Example #1
0
 def run(self,
         zlim,
         nmesh,
         Poles=[0, 2, 4],
         dK=None,
         kMin=0.0,
         use_fkp=True,
         P0fkp=6e3):
     zmin, zmax = zlim
     self.randoms['Selection'] = (self.randoms['Z'] >=
                                  zmin) & (self.randoms['Z'] < zmax)
     self.data['Selection'] = (self.data['Z'] >= zmin) & (self.data['Z'] <
                                                          zmax)
     #
     # combine the data and randoms into a single catalog
     # add the n(z) columns to the FKPCatalog
     #
     fkp = nb.FKPCatalog(self.data, self.randoms)
     fkp['randoms/NZ'] = self.nofz(self.randoms['Z'])
     fkp['data/NZ'] = self.nofz(self.data['Z'])
     mesh = fkp.to_mesh(Nmesh=nmesh, nbar='NZ')
     #
     #
     r = nb.ConvolvedFFTPower(mesh,
                              poles=Poles,
                              dk=dK,
                              kmin=kMin,
                              use_fkp_weights=use_fkp,
                              P0_FKP=P0fkp)
     output = {}
     output['attrs'] = r.attrs
     output['attrs']['zbin'] = zlim
     output['poles_data'] = r.poles
     output['nz'] = self.nofz
     return output
Example #2
0
# apply the Completeness weights to both data and randoms
if sys_tot:
    if rank ==0:print('including sys_tot')
    data['WEIGHT']      = data['WEIGHT_SYSTOT']    * data['WEIGHT_NOZ']    * data['WEIGHT_CP']
else:
    if rank ==0:print('excluding sys_tot')    
    data['WEIGHT']      = data['WEIGHT_NOZ']    * data['WEIGHT_CP'] # data['WEIGHT_SYSTOT'] 
    
randoms['WEIGHT']   = randoms['WEIGHT_SYSTOT'] * randoms['WEIGHT_NOZ'] * randoms['WEIGHT_CP']

# combine the data and randoms into a single catalog
fkp  = nb.FKPCatalog(data, randoms, nbar='NZ')
mesh = fkp.to_mesh(Nmesh=nmesh, fkp_weight='WEIGHT_FKP', comp_weight='WEIGHT', window='tsc')

# compute 
r = nb.ConvolvedFFTPower(mesh, poles=[0, 2, 4], dk=0.001, kmin=0.0)

# save
r.save(output_path)

# --- save in txt format
comm.Barrier()

if rank == 0:
    #
    # write P0-shotnoise P2 P4 to file
    with open(output_path.replace('.json', '.txt'), 'w') as output:

        # write the attributes
        for k in r.attrs:
            output.write(f'#{k:20s} : {r.attrs[k]}\n')
Example #3
0
def run_ConvolvedFFTPower(galaxy_path, 
                          random_path,
                          output_path,
                          use_systot=True, 
                          zmin=None, 
                          zmax=None, 
                          compmin=0.5,
                          cosmology=None,
                          boxsize=None,
                          nmesh=512,
                          dk=0.002,
                          poles=[0, 2, 4],
                          kmax=None,
                          comm=None,
                          return_pk=False):
    
    if isinstance(nmesh, list):
        if len(nmesh)==1:
            nmesh=nmesh[0] 
        
    if isinstance(boxsize, list):
        if len(boxsize)==1:
            boxsize=boxsize[0]

        
        
    if (cosmology is None) or (cosmology=='boss'):
        # the fiducial BOSS DR12 cosmology 
        # see Alam et al. https://arxiv.org/abs/1607.03155        
        cosmo = Cosmology(h=0.676).match(Omega0_m=0.31)
        
    elif cosmology=='ezmock':
        _h = 0.6777
        _Ob0 = 0.048206
        _Ocdm0 = 0.307115 - _Ob0
        cosmo = Cosmology(h=_h, Omega_b=_Ob0, Omega_cdm=_Ocdm0,
                                       m_ncdm=None, n_s=0.9611, T_cmb=2.7255).match(sigma8=0.8225)
       
    elif cosmology=='boss2':
        h = 0.676
        redshift = 1.48
        cos = Cosmology(h=0.676,Omega0_b=0.022/h**2,n_s=0.97).match(Omega0_m=0.31)
        cosmo = cos.match(sigma8=0.8)

    elif isinstance(cosmology, Cosmology):
        cosmo = cosmology
        
    else:
        raise NotImplementedError(f'{cosmology} is not implemented')
        

    data = FITSCat(galaxy_path)
    random = FITSCat(random_path)
    
    # select based on redshift and comp_BOSS
    kwargs = dict(compmin=compmin, zmin=zmin, zmax=zmax)
    data = data.trim_redshift_range(**kwargs)
    random = random.trim_redshift_range(**kwargs)
    
    # sky to xyz
    data.sky_to_xyz(cosmo)
    random.sky_to_xyz(cosmo)
    
    # prepare weights
    data.apply_weight(use_systot=use_systot)
    random.apply_weight(use_systot=True)  # always weight randoms by systot
    
    # combine the data and randoms into a single catalog
    mesh_kwargs = {'interlaced': True,'window': 'tsc'}
    fkp = nb.FKPCatalog(data, random, nbar='NZ', BoxSize=boxsize)
    mesh = fkp.to_mesh(Nmesh=nmesh, fkp_weight='WEIGHT_FKP', **mesh_kwargs)    
    
    r = nb.ConvolvedFFTPower(mesh, poles=poles, dk=dk, kmin=0.0, kmax=kmax)
    
    comm.Barrier()    
    if comm.rank == 0:        
        for parameter in ['sigma8',  'Omega0_m', 'h', 'n_s',
                          'Omega0_b', 'Omega0_lambda']:
            r.attrs[parameter] = getattr(cosmo, parameter)
    
    if comm.rank == 0:
        output_dir = os.path.dirname(os.path.abspath(output_path))
        if not os.path.exists(output_dir):
            os.makedirs(output_dir)  
            
    r.save(output_path) 
    
    if return_pk:
        if comm.rank == 0:
            return r
Example #4
0
# initialize the FKP source
# add the n(z) columns to the FKPCatalog
randoms['NZ'] = nofz(randoms[zcol_name])
data['NZ'] = nofz(data[zcol_name])
fkp = nb.FKPCatalog(data, randoms, nbar='NZ')

Pzero = 6000
fkp['data/FKPWeight'] = 1.0 / (1 + fkp['data/NZ'] * Pzero)
fkp['randoms/FKPWeight'] = 1.0 / (1 + fkp['randoms/NZ'] * Pzero)

mesh = fkp.to_mesh(Nmesh=ns.nmesh,
                   fkp_weight='FKPWeight',
                   comp_weight='Weight',
                   window='tsc')

r = nb.ConvolvedFFTPower(mesh, poles=ns.poles, dk=0.005, kmin=0.0)

comm.Barrier()
if rank == 0:
    #
    # write P0-shotnoise P2 P4 to file
    output = open(ns.output, 'w')

    for k in args:
        output.write(f'#{k:20s} : {args[k]}\n')

    # write the attributes
    for k in r.attrs:
        output.write(f'#{k:20s} : {r.attrs[k]}\n')

    output.write('# k_avg P0 P2 P4 Nmodes\n')