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Renormalization and chaos in the logistic map

Renormalization and chaos in the logistic map. Logistic map. Many features of non-Hamiltonian chaos can be seen in this simple map (and other similar one dimensional maps). Why? Universality. Period doubling Intermittency Crisis Ergodicity Strange attractors Periodic/Aperiodic mix

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Renormalization and chaos in the logistic map

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  1. Renormalization and chaos in the logistic map

  2. Logistic map Many features of non-Hamiltonian chaos can be seen in this simple map (and other similar one dimensional maps). Why? Universality. Period doubling Intermittency Crisis Ergodicity Strange attractors Periodic/Aperiodic mix Topological Cantor set

  3. Time series Superstable points; convergence to attractor very rapid Critical slowing down near a bifurcation; convergence very slow

  4. Time series Superstable points; convergence to attractor very rapid Critical slowing down near a bifurcation; convergence very slow

  5. Time series Bifurcation to a two cycle attractor

  6. Time series A series of period doublings of the attractor occur for increasing values of r, the “biotic potential” as it is sometimes known for the logistic map

  7. Time series At a critical value of r the dynamics become aperiodic. However, note that initially close trajectories remain close. Dynamics are not ergodic.

  8. Time series At r = 4 one finds aperiodic motion, in which initially close trajectories exponentially diverge.

  9. Self similarity, intermittency, “crisis”

  10. Other one dimensional maps Other one dimensional maps show a rather similar structure; LHS is the sine map and RHS one that I made up randomly. In fact the structure of the periodic cycles with r is universal. Experiment

  11. Universality 2nd order phase transitions: details, i.e. interaction form, does not matter near the phase transition. Depend only on (e.g.) symmetry of order parameter, dimensionality, range of interaction Can be calculate from simple models that share these feature with (complicated) reality.

  12. The period doubling regime • Derivative identical for all points in cycle. • All points become unstable simultaneously; period doubling topology can • only be that shown above.

  13. The period doubling regime Use continuity Superstable cycles so called due to accelerated form of convergence; in Taylor expansion first order term vanishes.

  14. The period doubling regime These constants have been measured in many experiments!

  15. Renormalisation Change coordinates such that superstable point is at origin

  16. Renormalisation

  17. Renormalisation

  18. Renormalisation

  19. Universal mapping functions Each of these functions is an i cycle attractor.

  20. Doubling operator for g’s Doubling operator in function space g

  21. Eigenvalues of the doubling operator Linearize previous equation

  22. Eigenvalues of the doubling operator This was an assumption of Feigenbaum’s; proved later (1982)

  23. Eigenvalues of the doubling operator

  24. Liapunov exponents

  25. Liapunov exponents

  26. Fully developed chaos at r = 4 Change variables, leads to exact solution for this case. (Other cases: r=-2, r=+2). Bit shift map Any number periodic in base 2 leads to periodic dynamics of the logistic map Irrational numbers lead to non-periodic dynamics.

  27. Ergodicity at r = 4 Invarient density Ergodic: all points visited • Strange attractor: • Fractal • Nearby points diverge under map flow • All points visited: ergodic i.e., topologically mixing Strange attractor of logistic map (and similar one dimensional maps) is a “topological Cantor set” Lorenz attractor

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