Author Topic: Calculate overlap between Bloch states  (Read 2053 times)

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Offline asanchez

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Calculate overlap between Bloch states
« on: November 22, 2017, 13:45 »
Hi all, I'd like to compute the overlap between Bloch states. For a given computed wavefunction \psi_k I have tried getting its overlap with itself as a first test as:
Code
wfc = nlread('file.hdf5', BlochState)[-1] 

wfc_array = wfc.toArray() 

wfc_s0 = wfc_array[:,:,:,0] 

psi_2 = numpy.conj(wfc_s0) * wfc_s0

delta_x = wfc.gridCoordinate(1,1,1).inUnitsOf(Bohr)[0]

integrated_x = numpy.trapz(psi_2, axis=0, dx=delta_x)

integrated_y = numpy.trapz(integrated_x, axis=0, dx=delta_x)

overlap = numpy.trapz(integrated_y, axis=0, dx=delta_x)
(Note: cell is simple cubic so dx=dy=dz) And that final 'overlap' would be the final result. Does this seem correct? The overlap doesn't integrate to 1 , or to a number of electrons as far as I can see. Although that's to be expected perhaps? Any feedback would be greatly appreciated. Thanks for your help, A
« Last Edit: November 22, 2017, 16:07 by asanchez »

Offline Anders Blom

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Re: Calculate overlap between Bloch states
« Reply #1 on: January 10, 2018, 20:44 »
Here is a better way:
Code: python
from NanoLanguage import *

bulk_configuration = BulkConfiguration(
    FaceCenteredCubic(4.08*Angstrom),
    [Gold],
    [[0, 0, 0]]*Angstrom,
    )
bulk_configuration.setCalculator(LCAOCalculator())

bloch_state_5 = BlochState(bulk_configuration, quantum_number=5, k_point=[0.0, 0.5, 0.5])
bloch_state_6 = BlochState(bulk_configuration, quantum_number=6, k_point=[0.0, 0.5, 0.5])

[a,b,c] = bloch_state_6.volumeElement()
dV = numpy.dot(numpy.cross(a,b),c)

# These should be 0.0
i56 = numpy.abs(numpy.sum(e5.conjugate()*e6))/Ang**3 * dV
i65 = numpy.abs(numpy.sum(e6.conjugate()*e5))/Ang**3 * dV
print i56, i65

# These should be 1.0
i55 = numpy.abs(numpy.sum(e5.conjugate()*e5))/Bohr**3 * dV
i66 = numpy.abs(numpy.sum(e6.conjugate()*e6))/Bohr**3 * dV
print i55, i66