Ejemplo n.º 1
0
def plotProfile(datfilebase, c, label, labelZ = True):

    mass, concen, redshift =  readtxtfile.readtxtfile('%s.dat' % datfilebase)[0]

    cat = ldac.openObjectFile('%s.cat' % datfilebase)
    
    zlens = cat.hdu.header['ZLENS']
    rscale = nfwutils.rscaleConstM(mass/nfwutils.global_cosmology.h, concen, zlens, 200)
    r_mpc = np.ascontiguousarray(cat['r_mpc'], dtype='<d')

    clean = r_mpc > 0.05

    rho_c_over_sigma_c = 1.5 * nfwutils.global_cosmology.angulardist(zlens) * nfwutils.global_cosmology.beta([1e6], zlens)[0] * nfwutils.global_cosmology.hubble2(zlens) / nfwutils.global_cosmology.v_c**2

    gamma = nfwmodeltools.NFWShear(r_mpc[clean], concen, rscale, rho_c_over_sigma_c)
    kappa = nfwmodeltools.NFWKappa(r_mpc[clean], concen, rscale,rho_c_over_sigma_c)
    gpred = cat['beta_s'][clean]*gamma / (1 - (cat['beta_s2'][clean]*kappa/cat['beta_s'][clean]))



    signalpred = gpred / (cat['beta_s'][clean]*nfwutils.global_cosmology.beta([1e6], zlens)*nfwutils.global_cosmology.angulardist(zlens))

#    print signalpred
            
    if labelZ:
        flabel='%s z=%1.2f' % (label, zlens)
    else:
        flabel =label

    pylab.errorbar(cat['r_mpc']*nfwutils.global_cosmology.h, cat['ghat'], cat['ghatdistrosigma']/(np.sqrt(cat['ndat'])), 
    linestyle='None', marker='o', color=c, label=flabel)
    pylab.plot(cat['r_mpc'][clean]*nfwutils.global_cosmology.h, signalpred, marker='None', linestyle=':', color=c, linewidth=2)
Ejemplo n.º 2
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def deltaShear(zspec, zphot, zcluster = 0.2):

    ginfpredict = nfwmodeltools.NFWShear(ones(1), 4.0, 1., zcluster)

    beta_s_spec = nfwutils.beta_s(zspec, zcluster)
    beta_s_phot = nfwutils.beta_s(zphot, zcluster)

    return (beta_s_spec - beta_s_phot)*ginfpredict
Ejemplo n.º 3
0
    def reducedShear(scaledm200):
        m200 = 1e14 * scaledm200
        c = duffy(m200, zcluster)
        rs = nfwutils.rscaleConstM(m200, c, zcluster, 200)

        gamma = tools.NFWShear(r_mpc, c, rs, rho_c_over_sigma_c)
        kappa = tools.NFWKappa(r_mpc, c, rs, rho_c_over_sigma_c)

        g = beta_s * gamma / (1 - beta_cor * kappa)

        return g
Ejemplo n.º 4
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    def NFWModel(r, r_scale):

        nfw_shear = beta_s * tools.NFWShear(r, concentration, r_scale,
                                            zcluster, D_lens)
        nfw_kappa = beta_s * tools.NFWKappa(r, concentration, r_scale,
                                            zcluster, D_lens)

        g = (1 +
             (beta_s2 / beta_s**2 - 1) * nfw_kappa) * nfw_shear / (1 -
                                                                   nfw_kappa)

        return g
Ejemplo n.º 5
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def create_nfwmodel_shapedata(concentration, scale_radius, zcluster, ngals, zs,
                              rs):

    realBetas = nfwutils.beta_s(zs, zcluster)

    gamma = realBetas * tools.NFWShear(rs, concentration, scale_radius,
                                       zcluster)
    kappa = realBetas * tools.NFWKappa(rs, concentration, scale_radius,
                                       zcluster)

    g = gamma / (1 - kappa)

    return g, gamma, kappa
Ejemplo n.º 6
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    def NFWModel(coords, r_scale):

        r = coords[:, 0]
        beta_s = coords[:, 1]

        nfw_shear = beta_s * tools.NFWShear(r, concentration, r_scale,
                                            zcluster)
        nfw_kappa = beta_s * tools.NFWKappa(r, concentration, r_scale,
                                            zcluster)

        g = nfw_shear / (1 - nfw_kappa)

        return g
Ejemplo n.º 7
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def createPerfectProfile(m200, c, zcluster, r_mpc, beta_s):

    rho_c_over_sigma_c = 1.5 * nfwutils.global_cosmology.angulardist(
        zcluster) * nfwutils.global_cosmology.beta(
            [1e6], zcluster)[0] * nfwutils.global_cosmology.hubble2(
                zcluster) / nfwutils.global_cosmology.v_c**2

    r_scale = nfwutils.rscaleConstM(m200, c, zcluster, 200)

    nfw_shear_inf = tools.NFWShear(r_mpc, c, r_scale, rho_c_over_sigma_c)
    nfw_kappa_inf = tools.NFWKappa(r_mpc, c, r_scale, rho_c_over_sigma_c)

    g = beta_s * nfw_shear_inf / (1 - (beta_s * nfw_kappa_inf))

    return g
Ejemplo n.º 8
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def scaleShear(controller, rs, concen = 4., cosmology = nfwutils.std_cosmology):
    #assumes BentVoigt3Shapedistro 

    inputcat = controller.inputcat
    z_b = inputcat['z_b']
    zcluster = controller.zcluster

    cluster_exclusion = np.logical_and(zcluster-0.05 < z_b, z_b < zcluster + 0.1)
    inputcat = inputcat.filter(np.logical_not(cluster_exclusion))
    r_mpc = inputcat['r_mpc']
    ghats = inputcat['ghats']
    size = inputcat['size']
    z_b = inputcat['z_b']


    comovingdist = nfwutils.ComovingDistMemoization(cosmology)

    pivot, m_slope, m_b, m_cov, c = controller.modelbuilder.psfDependence('interp', controller.psfsize)

    betainf = nfwutils.beta([1e6], zcluster, comovingdist = comovingdist)

    #matching definitions with Taylor et al 2011 -> need to get rid of beta_inf in shear amp
    shear = nfwmodeltools.NFWShear(r_mpc, concen, rs, zcluster, comovingdist = comovingdist) / betainf
    
    kappa = nfwmodeltools.NFWKappa(r_mpc, concen, rs, zcluster,  comovingdist = comovingdist)
    


    m = np.zeros_like(size)
    m[size >= pivot] = m_b
    m[size < pivot] = m_slope*(size[size < pivot] - pivot) + m_b

    beta_s = nfwutils.beta_s(z_b, zcluster, comovingdist = comovingdist)


    
    estimators = (ghats - c)*(1-beta_s*kappa)/((1+m)*shear)



    comoving_cluster = comovingdist(zcluster)
    scaledZ = np.array([comovingdist(zi)/comoving_cluster for zi in z_b])

    estimators[scaledZ < 1] = ((ghats - c)/(1+m))[scaledZ < 1]

    

    return scaledZ, estimators
Ejemplo n.º 9
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def residual(binbase):

    mass, concen, redshift =  readtxtfile.readtxtfile('%s.dat' % binbase)[0]

    cat = ldac.openObjectFile('%s.cat' % binbase)

    zlens = cat.hdu.header['ZLENS']
    
    rscale = nfwutils.rscaleConstM(mass/nfwutils.global_cosmology.h, concen, zlens, 200)

    

    gamma = nfwmodeltools.NFWShear(cat['r_mpc'], concen, rscale, zlens)
    kappa = nfwmodeltools.NFWKappa(cat['r_mpc'], concen, rscale, zlens)

    gpred = cat['beta_s']*gamma / (1 - (cat['beta_s2']*kappa/cat['beta_s']))


    fig = pylab.figure()
#    pylab.errorbar(cat['r_mpc']*nfwutils.global_cosmology.h, cat['ghat']/gpred, cat['ghatdistrosigma']/(np.sqrt(cat['ndat'])*gpred), fmt='bo')
#    pylab.errorbar(cat['r_mpc']*nfwutils.global_cosmology.h, cat['ghat']/gpred, cat['ghatdistrosigma']/(gpred), fmt='bo')
    pylab.errorbar(cat['r_mpc'], cat['ghat'], cat['ghatdistrosigma']/np.sqrt(cat['ndat']), fmt='bo')

#
    ax = pylab.gca()
    ax.set_xscale('log')
    pylab.axhline(0.0, c='k', linewidth=2)
    pylab.xlabel('Radius [Mpc/h]', fontsize=16)
    pylab.ylabel('<g_meas/g_pred> - 1)', fontsize=16)
#    pylab.ylabel('<g_meas - g_pred>', fontsize=16)

    pylab.axis([0.05, 10, -.55, 0.35])


#    ax2 = ax.twinx()
#    pylab.plot(cat['r_mpc'], gpred, 'k--')
#    ax2.errorbar(cat['r_mpc'], cat['ghat'], cat['ghatdistrosigma']/np.sqrt(cat['ndat']), fmt='rs')
#    ax2.set_ylabel('<g_meas - g_pred>', color='r', fontsize=16)
#    ax2.set_ylim(-0.2, 0.1)
#
#    pylab.title('Redshift=%1.2f Mass=%1.2fx10^14 Concen=%1.2f' % (zlens, mass/1e14, concen))
#
    pylab.tight_layout()

    pylab.savefig('%s.png' % binbase)

    return fig
Ejemplo n.º 10
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def profileFromMass(mcrelation, mdelta, delta, r_mpc, simcat):

    zcluster = simcat.hdu.header['ZLENS']

    concentration = mcrelation(mdelta, zcluster, delta)

    r_scale = nfwutils.rscaleConstM(mdelta, concentration, zcluster, delta)

    nfw_shear_inf = tools.NFWShear(r_mpc, concentration, r_scale, zcluster)
    nfw_kappa_inf = tools.NFWKappa(r_mpc, concentration, r_scale, zcluster)

    beta_s = np.mean(simcat['beta_s'])
    beta_s2 = np.mean(simcat['beta_s']**2)

    g = beta_s * nfw_shear_inf / (1 - ((beta_s2 / beta_s) * nfw_kappa_inf))

    return g
Ejemplo n.º 11
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def createNLikelihood(mcluster,
                      zcluster,
                      z0,
                      sigz0,
                      rmin=0.75,
                      rmax=3.0,
                      c=4.0,
                      massrad=1.5,
                      gsig=0.25,
                      npoints=200000):

    rs = nfwutils.RsMassInsideR(mcluster, c, zcluster, massrad)

    linmin = rmin / np.sqrt(2)
    linmax = rmax / np.sqrt(2)
    r_points = np.sqrt(
        np.random.uniform(linmin, linmax, size=npoints)**2 +
        np.random.uniform(linmin, linmax, size=npoints)**2)

    z_points = z0 + sigz0 * np.random.standard_normal(npoints)

    gamma_inf = nfwmodeltools.NFWShear(r_points, c, rs, zcluster)
    kappa_inf = nfwmodeltools.NFWKappa(r_points, c, rs, zcluster)
    beta_s = nfwutils.beta_s(z_points, zcluster)

    g0 = beta_s * gamma_inf / (1 - beta_s * kappa_inf)

    ghat_points = g0 + gsig * np.random.standard_normal(npoints)

    dzt = 0.01
    pdzrange = np.arange(z0 - 5 * sigz0, z0 + 5 * sigz0, dzt)
    pdz = stats.Gaussian(pdzrange, z0, sigz0) * dzt

    betas = np.array(nfwutils.beta_s(pdzrange, zcluster))

    def nloglike(Mguess):
        #units of 1e14
        Mguess = Mguess * 1e14

        rs_guess = nfwutils.RsMassInsideR(Mguess, c, zcluster, massrad)

        return -pdzperturbtools.nloglike_loop(r_points, z_points, ghat_points,
                                              betas, pdz, gsig, rs_guess, c,
                                              zcluster)

    return nloglike
Ejemplo n.º 12
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    def __call__(self, x, m200, c200):

        if m200 == 0.:
            return np.zeros_like(x)

        isNegative=m200 < 0
        if isNegative:
            m200 = np.abs(m200)

        
            
        r_scale = nfwutils.rscaleConstM(m200*self.massScale, c200, self.zcluster, self.overdensity)
    
        
        nfw_shear_inf = tools.NFWShear(x, c200, r_scale, self.rho_c_over_sigma_c)
        nfw_kappa_inf = tools.NFWKappa(x, c200, r_scale, self.rho_c_over_sigma_c)

        if isNegative:
            nfw_shear_inf = -nfw_shear_inf
        
        g = self.beta_s*nfw_shear_inf / (1 - ((self.beta_s2/self.beta_s)*nfw_kappa_inf) )

        return g
Ejemplo n.º 13
0
def alteredCosmology(cat, om):

    cosmology = nfwutils.Cosmology(om, 1. - om)
    comovingdist = nfwutils.ComovingDistMemoization(cosmology)

    betas = nfwutils.beta_s(cat['z'], 0.3, comovingdist)
    dl = nfwutils.angulardist(0.3, comovingdist=comovingdist)

    r_mpc = cat['r_pix'] * 0.2 * (1. / 3600.) * (np.pi / 180.) * dl

    shears = tools.NFWShear(r_mpc,
                            4.0,
                            0.5,
                            0.3,
                            dl,
                            Omega_m=om,
                            Omega_l=1 - om)
    kappa = tools.NFWKappa(r_mpc,
                           4.0,
                           0.5,
                           0.3,
                           dl,
                           Omega_m=om,
                           Omega_l=1 - om)
    g = betas * shears / (1 - betas * kappa)
    scale_radii = beta_method(cat['r_pix'],
                              r_mpc,
                              g,
                              np.mean(betas),
                              np.mean(betas**2),
                              4,
                              0.3,
                              Omega_m=om,
                              Omega_l=1 - om)
    mass = nfwutils.massInsideR(scale_radii, 4.0, 0.3, 1, cosmology)

    return mass
Ejemplo n.º 14
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def multibinresidual(binbase, fig = None):

    matplotlib.rcParams['figure.figsize'] = [16,16]

    if fig is None:
        fig = pylab.figure()
    curplot = 1
    for curm in range(4):
        for curc in range(4):
            pylab.subplot(4,4,curplot)
            colori = 0
#            for curz in range(3):
            for curz in [0]:
                
                mass, concen, redshift =  readtxtfile.readtxtfile('%s_%d_%d_%d.dat' % (binbase, curz, curm, curc))[0]

                cat = ldac.openObjectFile('%s_%d_%d_%d.cat' % (binbase, curz, curm, curc))

                zlens = cat.hdu.header['ZLENS']

                rscale = nfwutils.rscaleConstM(mass/nfwutils.global_cosmology.h, concen, zlens, 200)



                gamma = nfwmodeltools.NFWShear(cat['r_mpc'], concen, rscale, zlens)
                kappa = nfwmodeltools.NFWKappa(cat['r_mpc'], concen, rscale, zlens)

                gpred = cat['beta_s']*gamma / (1 - (cat['beta_s2']*kappa/cat['beta_s']))




                pylab.errorbar(cat['r_mpc']*0.72, cat['ghat'], cat['ghatdistrosigma']/(np.sqrt(cat['ndat'])), 
                               linestyle='None', marker='o', color=c[colori], label='BCC z=%1.1f' % redshift)
                pylab.plot(cat['r_mpc']*0.72, gpred, 'k-', linewidth=2)

                ax = pylab.gca()
                ax.set_xscale('log')
                pylab.axhline(0.0, c='k', linewidth=2)
                pylab.legend(loc='lower center', fontsize=10)



                pylab.axis([0.05, 10, -.55, 0.35])
#                pylab.axis([0.05, 10, -.10, 0.05])



                colori+= 1
            pylab.title('M=%1.1fx10^14 C=%1.1f' % ( mass/1e14, concen))
            curplot += 1

            
    for i in range(4):
        pylab.subplot(4,4,13+i)
        pylab.xlabel('Radius [Mpc/h]')
        pylab.subplot(4,4,4*i+1)
#        pylab.ylabel('<g_m-g_p>/g_p(<M>,<c>)')
#        pylab.ylabel('<g_m/g_p - 1>')



    pylab.tight_layout()

#    pylab.savefig('%s_multibin_fracresid.png' % binbase)
    pylab.savefig('%s_multibin_resid.png' % binbase)

    return fig
Ejemplo n.º 15
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    def __init__(self, filebase):

        print 'Loading %s' % filebase

        #the file in this case is a configuration file with information about mass, concentration, redshift, etc

        super(AnalyticSim, self).__init__()

        with open(filebase) as input:
            config = yaml.load(input)

        max_dist = config['max_dist']
        gridlength = config['gridlength']
        zcluster = config['zcluster']
        m200 = config['m200']
        c200 = config['c200']
        rscale = nfwutils.rscaleConstM(m200, c200, zcluster, 200.)
    

        xs = np.linspace(-max_dist, max_dist, gridlength)
        ys = np.linspace(-max_dist, max_dist, gridlength)

        x_mpc, y_mpc = [grid.flatten() for grid in np.meshgrid(xs, ys, indexing='ij')]
        r_mpc = np.sqrt(x_mpc**2 + y_mpc**2)

        
        Dl = nfwutils.global_cosmology.angulardist(zcluster)
        x_arcmin = (x_mpc/Dl)*(180./np.pi)*60.
        y_arcmin = (y_mpc/Dl)*(180./np.pi)*60.

        rho_c_over_sigma_c = 1.5 * nfwutils.global_cosmology.angulardist(zcluster) * nfwutils.global_cosmology.beta([1e6], zcluster)[0] * nfwutils.global_cosmology.hubble2(zcluster) / nfwutils.global_cosmology.v_c**2


        gamma_t_inf = nfwmodeltools.NFWShear(r_mpc,
                                             c200,
                                             rscale,
                                             rho_c_over_sigma_c)
        kappa_inf = nfwmodeltools.NFWKappa(r_mpc,
                                           c200,
                                           rscale,
                                           rho_c_over_sigma_c)


        posangle = np.arctan2(y_mpc, x_mpc)

        cos2phi = np.cos(2*posangle)
        sin2phi = np.sin(2*posangle)
    
        gamma1_inf = -gamma_t_inf*cos2phi
        gamma2_inf = -gamma_t_inf*sin2phi
            
        self.zcluster = zcluster

        self.x_mpc = x_mpc
        self.y_mpc = y_mpc
        self.x_arcmin = x_arcmin
        self.y_arcmin = y_arcmin

        self.gamma1_inf = gamma1_inf
        self.gamma2_inf = gamma2_inf
        self.kappa_inf = kappa_inf
Ejemplo n.º 16
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def BK11multibinresidual(dirbase):

    setBK11()

    matplotlib.rcParams['figure.figsize'] = [16,16]


    fig = pylab.figure()
    curplot = 1
    for curm in range(4):
        for curc in range(4):
            pylab.subplot(4,4,curplot)
            colori = 1

            for snap in [124,141]:
        
                try:

                    mass, concen, redshift =  readtxtfile.readtxtfile('%s_%d/bk11stack_%d_%d.dat' % (dirbase, snap, 
                                                                                                     curm, curc))[0]

                    cat = ldac.openObjectFile('%s_%d/bk11stack_%d_%d.cat' % (dirbase, snap, 
                                                                             curm, curc))


                    zlens = cat.hdu.header['ZLENS']

                    rscale = nfwutils.rscaleConstM(mass/nfwutils.global_cosmology.h, concen, zlens, 200)



                    gamma = nfwmodeltools.NFWShear(cat['r_mpc'], concen, rscale, zlens)
                    kappa = nfwmodeltools.NFWKappa(cat['r_mpc'], concen, rscale, zlens)
                    
                    gpred = cat['beta_s']*gamma / (1 - (cat['beta_s2']*kappa/cat['beta_s']))

                    pylab.errorbar(cat['r_mpc']*nfwutils.global_cosmology.h, cat['ghat'], cat['ghatdistrosigma']/(np.sqrt(cat['ndat'])), 
                                   linestyle='None', marker='o', color=c[colori], label='M=%1.1fx10^14' % (mass/1e14))
                    
                    pylab.plot(cat['r_mpc']*nfwutils.global_cosmology.h, gpred, 'k-', linewidth=2)
                    
                    ax = pylab.gca()
                    ax.set_xscale('log')
                    pylab.axhline(0.0, c='k', linewidth=2)
                    
                    pylab.axis([0.05, 10, -0.03, 0.4])


    




                    ax = pylab.gca()
                    ax.set_xscale('log')
                    pylab.axhline(0.0, c='k', linewidth=2)
#                    pylab.legend(loc='lower center', fontsize=10)

#                    pylab.title('M=%1.1fx10^14 C=%1.1f' % ( mass/1e14, concen))

                except:
                    pass

                colori+= 1

            curplot += 1

            
    for i in range(4):
        pylab.subplot(4,4,13+i)
        pylab.xlabel('Radius [Mpc/h]')
        pylab.subplot(4,4,4*i+1)
        pylab.ylabel('<g_m/g_p - 1>')


    pylab.tight_layout()

    pylab.savefig('%s_multibin_shearprofile.png' % dirbase)
#    pylab.savefig('%s_multibin_resid.png' % binbase)

    return fig
Ejemplo n.º 17
0
def MXXLmultibinresidualoverplot(binbase, fig = None):

    setMXXL()

    if fig is None:
        matplotlib.rcParams['figure.figsize'] = [16,8]
        fig = pylab.figure()


    curplot = 5
    for curc in range(4):
        pylab.subplot(2,4,curplot)

        colori = 0
        for curm in range(2):

            try:
                
                mass, concen =  readtxtfile.readtxtfile('%s_%d_%d.dat' % (binbase, curm, curc))[0]

                cat = ldac.openObjectFile('%s_%d_%d.cat' % (binbase, curm, curc))

                zlens = cat.hdu.header['ZLENS']

                rscale = nfwutils.rscaleConstM(mass/nfwutils.global_cosmology.h, concen, zlens, 200)



                gamma = nfwmodeltools.NFWShear(cat['r_mpc'], concen, rscale, zlens)
                kappa = nfwmodeltools.NFWKappa(cat['r_mpc'], concen, rscale, zlens)

                gpred = cat['beta_s']*gamma / (1 - (cat['beta_s2']*kappa/cat['beta_s']))

                pylab.errorbar(cat['r_mpc']*nfwutils.global_cosmology.h, cat['ghat'], cat['ghatdistrosigma']/(np.sqrt(cat['ndat'])), 
                                   linestyle='None', marker='o', color=c[colori], label='M=%1.1fx10^14' % (mass/1e14))

                pylab.plot(cat['r_mpc']*nfwutils.global_cosmology.h, gpred, 'k-', linewidth=2)

                ax = pylab.gca()
                ax.set_xscale('log')
                pylab.axhline(0.0, c='k', linewidth=2)

                pylab.axis([0.05, 10, -0.03, 0.4])


            except:
                pass
    


            colori+= 1

        pylab.title('C=%1.1f' % (concen))
        curplot += 1

            
    for i in range(4):
        pylab.subplot(2,4,4+i+1)
        pylab.xlabel('Radius [Mpc/h]')
        pylab.text(0.1, 0.03, 'MXXL')
        pylab.minorticks_on()
    pylab.subplot(2,4,5)
    pylab.ylabel('<g_m/g_p-1>')
    pylab.subplot(2,4,8)
    pylab.legend(loc='upper right')


    pylab.tight_layout()

    pylab.savefig('%s_shearstack.png' % binbase)


    return fig