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Chaos*

Chaos*. “Chaos  A rough, unordered mass of things” Ovid, “Metamorphoses”. “What’s in a name?” Shakespeare, “Romeo and Juliet”. The answer is nothing and everything. Nothing because “A rose by any other name would smell as sweet.”

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Chaos*

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  1. Chaos* “Chaos  A rough, unordered mass of things” Ovid, “Metamorphoses” “What’s in a name?” Shakespeare, “Romeo and Juliet” The answer is nothing and everything. Nothing because “A rose by any other name would smell as sweet.” And yet, without a name Shakespeare would not have been able to write about that rose or distinguish it from other flowers that smell less pleasant. So also with chaos. *Ditto, W.L.; Spano, M. L. Lindner, J. F.: Physica D, 1995, 86, 198.
  2. Chaos The dynamical phenomenon we call chaos has always existed, but until its naming we had no way to distinguishing it from other aspects of nature such as randomness, noise and order. chaosMath Stochastic behaviour occurring in a deterministic system. Royal Society,London,1986 From this identification then came the recognition that chaos is pervasive in our word. Orbiting planets, weather patterns, mechanical systems (pendula), electronic circuits, laser emission, chemical reactions, human heart, brain, etc. all have been shown to exhibit chaos. Of these diverse systems, we have learned to control all of those that are on the smaller scale. Systems on a more universal scale (weather and planets) remain beyond our control.
  3. A simulation of the Milky Way/Andromeda Collision showing complex (chaotic) motion of heavenly bodies can be seen on the web page of John Dubinski Dept. of Astronomy and AstrophysicsUniversity of Toronto, CANADA http://www.cita.utoronto.ca/~dubinski/movies/mwa2001.mpg
  4. Outline Chaotic dynamics of discrete systems  the Henon map The idea of controlling chaos Fundamental equations for chaos control (ABC) OGY and SPF methods for chaos control Application of SPF method to chemical systems
  5. Henon map Michele Henon, astronomer, Nice Observatory, France. During the 1960's, he studied the dynamics of stars moving within galaxies. His work was in the spirit of Poincare’sapproach to the classisical three-body problem: What important geometric structures govern their behaviour? The main property of these systems is their unpredictable, chaotic dynamics that are difficult to analyze and visualize. During the 1970's he discovered a very simple iterated mapping that shows a chaotic attractor, now called Henon's attractor, which allowed him to make a direct connection between deterministic chaos and fractals.
  6. Henon map Dissipative system- the contraction of volume in the state space The asymptotic motion will occur on sets that have zero volumes A set showing stability against small random perturbations: attractor Chaotic attractor- locally exponential expansion of nearby points on the attractor
  7. CAP1 http://www.robert-doerner.de/en/Henon_system/henon_system.html
  8. CAP2
  9. CAP3
  10. CAP4
  11. CAP5
  12. CAP6
  13. CAP7
  14. CAP8
  15. CAP9
  16. CAP20
  17. Henon map Two fundamental characteristics of chaotic systems that makes them unpredictable: Sensitivity dependence on the initial conditions This causes the systems having the same values of control parameters but slightly differing in the initial conditions to diverge exponentially (on the average) during their evolution in time. Ergodicity A large set of identical systems which only differ in their initial conditions will be distributed after a sufficient long time on the attractor exactly the same way as the series of iterations of one single system (for almost every initial condition of this system).
  18. CAP18
  19. The idea of controlling chaos “All stable processes, we shall predict.All unstable processes, we shall control.” John von Neumann, circa 1950. Freeman Dyson: Infinite in All Directions, Chapter „Engineers Dreams”, Harper: N.Y., 1988: “A chaotic motion is generally neither predictable nor controllable. It is unpredictable because a small disturbance will produce exponentially growingperturbation of the motion. It is uncontrollable because small disturbances lead only to other chaotic motions and not to any stable and predictable alternative. Von Neumann’s mistake was to imagine that every unstable motion could be nudged into a stable motion by small pushes and pulls applied at the right places.” So it happened.
  20. The idea of controlling chaosHenon map - Bifurcation diagram x http://mathpost.la.asu.edu/~daniel/henon_bifurcation.html
  21. The linearized equation of motion of the system around the fixed point zF: ABC of Chaos Control y x For chaos control we apply a small parameter perturbation pn≠ po if and when the system approaches the fixed point.
  22. During chaos control – for simplicity – we apply parameter perturbation that is linearly proportional to the system’s distance from the fixed point, where CTis the control vector. From equations (1) and (2) we get the linearized equation of motion around the fixed point when chaos control is attempted: Shinbrot, T.; Grebogi, C.; Ott, E.; Yorke, J. A.: Nature, 1993,363, 411.
  23. Chaos control is successful if the new system state zn+1(po+δpn) lies on the stable manifold of the fixed point zF (po) of the unperturbed system.
  24. The just described strategy for chaos control implies the followings: For a successful chaos control, therefore, one has to know: the dynamics of the system around the fixed point the system’s distance from the fixed point the right value of control vector CT the eigenvalue of the fixed point in the stable direction
  25. Numerical exampleHenon map ! The linearized equation of motion around the fixed point zF when pn≠ poparameter perturbation is applied:
  26. Let’s find the control vector CTsuch that Numerical exampleHenon map The eigenvalues of the fixed point of the unperturbed system are calculated by solving the following equation: resulting in
  27. Suppose: The control vector can be calculated by solving for the new eigenvalues, and by applying the rules of the control strategy. Numerical exampleHenon map
  28. which gives Note that C contains parameters characteristics of the system’s dynamics only. Numerical exampleHenon map
  29. which gives Numerical exampleHenon map
  30. According to our control equation the parameter perturbation for successful chaos control should be the following: Numerical exampleHenon map
  31. Numerical exampleHenon map
  32. Numerical exampleHenon map
  33. Numerical exampleHenon map
  34. Numerical exampleHenon map
  35. Numerical exampleHenon map
  36. Numerical exampleHenon map
  37. Can we do better? Can we determine Cexperimentally? Answer: OGY theory* The linearized equation of motion of the system around the fixed point zF : *Ott, E.; Grebogi, C.; Yorke, J. A.: Phys. Rev. Letters, 1990,64, 1196.
  38. The effect of parameter perturbation: the map, thus the fixed point is shifted but we assume the same linear dynamics
  39. which is the OGY formula Ott, E.; Grebogi, C.; Yorke, J. A.: Phys. Rev. Letters., 1990, 64, 1196. To achieve chaos control we demand that the next iterate falls near the stable direction. This yields the following condition (see figure). =1 =0
  40. Henon map
  41. Constant K can be calculated from experimental data: u  from the slope of the map about the fixed point at po g  form the displacement of the fixed point with respect to a change in p fuT  from the eigenvectors in both stable and unstable directions calculated from the linearized map about the fixed point.
  42. Limits of the OGY method: When the fixed point is such that fu and g are nearly orthogonal to each other, the control constant increases to infinity. Such fixed points are uncontrollable. The method works only for hyperbolic fixed points with a stable eigenvector. Determination of fu requires measurement of two (three) system variables, and also a good numerical approximation to the system’s dynamics around the fixed point. However, collecting data along the stable manifold may be experimentally inaccessible. In real systems there is often noise present preventing the determination of the system’s state and of the control constant with the required accuracy. Surprisingly, a simplification of the OGY formula provided the right algorithm for successfully controlling chaos in chemical systems.
  43. If the stable eigenvalue is very small (s  0), the 2D map changes to a 1D map, which leads to a much simpler control formula: Simplification of the OGY formula It also means that instead of targeting the stable manifold, we now directly target the fixed point itself. This is the so called SPF (simple proportional feedback) algorithm derived by Peng et al. This method has been used most effectively for controlling chaos in chemical systems. Peng, B.; Petrov, V.; Showalter, K.: J. Phys. Chem.,1991, 95, 4975.
  44. Application of the SPF method: Reconstruct the chaotic attractor Generate a one-dimensional map ona Poincaré section 3. Determine the position of the fixed point. Copper electrode dissolution in phosphoric acid under potentiostatic conditions. Kiss, I. Z.; Gáspár, V.; Nyikos, L.; Parmananda, P.: J. Phys. Chem. A, 1997, 101, 8668.
  45. Application of the SPF method: 4. Generate the map at a different value of p 5. Determine g from the shift of the map 6. Determine , the slopeof the maps 7. Calculate K 8. Determine the system’s position on the map 9. Calculate the parameter perturbation 10. Apply the perturbation for on cycle – go to 8.
  46. Kiss, I. Z.; Gáspár, V.; Nyikos, L.; Parmananda, P.: J. Phys. Chem. A, 1997, 101, 8668.
  47. Controlling Chaos in the Belousov–Zhabotinsky Reaction Petrov, V.; Gáspár, V.; Masere, J.; Showalter, K.: Nature,1993, 361, 240.
  48. (CO + 1 % H2) : O2 = 7,2 : 5,6 Control of Chaos in a combustion reaction Davies; M. L.; Halford-Mawl, P. A.;Hill, J.; Tinsley, M. R.; Johnson, B. R.; Scott, S. K.; Kiss, I. Z.; Gáspár, V.: J. Phys. Chem. A, 2000, 104, 9944-9952.
  49. Resonant control algorithm: Delayed-feedback algorithm: Other (continuous) methods for chaos control: Artificial neural networks
  50. Henri Poincaré (1854-1912) “The scientist does not study nature because it is useful; he studies it because he delights in it, and he delights in it because it is beautiful. If nature were not beautiful, it would not be worth knowing, and if nature were not worth knowing, life would not be worth living.”
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