On the microscopic origin and macroscopic implications of lane formation in mixtures of oppositely-driven particles
Katherine Klymko, Phillip L. Geissler, Stephen Whitelam

TL;DR
This study uses simulations to explore how lane formation in mixtures of oppositely-driven particles arises from diffusion rectification, revealing a phase transition-like behavior influenced by environment-dependent diffusion and effective attractions.
Contribution
It demonstrates that lane formation results from geometric diffusion constraints and predicts a linear relationship between diffusion constant and Peclet number, linking microscopic dynamics to macroscopic phase behavior.
Findings
Diffusion perpendicular to drive must be about one particle diameter for laning.
Diffusion constant grows linearly with Peclet number.
Features resemble driven Ising lattice gas with long-range correlations.
Abstract
Colloidal particles of two types, driven in opposite directions, can segregate into lanes [Vissers et al. Soft Matter 7, 2352 (2011)]. This phenomenon can be reproduced by two-dimensional Brownian dynamics simulations of model particles [Dzubiella et al. Phys. Rev. E 65, 021402 (2002)]. Here we use computer simulation to assess the generality of lane formation with respect to variation of particle type and dynamical protocol. We find that laning results from rectification of diffusion on the scale of a particle diameter: oppositely-driven particles must, in the time taken to encounter each other in the direction of the drive, diffuse in the perpendicular direction by about one particle diameter. This geometric constraint implies that the diffusion constant of a particle, in the presence of those of the opposite type, grows approximately linearly with Peclet number, a prediction…
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