266 research outputs found
Comparison between classical potentials and ab initio for silicon under large shear
The homogeneous shear of the {111} planes along the <110> direction of bulk
silicon has been investigated using ab initio techniques, to better understand
the strain properties of both shuffle and glide set planes. Similar
calculations have been done with three empirical potentials, Stillinger-Weber,
Tersoff and EDIP, in order to find the one giving the best results under large
shear strains. The generalized stacking fault energies have also been
calculated with these potentials to complement this study. It turns out that
the Stillinger-Weber potential better reproduces the ab initio results, for the
smoothness and the amplitude of the energy variation as well as the
localization of shear in the shuffle set
Dislocation formation from a surface step in semiconductors: an ab initio study
The role of a simple surface defect, such as a step, for relaxing the stress
applied to a semiconductor, has been investigated by means of large scale first
principles calculations. Our results indicate that the step is the privileged
site for initiating plasticity, with the formation and glide of 60
dislocations for both tensile and compressive deformations. We have also
examined the effect of surface and step termination on the plastic mechanisms
A Comprehensive Spectroscopic Analysis of DB White Dwarfs
We present a detailed analysis of 108 helium-line (DB) white dwarfs based on
model atmosphere fits to high signal-to-noise optical spectroscopy. We derive a
mean mass of 0.67 Mo for our sample, with a dispersion of only 0.09 Mo. White
dwarfs also showing hydrogen lines, the DBA stars, comprise 44% of our sample,
and their mass distribution appears similar to that of DB stars. As in our
previous investigation, we find no evidence for the existence of low-mass (M <
0.5 Mo) DB white dwarfs. We derive a luminosity function based on a subset of
DB white dwarfs identified in the Palomar-Green survey. We show that 20% of all
white dwarfs in the temperature range of interest are DB stars, although the
fraction drops to half this value above Teff ~ 20,000 K. We also show that the
persistence of DB stars with no hydrogen features at low temperatures is
difficult to reconcile with a scenario involving accretion from the
interstellar medium, often invoked to account for the observed hydrogen
abundances in DBA stars. We present evidence for the existence of two different
evolutionary channels that produce DB white dwarfs: the standard model where DA
stars are transformed into DB stars through the convective dilution of a thin
hydrogen layer, and a second channel where DB stars retain a helium-atmosphere
throughout their evolution. We finally demonstrate that the instability strip
of pulsating V777 Her white dwarfs contains no nonvariables, if the hydrogen
content of these stars is properly accounted for.Comment: 74 pages including 30 figures, accepted for publication in the
Astrophysical Journa
SPDE priors for uncertainty quantification of end-to-end neural data assimilation schemes
The spatio-temporal interpolation of large geophysical datasets has
historically been adressed by Optimal Interpolation (OI) and more sophisticated
model-based or data-driven DA techniques. In the last ten years, the link
established between Stochastic Partial Differential Equations (SPDE) and
Gaussian Markov Random Fields (GMRF) opened a new way of handling both large
datasets and physically-induced covariance matrix in Optimal Interpolation.
Recent advances in the deep learning community also enables to adress this
problem as neural architecture embedding data assimilation variational
framework. The reconstruction task is seen as a joint learning problem of the
prior involved in the variational inner cost and the gradient-based
minimization of the latter: both prior models and solvers are stated as neural
networks with automatic differentiation which can be trained by minimizing a
loss function, typically stated as the mean squared error between some ground
truth and the reconstruction. In this work, we draw from the SPDE-based
Gaussian Processes to estimate complex prior models able to handle
non-stationary covariances in both space and time and provide a stochastic
framework for interpretability and uncertainty quantification. Our neural
variational scheme is modified to embed an augmented state formulation with
both state and SPDE parametrization to estimate. Instead of a neural prior, we
use a stochastic PDE as surrogate model along the data assimilation window. The
training involves a loss function for both reconstruction task and SPDE prior
model, where the likelihood of the SPDE parameters given the true states is
involved in the training. Because the prior is stochastic, we can easily draw
samples in the prior distribution before conditioning to provide a flexible way
to estimate the posterior distribution based on thousands of members
Crystal Structure and Infrared Spectra of Anhydrous (Adeninato)methylmercury(II)
The title compound, C6H7HgN5, belongs to the orthorhombic
space group Pbcn, a == 14.658(8), b == 8.407(5), c == 13.006(9) A, Deal = 2.898 g cm-3, Z == 8 molecules per cell. The structure was refinedon 1132 unique nonzero reflections to R == 0.026. The crystal containsthe same type of 1 : 1 monomeric molecule as the monohydrat in which the CH3Hg group is bonded to the N(9) position of deprotonated adenine. These molecules are associated into infinite ribbons by means of two pairs of complementary N-H ... N bonds involvingboth amino protons and the lone pairs on N(l) and N(7) of
each molecule. The infrared spectra of this material and of the
monohydrate differ almost exclusively in the regions related to
NH2 vibrations. This simply results from differences in hydrogen-
bonding patterns and no direct metal-amino interaction is taking
place in any case. The spectral changes already identified as characteristicof N(9)-complexation for the monohydrate are also observed for the anhydrous compou nd
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