4,246 research outputs found
Understanding exoplanet formation, structure and evolution in 2010
In this short review, we summarize our present understanding (and
non-understanding) of exoplanet formation, structure and evolution, in the
light of the most recent discoveries. Recent observations of transiting massive
brown dwarfs seem to remarkably confirm the predicted theoretical mass-radius
relationship in this domain. This mass-radius relationship provides, in some
cases, a powerful diagnostic to distinguish planets from brown dwarfs of same
mass, as for instance for Hat-P-20b. If confirmed, this latter observation
shows that planet formation takes place up to at least 8 Jupiter masses.
Conversely, observations of brown dwarfs down to a few Jupiter masses in young,
low-extinction clusters strongly suggest an overlapping mass domain between
(massive) planets and (low-mass) brown dwarfs, i.e. no mass edge between these
two distinct (in terms of formation mechanism) populations. At last, the large
fraction of heavy material inferred for many of the transiting planets confirms
the core-accretion scenario as been the dominant one for planet formation.Comment: Invited review, IAU Symposium No. 276, The Astrophysics of Planetary
Systems: Formation, Structure, and Dynamical Evolutio
Possible climates on terrestrial exoplanets
What kind of environment may exist on terrestrial planets around other stars?
In spite of the lack of direct observations, it may not be premature to
speculate on exoplanetary climates, for instance to optimize future telescopic
observations, or to assess the probability of habitable worlds. To first order,
climate primarily depends on 1) The atmospheric composition and the volatile
inventory; 2) The incident stellar flux; 3) The tidal evolution of the
planetary spin, which can notably lock a planet with a permanent night side.
The atmospheric composition and mass depends on complex processes which are
difficult to model: origins of volatile, atmospheric escape, geochemistry,
photochemistry. We discuss physical constraints which can help us to speculate
on the possible type of atmosphere, depending on the planet size, its final
distance for its star and the star type. Assuming that the atmosphere is known,
the possible climates can be explored using Global Climate Models analogous to
the ones developed to simulate the Earth as well as the other telluric
atmospheres in the solar system. Our experience with Mars, Titan and Venus
suggests that realistic climate simulators can be developed by combining
components like a "dynamical core", a radiative transfer solver, a
parametrisation of subgrid-scale turbulence and convection, a thermal ground
model, and a volatile phase change code. On this basis, we can aspire to build
reliable climate predictors for exoplanets. However, whatever the accuracy of
the models, predicting the actual climate regime on a specific planet will
remain challenging because climate systems are affected by strong positive
destabilizing feedbacks (such as runaway glaciations and runaway greenhouse
effect). They can drive planets with very similar forcing and volatile
inventory to completely different states.Comment: In press, Proceedings of the Royal Society A 31 pages, 6 figure
A nonparametric model-based estimator for the cumulative distribution function of a right censored variable in a finite population
In survey analysis, the estimation of the cumulative distribution function
(cdf) is of great interest: it allows for instance to derive quantiles
estimators or other non linear parameters derived from the cdf. We consider the
case where the response variable is a right censored duration variable. In this
framework, the classical estimator of the cdf is the Kaplan-Meier estimator. As
an alternative, we propose a nonparametric model-based estimator of the cdf in
a finite population. The new estimator uses auxiliary information brought by a
continuous covariate and is based on nonparametric median regression adapted to
the censored case. The bias and variance of the prediction error of the
estimator are estimated by a bootstrap procedure adapted to censoring. The new
estimator is compared by model-based simulations to the Kaplan-Meier estimator
computed with the sampled individuals: a significant gain in precision is
brought by the new method whatever the size of the sample and the censoring
rate. Welfare duration data are used to illustrate the new methodology.Comment: 18 pages, 5 figure
Maxwell demon in Granular gas: a new kind of bifurcation? The hypercritical bifurcation
This paper starts with the investigation of the behaviour of a set of two
subsystems which are able to exchange some internal quantity according to a
given flux function. It is found that this sytem exhibit a bifurcation when the
flux passes through a maximum and that its kind (super-critical/sub-critical)
depends on the dissymmetry of the flux function near the maximum. It is also
found a new kind of bifurcation when the flux function is symmetric: we call it
hypercritical bifurcation because it generates much stronger fluctuations than
the super-critical one. The effect of a white noise is then investigated. We
show that an experimental set-up, leading to the Maxwell demon in granular gas,
displays all these kinds of bifurcation, just by changing the parameters of
excitation. It means that this system is much less simple as it was thought.Comment: 19 pages, 10 figure
Cluster-Aided Mobility Predictions
Predicting the future location of users in wireless net- works has numerous
applications, and can help service providers to improve the quality of service
perceived by their clients. The location predictors proposed so far estimate
the next location of a specific user by inspecting the past individual
trajectories of this user. As a consequence, when the training data collected
for a given user is limited, the resulting prediction is inaccurate. In this
paper, we develop cluster-aided predictors that exploit past trajectories
collected from all users to predict the next location of a given user. These
predictors rely on clustering techniques and extract from the training data
similarities among the mobility patterns of the various users to improve the
prediction accuracy. Specifically, we present CAMP (Cluster-Aided Mobility
Predictor), a cluster-aided predictor whose design is based on recent
non-parametric bayesian statistical tools. CAMP is robust and adaptive in the
sense that it exploits similarities in users' mobility only if such
similarities are really present in the training data. We analytically prove the
consistency of the predictions provided by CAMP, and investigate its
performance using two large-scale datasets. CAMP significantly outperforms
existing predictors, and in particular those that only exploit individual past
trajectories
Efficient Linear Scaling Approach for Computing the Kubo Hall Conductivity
We report an order-N approach to compute the Kubo Hall conductivity for
disorderd two-dimensional systems reaching tens of millions of orbitals, and
realistic values of the applied external magnetic fields (as low as a few
Tesla). A time-evolution scheme is employed to evaluate the Hall conductivity
using a wavepacket propagation method and a continued fraction
expansion for the computation of diagonal and off-diagonal matrix elements of
the Green functions. The validity of the method is demonstrated by comparison
of results with brute-force diagonalization of the Kubo formula, using
(disordered) graphene as system of study. This approach to mesoscopic system
sizes is opening an unprecedented perspective for so-called reverse engineering
in which the available experimental transport data are used to get a deeper
understanding of the microscopic structure of the samples. Besides, this will
not only allow addressing subtle issues in terms of resistance standardization
of large scale materials (such as wafer scale polycrystalline graphene), but
will also enable the discovery of new quantum transport phenomena in complex
two-dimensional materials, out of reach with classical methods.Comment: submitted PRB pape
Stable variable selection for right censored data: comparison of methods
The instability in the selection of models is a major concern with data sets
containing a large number of covariates. This paper deals with variable
selection methodology in the case of high-dimensional problems where the
response variable can be right censored. We focuse on new stable variable
selection methods based on bootstrap for two methodologies: the Cox
proportional hazard model and survival trees. As far as the Cox model is
concerned, we investigate the bootstrapping applied to two variable selection
techniques: the stepwise algorithm based on the AIC criterion and the
L1-penalization of Lasso. Regarding survival trees, we review two
methodologies: the bootstrap node-level stabilization and random survival
forests. We apply these different approaches to two real data sets. We compare
the methods on the prediction error rate based on the Harrell concordance index
and the relevance of the interpretation of the corresponding selected models.
The aim is to find a compromise between a good prediction performance and ease
to interpretation for clinicians. Results suggest that in the case of a small
number of individuals, a bootstrapping adapted to L1-penalization in the Cox
model or a bootstrap node-level stabilization in survival trees give a good
alternative to the random survival forest methodology, known to give the
smallest prediction error rate but difficult to interprete by
non-statisticians. In a clinical perspective, the complementarity between the
methods based on the Cox model and those based on survival trees would permit
to built reliable models easy to interprete by the clinician.Comment: nombre de pages : 29 nombre de tableaux : 2 nombre de figures :
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