1,683 research outputs found
Spreading Dynamics of Nanodrops: A Lattice Boltzmann Study
Spreading of nano-droplets is an interesting and technologically relevant
phenomenon where thermal fluctuations lead to unexpected deviations from
well-known deterministic laws. Here, we apply the newly developed fluctuating
non-ideal lattice Boltzmann method [Gross et al., J. Stat. Mech., P03030
(2011)] for the study of this issue. Confirming the predictions of Davidovich
and coworkers [PRL 95, 244905 (2005)], we provide the first independent
evidence for the existence of an asymptotic, self-similar noise-driven
spreading regime in both two- and three-dimensional geometry. The cross over
from the deterministic Tanner's law, where the drop's base radius grows (in
3D) with time as and the noise dominated regime where is also observed by tuning the strength of thermal noise.Comment: 5 page
Interfacial roughening in non-ideal fluids: Dynamic scaling in the weak- and strong-damping regime
Interfacial roughening denotes the nonequilibrium process by which an
initially flat interface reaches its equilibrium state, characterized by the
presence of thermally excited capillary waves. Roughening of fluid interfaces
has been first analyzed by Flekkoy and Rothman [Phys. Rev. Lett. 75, 260
(1995)], where the dynamic scaling exponents in the weakly damped case in two
dimensions were found to agree with the Kardar-Parisi-Zhang universality class.
We extend this work by taking into account also the strong-damping regime and
perform extensive fluctuating hydrodynamics simulations in two dimensions using
the Lattice Boltzmann method. We show that the dynamic scaling behavior is
different in the weakly and strongly damped case.Comment: 15 pages, 9 figure
Offshore wind energy climate projection using UPSCALE climate data under the RCP8.5 emission scenario
Recently it was demonstrated how climate data can be utilized to estimate
regional wind power densities. In particular it was shown that the quality of
the global scale estimate compared well with regional high resolution studies
and a link between surface temperature and moist density in the estimate was
presented. In the present paper the methodology is tested further, to ensure
that the results using one climate data set are reliable. This is achieved by
extending the study to include four ensemble members. With the confidence that
one instantiation is sufficient a climate change data set, which was also a
result of the UPSCALE experiment, is analyzed. This, for the first time,
provides a projection of future changes in wind power resources using this data
set. This climate change data set is based on the Representative Concentration
Pathways (RCP) 8.5 climate change scenario. This provides guidance for
developers and policy makers to mitigate and adapt
Shear-density coupling for a compressible single-component yield-stress fluid
Flow behavior of a single-component yield stress fluid is addressed on the
hydrodynamic level. A basic ingredient of the model is a coupling between
fluctuations of density and velocity gradient via a Herschel-Bulkley-type
constitutive model. Focusing on the limit of low shear rates and high
densities, the model approximates well---but is not limited to---gently sheared
hard sphere colloidal glasses, where solvent effects are negligible. A detailed
analysis of the linearized hydrodynamic equations for fluctuations and the
resulting cubic dispersion relation reveals the existence of a range of
densities and shear rates with growing flow heterogeneity. In this regime,
after an initial transient, the velocity and density fields monotonically reach
a spatially inhomogeneous stationary profile, where regions of high shear rate
and low density coexist with regions of low shear rate and high density. The
steady state is thus maintained by a competition between shear-induced
enhancement of density inhomogeneities and relaxation via overdamped sound
waves. An analysis of the mechanical equilibrium condition provides a criterion
for the existence of steady state solutions. The dynamical evolution of the
system is discussed in detail for various boundary conditions, imposing either
a constant velocity, shear rate, or stress at the walls.Comment: 18 pages, 14 figure
Brain rhythms of pain
Pain is an integrative phenomenon that results from dynamic interactions between sensory and contextual (i.e., cognitive, emotional, and motivational) processes. In the brain the experience of pain is associated with neuronal oscillations and synchrony at different frequencies. However, an overarching framework for the significance of oscillations for pain remains lacking. Recent concepts relate oscillations at different frequencies to the routing of information flow in the brain and the signaling of predictions and prediction errors. The application of these concepts to pain promises insights into how flexible routing of information flow coordinates diverse processes that merge into the experience of pain. Such insights might have implications for the understanding and treatment of chronic pain
Fall and rise of small droplets on rough hydrophobic substrates
Liquid droplets on patterned hydrophobic substrates are typically observed
either in the Wenzel or the Cassie state. Here we show that for droplets of
comparable size to the roughness scale an additional local equilibrium state
exists, where the droplet is immersed in the texture, but not yet contacts the
bottom grooves. Upon evaporation, a droplet in this state enters the Cassie
state, leading to a qualitatively new self-cleaning mechanism. The effect is of
generic character and is expected to occur in any hydrophobic capillary wetting
situation where a spherical liquid reservoir is involved.Comment: 6 pages, 6 figures, version as published in EP
Dynamics of the critical Casimir force for a conserved order parameter after a critical quench
Fluctuation-induced forces occur generically when long-ranged correlations
(e.g., in fluids) are confined by external bodies. In classical systems, such
correlations require specific conditions, e.g., a medium close to a critical
point. On the other hand, long-ranged correlations appear more commonly in
certain non-equilibrium systems with conservation laws. Consequently, a variety
of non-equilibrium fluctuation phenomena, including fluctuation-induced forces,
have been discovered and explored recently. Here, we address a long-standing
problem of non-equilibrium critical Casimir forces emerging after a quench to
the critical point in a confined fluid with order-parameter-conserving dynamics
and non-symmetry-breaking boundary conditions. The interplay of inherent
(critical) fluctuations and dynamical non-local effects (due to density
conservation) gives rise to striking features, including correlation functions
and forces exhibiting oscillatory time-dependences. Complex transient regimes
arise, depending on initial conditions and the geometry of the confinement. Our
findings pave the way for exploring a wealth of non-equilibrium processes in
critical fluids (e.g., fluctuation-mediated self-assembly or aggregation). In
certain regimes, our results are applicable to active matter.Comment: 38 pages, 11 figure
Towards better understanding of gradient-based attribution methods for Deep Neural Networks
Understanding the flow of information in Deep Neural Networks (DNNs) is a
challenging problem that has gain increasing attention over the last few years.
While several methods have been proposed to explain network predictions, there
have been only a few attempts to compare them from a theoretical perspective.
What is more, no exhaustive empirical comparison has been performed in the
past. In this work, we analyze four gradient-based attribution methods and
formally prove conditions of equivalence and approximation between them. By
reformulating two of these methods, we construct a unified framework which
enables a direct comparison, as well as an easier implementation. Finally, we
propose a novel evaluation metric, called Sensitivity-n and test the
gradient-based attribution methods alongside with a simple perturbation-based
attribution method on several datasets in the domains of image and text
classification, using various network architectures.Comment: ICLR 201
A Neural Multi-sequence Alignment TeCHnique (NeuMATCH)
The alignment of heterogeneous sequential data (video to text) is an
important and challenging problem. Standard techniques for this task, including
Dynamic Time Warping (DTW) and Conditional Random Fields (CRFs), suffer from
inherent drawbacks. Mainly, the Markov assumption implies that, given the
immediate past, future alignment decisions are independent of further history.
The separation between similarity computation and alignment decision also
prevents end-to-end training. In this paper, we propose an end-to-end neural
architecture where alignment actions are implemented as moving data between
stacks of Long Short-term Memory (LSTM) blocks. This flexible architecture
supports a large variety of alignment tasks, including one-to-one, one-to-many,
skipping unmatched elements, and (with extensions) non-monotonic alignment.
Extensive experiments on semi-synthetic and real datasets show that our
algorithm outperforms state-of-the-art baselines.Comment: Accepted at CVPR 2018 (Spotlight). arXiv file includes the paper and
the supplemental materia
- …