4,892 research outputs found
Role of thermal friction in relaxation of turbulent Bose-Einstein condensates
In recent experiments, the relaxation dynamics of highly oblate, turbulent
Bose-Einstein condensates (BECs) was investigated by measuring the vortex decay
rates in various sample conditions [Phys. Rev. A , 063627 (2014)] and,
separately, the thermal friction coefficient for vortex motion was
measured from the long-time evolution of a corotating vortex pair in a BEC
[Phys. Rev. A , 051601(R) (2015)]. We present a comparative analysis of
the experimental results, and find that the vortex decay rate is
almost linearly proportional to . We perform numerical simulations of
the time evolution of a turbulent BEC using a point-vortex model equipped with
longitudinal friction and vortex-antivortex pair annihilation, and observe that
the linear dependence of on is quantitatively accounted for
in the dissipative point-vortex model. The numerical simulations reveal that
thermal friction in the experiment was too strong to allow for the emergence of
a vortex-clustered state out of decaying turbulence.Comment: 7 pages, 5 figure
Metastable hard-axis polar state of a spinor Bose-Einstein condensate under a magnetic field gradient
We investigate the stability of a hard-axis polar state in a spin-1
antiferromagnetic Bose-Einstein condensate under a magnetic field gradient,
where the easy-plane spin anisotropy is controlled by a negative quadratic
Zeeman energy . In a uniform magnetic field, the axial polar state is
dynamically unstable and relaxes into the planar polar ground state. However,
under a field gradient , the excited spin state becomes metastable down to
a certain threshold and as decreases below , its intrinsic
dynamical instability is rapidly recalled. The incipient spin excitations in
the relaxation dynamics appear with stripe structures, indicating the
rotational symmetry breaking by the field gradient. We measure the dependences
of on and the sample size, and we find that is highly
sensitive to the field gradient in the vicinity of , exhibiting power-law
behavior of with . Our results
demonstrate the significance of the field gradient effect in the quantum
critical dynamics of spinor condensates.Comment: 8 pages, 7 figure
Observation of vortex-antivortex pairing in decaying 2D turbulence of a superfluid gas
In a two-dimensional (2D) classical fluid, a large-scale flow structure
emerges out of turbulence, which is known as the inverse energy cascade where
energy flows from small to large length scales. An interesting question is
whether this phenomenon can occur in a superfluid, which is inviscid and
irrotational by nature. Atomic Bose-Einstein condensates (BECs) of highly
oblate geometry provide an experimental venue for studying 2D superfluid
turbulence, but their full investigation has been hindered due to a lack of the
circulation sign information of individual quantum vortices in a turbulent
sample. Here, we demonstrate a vortex sign detection method by using Bragg
scattering, and we investigate decaying turbulence in a highly oblate BEC at
low temperatures, with our lowest being , where is the
superfluid critical temperature. We observe that weak spatial pairing between
vortices and antivortices develops in the turbulent BEC, which corresponds to
the vortex-dipole gas regime predicted for high dissipation. Our results
provide a direct quantitative marker for the survey of various 2D turbulence
regimes in the BEC system.Comment: 8 pages, 8 figure
Prompt Tuning of Deep Neural Networks for Speaker-adaptive Visual Speech Recognition
Visual Speech Recognition (VSR) aims to infer speech into text depending on
lip movements alone. As it focuses on visual information to model the speech,
its performance is inherently sensitive to personal lip appearances and
movements, and this makes the VSR models show degraded performance when they
are applied to unseen speakers. In this paper, to remedy the performance
degradation of the VSR model on unseen speakers, we propose prompt tuning
methods of Deep Neural Networks (DNNs) for speaker-adaptive VSR. Specifically,
motivated by recent advances in Natural Language Processing (NLP), we finetune
prompts on adaptation data of target speakers instead of modifying the
pre-trained model parameters. Different from the previous prompt tuning methods
mainly limited to Transformer variant architecture, we explore different types
of prompts, the addition, the padding, and the concatenation form prompts that
can be applied to the VSR model which is composed of CNN and Transformer in
general. With the proposed prompt tuning, we show that the performance of the
pre-trained VSR model on unseen speakers can be largely improved by using a
small amount of adaptation data (e.g., less than 5 minutes), even if the
pre-trained model is already developed with large speaker variations. Moreover,
by analyzing the performance and parameters of different types of prompts, we
investigate when the prompt tuning is preferred over the finetuning methods.
The effectiveness of the proposed method is evaluated on both word- and
sentence-level VSR databases, LRW-ID and GRID
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