4,475 research outputs found
Quantum-coherent phase oscillations in synchronization
Recently, several studies have investigated synchronization in
quantum-mechanical limit-cycle oscillators. However, the quantum nature of
these systems remained partially hidden, since the dynamics of the oscillator's
phase was overdamped and therefore incoherent. We show that there exist regimes
of underdamped and even quantum-coherent phase motion, opening up new
possibilities to study quantum synchronization dynamics. To this end, we
investigate the Van der Pol oscillator (a paradigm for a self-oscillating
system) synchronized to an external drive. We derive an effective quantum model
which fully describes the regime of underdamped phase motion and additionally
allows us to identify the quality of quantum coherence. Finally, we identify
quantum limit cycles of the phase itself.Comment: 6 pages + Supplemental Materia
Dynamically Generated Synthetic Electric Fields for Photons
Static synthetic magnetic fields give rise to phenomena including the Lorentz
force and the quantum Hall effect even for neutral particles, and they have by
now been implemented in a variety of physical systems. Moving towards fully
dynamical synthetic gauge fields allows, in addition, for backaction of the
particles' motion onto the field. If this results in a time-dependent vector
potential, conventional electromagnetism predicts the generation of an electric
field. Here, we show how synthetic electric fields for photons arise
self-consistently due to the nonlinear dynamics in a driven system. Our
analysis is based on optomechanical arrays, where dynamical gauge fields arise
naturally from phonon-assisted photon tunneling. We study open, one-dimensional
arrays, where synthetic magnetic fields are absent. However, we show that
synthetic electric fields can be generated dynamically, which, importantly,
suppress photon transport in the array. The generation of these fields depends
on the direction of photon propagation, leading to a novel mechanism for a
photon diode, inducing nonlinear nonreciprocal transport via dynamical
synthetic gauge fields.Comment: 12 pages, 5 figures; Fig. 2 and Fig. 3 modified in v2; paragraph "The
basic physics behind our results" added in v2; revised introduction including
new references in v3; Fig. 1 modified in v3; extended supplementary material
in v
Finite-temperature evaluation of the Fermi density operator
A rational expansion of the Fermi density operator is proposed. This approach
allows to calculate efficiently physical properties of fermionic systems at
finite temperatures without solving an eigenvalue problem. Using N evaluations
of the Green's function, the Fermi density operator can be approximated,
subject to a given precision, in the energy interval from -A to infinity with A
proportional to N. The presented method may become especially useful for
electronic structure calculations involving the calculation of charge
densities.Comment: 6 pages, 4 Postscript figures, submitted to J. Comp. Phy
Recommended from our members
Learning Spiking Neural Controllers for In-Silico Navigation Experiments
Artificial neural networks have been employed in many areas of cognitive systems research, ranging from low-levelcontrol tasks to high-level cognition. However, there is only little work on the use of spiking neural networks in these fields.In this project, we developed a virtual environment to explore solving navigation tasks using spiking neural networks. We firstused an existing experimental setup and compared the results to validate the developed environment. An evolutionary approachis used to set the parameters of a spiking neural network controlling a robot to navigate without collisions. In a second set ofexperiments, we trained the network via reinforcement learning which was implemented as a reward-based STDP protocol. Ourresults validate the correctness of the developed virtual environment and demonstrate the usefulness of using such a platform.The virtual environment guarantees the reproducibility of our experiments and can be easily adapted for future research
Exploiting Image-trained CNN Architectures for Unconstrained Video Classification
We conduct an in-depth exploration of different strategies for doing event
detection in videos using convolutional neural networks (CNNs) trained for
image classification. We study different ways of performing spatial and
temporal pooling, feature normalization, choice of CNN layers as well as choice
of classifiers. Making judicious choices along these dimensions led to a very
significant increase in performance over more naive approaches that have been
used till now. We evaluate our approach on the challenging TRECVID MED'14
dataset with two popular CNN architectures pretrained on ImageNet. On this
MED'14 dataset, our methods, based entirely on image-trained CNN features, can
outperform several state-of-the-art non-CNN models. Our proposed late fusion of
CNN- and motion-based features can further increase the mean average precision
(mAP) on MED'14 from 34.95% to 38.74%. The fusion approach achieves the
state-of-the-art classification performance on the challenging UCF-101 dataset
Asymptotic performance of port-based teleportation
Quantum teleportation is one of the fundamental building blocks of quantum
Shannon theory. While ordinary teleportation is simple and efficient,
port-based teleportation (PBT) enables applications such as universal
programmable quantum processors, instantaneous non-local quantum computation
and attacks on position-based quantum cryptography. In this work, we determine
the fundamental limit on the performance of PBT: for arbitrary fixed input
dimension and a large number of ports, the error of the optimal protocol is
proportional to the inverse square of . We prove this by deriving an
achievability bound, obtained by relating the corresponding optimization
problem to the lowest Dirichlet eigenvalue of the Laplacian on the ordered
simplex. We also give an improved converse bound of matching order in the
number of ports. In addition, we determine the leading-order asymptotics of PBT
variants defined in terms of maximally entangled resource states. The proofs of
these results rely on connecting recently-derived representation-theoretic
formulas to random matrix theory. Along the way, we refine a convergence result
for the fluctuations of the Schur-Weyl distribution by Johansson, which might
be of independent interest.Comment: 68 pages, 4 figures; comments welcome! v2: minor fixes, added plots
comparing asymptotic expansions to exact formulas, code available at
https://github.com/amsqi/port-base
Kurswertreaktionen auf die Ankündigung von Going Private : Transaktionen am deutschen Kapitalmarkt
Der Beitrag ist wie folgt aufgebaut. In Abschnitt 2 wird zunächst der Begriff des Going Private definiert und anhand kurzer Ausführungen zu den handelnden Akteuren Einblicke in die Funktionsweise des deutschen Going Private-Marktes vermittelt. In Abschnitt 3 wird die zu überprüfende Hypothese abgeleitet, dass eine Going Private-Ankündigung mit einer positiven Kurswertreaktion verbunden ist. Abschnitt 4 legt den Prozess der Stichprobenauswahl offen und liefert einige deskriptive Informationen zur Marktkapitalisierung deutscher Going Private- Unternehmen. Anschließend wird in Abschnitt 5 die verwendete Untersuchungsmethode der Ereignisstudie beschrieben. Im nachfolgenden Abschnitt 6 werden die Untersuchungsergebnisse präsentiert. Dabei wird nicht nur die Hypothese überprüft, dass Going Private- Ankündigungen eine positive Kurswertreaktion hervorrufen. Vielmehr werden auch Aussagen über die Geschwindigkeit der Kursanpassung getroffen. In Abschnitt 7 wird ferner untersucht, inwiefern sich die kumulierten abnormalen Renditen bezüglich spezifischer Charakteristika der Going Private-Transaktionen unterscheiden. Der abschließende Abschnitt 8 fasst die Ergebnisse der Untersuchung zusammen. --
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