Attractor
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(Redirected from Attractors)
Curator: Dr. John W. Milnor, Math Department, Stony Brook University, Stony Brook NY
Roughly speaking, an attracting set for a dynamical system is a closed subset
of its phase space such that for "many" choices of initial point the system will evolve towards
.
(Words shown in red refer to future links which are not yet operational.) The word attractor will be reserved for an attracting set which satisfies some supplementary condition, so that it cannot be split into smaller pieces. In the case of an iterated map, with discrete time steps, the simplest attractors are attracting fixed points. Similarly, for solutions of an autonomous differential equation, with continuous time, the simplest examples are attracting equilibrium points. In both cases, the next simplest examples are attracting periodic orbits. (See Figure 1 for the continuous time case, and Figure 5 for discrete time.) However, much more exotic attractors exist and are important (Figure 4).
Care is needed since the literature contains many variations on the precise definitions. (For example, many authors make no distinction between attractors and attracting sets.) This exposition will emphasize first the classical definitions, and then the more recent measure theoretic definitions. In either case, the union of all orbits which converge towards
is called the basin of attraction
. The exposition concludes with a rather different statistical definition.
As an example, Figure 1 illustrates the flow in the complex plane generated by the differential equation
. The initial image shows the
square centered at the origin, filled with a cloud of dots, and the remaining pictures show succesive positions of these dots under the flow. The trajectory (= orbit) of every point except the origin converges to the unit circle, which is an attracting periodic orbit.
(Caution. The word "attractor", as used in dynamical systems, has nothing at all to do with its use in gravitational theory (see Great Attractor). Attractors in dynamical systems theory simply provide a way of describing the asymptotic behavior of typical orbits. In particular, there is no associated attractive force.)
Contents |
Classical Attracting Sets: Three equivalent definitions
To simplify the discussion, this article will concentrate on discrete-time dynamical systems, consisting of a locally compact metric space
called the phase space, together with a function
from
to itself which describes the evolution of the system in one time step. However, there are completely analogous definitions for systems with continuous time, which are usually defined by autonomous differential equations. (For attractors of ordinary differential equations, see for example Hurley [1982]; and for partial differential equation attractors see Temam [1997].)
The easiest definition to work with is the following.
Trapped Attacting Sets
Let
be a compact set such that
is contained in the interior of
. Then the intersection
of the nested sequence of sets

will be called a trapped attractor, with
as trapping neighborhood. (Here
stands for the
-fold iterate of
.) This intersection is always invariant,
, and its attracting basin
is always an open set containing
A simple example of a trapped attracting set is shown in Figure 3. Here the phase space
is the plane with the origin removed, the map
is given in polar coordinates by the formula
, the trapping region
is the annulus
, and the basin
is all of
.
Such trapped attracting sets have a very convenient robustness property:
- If
is another map from
to itself which is uniformly close to
, then there is a trapped attracting set
for
, with
contained in a small neighborhood of
.
Isolating Neighborhoods
By a neighborhood of a subset
we mean a subset
of
which contains
in its interior. By a
forward isolating neighborhood of a compact invariant set
we mean a neighborhood
of
such that
is equal to the intersection of the forward images
. (Compare Smale [1967], or Conley [1978].) The existence of such a forward isolating neighborhood seems to be a much weaker requirement than existence of a trapping neighborhood; but in fact it is completely equivalent:
- A compact invariant set has a trapping neighborhood if and only if it has an isolating neighborhood.
In fact every isolating neighborhood contains a trapping neighborhood (and conversely any trapping neighborhood is itself an isolating neighborhood). This can be proved by first showing that any
with an isolating neighborhood has arbitrarily small neighborhoods
with
. (A proof is given for example in Milnor [1985b].) Given such an
which is compact and attracted to
, let
for 
Then
The set
is compact for small
, and provides the required trapping neighborhood.
Lyapunov Stablility
In the original definition, due to Auslander, Bhatia, and Seibert [1964], a compact
-invariant subset
is called a Lyapunov stable attracting set if it has an open basin of attraction, and if the following condition is satisfied:
- Lyapunov Stability. Every neighborhood
of
contains a smaller neighborhood
such that every iterated forward image
is contained in
.
Using the discussion above, it follows easily that:
- The compact invariant set
is a Lyapunov stable attracting set if and only if it has a trapping neighborhood, or if and only if it has a forward isolating neighborhood.
Thus the concept of "attracting set" can be defined in three different but completely equivalent ways.
Classical Attractors and Repellors.
The word attractor is usually reserved for an attracting set which contains a dense orbit. (This condition insures that it is not just the union of smaller attracting sets.) As an example, the trapped attracting set shown in Figures 2 and 3 is certainly an attractor in this sense. In fact it is an example of what Ruelle and Takens [1971] have called a strange attractor (see also Ruelle [2006]). That is, the dynamics is chaotic, depending sensitively on initial conditions. Like many strange attractors, this set
is also an example of a fractal, with complicated structure near any point, under any scale of magnification. Perhaps the first such examples were the Lorenz attractors and the Hénon attractors, which have been widely studied, and the Ueda attractors (Figure 4).
Just as nearby orbits converge towards an attractor, they diverge away from
a repellor. By definition, a repelling set is a compact invariant set
which possesses a backwards isolating neighborhood; that is a neighborhood
such that
In other words, given any point
, the orbit
must satisfy
for at least one value of
. This definition works both for invertible and non-invertible maps. A repelling set with a dense orbit will be called a repellor.
There is one curious difference between attractors and repellors. If two trapped attractors have a single point in common, then it is not hard to see that they must be identical to each other. But repellors can even be nested, one within the other. (Figure 5.) This difference may be observed for non-invertible maps only.
-plane for the complex polynomial map
. The points zero and -1, marked by red dots, form an attracting period two orbit with attracting basin colored grey. If we compactify the plane by adjoining a point at infinity, then the fixed point at infinity is also an attractor, with basin shaded orange-to-green. The common boundary of these two basins, colored black, is a repellor called the Julia set. It contains infinitely many periodic orbits, and each one is also a repellor.Measure Attractors
It is often reasonable in dynamical systems theory to ignore any behavior which occurs only on a set of measure zero, since such behavior will never be observed in any real world application. This suggests the following. Suppose now that the phase space
is a smooth manifold (for example an open subset of Euclidean space), so that there is a well defined distinction between sets of measure zero and sets of positive measure. If
is not compact, then it will be convenient to compactify by adding a point at infinity.
Definition. A compact set
(or
if
is not compact) will be called a measure attracting set if:
- the basin of attraction
, consisting of all points whose orbits converge towards
has strictly positive measure; and furthermore
- for any closed proper subset
, the set theoretic difference
also has strictly positive measure. (This last condition is needed in order to guarantee that every part of
plays an essential role. Note that, in this theory, the basin need not be an open set.)
- the basin of attraction
(Compare Milnor [1985a]). Here an orbit
is understood to converge to
if the distance between
and
tends to zero as
(using a suitable metric on
if
is not compact).
One useful feature of this definition is that every such dynamical system has a unique largest measure attracting set
called the global attracting set. This can also be described as the smallest closed set with the property that every orbit outside of a set of measure zero converges towards
.
A measure attracting set is called minimal if no proper closed subset has a basin of positive measure. Since two distinct minimal attracting sets must have disjoint basins of positive measure, there can be at most countably many of them. The word attractor will be reserved for a minimal attracting set which contains a dense orbit, and hence cannot be expressed as
a union of smaller closed invariant sets. (However two distinct attractors, in this sense, may well intersect each other. See Alexander, Hunt, Kan and York [1996]; or Bonifant, Dabija, Milnor [2006].) In nice cases, the global attracting set will be a union of measure attractors, each with a well defined asymptotic measure. But this is not true in all cases: As a boring example, for the projection map
in the plane, the global attracting set is the
-axis; but there are no attractors or minimal attracting sets at all. See Palis [2005] for a collection of challenging conjectures and a report about recent work concerning attractors for typical dynamical systems.
Here are three examples.
Example: The complex exponential map
The map
can be defined by the formula
. For every initial point
outside of a set of measure zero, Lyubich [1987] and Rees [1986] have shown that the set of all accumulation points for the orbit
within
is just the orbit of zero, consisting of the points 
together with the point at infinity. Thus the unique measure attractor is the set
It is amusing to test this statement numerically. On a computer, an orbit of the complex exponential map with randomly chosen non-real starting point will usually land exactly at zero after a relatively small number of iterations, unless there is an overflow error first. Of course a true (infinite precision) orbit
could never land exactly at zero. Furthermore, not all true orbits converge to the orbit of zero. In fact, Misiurewicz [1981] has shown that there is an uncountable dense set of initial points
such that the orbit of
is everywhere dense in
. However, such dense orbits lie in a set of measure zero, and will never be seen experimentally.
Example: Fibonacci maps of the interval.
Bruin, Keller, Nowicki and van Strien [1996] have described similar wild behavior for certain maps of the interval. Consider polynomials of the form
where
so that
maps the interval
onto itself. Here the constant
can be carefully chosen so that the critical orbit
returns closer and closer to zero after each Fibonacci number of iterations. (Figure 7.) It then follows that
has a dense orbit. However, the closure of the critical orbit is a Cantor set
. If the degree
is large enough, they show that Lebesgue almost every orbit converges towards
; so that
is the unique measure attractor.
Example: Intermingled basins
The following example is due to Ittai Kan [1994]. As phase space take the cylinder
, where
is the circle with angular coordinate
and
is the unit interval. Let
Then there are two measure-theoretic attractors, namely the two boundary circles. Their union forms the global attracting set. However, the basins for the two attractors are intermingled in the sense that every nonempty open set intersects each basin in a set of strictly positive measure. (Compare Bonifant and Milnor [2006].)
Remark
The term attractor is sometimes used for any set which contains a dense orbit and has an attracting basin of positive measure, omitting the second condition in the definition of measure attractor. However, this is a bad idea - some additional restriction is really needed. Otherwise, for the three examples described above, the entire phase space would qualify as an attractor.
Statistical Attractors
The following discussion is based on the work of Ilyashenko, who has suggested several possible modifications of the basic definitions, emphasizing the behavior of "most" points of a typical orbit
rather than considering only the limiting behavior as
. (See for example Ilyashenko [2005].) Recall that an orbit
converges (in the usual sense) towards a compact set
if the distance
tends to zero as
.
Definition. The orbit
converges statistically towards
if the time average of distances tends to zero,

Thus occasional orbit points are allowed to wander away from
, as long as most of them converge. Here the distance function
should always be uniformly bounded, so that an occasional very distant orbit point will not affect the definition.
The statistical global attracting set
can be defined as the smallest closed set with the following property: For all
outside of a set of measure zero, the orbit of
converges statistically towards
.
In many cases,
will coincide with the global attracting set
, as defined earlier. However, this is not always the case. As an example, for the complex exponential map, most orbits spend most of the time very far away from zero: Almost all orbits converge statistically towards the point at infinity. Thus the statistical global attracting set consists of the single point
. For example, for almost every orbit
it follows from the results of Rees or Lyubich, not only that there are infinitely many integers
for which
, but also that the resulting sequence
converges to zero as
. Yet the closer an orbit point gets to zero the more closely the orbit then shadows the orbit of zero, shooting out towards
; and hence the longer it takes to get away from this diverging orbit and return once more to a neighborhood of zero. Thus the time differences
tend to infinity, which implies that the origin is not in the statistical attracting set.
Hofbauer and Keller [1990] have described an example of a quadratic map of the interval with the following startling
property: Almost all orbits converge statistically to a single repelling fixed point. Thus again the statistical global attracting set is a single point, although the global attracting set
is much larger.
External Links
References
- Alexander, J., Hunt, B., Kan, I., Yorke, J. [1996]: Intermingled basins for the triangle map, Ergod. Th. Dynam. Sys. 16, 651-662.
- Auslander, J., Bhatia, N.P., Seibert, P. [1964]: Attractors in dynamical systems, Bol. Soc. Mat. Mex. 9, 55-66.
- Bonifant, A., Dabija, M., Milnor, J. [2006]: Elliptic curves as attractors in
, arxiv math.DS/0601015. [[1]]
- Bonifant, A., Milnor, J. [2006]: Schwarzian derivatives and cylinder maps, arxiv math.DS/0610232. [[2]]
- Bruin, H., Keller, G., Nowicki, T., van Strien, S. [1996]: Wild Cantor attractors exist, Annals Math. 143, 97-130.
- Conley, C. [1978]: "Isolated Invariant Sets and the Morse Index," C.B.M.S. Regional Lect. 38, A.M.S.
- Hofbauer, F. and Keller, G. [1990]: Quadratic maps without asymptotic measure, Comm. Math. Phys. 127, 319--337.
- Hurley, M. [1982]: Attractors: persistence and density of their basins, Trans. Amer. Math. Soc. 269, 247-271.
- Ilyashenko, Yu. [2005]: Minimal attractors, EQUADIFF 2003, 421-428, World Sci. Publ., Hackensack, NJ.
- Kan, I. [1994]: Open sets of diffeomorphisms having two attractors each with an everywhere dense basin, Bull. Amer. Math. Soc. 31 no. 1, 68-74.
- Lyubich, M. [1987]: The measurable dynamics of the exponential map, Siber. J. Math. 28, 111-127. (Shorter version: Sov. Math. Dokl. 35, 223-226.)
- Milnor, J. [1985a]: On the concept of attractor, Commum. Math. Phys. 99, 177-195.
- Milnor, J. [1985b]: On the concept of attractor: Correction and remarks, Comm. Math. Phys. 102, no. 3, 517–519.
- Misiurewicz, M. [1981]: On iterates of
, Ergod. Theory Dyn. Sys. 1, 103-106.
- Palis, J. [2005]: A global perspective for non-conservative dynamics, Annales Inst. H. Poincare 22, 485-507. [[3]]
- Rees, M. [1986]: The exponential map is not recurrent, Math. Zeits. 191, 593-598.
- Ruelle, D., Takens, F. [1971]: On the nature of turbulence Commun. Math. Phys. 20, 167-192.
- Ruelle, D. [2006]: What is a strange attractor? , Notices Amer. Math. Soc. July [[4]]. (See also: Strange attractors, Math. Intell. 2 (1979/80), 126-137.
- Smale, S. [1967]: Differential dynamical systems, Bull. Am. Math. Soc. 73, 747-817.
- Temam, R. [1997]: "Infinite-Dimensional Dynamical Systems in Mechanics and Physics," Springer.
- Ueda, Y. [1992]: Strange attractors and the origin of chaos, Nonlinear Science Today 2, 1-16.
Internal references
- Edward Ott (2006) Basin of attraction. Scholarpedia, 1(8):1701.
- Jeff Moehlis, Kresimir Josic, Eric T. Shea-Brown (2006) Periodic orbit. Scholarpedia, 1(7):1358.
- Philip Holmes and Eric T. Shea-Brown (2006) Stability. Scholarpedia, 1(10):1838.
See Also
Basin of Attraction, Chaos, Dynamical Systems, Stability
| John W. Milnor (2006) Attractor. Scholarpedia, 1(11):1815, (go to the first approved version) Created: 1 August 2006, reviewed: 8 November 2006, accepted: 14 November 2006 |
plane is mapped into itself by following the trajectory of the Duffing equation
for time
.

together with the point at infinity.


