Rössler attractor
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The Rössler attractor is the
attractor In the mathematical field of dynamical systems, an attractor is a set of states toward which a system tends to evolve, for a wide variety of starting conditions of the system. System values that get close enough to the attractor values remain ...
for the Rössler system, a system of three non-linear
ordinary differential equation In mathematics, an ordinary differential equation (ODE) is a differential equation whose unknown(s) consists of one (or more) function(s) of one variable and involves the derivatives of those functions. The term ''ordinary'' is used in contrast ...
s originally studied by
Otto Rössler Otto Eberhard Rössler (born 20 May 1940) is a German biochemist known for his work on chaos theory and the theoretical equation known as the Rössler attractor. He is best known to the general public for his involvement in a failed lawsuit to ha ...
in the 1970s... These differential equations define a continuous-time dynamical system that exhibits
chaotic Chaotic was originally a Danish trading card game. It expanded to an online game in America which then became a television program based on the game. The program was able to be seen on 4Kids TV (Fox affiliates, nationwide), Jetix, The CW4Kid ...
dynamics associated with the fractal properties of the attractor.. Some properties of the Rössler system can be deduced via linear methods such as
eigenvector In linear algebra, an eigenvector () or characteristic vector of a linear transformation is a nonzero vector that changes at most by a scalar factor when that linear transformation is applied to it. The corresponding eigenvalue, often denoted ...
s, but the main features of the system require non-linear methods such as
Poincaré map In mathematics, particularly in dynamical systems, a first recurrence map or Poincaré map, named after Henri Poincaré, is the intersection of a periodic orbit in the state space of a continuous dynamical system with a certain lower-dimensiona ...
s and bifurcation diagrams. The original Rössler paper states the Rössler attractor was intended to behave similarly to the
Lorenz attractor The Lorenz system is a system of ordinary differential equations first studied by mathematician and meteorologist Edward Lorenz. It is notable for having chaotic solutions for certain parameter values and initial conditions. In particular, the Lo ...
, but also be easier to analyze qualitatively. An
orbit In celestial mechanics, an orbit is the curved trajectory of an object such as the trajectory of a planet around a star, or of a natural satellite around a planet, or of an artificial satellite around an object or position in space such as ...
within the attractor follows an outward spiral close to the x, y plane around an unstable fixed point. Once the graph spirals out enough, a second fixed point influences the graph, causing a rise and twist in the z-dimension. In the time domain, it becomes apparent that although each variable is oscillating within a fixed range of values, the oscillations are chaotic. This attractor has some similarities to the Lorenz attractor, but is simpler and has only one manifold.
Otto Rössler Otto Eberhard Rössler (born 20 May 1940) is a German biochemist known for his work on chaos theory and the theoretical equation known as the Rössler attractor. He is best known to the general public for his involvement in a failed lawsuit to ha ...
designed the Rössler attractor in 1976, but the originally theoretical equations were later found to be useful in modeling equilibrium in chemical reactions.


Definition

The defining equations of the Rössler system are: \begin \frac = -y - z \\ \frac = x + ay \\ \frac = b + z(x-c) \end Rössler studied the
chaotic attractor In the mathematical field of dynamical systems, an attractor is a set of states toward which a system tends to evolve, for a wide variety of starting conditions of the system. System values that get close enough to the attractor values remain ...
with a = 0.2, b = 0.2, and c = 5.7, though properties of a = 0.1, b = 0.1, and c = 14 have been more commonly used since. Another line of the parameter space was investigated using the topological analysis. It corresponds to b = 2, c = 4, and a was chosen as the bifurcation parameter. How Rössler discovered this set of equations was investigated by Letellier and Messager.


An analysis

Some of the Rössler attractor's elegance is due to two of its equations being linear; setting z = 0, allows examination of the behavior on the x, y plane \begin \frac = -y \\ \frac = x + ay \end The stability in the x, y plane can then be found by calculating the eigenvalues of the Jacobian \begin0 & -1 \\ 1 & a\\\end, which are (a \pm \sqrt)/2. From this, we can see that when 0 < a < 2, the eigenvalues are complex and both have a positive real component, making the origin unstable with an outwards spiral on the x, y plane. Now consider the z plane behavior within the context of this range for a. So long as x is smaller than c, the c term will keep the orbit close to the x, y plane. As the orbit approaches x greater than c, the z-values begin to climb. As z climbs, though, the -z in the equation for dx/dt stops the growth in x.


Fixed points

In order to find the fixed points, the three Rössler equations are set to zero and the (x,y,z) coordinates of each fixed point were determined by solving the resulting equations. This yields the general equations of each of the fixed point coordinates: \begin x = \frac \\ y=-\left(\frac\right) \\ z=\frac \end Which in turn can be used to show the actual fixed points for a given set of parameter values: : \left(\frac, \frac, \frac\right) : \left(\frac, \frac, \frac\right) As shown in the general plots of the Rössler Attractor above, one of these fixed points resides in the center of the attractor loop and the other lies relatively far from the attractor.


Eigenvalues and eigenvectors

The stability of each of these fixed points can be analyzed by determining their respective eigenvalues and eigenvectors. Beginning with the Jacobian: \begin0 & -1 & -1 \\ 1 & a & 0 \\ z & 0 & x-c\\\end the eigenvalues can be determined by solving the following cubic: -\lambda^3+\lambda^2(a+x-c) + \lambda(ac-ax-1-z)+x-c+az =0\, For the centrally located fixed point, Rössler's original parameter values of a=0.2, b=0.2, and c=5.7 yield eigenvalues of: : \lambda_= 0.0971028 + 0.995786i \, : \lambda_= 0.0971028 - 0.995786i \, : \lambda_= -5.68718 \, The magnitude of a negative eigenvalue characterizes the level of attraction along the corresponding eigenvector. Similarly the magnitude of a positive eigenvalue characterizes the level of repulsion along the corresponding eigenvector. The eigenvectors corresponding to these eigenvalues are: : v_= \begin 0.7073 \\ -0.07278 - 0.7032i \\ 0.0042 - 0.0007i \\\end : v_= \begin0.7073 \\ 0.07278 + 0.7032i \\ 0.0042 + 0.0007i \\\end : v_= \begin0.1682 \\ -0.0286 \\ 0.9853 \\\end These eigenvectors have several interesting implications. First, the two eigenvalue/eigenvector pairs (v_ and v_) are responsible for the steady outward slide that occurs in the main disk of the attractor. The last eigenvalue/eigenvector pair is attracting along an axis that runs through the center of the manifold and accounts for the z motion that occurs within the attractor. This effect is roughly demonstrated with the figure below. The figure examines the central fixed point eigenvectors. The blue line corresponds to the standard Rössler attractor generated with a=0.2, b=0.2, and c=5.7. The red dot in the center of this attractor is FP_. The red line intersecting that fixed point is an illustration of the repulsing plane generated by v_ and v_. The green line is an illustration of the attracting v_. The magenta line is generated by stepping backwards through time from a point on the attracting eigenvector which is slightly above FP_ – it illustrates the behavior of points that become completely dominated by that vector. Note that the magenta line nearly touches the plane of the attractor before being pulled upwards into the fixed point; this suggests that the general appearance and behavior of the Rössler attractor is largely a product of the interaction between the attracting v_ and the repelling v_ and v_ plane. Specifically it implies that a sequence generated from the Rössler equations will begin to loop around FP_, start being pulled upwards into the v_ vector, creating the upward arm of a curve that bends slightly inward toward the vector before being pushed outward again as it is pulled back towards the repelling plane. For the outlier fixed point, Rössler's original parameter values of a=0.2, b=0.2, and c=5.7 yield eigenvalues of: : \lambda_= -0.0000046 + 5.4280259i : \lambda_= -0.0000046 - 5.4280259i : \lambda_= 0.1929830 The eigenvectors corresponding to these eigenvalues are: : v_= \begin0.0002422 + 0.1872055i \\ 0.0344403 - 0.0013136i \\ 0.9817159 \\\end : v_= \begin0.0002422 - 0.1872055i \\ 0.0344403 + 0.0013136i \\ 0.9817159 \\\end : v_= \begin0.0049651 \\ -0.7075770 \\ 0.7066188 \\\end Although these eigenvalues and eigenvectors exist in the Rössler attractor, their influence is confined to iterations of the Rössler system whose initial conditions are in the general vicinity of this outlier fixed point. Except in those cases where the initial conditions lie on the attracting plane generated by \lambda_ and \lambda_, this influence effectively involves pushing the resulting system towards the general Rössler attractor. As the resulting sequence approaches the central fixed point and the attractor itself, the influence of this distant fixed point (and its eigenvectors) will wane.


Poincaré map

The
Poincaré map In mathematics, particularly in dynamical systems, a first recurrence map or Poincaré map, named after Henri Poincaré, is the intersection of a periodic orbit in the state space of a continuous dynamical system with a certain lower-dimensiona ...
is constructed by plotting the value of the function every time it passes through a set plane in a specific direction. An example would be plotting the y, z value every time it passes through the x = 0 plane where x is changing from negative to positive, commonly done when studying the Lorenz attractor. In the case of the Rössler attractor, the x = 0 plane is uninteresting, as the map always crosses the x = 0 plane at z = 0 due to the nature of the Rössler equations. In the x=0.1 plane for a=0.1, b=0.1, c=14, the Poincaré map shows the upswing in z values as x increases, as is to be expected due to the upswing and twist section of the Rössler plot. The number of points in this specific Poincaré plot is infinite, but when a different c value is used, the number of points can vary. For example, with a c value of 4, there is only one point on the Poincaré map, because the function yields a periodic orbit of period one, or if the c value is set to 12.8, there would be six points corresponding to a period six orbit.


Mapping local maxima

In the original paper on the Lorenz Attractor,
Edward Lorenz Edward Norton Lorenz (May 23, 1917 – April 16, 2008) was an American mathematician and meteorologist who established the theoretical basis of weather and climate predictability, as well as the basis for computer-aided atmospheric physics and ...
analyzed the local maxima of z against the immediately preceding local maxima. When visualized, the plot resembled the
tent map A tent () is a shelter consisting of sheets of fabric or other material draped over, attached to a frame of poles or a supporting rope. While smaller tents may be free-standing or attached to the ground, large tents are usually anchored using g ...
, implying that similar analysis can be used between the map and attractor. For the Rössler attractor, when the z_n local maximum is plotted against the next local z maximum, z_, the resulting plot (shown here for a=0.2, b=0.2, c=5.7) is unimodal, resembling a skewed
Hénon map The Hénon map, sometimes called Hénon–Pomeau attractor/map, is a discrete-time dynamical system. It is one of the most studied examples of dynamical systems that exhibit chaotic behavior. The Hénon map takes a point (''xn'', ''yn'') in ...
. Knowing that the Rössler attractor can be used to create a pseudo 1-d map, it then follows to use similar analysis methods. The bifurcation diagram is a particularly useful analysis method.


Variation of parameters

Rössler attractor's behavior is largely a factor of the values of its constant parameters a, b, and c. In general, varying each parameter has a comparable effect by causing the system to converge toward a periodic orbit, fixed point, or escape towards infinity, however the specific ranges and behaviors induced vary substantially for each parameter. Periodic orbits, or "unit cycles," of the Rössler system are defined by the number of loops around the central point that occur before the loops series begins to repeat itself. Bifurcation diagrams are a common tool for analyzing the behavior of
dynamical system In mathematics, a dynamical system is a system in which a function describes the time dependence of a point in an ambient space. Examples include the mathematical models that describe the swinging of a clock pendulum, the flow of water in ...
s, of which the Rössler attractor is one. They are created by running the equations of the system, holding all but one of the variables constant and varying the last one. Then, a graph is plotted of the points that a particular value for the changed variable visits after transient factors have been neutralised. Chaotic regions are indicated by filled-in regions of the plot.


Varying a

Here, b is fixed at 0.2, c is fixed at 5.7 and a changes. Numerical examination of the attractor's behavior over changing a suggests it has a disproportional influence over the attractor's behavior. The results of the analysis are: * a \leq 0: Converges to the centrally located fixed point * a = 0.1 : Unit cycle of period 1 * a = 0.2 : Standard parameter value selected by Rössler, chaotic * a = 0.3: Chaotic attractor, significantly more Möbius strip-like (folding over itself). * a = 0.35: Similar to .3, but increasingly chaotic * a = 0.38: Similar to .35, but increasingly chaotic.


Varying b

Here, a is fixed at 0.2, c is fixed at 5.7 and b changes. As shown in the accompanying diagram, as b approaches 0 the attractor approaches infinity (note the upswing for very small values of b. Comparative to the other parameters, varying b generates a greater range when period-3 and period-6 orbits will occur. In contrast to a and c, higher values of b converge to period-1, not to a chaotic state.


Varying c

Here, a = b = 0.1 and c changes. The bifurcation diagram reveals that low values of c are periodic, but quickly become chaotic as c increases. This pattern repeats itself as c increases – there are sections of periodicity interspersed with periods of chaos, and the trend is towards higher-period orbits as c increases. For example, the period one orbit only appears for values of c around 4 and is never found again in the bifurcation diagram. The same phenomenon is seen with period three; until c=12, period three orbits can be found, but thereafter, they do not appear. A graphical illustration of the changing attractor over a range of c values illustrates the general behavior seen for all of these parameter analyses – the frequent transitions between periodicity and aperiodicity. The above set of images illustrates the variations in the post-transient Rössler system as c is varied over a range of values. These images were generated with a=b=.1. *c = 4, period-1 orbit. *c = 6, period-2 orbit. *c = 8.5, period-4 orbit. *c = 8.7, period-8 orbit. *c = 9, sparse chaotic attractor. *c = 12, period-3 orbit. *c = 12.6, period-6 orbit. * c = 13, sparse chaotic attractor. *c = 18, filled-in chaotic attractor.


Periodic orbits

The attractor is filled densely with
periodic orbits In mathematics, specifically in the study of dynamical systems, an orbit is a collection of points related by the evolution function of the dynamical system. It can be understood as the subset of phase space covered by the trajectory of the dynami ...
: solutions for which there exists a nonzero value of T such that \vec(t+T) = \vec(t). These interesting solutions can be numerically derived using Newton's method. Periodic orbits are the roots of the function \Phi_t - Id , where \Phi_t is the evolution by time t and Id is the identity. As the majority of the dynamics occurs in the x-y plane, the periodic orbits can then be classified by their
winding number In mathematics, the winding number or winding index of a closed curve in the plane around a given point is an integer representing the total number of times that curve travels counterclockwise around the point, i.e., the curve's number of t ...
around the central equilibrium after projection. It seems from numerical experimentation that there is a unique periodic orbit for all positive winding numbers. This lack of degeneracy likely stems from the problem's lack of symmetry. The attractor can be dissected into easier to digest
invariant manifold In dynamical systems, a branch of mathematics, an invariant manifold is a topological manifold that is invariant under the action of the dynamical system. Examples include the slow manifold, center manifold, stable manifold, stable manifold, unsta ...
s: 1D periodic orbits and the 2D stable and unstable manifolds of periodic orbits. These invariant manifolds are a natural skeleton of the attractor, just as
rational number In mathematics, a rational number is a number that can be expressed as the quotient or fraction of two integers, a numerator and a non-zero denominator . For example, is a rational number, as is every integer (e.g. ). The set of all rat ...
s are to the
real number In mathematics, a real number is a number that can be used to measure a ''continuous'' one-dimensional quantity such as a distance, duration or temperature. Here, ''continuous'' means that values can have arbitrarily small variations. Every ...
s. For the purposes of
dynamical systems theory Dynamical systems theory is an area of mathematics used to describe the behavior of complex dynamical systems, usually by employing differential equations or difference equations. When differential equations are employed, the theory is called '' ...
, one might be interested in
topological invariant In topology and related areas of mathematics, a topological property or topological invariant is a property of a topological space that is invariant under homeomorphisms. Alternatively, a topological property is a proper class of topological space ...
s of these manifolds. Periodic orbits are copies of S^1 embedded in \mathbb^3, so their topological properties can be understood with knot theory. The periodic orbits with winding numbers 1 and 2 form a
Hopf link In mathematical knot theory, the Hopf link is the simplest nontrivial link with more than one component. It consists of two circles linked together exactly once, and is named after Heinz Hopf. Geometric realization A concrete model consists o ...
, showing that no
diffeomorphism In mathematics, a diffeomorphism is an isomorphism of smooth manifolds. It is an invertible function that maps one differentiable manifold to another such that both the function and its inverse are differentiable. Definition Given two ...
can separate these orbits.


Links to other topics

The banding evident in the Rössler attractor is similar to a Cantor set rotated about its midpoint. Additionally, the half-twist that occurs in the Rössler attractor only affects a part of the attractor. Rössler showed that his attractor was in fact the combination of a "normal band" and a Möbius strip.


References


External links


Flash Animation
using PovRay
Rossler1976.pdf


– Java animation

* ttp://scholarpedia.org/article/Rossler_attractor Rössler attractor in Scholarpedia
Rössler Attractor : Numerical interactive experiment in 3D
- experiences.math.cnrs.fr- (javascript/webgl) {{DEFAULTSORT:Rossler Attractor Chaotic maps