Reservoir Computing with a Single Oscillating Gas Bubble: Emphasizing the Chaotic Regime
- URL: http://arxiv.org/abs/2504.07221v1
- Date: Tue, 25 Mar 2025 23:32:09 GMT
- Title: Reservoir Computing with a Single Oscillating Gas Bubble: Emphasizing the Chaotic Regime
- Authors: Hend Abdel-Ghani, A. H. Abbas, Ivan S. Maksymov,
- Abstract summary: We propose and theoretically validate a reservoir computing system based on a single bubble trapped within a bulk of liquid.<n>By applying an external acoustic pressure wave to both encode input information and excite the complex nonlinear dynamics, we showcase the ability of this single-bubble reservoir computing system to forecast complex benchmarking time series.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The rising computational and energy demands of artificial intelligence systems urge the exploration of alternative software and hardware solutions that exploit physical effects for computation. According to machine learning theory, a neural network-based computational system must exhibit nonlinearity to effectively model complex patterns and relationships. This requirement has driven extensive research into various nonlinear physical systems to enhance the performance of neural networks. In this paper, we propose and theoretically validate a reservoir computing system based on a single bubble trapped within a bulk of liquid. By applying an external acoustic pressure wave to both encode input information and excite the complex nonlinear dynamics, we showcase the ability of this single-bubble reservoir computing system to forecast complex benchmarking time series and undertake classification tasks with high accuracy. Specifically, we demonstrate that a chaotic physical regime of bubble oscillation proves to be the most effective for this kind of computations.
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