151 research outputs found
Lifschitz Tails for Random Schr\"{o}dinger Operator in Bernoulli Distributed Potentials
This paper presents an elementary proof of Lifschitz tail behavior for random
discrete Schr\"{o}dinger operators with a Bernoulli-distributed potential. The
proof approximates the low eigenvalues by eigenvalues of sine waves supported
where the potential takes its lower value. This is motivated by the idea that
the eigenvectors associated to the low eigenvalues react to the jump in the
values of the potential as if the gap were infinite
Phototactic Robot Tunable by Sensorial Delays
The presence of a delay between sensing and reacting to a signal can
determine the long-term behavior of autonomous agents whose motion is
intrinsically noisy. In a previous work [M. Mijalkov, A. McDaniel, J. Wehr, and
G. Volpe, Phys. Rev. X 6, 011008 (2016)], we have shown that sensorial delay
can alter the drift and the position probability distribution of an autonomous
agent whose speed depends on the illumination intensity it measures. Here,
using theory, simulations, and experiments with a phototactic robot, we
generalize this effect to an agent for which both speed and rotational
diffusion depend on the illumination intensity and are subject to two
independent sensorial delays. We show that both the drift and the probability
distribution are influenced by the presence of these sensorial delays. In
particular, the radial drift may have positive as well as negative sign, and
the position probability distribution peaks in different regions depending on
the delay. Furthermore, the presence of multiple sensorial delays permits us to
explore the role of the interaction between them.Comment: 13 pages, 6 figure
The Smoluchowski-Kramers limit of stochastic differential equations with arbitrary state-dependent friction
We study a class of systems of stochastic differential equations describing
diffusive phenomena. The Smoluchowski-Kramers approximation is used to describe
their dynamics in the small mass limit. Our systems have arbitrary
state-dependent friction and noise coefficients. We identify the limiting
equation and, in particular, the additional drift term that appears in the
limit is expressed in terms of the solution to a Lyapunov matrix equation. The
proof uses a theory of convergence of stochastic integrals developed by Kurtz
and Protter. The result is sufficiently general to include systems driven by
both white and Ornstein-Uhlenbeck colored noises. We discuss applications of
the main theorem to several physical phenomena, including the experimental
study of Brownian motion in a diffusion gradient.Comment: This paper has been corrected from a previous version. Author Austin
McDaniel has been added. Lemma 2 has been rewritten, Lemma 3 added, previous
version's Lemma 3 moved to Lemma 4. 20 pages, 1 figur
Engineering sensorial delay to control phototaxis and emergent collective behaviors
Collective motions emerging from the interaction of autonomous mobile
individuals play a key role in many phenomena, from the growth of bacterial
colonies to the coordination of robotic swarms. For these collective behaviours
to take hold, the individuals must be able to emit, sense and react to signals.
When dealing with simple organisms and robots, these signals are necessarily
very elementary, e.g. a cell might signal its presence by releasing chemicals
and a robot by shining light. An additional challenge arises because the motion
of the individuals is often noisy, e.g. the orientation of cells can be altered
by Brownian motion and that of robots by an uneven terrain. Therefore, the
emphasis is on achieving complex and tunable behaviors from simple autonomous
agents communicating with each other in robust ways. Here, we show that the
delay between sensing and reacting to a signal can determine the individual and
collective long-term behavior of autonomous agents whose motion is
intrinsically noisy. We experimentally demonstrate that the collective
behaviour of a group of phototactic robots capable of emitting a radially
decaying light field can be tuned from segregation to aggregation and
clustering by controlling the delay with which they change their propulsion
speed in response to the light intensity they measure. We track this transition
to the underlying dynamics of this system, in particular, to the ratio between
the robots' sensorial delay time and the characteristic time of the robots'
random reorientation. Supported by numerics, we discuss how the same mechanism
can be applied to control active agents, e.g. airborne drones, moving in a
three-dimensional space.Comment: 8 pages, 5 figure
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