Manifold Learning Approach for Chaos in the Dripping Faucet
Hiromichi Suetani, Karin Soejima, Rei Matsuoka, Ulrich Parlitz and, Hiroki Hata

TL;DR
This paper introduces a manifold learning method using ISOMAP to reconstruct internal states from dripping faucet time series, enabling better analysis of nonlinear chaotic behavior in both simulations and real experiments.
Contribution
It proposes a novel approach employing ISOMAP to derive surrogate internal states from observable data in chaotic dripping faucet systems.
Findings
Successfully reconstructed internal states from time series data.
Obtained a clear one-dimensional map with consistent dynamical quantities.
Demonstrated effectiveness on both simulated and real experimental data.
Abstract
Dripping water from a faucet is a typical example exhibiting rich nonlinear phenomena. For such a system, the time stamps at which water drops separate from the faucet can be directly observed in real experiments, and the time series of intervals \tau_n between drop separations becomes a subject of analysis. Even if the mass m_n of a drop at the onset of the n-th separation, which cannot be observed directly, exhibits perfectly deterministic dynamics, it sometimes fails to obtain important information from time series of \tau_n. This is because the return plot \tau_n-1 vs. \tau_n may become a multi-valued function, i.e., not a deterministic dynamical system. In this paper, we propose a method to construct a nonlinear coordinate which provides a "surrogate" of the internal state m_n from the time series of \tau_n. Here, a key of the proposed approach is to use ISOMAP, which is a…
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