Task-Adaptive Physical Reservoir Computing via Tunable Molecular Communication Dynamics
Saad Yousuf, Kaan Burak Ikiz, Murat Kuscu

TL;DR
This paper demonstrates that a molecular communication channel can be reconfigured as a versatile, task-adaptive physical reservoir computer by tuning biophysical parameters, enabling optimized performance for different computational tasks.
Contribution
It introduces a tunable in silico molecular communication reservoir computing model and an optimization framework for task-specific reconfiguration.
Findings
Tuning biophysical parameters enables reservoir adaptation for different tasks.
Memory-rich regimes excel at chaotic time-series forecasting.
Receptor nonlinearity regimes improve nonlinear data transformation.
Abstract
Physical Reservoir Computing (PRC) offers an efficient paradigm for processing temporal data, yet most physical implementations are static, limiting their performance to a narrow range of tasks. In this work, we demonstrate in silico that a canonical Molecular Communication (MC) channel can function as a highly versatile and task-adaptive PRC whose computational properties are reconfigurable. Using a dual-simulation approach -- a computationally efficient deterministic mean-field model and a high-fidelity particle-based stochastic model (Smoldyn) -- we show that tuning the channel's underlying biophysical parameters, such as ligand-receptor kinetics and diffusion dynamics, allows the reservoir to be optimized for distinct classes of computation. We employ Bayesian optimization to efficiently navigate this high-dimensional parameter space, identifying discrete operational regimes. Our…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Advanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices
