89 research outputs found
Nonuniversal power-law spectra in turbulent systems
Turbulence is generally associated with universal power-law spectra in scale
ranges without significant drive or damping. Although many examples of
turbulent systems do not exhibit such an inertial range, power-law spectra may
still be observed. As a simple model for such situations, a modified version of
the Kuramoto-Sivashinsky equation is studied. By means of semi-analytical and
numerical studies, one finds power laws with nonuniversal exponents in the
spectral range for which the ratio of nonlinear and linear time scales is
(roughly) scale-independent.Comment: 5 pages, 5 figure
Identification of vortexes obstructing the dynamo mechanism in laboratory experiments
The magnetohydrodynamic dynamo effect explains the generation of
self-sustained magnetic fields in electrically conducting flows, especially in
geo- and astrophysical environments. Yet the details of this mechanism are
still unknown, e.g., how and to which extent the geometry, the fluid topology,
the forcing mechanism and the turbulence can have a negative effect on this
process. We report on numerical simulations carried out in spherical geometry,
analyzing the predicted velocity flow with the so-called Singular Value
Decomposition, a powerful technique that allows us to precisely identify
vortexes in the flow which would be difficult to characterize with conventional
spectral methods. We then quantify the contribution of these vortexes to the
growth rate of the magnetic energy in the system. We identify an axisymmetric
vortex, whose rotational direction changes periodically in time, and whose
dynamics are decoupled from those of the large scale background flow, is
detrimental for the dynamo effect. A comparison with experiments is carried
out, showing that similar dynamics were observed in cylindrical geometry. These
previously unexpected eddies, which impede the dynamo effect, offer an
explanation for the experimental difficulties in attaining a dynamo in
spherical geometry.Comment: 25 pages, 12 figures, submitted to Physics of Fluid
Physics-Preserving AI-Accelerated Simulations of Plasma Turbulence
Turbulence in fluids, gases, and plasmas remains an open problem of both
practical and fundamental importance. Its irreducible complexity usually cannot
be tackled computationally in a brute-force style. Here, we combine Large Eddy
Simulation (LES) techniques with Machine Learning (ML) to retain only the
largest dynamics explicitly, while small-scale dynamics are described by an
ML-based sub-grid-scale model. Applying this novel approach to self-driven
plasma turbulence allows us to remove large parts of the inertial range,
reducing the computational effort by about three orders of magnitude, while
retaining the statistical physical properties of the turbulent system
How turbulence regulates biodiversity in systems with cyclic competition
Cyclic, nonhierarchical interactions among biological species represent a
general mechanism by which ecosystems are able to maintain high levels of
biodiversity. However, species coexistence is often possible only in spatially
extended systems with a limited range of dispersal, whereas in well-mixed
environments models for cyclic competition often lead to a loss of
biodiversity. Here we consider the dispersal of biological species in a fluid
environment, where mixing is achieved by a combination of advection and
diffusion. In particular, we perform a detailed numerical analysis of a model
composed of turbulent advection, diffusive transport, and cyclic interactions
among biological species in two spatial dimensions and discuss the
circumstances under which biodiversity is maintained when external
environmental conditions, such as resource supply, are uniform in space. Cyclic
interactions are represented by a model with three competitors, resembling the
children's game of rock-paper-scissors, whereas the flow field is obtained from
a direct numerical simulation of two-dimensional turbulence with
hyperviscosity. It is shown that the space-averaged dynamics undergoes
bifurcations as the relative strengths of advection and diffusion compared to
biological interactions are varied.Comment: 13 pages, 13 figures; accepted for publication in Phys. Rev.
A general framework for quantifying uncertainty at scale
In many fields of science, comprehensive and realistic computational models
are available nowadays. Often, the respective numerical calculations call for
the use of powerful supercomputers, and therefore only a limited number of
cases can be investigated explicitly. This prevents straightforward approaches
to important tasks like uncertainty quantification and sensitivity analysis.
This challenge can be overcome via our recently developed sensitivity-driven
dimension adaptive sparse grid interpolation strategy. The method exploits, via
adaptivity, the structure of the underlying model (such as lower intrinsic
dimensionality and anisotropic coupling of the uncertain inputs) to enable
efficient and accurate uncertainty quantification and sensitivity analysis at
scale. We demonstrate the efficiency of our approach in the context of fusion
research, in a realistic, computationally expensive scenario of turbulent
transport in a magnetic confinement tokamak device with eight uncertain
parameters, reducing the effort by at least two orders of magnitude. In
addition, we show that our method intrinsically provides an accurate surrogate
model that is nine orders of magnitude cheaper than the high-fidelity model.Comment: 19 pages, 6 figures, 1 tabl
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