New! Sign up for our free email newsletter.
Science News
from research organizations

Building better diffusion models for active systems

Date:
November 19, 2020
Source:
Springer
Summary:
Modifications to existing theories have enabled researchers to better understand and model the dynamics of systems which don't obey conventional laws of diffusion.
Share:
FULL STORY

In normal circumstances, particles will follow well-established random motions as they diffuse through liquids and gases. Yet in some types of system, this behaviour can be disrupted -- meaning the diffusion motions of particles are no longer influenced by the outcomes of chains of previous events.

Through research published in EPJ E, Bernhard Mitterwallner, a Ph.D. student in the team of Roland Netz at the Free University of Berlin, Germany, has developed new theories detailing how these unusual dynamics can be reproduced in generalised mathematical models.

The team's approach could enable researchers to learn more about behaviours including the transport of biological cells, and the motions of 'active' materials -- whose particles harvest energy in their surrounding environments to propel themselves forwards. Typically, these diffusion characteristics only appear briefly as systems transition between stable states -- but under the right conditions, they can persist over far longer timescales. Researchers can study this effect by introducing a 'memory term' into their calculations, which can account for the influences of past events on different timescales. Several studies have now used this principle to explore how this 'transient persistent motion' can be captured in models of viscoelastic media -- which can resist deformation when stress is applied.

The authors took a more general approach in their study; basing their calculations around an equation of motion which offered a useful framework for describing unconventional diffusion behaviours. When adding a memory term into the equation, their models give rise to transient persistent motion in a range of different systems, which had not been explored in previous studies. The team's results could now enable researchers to accurately model diffusion behaviours in a broader range of situations -- and could be particularly useful for studies of advanced materials which respond to their surrounding environments.


Story Source:

Materials provided by Springer. Note: Content may be edited for style and length.


Journal Reference:

  1. Bernhard G. Mitterwallner, Laura Lavacchi, Roland R. Netz. Negative friction memory induces persistent motion. The European Physical Journal E, 2020; 43 (10) DOI: 10.1140/epje/i2020-11992-5

Cite This Page:

Springer. "Building better diffusion models for active systems." ScienceDaily. ScienceDaily, 19 November 2020. <www.sciencedaily.com/releases/2020/11/201119124617.htm>.
Springer. (2020, November 19). Building better diffusion models for active systems. ScienceDaily. Retrieved December 21, 2024 from www.sciencedaily.com/releases/2020/11/201119124617.htm
Springer. "Building better diffusion models for active systems." ScienceDaily. www.sciencedaily.com/releases/2020/11/201119124617.htm (accessed December 21, 2024).

Explore More

from ScienceDaily

RELATED STORIES