add a pipeline for arepo
This commit is contained in:
19
galsec.py
19
galsec.py
@@ -113,24 +113,35 @@ def aggregate(
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assert weight_field in extensive_fields
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for field in weighted_fields:
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# Multiply weighted field by the weight v*m
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grouped_data[field] *= grouped_data[weight_field]
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# Compute the sum of all fields
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binned_data = grouped_data[extensive_fields + weighted_fields].groups.aggregate(
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np.add
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)
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for field in weighted_fields:
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binned_data[field] /= binned_data[weight_field] # weighted mean
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# For weighted field, divided by the total mass
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# We obtain the weighted mean vmean = 𝚺 (m*v) / 𝚺 m
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binned_data[field] /= binned_data[weight_field]
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# Veocity dispersion
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# We allso compute the weighted dispersion around the weighted mean
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# Restart from the unweighted data v
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grouped_data[field] /= grouped_data[weight_field]
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for i in range(len(grouped_data.groups)):
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# retrieve the indices of each group
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slice = grouped_data.groups.indices[i], grouped_data.groups.indices[i + 1]
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# Compute the fluctuations wrt the weighted mean (v - vmean)
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grouped_data[slice[0] : slice[1]][field] -= binned_data[i][field]
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# Compute m * (v - vmean)^2
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grouped_data[field] = grouped_data[weight_field] * grouped_data[field] ** 2
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# Compute 𝚺 m * (v - vmean)^2
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binned_data[f"sigma_{field}"] = grouped_data[field,].groups.aggregate(
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np.add
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)[field]
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# Compute sigma = 𝚺 (m * (v - vmean)^2) / 𝚺 m
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binned_data[f"sigma_{field}"] = np.sqrt(
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binned_data[f"sigma_{field}"] / binned_data[weight_field]
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)
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@@ -462,7 +473,7 @@ class Galsec:
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self,
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delta_r: Quantity[u.kpc] = u.kpc,
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rmin: Quantity[u.kpc] = 1 * u.kpc,
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rmax: Quantity[u.kpc] = 12 * u.kpc,
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rmax: Quantity[u.kpc] = 30 * u.kpc,
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zmin: Quantity[u.kpc] = -0.5 * u.kpc,
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zmax: Quantity[u.kpc] = 0.5 * u.kpc,
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):
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@@ -475,7 +486,7 @@ class Galsec:
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rmin : Quantity[u.kpc], optional
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filter out bin below that radius, by default 1*u.kpc
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rmax : Quantity[u.kpc], optional
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filter out bin beyond that radius, by default 12*u.kpc
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filter out bin beyond that radius, by default 30*u.kpc
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"""
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self.ring_binning(delta_r)
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@@ -5,7 +5,7 @@ import h5py
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from astropy import units as u
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def load_fields(path):
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def load_fields_arepo(path):
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"""
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Parameters
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----------
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@@ -75,12 +75,6 @@ def load_fields(path):
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"birth_time": np.asarray(stars["StellarFormationTime"]) * UnitTime_in_Myr,
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},
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}
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snap.close()
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return data
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if __name__ == "__main__":
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from snapshotprocessor import SnapshotProcessor
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data = load_fields(
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"/home/nbrucy/Travail/Postdoc/Ecogal/MW/junia2_0.25kpc/OUTPUT_SN/snap_150.hdf5"
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)
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90
pipeline_MW.py
Normal file
90
pipeline_MW.py
Normal file
@@ -0,0 +1,90 @@
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import numpy as np
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import matplotlib.pyplot as plt
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import h5py
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import astropy.units as u, astropy.constants as c
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from load_data_arepo import load_fields_arepo
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from galsec import Galsec
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def sfr_history(data, tmin=None, tmax=None, average_time=1, **kwargs):
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"""History of SFR. Time in Myr.
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SFR in Msun/year
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Parameters
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----------
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data : _type_
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_description_
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tmin : _type_
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_description_
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tmax : _type_
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_description_
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average_time : _type_
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_description_
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"""
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plt.figure(constrained_layout=True, figsize=(5,4))
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if tmin is None:
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tmin = np.floor(np.min(data["stars"]["birth_time"]))
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if tmax is None:
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tmax = np.ceil(np.max(data["stars"]["birth_time"]))
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bins = int(np.ceil((tmax - tmin) / average_time))
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tmax = tmin + bins * average_time
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plt.hist(data["stars"]["birth_time"],
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weights=data["stars"]["mass"] / (average_time*1e6),
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bins=bins, range=[tmin, tmax],
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histtype="step", **kwargs)
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plt.ylabel("SFR [M$_\odot$/yr]")
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plt.xlabel("Time [Myr]")
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plt.savefig("sfr_history.png")
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def ring_stuff(galsec, delta_r=1):
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galsec.ring_analysis(delta_r * u.kpc, rmax=12 * u.kpc)
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r_stars = galsec.rings['stars']["r"]
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r_gas = galsec.rings['gas']["r"]
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surface = np.pi * (delta_r * u.kpc) * r_gas
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plt.figure(constrained_layout=True, figsize=(5,4))
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sfr = galsec.rings['stars']["sfr"]
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ssfr = sfr / surface
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plt.plot(r_stars, ssfr)
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plt.ylabel("SSFR [M$_\odot$/yr/kpc$^2$]")
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plt.xlabel("R [kpc]")
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plt.savefig("sfr_profile.png")
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plt.figure(constrained_layout=True, figsize=(5,4))
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velphi = - galsec.rings['gas']["velphi"]
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plt.plot(r_gas, velphi)
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plt.ylabel(r"$v_\varphi$ [km/s]")
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plt.xlabel("R [kpc]")
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plt.savefig("rotation_curve.png")
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plt.figure(constrained_layout=True, figsize=(5,4))
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sigma_velphi = galsec.rings['gas']["sigma_velphi"]
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sigma_velr = galsec.rings['gas']["sigma_velr"]
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sigma_velz = galsec.rings['gas']["sigma_velz"]
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plt.plot(r_gas, sigma_velphi, label=r"$\sigma_{v,\varphi}$")
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plt.plot(r_gas, sigma_velr, label=r"$\sigma_{v,r}$")
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plt.plot(r_gas, sigma_velz, label=r"$\sigma_{v,z}$")
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plt.ylabel(r"$\sigma$ [km/s]")
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plt.xlabel("R [kpc]")
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plt.legend()
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plt.savefig("dispersion_profile.png")
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def run_pipeline(path):
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# Galsec analysis
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data = load_fields_arepo(path)
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galsec = Galsec(data)
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sfr_history(data)
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ring_stuff(galsec)
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del data
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del galsec
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if __name__ == "__main__":
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run_pipeline("/home/nbrucy/Travail/Postdoc/Ecogal/MW/junia2_0.25kpc/OUTPUT_SN/snap_400.hdf5")
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