11,191 research outputs found
Progenitor delay-time distribution of short gamma-ray bursts: Constraints from observations
Context. The progenitors of short gamma-ray bursts (SGRBs) have not yet been
well identified. The most popular model is the merger of compact object
binaries (NS-NS/NS-BH). However, other progenitor models cannot be ruled out.
The delay-time distribution of SGRB progenitors, which is an important property
to constrain progenitor models, is still poorly understood. Aims. We aim to
better constrain the luminosity function of SGRBs and the delay-time
distribution of their progenitors with newly discovered SGRBs. Methods. We
present a low-contamination sample of 16 Swift SGRBs that is better defined by
a duration shorter than 0.8 s. By using this robust sample and by combining a
self-consistent star formation model with various models for the distribution
of time delays, the redshift distribution of SGRBs is calculated and then
compared to the observational data. Results. We find that the power-law delay
distribution model is disfavored and that only the lognormal delay distribution
model with the typical delay tau >= 3 Gyr is consistent with the data.
Comparing Swift SGRBs with T90 > 0.8 s to our robust sample (T90 < 0.8 s), we
find a significant difference in the time delays between these two samples.
Conclusions. Our results show that the progenitors of SGRBs are dominated by
relatively long-lived systems (tau >= 3 Gyr), which contrasts the results found
for Type Ia supernovae. We therefore conclude that primordial NS-NS systems are
not favored as the dominant SGRB progenitors. Alternatively, dynamically formed
NS-NS/BH and primordial NS-BH systems with average delays longer than 5 Gyr may
contribute a significant fraction to the overall SGRB progenitors.Comment: 8 pages, 6 figures, Astron. Astrophys. in pres
Hadronic decays of the highly excited resonances
Hadronic decays of the highly excited resonances have been studied
in the model. Widths of all possible hadronic decay channels of the
have been computed. , ,
, and can be produced from hadronic decays
of the , and relevant hadronic decay widths have been particularly
paid attention to. The hadronic decay widths of to or
may be large, and the numerical results are different in different
assignments of and . The hadronic decay widths of
to , or are very small, and
different in different assignments of .Comment: 7 pages, 1 figure. High Energy Physics - Theor
g-Factors and the Interplay of Collective and Single-Particle Degrees of Freedom in Superdeformed Mass-190 Nuclei
Interplay of collective and single-particle degrees of freedom is a common
phenomenon in strongly correlated many-body systems. Despite many successful
efforts in the study of superdeformed nuclei, there is still unexplored physics
that can be best understood only through the nuclear magnetic properties. We
point out that study of the gyromagnetic factor (g-factor) may open a unique
opportunity for understanding superdeformed structure. Our calculations suggest
that investigation of the g-factor dependence on spin and particle number can
provide important information on single-particle structure and its interplay
with collective motion in the superdeformed mass-190 nuclei. Modern
experimental techniques combined with the new generation of sensitive detectors
should be capable of testing our predictions.Comment: 4 pages, 2 eps figures, accepted by Phys. Rev.
A Double-Jet System in the G31.41+0.31 Hot Molecular Core
This work presents a detailed study of the gas kinematics towards the "Hot
Molecular Core" (HMC) G31.41+0.31 via multi-epoch VLBI observations of the H2O
22 GHz and CH3OH 6.7 GHz masers, and single-epoch VLBI of the OH 1.6 GHz
masers. Water masers present a symmetric spatial distribution with respect to
the HMC center, where two nearby (0.2" apart), compact, VLA sources (labeled
"A" and "B") are previously detected. The spatial distribution of a first group
of water masers, named "J1", is well fit with an elliptical profile, and the
maser proper motions mainly diverge from the ellipse center, with average speed
of 36 km s-1. These findings strongly suggest that the "J1" water maser group
traces the heads of a young (dynamical time of 1.3 10^3 yr), powerful (momentum
rate of ~0.2 M_sun yr-1 km s-1), collimated (semi-opening angle ~10 deg) jet
emerging from a MYSO located close (within 0.15") to the VLA source "B". Most
of the water features not belonging to "J1" present an elongated (about 2" in
size), NE--SW oriented (PA = 70 deg), S-shape distribution, which we denote
with the label "J2". The elongated distribution of the "J2" group and the
direction of motion, approximately parallel to the direction of elongation, of
most "J2" water masers suggests the presence of another collimated outflow,
emitted from a MYSO near the VLA source "A". The orientation of the "J2" jet
agrees well with that (PA = 68 deg) of the well-defined V_LSR gradient across
the HMC revealed by previous interferometric, thermal line observations.
Furthermore, the "J2" jet is powerful enough to sustain the large momentum
rate, 0.3 M_sun yr-1 km s-1, estimated assuming that the V_LSR gradient
represents a collimated outflow. These two facts lead us to favour the
interpretation of the V_LSR gradient across the G31.41+0.31 HMC in terms of a
compact and collimated outflow.Comment: 23 pages, 7 figures, accepted for publication in Astronomy &
Astrophysic
Efficient, concurrent Bayesian analysis of full waveform LaDAR data
Bayesian analysis of full waveform laser detection and ranging (LaDAR)
signals using reversible jump Markov chain Monte Carlo (RJMCMC) algorithms
have shown higher estimation accuracy, resolution and sensitivity to
detect weak signatures for 3D surface profiling, and construct multiple layer
images with varying number of surface returns. However, it is computational
expensive. Although parallel computing has the potential to reduce both the
processing time and the requirement for persistent memory storage, parallelizing
the serial sampling procedure in RJMCMC is a significant challenge
in both statistical and computing domains. While several strategies have been
developed for Markov chain Monte Carlo (MCMC) parallelization, these are
usually restricted to fixed dimensional parameter estimates, and not obviously
applicable to RJMCMC for varying dimensional signal analysis.
In the statistical domain, we propose an effective, concurrent RJMCMC algorithm,
state space decomposition RJMCMC (SSD-RJMCMC), which divides
the entire state space into groups and assign to each an independent
RJMCMC chain with restricted variation of model dimensions. It intrinsically
has a parallel structure, a form of model-level parallelization. Applying
the convergence diagnostic, we can adaptively assess the convergence of the
Markov chain on-the-fly and so dynamically terminate the chain generation.
Evaluations on both synthetic and real data demonstrate that the concurrent
chains have shorter convergence length and hence improved sampling efficiency.
Parallel exploration of the candidate models, in conjunction with an
error detection and correction scheme, improves the reliability of surface detection.
By adaptively generating a complimentary MCMC sequence for the
determined model, it enhances the accuracy for surface profiling.
In the computing domain, we develop a data parallel SSD-RJMCMC (DP
SSD-RJMCMCU) to achieve efficient parallel implementation on a distributed
computer cluster. Adding data-level parallelization on top of the model-level
parallelization, it formalizes a task queue and introduces an automatic scheduler
for dynamic task allocation. These two strategies successfully diminish
the load imbalance that occurred in SSD-RJMCMC. Thanks to the coarse
granularity, the processors communicate at a very low frequency. The MPIbased
implementation on a Beowulf cluster demonstrates that compared with
RJMCMC, DP SSD-RJMCMCU has further reduced problem size and computation
complexity. Therefore, it can achieve a super linear speedup if the
number of data segments and processors are chosen wisely
- …