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Hauptverfasser: Jacob, Thomas, Mohapatra, Siddhant, A, Rajalingam, Mathew, Sam, Mahapatra, Pallab Sinha
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2510.04305
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author Jacob, Thomas
Mohapatra, Siddhant
A, Rajalingam
Mathew, Sam
Mahapatra, Pallab Sinha
author_facet Jacob, Thomas
Mohapatra, Siddhant
A, Rajalingam
Mathew, Sam
Mahapatra, Pallab Sinha
contents Controlled activity of active entities interacting with a passive environment can generate emergent system-level phenomena, positioning such systems as promising platforms for potential downstream applications in targeted drug delivery, adaptive and reconfigurable materials, microfluidic transport and related fields. The present work aims to realise an optimal mixing of two segregated species of passive particles by introducing a small fraction of active particles (2% by composition) with adaptive and intelligent behaviour, directed by a trained Artificial Neural Network-based agent. While conventional run-and-tumble particles can induce mixing in the system, the smart active particles demonstrate superior performance, achieving faster and more efficient mixing. Interestingly, an optimal mixing strategy doesn't involve a uniform dispersion of active particles in the domain, but rather limiting their motion to an eccentrically placed zone of activity, inducing a global rotational motion of the passive particles about the system centre. A transition in the directionality of the passive particles' motion is observed along the radius towards the centre, likening the active particles' motion to an ellipse-shaped void with a defined surface speed. Situated at the intersection of active matter and machine learning, this work highlights the potential of integrating adaptive learning frameworks into traditional active matter models.
format Preprint
id arxiv_https___arxiv_org_abs_2510_04305
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Mixing of a binary passive particle system using smart active particles
Jacob, Thomas
Mohapatra, Siddhant
A, Rajalingam
Mathew, Sam
Mahapatra, Pallab Sinha
Soft Condensed Matter
Computational Physics
Controlled activity of active entities interacting with a passive environment can generate emergent system-level phenomena, positioning such systems as promising platforms for potential downstream applications in targeted drug delivery, adaptive and reconfigurable materials, microfluidic transport and related fields. The present work aims to realise an optimal mixing of two segregated species of passive particles by introducing a small fraction of active particles (2% by composition) with adaptive and intelligent behaviour, directed by a trained Artificial Neural Network-based agent. While conventional run-and-tumble particles can induce mixing in the system, the smart active particles demonstrate superior performance, achieving faster and more efficient mixing. Interestingly, an optimal mixing strategy doesn't involve a uniform dispersion of active particles in the domain, but rather limiting their motion to an eccentrically placed zone of activity, inducing a global rotational motion of the passive particles about the system centre. A transition in the directionality of the passive particles' motion is observed along the radius towards the centre, likening the active particles' motion to an ellipse-shaped void with a defined surface speed. Situated at the intersection of active matter and machine learning, this work highlights the potential of integrating adaptive learning frameworks into traditional active matter models.
title Mixing of a binary passive particle system using smart active particles
topic Soft Condensed Matter
Computational Physics
url https://arxiv.org/abs/2510.04305