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# Copyright (c) 2016 Weitian LI <liweitianux@live.com>
# MIT license
"""
Galactic supernova remnants (SNRs) emission simulations.
"""
import os
import logging
from datetime import datetime, timezone
import numpy as np
from astropy.io import fits
import astropy.units as au
import healpy as hp
import pandas as pd
from ..utils import write_fits_healpix
from ..utils.convert import Fnu_to_Tb
from ..utils.grid import make_grid_ellipse, map_grid_to_healpix
logger = logging.getLogger(__name__)
class SuperNovaRemnants:
"""
Simulate the Galactic supernova remnants emission.
The simulation is based on the Galactic SNRs catalog maintained by
*D. A. Green* [GreenSNRDataWeb]_, which contains 294 SNRs (2014-May).
However, some SNRs have incomplete data which are excluded, while
some SNRs with uncertain properties are currently kept.
Every SNR is simulated as an *ellipse* of *uniform brightness* on
a local coordinate grid with relatively higher resolution compared
to the output HEALPix map, which is then mapped to the output HEALPix
map by down-sampling.
Parameters
----------
configs : ConfigManager object
An `ConfigManager` object contains default and user configurations.
For more details, see the example config specification.
Attributes
----------
???
References
----------
.. [Green2014]
Green, D. A.,
"A catalogue of 294 Galactic supernova remnants",
2014, Bulletin of the Astronomical Society of India, 42, 47-58,
http://adsabs.harvard.edu/abs/2014BASI...42...47G
.. [GreenSNRDataWeb]
A Catalogue of Galactic Supernova Remnants
http://www.mrao.cam.ac.uk/surveys/snrs/
"""
# Component name
name = "Galactic supernova remnants"
def __init__(self, configs):
self.configs = configs
self._set_configs()
def _set_configs(self):
"""Load the configs and set the corresponding class attributes."""
comp = "galactic/snr"
self.catalog_path = self.configs.get_path(comp+"/catalog")
self.catalog_outfile = self.configs.get_path(comp+"/catalog_outfile")
self.resolution = self.configs.getn(comp+"/resolution") * au.arcmin
self.prefix = self.configs.getn(comp+"/prefix")
self.save = self.configs.getn(comp+"/save")
self.output_dir = self.configs.get_path(comp+"/output_dir")
#
self.filename_pattern = self.configs.getn("output/filename_pattern")
self.use_float = self.configs.getn("output/use_float")
self.clobber = self.configs.getn("output/clobber")
self.nside = self.configs.getn("common/nside")
self.freq_unit = au.Unit(self.configs.getn("frequency/unit"))
#
logger.info("Loaded and set up configurations")
def _load_catalog(self):
"""Load the Galactic SNRs catalog data."""
self.catalog = pd.read_csv(self.catalog_path)
nrow, ncol = self.catalog.shape
logger.info("Loaded SNRs catalog data from: {0}".format(
self.catalog_path))
logger.info("SNRs catalog data: {0} objects, {1} columns".format(
nrow, ncol))
# Set the units for columns
self.units = {
"glon": au.deg,
"glat": au.deg,
"size": au.arcmin,
"flux": au.Jy,
}
# The flux densities are given at 1 GHz
self.catalog_flux_freq = 1.0 * au.GHz
def _save_catalog_inuse(self):
"""Save the effective/inuse SNRs catalog data to a CSV file.
NOTE
----
- Only the effective/inuse SNRs are saved (i.e., without the ones
that are filtered out).
- Also save the simulated rotation column.
- The unnecessary columns are striped.
"""
if self.catalog_outfile is None:
logger.warning("Catalog output file not set, so do NOT save.")
return
# Create directory if necessary
dirname = os.path.dirname(self.catalog_outfile)
if not os.path.exists(dirname):
os.mkdir(dirname)
logger.info("Created directory: {0}".format(dirname))
# Save catalog data
colnames = ["name", "glon", "glat", "ra", "dec",
"size_major", "size_minor", "flux",
"specindex", "rotation"]
if os.path.exists(self.catalog_outfile):
if self.clobber:
os.remove(self.catalog_outfile)
else:
raise OSError("Output file already exists: {0}".format(
self.catalog_outfile))
self.catalog.to_csv(self.catalog_outfile, columns=colnames,
header=True, index=False)
logger.info("Save SNRs catalog in use to: %s" % self.catalog_outfile)
def _filter_catalog(self):
"""Filter the catalog data to remove the objects with incomplete
data.
The following cases are filtered out:
- Missing angular size
- Missing flux density data
- Missing spectral index value
NOTE
----
The objects with uncertain data are currently kept.
"""
cond1 = pd.isnull(self.catalog["size_major"])
cond2 = pd.isnull(self.catalog["size_minor"])
cond3 = pd.isnull(self.catalog["flux"])
cond4 = pd.isnull(self.catalog["specindex"])
cond_keep = ~(cond1 | cond2 | cond3 | cond4)
n_total = len(cond_keep)
n_remain = cond_keep.sum()
n_delete = n_total - n_remain
n_delete_p = n_delete / n_total * 100
self.catalog = self.catalog[cond_keep]
# Drop the index
self.catalog.reset_index(drop=True, inplace=True)
self.catalog_filtered = True
logger.info("SNRs catalog: filtered out " +
"{0:d} ({1:.1f}%) objects".format(n_delete, n_delete_p))
logger.info("SNRs catalog: remaining {0} objects".format(n_remain))
def _add_random_rotation(self):
"""Add random rotation angles for each SNR as column "rotation"
within the catalog data frame.
The rotation angles are uniformly distributed within [0, 360).
The rotation happens on the spherical surface, i.e., not with respect
to the line of sight, but to the Galactic frame coordinate axes.
"""
num = len(self.catalog)
angles = np.random.uniform(low=0.0, high=360.0, size=num)
rotation = pd.Series(data=angles, name="rotation")
self.catalog["rotation"] = rotation
self.units["rotation"] = au.deg
logger.info("Added random rotation angles as the 'rotation' column")
def _calc_Tb(self, flux, specindex, frequency, size):
"""Calculate the brightness temperature at requested frequency
by assuming a power-law spectral shape.
Parameters
----------
flux : float
The flux density (unit: `self.units["flux"]`) at the reference
frequency (i.e., `self.catalog_flux_freq`).
specindex : float
The spectral index of the power-law spectrum
frequency : float
The frequency (unit: `self.freq_unit`) where the brightness
temperature requested.
size : 2-float tuple
The (major, minor) axes of the SNR (unit: `self.units["size"]`).
The order of major and minor can be arbitrary.
Returns
-------
Tb : float
Brightness temperature at the requested frequency, unit [ K ]
NOTE
----
The power-law spectral shape is assumed for *flux density* other
than the *brightness temperature*.
Therefore, the flux density at the requested frequency should first
be calculated by extrapolating the spectrum, then convert the flux
density to derive the brightness temperature.
"""
freq = frequency * self.freq_unit
flux = flux * self.units["flux"]
Fnu = flux * (freq / self.catalog_flux_freq).value ** (-specindex)
omega = size[0]*self.units["size"] * size[1]*self.units["size"]
Tb = Fnu_to_Tb(Fnu, omega, freq)
return Tb.value
def _simulate_templates(self):
"""Simulate the template (HEALPix) images for each SNR, and cache
these templates within the class.
The template images/maps have values of (or approximate) ones for
these effective pixels, excluding the pixels corresponding to the
edges of original rotated ellipse, which may have values of
significantly less than 1 due to the rotation.
Therefore, simulating the HEALPix map of one SNR at a requested
frequency is simply multiplying the cached template image by the
calculated brightness temperature (Tb) at that frequency.
Furthermore, the total HEALPix map of all SNRs are straightforward
additions of all the maps of each SNR.
Attributes
----------
templates : dict
A dictionary containing the simulated templates for each SNR.
The dictionary keys are the names (`self.catalog["name"]`)
of the SNRs, and the values are `(hpidx, hpval)` tuples with
`hpidx` the indexes of effective HEALPix pixels (RING ordering)
and `hpval` the values of the corresponding pixels.
e.g.,
``{ name1: (hpidx1, hpval1), name2: (hpidx2, hpval2), ... }``
"""
templates = {}
resolution = self.resolution.to(au.deg).value
for row in self.catalog.itertuples():
name = row.name
logger.info("Simulate HEALPix template for SNR: {0}".format(name))
center = (row.glon, row.glat)
size = ((row.size_major * self.units["size"]).to(au.deg).value,
(row.size_minor * self.units["size"]).to(au.deg).value)
rotation = row.rotation
grid = make_grid_ellipse(center, size, resolution, rotation)
hpidx, hpval = map_grid_to_healpix(grid, self.nside)
templates[name] = (hpidx, hpval)
logger.info("Done simulate {0} SNR templates".format(len(templates)))
self.templates = templates
def _simulate_single(self, data, frequency):
"""Simulate one single SNR at the specified frequency.
Parameters
----------
data : namedtuple
The data of the SNR to be simulated, given in a ``namedtuple``
object, from which can get the required properties by
``data.key``.
e.g., elements of `self.catalog.itertuples()`
frequency : float
The simulation frequency (unit: `self.freq_unit`).
Returns
-------
hpidx : 1D `~numpy.ndarray`
The indexes (in RING ordering) of the effective HEALPix
pixels for the SNR.
hpval : 1D `~numpy.ndarray`
The values (i.e., brightness temperature) of each HEALPix
pixel with respect the above indexes.
See Also
--------
`self._simulate_template()` for more detailed description.
"""
name = data.name
hpidx, hpval = self.templates[name]
# Calculate the brightness temperature
flux = data.flux
specindex = data.specindex
size = (data.size_major, data.size_minor)
Tb = self._calc_Tb(flux, specindex, frequency, size)
hpval = hpval * Tb
return (hpidx, hpval)
def _make_filepath(self, **kwargs):
"""Make the path of output file according to the filename pattern
and output directory loaded from configurations.
"""
data = {
"prefix": self.prefix,
}
data.update(kwargs)
filename = self.filename_pattern.format(**data)
filetype = self.configs.getn("output/filetype")
if filetype == "fits":
filename += ".fits"
else:
raise NotImplementedError("unsupported filetype: %s" % filetype)
filepath = os.path.join(self.output_dir, filename)
return filepath
def _make_header(self):
"""Make the header with detail information (e.g., parameters and
history) for the simulated products.
"""
header = fits.Header()
header["COMP"] = ("Galactic supernova remnants (SNRs)",
"Emission component")
header["UNIT"] = ("Kelvin", "Map unit")
header["CREATOR"] = (__name__, "File creator")
# TODO:
history = []
comments = []
for hist in history:
header.add_history(hist)
for cmt in comments:
header.add_comment(cmt)
self.header = header
logger.info("Created FITS header")
def output(self, hpmap, frequency):
"""Write the simulated free-free map to disk with proper header
keywords and history.
"""
if not os.path.exists(self.output_dir):
os.mkdir(self.output_dir)
logger.info("Created output dir: {0}".format(self.output_dir))
#
filepath = self._make_filepath(frequency=frequency)
if not hasattr(self, "header"):
self._make_header()
header = self.header.copy()
header["FREQ"] = (frequency, "Frequency [ MHz ]")
header["DATE"] = (
datetime.now(timezone.utc).astimezone().isoformat(),
"File creation date"
)
if self.use_float:
hpmap = hpmap.astype(np.float32)
write_fits_healpix(filepath, hpmap, header=header,
clobber=self.clobber)
logger.info("Write simulated map to file: {0}".format(filepath))
def preprocess(self):
"""Perform the preparation procedures for the final simulations.
Attributes
----------
_preprocessed : bool
This attribute presents and is ``True`` after the preparation
procedures are performed, which indicates that it is ready to
do the final simulations.
"""
if hasattr(self, "_preprocessed") and self._preprocessed:
return
#
logger.info("{name}: preprocessing ...".format(name=self.name))
self._load_catalog()
self._filter_catalog()
self._add_random_rotation()
# Simulate the template maps for each SNR
self._simulate_templates()
#
self._preprocessed = True
def simulate_frequency(self, frequency):
"""Simulate the emission (HEALPix) map of all Galactic SNRs at
the specified frequency.
Parameters
----------
frequency : float
The simulation frequency (unit: `self.freq_unit`).
Returns
-------
hpmap_f : 1D `~numpy.ndarray`
HEALPix map data in RING ordering
See Also
--------
`self._simulate_template()` for more detailed description.
"""
self.preprocess()
#
logger.info("Simulating {name} map at {freq} ({unit}) ...".format(
name=self.name, freq=frequency, unit=self.freq_unit))
hpmap_f = np.zeros(hp.nside2npix(self.nside))
for row in self.catalog.itertuples():
hpidx, hpval = self._simulate_single(row, frequency)
hpmap_f[hpidx] += hpval
#
if self.save:
self.output(hpmap_f, frequency)
return hpmap_f
def simulate(self, frequencies):
"""Simulate the emission (HEALPix) maps of all Galactic SNRs for
every specified frequency.
Parameters
----------
frequency : list[float]
List of frequencies (unit: `self.freq_unit`) where the
simulation performed.
Returns
-------
hpmaps : list[1D `~numpy.ndarray`]
List of HEALPix maps (in RING ordering) at each frequency.
"""
hpmaps = []
for f in np.array(frequencies, ndmin=1):
hpmap_f = self.simulate_frequency(f)
hpmaps.append(hpmap_f)
return hpmaps
def postprocess(self):
"""Perform the post-simulation operations before the end."""
logger.info("{name}: postprocessing ...".format(name=self.name))
# Save the catalog actually used in the simulation
self._save_catalog_inuse()
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