The processing of information is an indispensable property of
living systems realized by networks of active processes with
enormous complexity. They have inspired many variants of modern
machine learning, one of them being reservoir computing, in which
stimulating a network of nodes with fading memory enables
computations and complex predictions. Reservoirs are implemented
on computer hardware, but also on unconventional physical
substrates such as mechanical oscillators, spins, or bacteria
often summarized as physical reservoir computing. Here we
demonstrate physical reservoir computing with a synthetic active
microparticle system that self-organizes from an active and
passive component into inherently noisy nonlinear dynamical
units. The self-organization and dynamical response of the unit
are the results of a delayed propulsion of the microswimmer to a
passive target. A reservoir of such units with a self-coupling
via the delayed response can perform predictive tasks despite the
strong noise resulting from the Brownian motion of the
microswimmers. To achieve efficient noise suppression, we
introduce a special architecture that uses historical reservoir
states for output. Our results pave the way for the study of
information processing in synthetic self-organized active
particle systems.
%0 Journal Article
%1 Wang2024-lf
%A Wang, Xiangzun
%A Cichos, Frank
%D 2024
%J Nat. Commun.
%K Harnessing active computing particles physical reservoir synthetic
%N 1
%P 774
%T Harnessing synthetic active particles for physical reservoir computing
%V 15
%X The processing of information is an indispensable property of
living systems realized by networks of active processes with
enormous complexity. They have inspired many variants of modern
machine learning, one of them being reservoir computing, in which
stimulating a network of nodes with fading memory enables
computations and complex predictions. Reservoirs are implemented
on computer hardware, but also on unconventional physical
substrates such as mechanical oscillators, spins, or bacteria
often summarized as physical reservoir computing. Here we
demonstrate physical reservoir computing with a synthetic active
microparticle system that self-organizes from an active and
passive component into inherently noisy nonlinear dynamical
units. The self-organization and dynamical response of the unit
are the results of a delayed propulsion of the microswimmer to a
passive target. A reservoir of such units with a self-coupling
via the delayed response can perform predictive tasks despite the
strong noise resulting from the Brownian motion of the
microswimmers. To achieve efficient noise suppression, we
introduce a special architecture that uses historical reservoir
states for output. Our results pave the way for the study of
information processing in synthetic self-organized active
particle systems.
@article{Wang2024-lf,
abstract = {The processing of information is an indispensable property of
living systems realized by networks of active processes with
enormous complexity. They have inspired many variants of modern
machine learning, one of them being reservoir computing, in which
stimulating a network of nodes with fading memory enables
computations and complex predictions. Reservoirs are implemented
on computer hardware, but also on unconventional physical
substrates such as mechanical oscillators, spins, or bacteria
often summarized as physical reservoir computing. Here we
demonstrate physical reservoir computing with a synthetic active
microparticle system that self-organizes from an active and
passive component into inherently noisy nonlinear dynamical
units. The self-organization and dynamical response of the unit
are the results of a delayed propulsion of the microswimmer to a
passive target. A reservoir of such units with a self-coupling
via the delayed response can perform predictive tasks despite the
strong noise resulting from the Brownian motion of the
microswimmers. To achieve efficient noise suppression, we
introduce a special architecture that uses historical reservoir
states for output. Our results pave the way for the study of
information processing in synthetic self-organized active
particle systems.},
added-at = {2025-01-07T14:43:54.000+0100},
author = {Wang, Xiangzun and Cichos, Frank},
biburl = {https://puma.scadsai.uni-leipzig.de/bibtex/2c13d0b5f2471ad99b69a70d804c05a6f/scadsfct},
interhash = {1b70a66e6df22c0f0a56ffff95a9a8df},
intrahash = {c13d0b5f2471ad99b69a70d804c05a6f},
journal = {Nat. Commun.},
keywords = {Harnessing active computing particles physical reservoir synthetic},
language = {en},
month = jan,
number = 1,
pages = 774,
timestamp = {2025-01-07T14:43:54.000+0100},
title = {Harnessing synthetic active particles for physical reservoir computing},
volume = 15,
year = 2024
}