20 research outputs found
Constraining axion and compact dark matter with interstellar medium heating
Cold interstellar gas systems have been used to constrain dark matter (DM)
models by the condition that the heating rate from DM must be lower than the
astrophysical cooling rate of the gas. Following the methodology of Wadekar and
Farrar (2021), we use the interstellar medium of a gas-rich dwarf galaxy, Leo
T, and a Milky Way-environment gas cloud, G33.4-8.0 to constrain DM. Leo T is a
particularly strong system as its gas can have the lowest cooling rate among
all the objects in the late Universe (owing to the low volume density and
metallicity of the gas). Milky Way clouds, in some cases, provide complementary
limits as the DM-gas relative velocity in them is much larger than that in Leo
T. We derive constraints on the following scenarios in which DM can heat the
gas: interaction of axions with hydrogen atoms or free electrons in the
gas, deceleration of relic magnetically charged DM in gas plasma,
dynamical friction from compact DM, hard sphere scattering of
composite DM with gas. Our limits are complementary to DM direct detection
searches. Detection of more gas-rich low-mass dwarfs like Leo T from upcoming
21cm and optical surveys can improve our bounds.Comment: 10+6 pages, 8 figures. Version appearing in PRD. Added more realistic
calculation of escape velocity in Leo
Zeldovich pancakes at redshift zero: the equilibration state and phase space properties
One of the components of the cosmic web are sheets, which are commonly
referred to as Zeldovich pancakes. These are structures which have only
collapsed along one dimension, as opposed to filaments or galaxies and cluster,
which have collapsed along two or three dimensions. These pancakes have
recently received renewed interest, since they have been shown to be useful
tools for an independent method to determine galaxy cluster masses. We consider
sheet-like structures resulting from cosmological simulations, which were
previously used to establish the cluster mass determination method, and we show
through their level of equilibration, that these structures have indeed only
collapsed along the one dimension. We also extract the density profiles of
these pancake, which agrees acceptably well with theoretical expectations. We
derive the observable velocity distribution function (VDF) analytically by
generalizing the Eddington method to one dimension, and we compare with the
distribution function from the numerical simulation.Comment: 10 pages, 8 figures, accepted by MNRA
Comment on the paper "Calorimetric Dark Matter Detection with Galactic Center Gas Clouds"
The paper "Calorimetric Dark Matter Detection with Galactic Center Gas
Clouds" (Bhoonah et al. 2018) aims to derive limits on dark matter interactions
by demanding that heat transfer due to DM interactions is less than that by
astrophysical cooling, using clouds in the hot, high-velocity nuclear outflow
wind of the Milky Way ( K, 330 km/s).
We argue that clouds in such an extreme environment cannot be assumed to be
stable over the long timescales associated with their radiative cooling rates.
Furthermore, Bhoonah et al. (2018) uses incorrect parameters for their clouds.Comment: 2 pages, 1 figure. Version appearing in Phys. Rev. Let
Modelling the galaxy–halo connection with machine learning
To extract information from the clustering of galaxies on non-linear scales, we need to model the connection between galaxies and haloes accurately and in a flexible manner. Standard halo occupation distribution (HOD) models make the assumption that the galaxy occupation in a halo is a function of only its mass, however, in reality; the occupation can depend on various other parameters including halo concentration, assembly history, environment, and spin. Using the IllustrisTNG hydrodynamical simulation as our target, we show that machine learning tools can be used to capture this high-dimensional dependence and provide more accurate galaxy occupation models. Specifically, we use a random forest regressor to identify which secondary halo parameters best model the galaxy–halo connection and symbolic regression to augment the standard HOD model with simple equations capturing the dependence on those parameters, namely the local environmental overdensity and shear, at the location of a halo. This not only provides insights into the galaxy formation relationship but also, more importantly, improves the clustering statistics of the modelled galaxies significantly. Our approach demonstrates that machine learning tools can help us better understand and model the galaxy–halo connection, and are therefore useful for galaxy formation and cosmology studies from upcoming galaxy surveys
New binary black hole mergers in the LIGO-Virgo O3b data
We report the detection of 5 new candidate binary black hole (BBH) merger
signals in the publicly released data from the second half of the third
observing run (O3b) of advanced LIGO and advanced Virgo. The LIGO-Virgo-KAGRA
(LVK) collaboration reported 35 compact binary coalescences (CBCs) in their
analysis of the O3b data [1], with 30 BBH mergers having coincidence in the
Hanford and Livingston detectors. We confirm 17 of these for a total of 22
detections in our analysis of the Hanford-Livingston coincident O3b data. We
identify candidates using a search pipeline employing aligned-spin
quadrupole-only waveforms. Our pipeline is similar to the one used in our O3a
coincident analysis [2], except for a few improvements in the veto procedure
and the ranking statistic, and we continue to use an astrophysical probability
of one half as our detection threshold, following the approach of the LVK
catalogs. Most of the new candidates reported in this work are placed in the
upper and lower-mass gap of the black hole (BH) mass distribution. One BBH
event also shows a sign of spin-orbit precession with negatively aligned spins.
We also identify a possible neutron star-black hole (NSBH) merger. We expect
these events to help inform the black hole mass and spin distributions inferred
in a full population analysis.Comment: 16 pages, 12 figure
A new approach to template banks of gravitational waves with higher harmonics: reducing matched-filtering cost by over an order of magnitude
Searches for gravitational wave events use models, or templates, for the
signals of interest. The templates used in current searches in the
LIGO-Virgo-Kagra (LVK) data model the dominant quadrupole mode
of the signals, and omit sub-dominant higher-order modes (HM) such as
, , which are predicted by general relativity. Hence,
these searches could lose sensitivity to black hole mergers in interesting
parts of parameter space, such as systems with high-masses and asymmetric mass
ratios. We develop a new strategy to include HM in template banks that exploits
the natural connection between the modes. We use a combination of
post-Newtonian formulae and machine learning tools to model aligned-spin
, waveforms corresponding to a given waveform. Each of
these modes can be individually filtered against the data to yield separate
timeseries of signal-to-noise ratios (SNR), which can be combined in a
relatively inexpensive way to marginalize over extrinsic parameters of the
signals. This leads to a HM search pipeline whose matched-filtering cost is
just that of a quadrupole-only search (in contrast to being
, as in previously proposed HM search methods). Our
method is effectual and is generally applicable for template banks constructed
with either stochastic or geometric placement techniques. Additionally, we
discuss compression of -only geometric-placement template banks using
machine learning algorithms.Comment: 12+2 pages, 7+1 figures. The template bank described here will be
publicly available at
https://github.com/JayWadekar/GW_higher_harmonics_searc