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Intrinsic Dimensionality of Fermi-Pasta-Ulam-Tsingou High-Dimensional Trajectories Through Manifold Learning

Abstract

A data-driven approach based on unsupervised machine learning is proposed to infer the intrinsic dimensions mm^{\ast} of the high-dimensional trajectories of the Fermi-Pasta-Ulam-Tsingou (FPUT) model. Principal component analysis (PCA) is applied to trajectory data consisting of ns=4,000,000n_s = 4,000,000 datapoints, of the FPUT β\beta model with N=32N = 32 coupled oscillators, revealing a critical relationship between mm^{\ast} and the model's nonlinear strength. For weak nonlinearities, mnm^{\ast} \ll n, where n=2Nn = 2N. In contrast, for strong nonlinearities, mn1m^{\ast} \rightarrow n - 1, consistently with the ergodic hypothesis. Furthermore, one of the potential limitations of PCA is addressed through an analysis with t-distributed stochastic neighbor embedding (tt-SNE). Accordingly, we found strong evidence suggesting that the datapoints lie near or on a curved low-dimensional manifold for weak nonlinearities.

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