85 research outputs found
Mean-field theory of collective motion due to velocity alignment
We introduce a system of self-propelled agents (active Brownian particles)
with velocity alignment in two spatial dimensions and derive a mean-field
theory from the microscopic dynamics via a nonlinear Fokker-Planck equation and
a moment expansion of the probability distribution function. We analyze the
stationary solutions corresponding to macroscopic collective motion with finite
center of mass velocity (ordered state) and the disordered solution with no
collective motion in the spatially homogeneous system. In particular, we
discuss the impact of two different propulsion functions governing the
individual dynamics. Our results predict a strong impact of the individual
dynamics on the mean field onset of collective motion (continuous vs
discontinuous). In addition to the macroscopic density and velocity field we
consider explicitly the dynamics of an effective temperature of the agent
system, representing a measure of velocity fluctuations around the mean
velocity. We show that the temperature decreases strongly with increasing level
of collective motion despite constant fluctuations on individual level, which
suggests that extreme caution should be taken in deducing individual behavior,
such as, state-dependent individual fluctuations from mean-field measurements
[Yates {\em et al.}, PNAS, 106 (14), 2009].Comment: corrected version, Ecological Complexity (2011) in pres
Swarming and Pattern Formation due to Selective Attraction and Repulsion
We discuss the collective dynamics of self-propelled particles with selective
attraction and repulsion interactions. Each particle, or individual, may
respond differently to its neighbors depending on the sign of their relative
velocity. Thus, it is able to distinguish approaching (coming closer) and
moving away individuals. This differentiation of the social response is
motivated by the response to looming visual stimuli and may be seen as a
generalization of the previously proposed, biologically motivated, escape and
pursuit interactions. The model can account for different types of behavior
such as pure attraction, pure repulsion, or escape and pursuit depending on the
values (signs) of the different response strengths, and provides, in the light
of recent experimental results, an interesting alternative to previously
proposed models of collective motion with an explicit velocity-alignment
interaction. We show the onset of large scale collective motion in a subregion
of the parameter space, which corresponds to an effective escape and/or pursuit
response. Furthermore, we discuss the observed spatial patterns and show how
kinetic description of the dynamics can be derived from the individual based
model.Comment: Preprint, 24 pages, submitted to Interface Focu
Self-propelled particles with selective attraction-repulsion interaction - From microscopic dynamics to coarse-grained theories
In this work we derive and analyze coarse-grained descriptions of
self-propelled particles with selective attraction-repulsion interaction, where
individuals may respond differently to their neighbours depending on their
relative state of motion (approach versus movement away). Based on the
formulation of a nonlinear Fokker-Planck equation, we derive a kinetic
description of the system dynamics in terms of equations for the Fourier modes
of a one-particle density function. This approach allows effective numerical
investigation of the stability of possible solutions of the system. The
detailed analysis of the interaction integrals entering the equations
demonstrates that divergences at small wavelengths can appear at arbitrary
expansion orders.
Further on, we also derive a hydrodynamic theory by performing a closure at
the level of the second Fourier mode of the one-particle density function. We
show that the general form of equations is in agreement with the theory
formulated by Toner and Tu.
Finally, we compare our analytical predictions on the stability of the
disordered homogeneous solution with results of individual-based simulations.
They show good agreement for sufficiently large densities and non-negligible
short-ranged repulsion. Disagreements of numerical results and the hydrodynamic
theory for weak short-ranged repulsion reveal the existence of a previously
unknown phase of the model consisting of dense, nematically aligned filaments,
which cannot be accounted for by the present Toner and Tu type theory of polar
active matter.Comment: revised version, 37pages, 11 figure
Phase Transitions and Criticality in the Collective Behavior of Animals -- Self-organization and biological function
Collective behaviors exhibited by animal groups, such as fish schools, bird
flocks, or insect swarms are fascinating examples of self-organization in
biology. Concepts and methods from statistical physics have been used to argue
theoretically about the potential consequences of collective effects in such
living systems. In particular, it has been proposed that such collective
systems should operate close to a phase transition, specifically a
(pseudo-)critical point, in order to optimize their capability for collective
computation. In this chapter, we will first review relevant phase transitions
exhibited by animal collectives, pointing out the difficulties of applying
concepts from statistical physics to biological systems. Then we will discuss
the current state of research on the "criticality hypothesis", including
methods for how to measure distance from criticality and specific functional
consequences for animal groups operating near a phase transition. We will
highlight the emerging view that de-emphasizes the optimality of being exactly
at a critical point and instead explores the potential benefits of living
systems being able to tune to an optimal distance from criticality. We will
close by laying out future challenges for studying collective behavior at the
interface of physics and biology.Comment: to appear in "Order, disorder, and criticality", vol. VII, World
Scientific Publishin
Collective predator evasion: Putting the criticality hypothesis to the test
According to the criticality hypothesis, collective biological systems should
operate in a special parameter region, close to so-called critical points,
where the collective behavior undergoes a qualitative change between different
dynamical regimes. Critical systems exhibit unique properties, which may
benefit collective information processing such as maximal responsiveness to
external stimuli. Besides neuronal and gene-regulatory networks, recent
empirical data suggests that also animal collectives may be examples of
self-organized critical systems. However, open questions about
self-organization mechanisms in animal groups remain: Evolutionary adaptation
towards a group-level optimum (group-level selection), implicitly assumed in
the "criticality hypothesis", appears in general not reasonable for
fission-fusion groups composed of non-related individuals. Furthermore,
previous theoretical work relies on non-spatial models, which ignore
potentially important self-organization and spatial sorting effects. Using a
generic, spatially-explicit model of schooling prey being attacked by a
predator, we show first that schools operating at criticality perform best.
However, this is not due to optimal response of the prey to the predator, as
suggested by the "criticality hypothesis", but rather due to the spatial
structure of the prey school at criticality. Secondly, by investigating
individual-level evolution, we show that strong spatial self-sorting effects at
the critical point lead to strong selection gradients, and make it an
evolutionary unstable state. Our results demonstrate the decisive role of
spatio-temporal phenomena in collective behavior, and that individual-level
selection is in general not a viable mechanism for self-tuning of unrelated
animal groups towards criticality
Spatial structure and information transfer in visual networks
In human and animal groups, social interactions often rely on the
transmission of information via visual observation of the behavior of others.
These visual interactions are governed by the laws of physics and sensory
limits. Individuals appear smaller when far away and thus become harder to
detect visually, while close by neighbors tend to occlude large areas of the
visual field and block out interactions with individuals behind them. Here, we
systematically study the effect of a group's spatial structure, its density as
well as polarization and aspect ratio of the physical bodies, on the properties
of the visual interaction network. In such a network individuals are connected
if they can see each other as opposed to other interaction models such as
metric or topological networks that omit these limitations due to the
individual's physical bodies. We study the effect that spatial configuration
has on the static properties of these networks as well as its influence on the
transmission of information or behaviors which we investigate via two generic
models of social contagion. We expect our work to have implications for the
study of animal groups, where it could inform the study of functional benefits
of different macroscopic states. It may also be applicable to the construction
of robotic swarms communicating via vision or for understanding the spread of
panics in human crowds
Individuality in Swarm Robots with the Case Study of Kilobots: Noise, Bug, or Feature?
Inter-individual differences are studied in natural systems, such as fish,
bees, and humans, as they contribute to the complexity of both individual and
collective behaviors. However, individuality in artificial systems, such as
robotic swarms, is undervalued or even overlooked. Agent-specific deviations
from the norm in swarm robotics are usually understood as mere noise that can
be minimized, for example, by calibration. We observe that robots have
consistent deviations and argue that awareness and knowledge of these can be
exploited to serve a task. We measure heterogeneity in robot swarms caused by
individual differences in how robots act, sense, and oscillate. Our use case is
Kilobots and we provide example behaviors where the performance of robots
varies depending on individual differences. We show a non-intuitive example of
phototaxis with Kilobots where the non-calibrated Kilobots show better
performance than the calibrated supposedly ``ideal" one. We measure the
inter-individual variations for heterogeneity in sensing and oscillation, too.
We briefly discuss how these variations can enhance the complexity of
collective behaviors. We suggest that by recognizing and exploring this new
perspective on individuality, and hence diversity, in robotic swarms, we can
gain a deeper understanding of these systems and potentially unlock new
possibilities for their design and implementation of applications.Comment: Accepted at the 2023 Conference on Artificial Life (ALife). To see
the 9 Figures in large check this repo:
https://github.com/mohsen-raoufi/Kilobots-Individuality-ALife-23/tree/main/Figure
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