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# Copyright (c) 2017 Weitian LI <weitian@aaronly.me>
# MIT license
"""
Helper functions
References
----------
.. [arnaud2005]
Arnaud, Pointecouteau & Pratt 2005, A&A, 441, 893;
http://adsabs.harvard.edu/abs/2005A%26A...441..893
.. [cassano2005]
Cassano & Brunetti 2005, MNRAS, 357, 1313
http://adsabs.harvard.edu/abs/2005MNRAS.357.1313C
.. [cassano2007]
Cassano et al. 2007, MNRAS, 378, 1565;
http://adsabs.harvard.edu/abs/2007MNRAS.378.1565C
.. [cassano2012]
Cassano et al. 2012, A&A, 548, A100
http://adsabs.harvard.edu/abs/2012A%26A...548A.100C
.. [fujita2003]
Fujita et al. 2003, ApJ, 584, 190;
http://adsabs.harvard.edu/abs/2003ApJ...584..190F
.. [murgia2009]
Murgia et al. 2009, A&A, 499, 679
http://adsabs.harvard.edu/abs/2009A%26A...499..679M
.. [zandanel2014]
Zandanel, Pfrommer & Prada 2014, MNRAS, 438, 124
http://adsabs.harvard.edu/abs/2014MNRAS.438..124Z
.. [zhuravleva2014]
Zhuravleva et al. 2014, Nature, 515, 85;
http://adsabs.harvard.edu/abs/2014Natur.515...85Z
"""
import logging
import numpy as np
from scipy import integrate
from ...share import CONFIGS, COSMO
from ...utils.units import (Units as AU,
Constants as AC,
UnitConversions as AUC)
from ...utils.draw import circle
from ...utils.transform import circle2ellipse
logger = logging.getLogger(__name__)
def radius_virial(mass, z=0.0):
"""
Calculate the virial radius of a cluster at a given redshift.
Parameters
----------
mass : float, `~numpy.ndarray`
Total (virial) mass of the cluster
Unit: [Msun]
z : float, `~numpy.ndarray`, optional
Redshift
Default: 0.0 (i.e., present day)
Returns
-------
R_vir : float, `~numpy.ndarray`
Virial radius of the cluster
Unit: [kpc]
"""
Dc = COSMO.overdensity_virial(z)
rho = COSMO.rho_crit(z) # [g/cm^3]
R_vir = (3*mass*AUC.Msun2g / (4*np.pi * Dc * rho))**(1/3) # [cm]
R_vir *= AUC.cm2kpc # [kpc]
return R_vir
def radius_halo(M_main, M_sub, z=0.0):
"""
Calculate the (predicted) radius of (giant) radio halo for a cluster.
NOTE
----
It can be intuitively assumed that a merger will generate turbulences
within a region of size of the falling sub-cluster. And this
estimation can agree with the currently observed radio halos, which
generally have a angular diameter size ~2-7 [arcmin].
Parameters
----------
M_main, M_sub : float, `~numpy.ndarray`
Total (virial) masses of the main and sub clusters
Unit: [Msun]
z : float, `~numpy.ndarray`, optional
Redshift
Default: 0.0 (i.e., present day)
Returns
-------
R_halo : float, `~numpy.ndarray`
Radius of the (simulated/predicted) giant radio halo
Unit: [kpc]
"""
R_halo = radius_virial(mass=M_sub, z=z) # [kpc]
return R_halo
def kT_virial(mass, z=0.0, radius=None):
"""
Calculate the virial temperature of a cluster.
Parameters
----------
mass : float
The virial mass of the cluster.
Unit: [Msun]
z : float, optional
The redshift of the cluster.
radius : float, optional
The virial radius of the cluster.
If no provided, then invoke the above ``radius_virial()``
function to calculate it.
Unit: [kpc]
Returns
-------
kT : float
The virial temperature of the cluster.
Unit: [keV]
Reference: Ref.[fujita2003],Eq.(48)
"""
if radius is None:
radius = radius_virial(mass=mass, z=z) # [kpc]
kT = AC.mu*AC.u * AC.G * mass*AUC.Msun2g / (2*radius*AUC.kpc2cm) # [erg]
kT *= AUC.erg2keV # [keV]
return kT
def kT_cluster(mass, z=0.0, radius=None):
"""
Calculate the temperature of a cluster ICM.
NOTE
----
When a cluster forms, there are accretion shocks forms around
the cluster (near the virial radius) which can heat the gas,
therefore the ICM has a higher temperature than the virial
temperature, which can be estimated as:
kT_icm ~ kT_vir + 1.5 * kT_out
where kT_out the temperature of the outer gas surround the cluster,
which may be ~0.5-1.0 keV.
Reference: Ref.[fujita2003],Eq.(49)
Returns
-------
kT_icm : float
The temperature of the cluster ICM.
Unit: [keV]
"""
key = "extragalactic/clusters/kT_out"
kT_out = CONFIGS.getn(key)
kT_vir = kT_virial(mass=mass, z=z, radius=radius)
kT_icm = kT_vir + 1.5*kT_out
return kT_icm
def density_number_thermal(mass, z=0.0):
"""
Calculate the number density of the ICM thermal plasma.
NOTE
----
This number density is independent of cluster (virial) mass,
but (mostly) increases with redshifts.
Parameters
----------
mass : float
Mass of the cluster
Unit: [Msun]
z : float, optional
Redshift
Returns
-------
n_th : float
Number density of the ICM thermal plasma
Unit: [cm^-3]
"""
N = mass * AUC.Msun2g * COSMO.baryon_fraction / (AC.mu * AC.u)
R_vir = radius_virial(mass, z) * AUC.kpc2cm # [cm]
volume = (4*np.pi / 3) * R_vir**3 # [cm^3]
n_th = N / volume # [cm^-3]
return n_th
def density_energy_thermal(mass, z=0.0):
"""
Calculate the thermal energy density of the ICM.
Returns
-------
e_th : float
Energy density of the ICM
Unit: [erg/cm^3]
"""
n_th = density_number_thermal(mass=mass, z=z) # [cm^-3]
kT = kT_cluster(mass, z) * AUC.keV2erg # [erg]
e_th = (3.0/2) * kT * n_th
return e_th
def magnetic_field(mass, z=0.0):
"""
Calculate the mean magnetic field strength within the ICM, which is
also assumed to be uniform, according to the assumed fraction of the
the magnetic field energy density w.r.t. the ICM thermal energy density.
NOTE
----
Magnetic field energy density: u_B = B^2 / (8π),
where "B" in units of [G], then "u_B" has unit of [erg/cm^3].
Returns
-------
B : float
The mean magnetic field strength within the ICM.
Unit: [uG]
"""
key = "extragalactic/clusters/eta_b"
eta_b = CONFIGS.getn(key)
e_th = density_energy_thermal(mass=mass, z=z)
B = np.sqrt(8*np.pi * eta_b * e_th) * 1e6 # [G] -> [uG]
return B
def density_energy_electron(spectrum, gamma):
"""
Calculate the energy density of relativistic electrons.
Parameters
----------
spectrum : 1D float `~numpy.ndarray`
The number density of the electrons w.r.t. Lorentz factors
Unit: [cm^-3]
gamma : 1D float `~numpy.ndarray`
The Lorentz factors of electrons
Returns
-------
e_re : float
The energy density of the relativistic electrons.
Unit: [erg cm^-3]
"""
e_re = integrate.trapz(spectrum*gamma*AU.mec2, gamma)
return e_re
def speed_sound(kT):
"""
The adiabatic sound speed in cluster ICM.
Parameters
----------
kT : float
The cluster ICM temperature
Unit: [keV]
Returns
-------
cs : float
The speed of sound in cluster ICM.
Unit: [km/s]
Reference: Ref.[zhuravleva2014],Appendix(Methods)
"""
# The gas adiabatic index
gamma = AC.gamma
cs = np.sqrt(gamma * kT*AUC.keV2erg / (AC.mu * AC.u)) # [cm/s]
return cs * AUC.cm2km # [km/s]
def velocity_impact(M_main, M_sub, z=0.0):
"""
Estimate the relative impact velocity between the two merging
clusters when they are at a distance of the virial radius.
Parameters
----------
M_main, M_sub : float
Total (virial) masses of the main and sub clusters
Unit: [Msun]
z : float, optional
Redshift
Returns
-------
vi : float
Relative impact velocity
Unit: [km/s]
References
----------
Ref.[cassano2005],Eq.(9)
"""
eta_v = 4 * (1 + M_main/M_sub) ** 0.333333
R_vir = radius_virial(M_main, z) * AUC.kpc2cm # [cm]
vi = np.sqrt(2*AC.G * (1-1/eta_v) *
(M_main+M_sub)*AUC.Msun2g / R_vir) # [cm/s]
vi /= AUC.km2cm # [km/s]
return vi
def time_crossing(M_main, M_sub, z=0.0):
"""
Estimate the crossing time of the sub cluster during a merger.
NOTE: The crossing time is estimated to be τ ~ R_vir / v_impact.
Parameters
----------
M_main, M_sub : float
Total (virial) masses of the main and sub clusters
Unit: [Msun]
z : float, optional
Redshift
Returns
-------
time : float
Crossing time
Unit: [Gyr]
References
----------
Ref.[cassano2005],Sec.(4.1)
"""
R_vir = radius_virial(M_main, z) # [kpc]
vi = velocity_impact(M_main, M_sub, z) # [km/s]
# Unit conversion coefficient: [s kpc/km] => [Gyr]
uconv = AUC.kpc2km * AUC.s2Gyr
time = uconv * R_vir / vi # [Gyr]
return time
def draw_halo(radius, nr=2.0, felong=None, rotation=None):
"""
Draw the template image of one halo, which is used to simulate
the image at requested frequencies by adjusting the brightness
values.
NOTE
----
The exponential radial profile is adopted for radio halos:
I(r) = I0 * exp(-r/re)
with the e-folding radius ``re ~ R_halo / 3``.
Reference: Ref.[murgia2009],Eq.(1)
Parameters
----------
radius : float
The halo radius in number of pixels.
nr : float, optional
The times of ``radius`` to determine the size of the template
image.
Default: 2.0 (corresponding to 3*2=6 re)
felong : float, optional
The elongated fraction of the elliptical halo, which is
defined as the ratio of semi-minor axis to the semi-major axis.
Default: ``None`` (i.e., circular halo)
rotation : float, optional
The rotation angle of the elliptical halo.
Unit: [deg]
Default: ``None`` (i.e., no rotation)
Returns
-------
image : 2D `~numpy.ndarray`
2D array of the drawn halo template image.
The image is normalized to have *mean* value of 1.
"""
# Make halo radial brightness profile
re = radius / 3.0 # e-folding radius
# NOTE: Use ``ceil()`` here to make sure ``rprofile`` has length >= 2,
# therefore the interpolation in ``circle()`` runs well.
rmax = int(np.ceil(radius*nr))
r = np.arange(rmax+1)
rprofile = np.exp(-r/re)
image = circle(rprofile=rprofile)
if felong:
image = circle2ellipse(image, bfraction=felong, rotation=rotation)
# Normalized to have *mean* value of 1
image /= image.mean()
return image
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