Sigma + (1.0-mixing) * ar['dmft_output']['Sigma']
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S.G << mixing * S.G + (1.0-mixing) * ar['dmft_output']['G']
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del ar
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S.G << mpi.bcast(S.G)
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S.Sigma << mpi.bcast(S.Sigma)
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# after the Solver has finished, set new double counting:
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dm = S.G.density()
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SK.calc_dc( dm, U_interact = U_int, J_hund = J_hund, orb = 0, use_dc_formula = DC_type )
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# correlation energy calculations:
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SK.correnerg = 0.5 * (S.G * S.Sigma).total_density()
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mpi.report("Corr. energy = %s"%SK.correnerg)
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# store the impurity self-energy, GF as well as correlation energy in h5
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if mpi.is_master_node():
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ar = HDFArchive(dft_filename+'.h5','a')
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ar['dmft_output']['iterations'] = iteration_number + previous_runs
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ar['dmft_output']['G'] = S.G
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ar['dmft_output']['Sigma'] = S.Sigma
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del ar
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#Save essential SumkDFT data:
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SK.save(['chemical_potential','dc_imp','dc_energ','correnerg'])
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if (mpi.is_master_node()):
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print 'DC after solver: ',SK.dc_imp[0]
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# print out occupancy matrix of Ce 4f
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mpi.report("Orbital densities of impurity Green function:")
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for s in dm:
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mpi.report("Block %s: "%s)
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for ii in range(len(dm[s])):
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str = ''
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for jj in range(len(dm[s])):
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if (dm[s][ii,jj].real>0):
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str += " %.4f"%(dm[s][ii,jj].real)
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else:
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str += " %.4f"%(dm[s][ii,jj].real)
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mpi.report(str)
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mpi.report("Total charge of impurity problem : %.6f"%S.G.total_density())
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# find exact chemical potential
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SK.chemical_potential = SK.calc_mu( precision = 0.000001 )
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# calculate and save occupancy matrix in the Bloch basis for Wien2k charge denity recalculation
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dN,d = SK.calc_density_correction(filename = dft_filename+'.qdmft')
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mpi.report("Trace of Density Matrix: %s"%d)
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# store correlation energy contribution to be read by Wien2ki and then included to DFT+DMFT total energy
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if (mpi.is_master_node()):
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SK.correnerg -= SK.dc_energ[0]
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f=open(dft_filename+'.qdmft','a')
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f.write("%.16f\n"%SK.correnerg)
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f.close()
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