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WEAK CHAOS DETECTION IN THE FERMI–PASTA–ULAM-? SYSTEM USING q-GAUSSIAN STATISTICS

journal contribution
posted on 2024-03-01, 11:29 authored by Chris G. Antonopoulous, Helen ChristodoulidiHelen Christodoulidi
<p>We study numerically statistical distributions of sums of orbit coordinates, viewed as independent random variables in the spirit of the Central Limit Theorem, in weakly chaotic regimes associated with the excitation of the first (k = 1) and last (k = N) linear normal modes of the Fermi–Pasta–Ulam-? system under fixed boundary conditions. We show that at low energies (E = 0.19), when k = 1 linear mode is excited, chaotic diffusion occurs characterized by distributions that are well approximated for long times (t > 10^9) by a q-Gaussian Quasi-Stationary State (QSS) with q ? 1.4. On the other hand, when k = N mode is excited at the same energy, diffusive phenomena are absent and the motion is quasi-periodic. In fact, as the energy increases to E = 0.3, the distributions in the former case pass through shorter q-Gaussian states and tend rapidly to a Gaussian (i.e. q ? 1) where equipartition sets in, while in the latter we need to reach up to E = 4 to see a sudden transition to Gaussian statistics, without any passage through an intermediate QSS. This may be explained by different energy localization properties and recurrence phenomena in the two cases, supporting the view that when the energy is placed in the first mode weak chaos and sticky dynamics lead to a more gradual process of energy sharing, while strong chaos and equipartition appear abruptly when only the last mode is initially excited.</p>

History

School affiliated with

  • School of Mathematics and Physics (Research Outputs)

Publication Title

International Journal of Bifurcation and Chaos

Volume

21

Issue

08

Pages/Article Number

2285-2296

ISSN

0218-1274

Date Submitted

2019-09-16

Date Accepted

2011-04-26

Date of First Publication

2011-04-26

Date of Final Publication

2011-04-26

Date Document First Uploaded

2019-09-14

ePrints ID

37111

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