csiborgtools/scripts/fit_halos.py
Richard Stiskalek e08c741fc8
Improving halo fits (#76)
* Add periodic distances

* Little corrections

* Fix little bug

* Modernise the script

* Small updates

* Remove clump

* Add new halo routines

* Fix weights

* Modernise the script

* Add check ups on convergence

* More convergence check ups

* Edit bounds

* Add default argument

* Update fit heuristic and NaNs

* Change maxiter

* Switch NFW minimization to log-sapce

* Remove print statement

* Turn convert_from_box abstract property required for all boxes.

* Move files

* Simplify script

* Improve the argument parser

* Remove optinal argument

* Improve argument parser

* Add a minimum concentration limit
2023-07-25 16:12:58 +02:00

146 lines
4.6 KiB
Python

# Copyright (C) 2022 Richard Stiskalek
# This program is free software; you can redistribute it and/or modify it
# under the terms of the GNU General Public License as published by the
# Free Software Foundation; either version 3 of the License, or (at your
# option) any later version.
#
# This program is distributed in the hope that it will be useful, but
# WITHOUT ANY WARRANTY; without even the implied warranty of
# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU General
# Public License for more details.
#
# You should have received a copy of the GNU General Public License along
# with this program; if not, write to the Free Software Foundation, Inc.,
# 51 Franklin Street, Fifth Floor, Boston, MA 02110-1301, USA.
"""
A script to fit FoF halos (concentration, ...). The CSiBORG particle array of
each realisation must have been processed in advance by `pre_dumppart.py`.
Quijote is not supported yet
"""
from argparse import ArgumentParser
import numpy
from mpi4py import MPI
from taskmaster import work_delegation
from tqdm import trange
from utils import get_nsims
try:
import csiborgtools
except ModuleNotFoundError:
import sys
sys.path.append("../")
import csiborgtools
def fit_halo(particles, box):
"""
Fit a single halo from the particle array.
Parameters
----------
particles : 2-dimensional array of shape `(n_particles, 3)`
Particle array. The columns must be `x`, `y`, `z`, `vx`, `vy`, `vz`,
`M`.
box : object derived from :py:class`csiborgtools.read.BaseBox`
Box object.
Returns
-------
out : dict
"""
halo = csiborgtools.fits.Halo(particles, box)
out = {}
out["npart"] = len(halo)
out["totpartmass"] = numpy.sum(halo["M"])
for i, v in enumerate(["vx", "vy", "vz"]):
out[v] = numpy.average(halo.vel[:, i], weights=halo["M"])
m200c, r200c, cm = halo.spherical_overdensity_mass(200, kind="crit",
maxiter=100)
out["m200c"] = m200c
out["r200c"] = r200c
out["lambda200c"] = halo.lambda_bullock(cm, r200c)
out["conc"] = halo.nfw_concentration(cm, r200c)
return out
def _main(nsim, simname, verbose):
"""
Fit the FoF halos.
Parameters
----------
nsim : int
IC realisation index.
simname : str
Simulation name.
verbose : bool
Verbosity flag.
"""
if simname == "quijote":
raise NotImplementedError("Quijote not implemented yet.")
cols = [("index", numpy.int32),
("npart", numpy.int32),
("totpartmass", numpy.float32),
("vx", numpy.float32),
("vy", numpy.float32),
("vz", numpy.float32),
("conc", numpy.float32),
("r200c", numpy.float32),
("m200c", numpy.float32),
("lambda200c", numpy.float32),]
nsnap = max(paths.get_snapshots(nsim))
box = csiborgtools.read.CSiBORGBox(nsnap, nsim, paths)
# Particle archive
f = csiborgtools.read.read_h5(paths.particles(nsim))
particles = f["particles"]
halo_map = f["halomap"]
hid2map = {hid: i for i, hid in enumerate(halo_map[:, 0])}
cat = csiborgtools.read.CSiBORGHaloCatalogue(
nsim, paths, with_lagpatch=False, load_initial=False, rawdata=True,
load_fitted=False)
out = csiborgtools.read.cols_to_structured(len(cat), cols)
for i in trange(len(cat)) if verbose else range(len(cat)):
hid = cat["index"][i]
out["index"][i] = hid
part = csiborgtools.read.load_halo_particles(hid, particles, halo_map,
hid2map)
# Skip if no particles.
if part is None:
continue
_out = fit_halo(part, box)
for key in _out.keys():
out[key][i] = _out[key]
fout = paths.structfit(nsnap, nsim)
if verbose:
print(f"Saving to `{fout}`.", flush=True)
numpy.save(fout, out)
if __name__ == "__main__":
parser = ArgumentParser()
parser.add_argument("--simname", type=str, default="csiborg",
choices=["csiborg", "quijote", "quijote_full"],
help="Simulation name")
parser.add_argument("--nsims", type=int, nargs="+", default=None,
help="IC realisations. If `-1` processes all.")
args = parser.parse_args()
paths = csiborgtools.read.Paths(**csiborgtools.paths_glamdring)
nsims = get_nsims(args, paths)
def main(nsim):
_main(nsim, args.simname, MPI.COMM_WORLD.Get_size() == 1)
work_delegation(main, nsims, MPI.COMM_WORLD)