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In mathematics, the slow manifold of an
equilibrium point In mathematics, specifically in differential equations, an equilibrium point is a constant solution to a differential equation. Formal definition The point \tilde\in \mathbb^n is an equilibrium point for the differential equation :\frac = \m ...
of a
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 i ...
occurs as the most common example of a
center manifold In the mathematics of evolving systems, the concept of a center manifold was originally developed to determine stability of degenerate equilibria. Subsequently, the concept of center manifolds was realised to be fundamental to mathematical modelling ...
. One of the main methods of simplifying
dynamical systems 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 ...
, is to reduce the dimension of the system to that of the slow manifold—
center manifold In the mathematics of evolving systems, the concept of a center manifold was originally developed to determine stability of degenerate equilibria. Subsequently, the concept of center manifolds was realised to be fundamental to mathematical modelling ...
theory rigorously justifies the modelling. For example, some global and regional models of the atmosphere or oceans resolve the so-called quasi- geostrophic flow dynamics on the slow manifold of the atmosphere/oceanic dynamics, and is thus crucial to forecasting with a
climate model Numerical climate models use quantitative methods to simulate the interactions of the important drivers of climate, including atmosphere, oceans, land surface and ice. They are used for a variety of purposes from study of the dynamics of the ...
. In some cases, a slow manifold is defined to be the invariant manifold on which the dynamics are slow compared to the dynamics off the manifold. The slow manifold in a particular problem would be a sub-manifold of either the stable, unstable, or center manifold, exclusively, that has the same dimension of, and is tangent to, the eigenspace with an associated eigenvalue (or eigenvalue pair) that has the smallest real part in magnitude. This generalizes the definition described in the first paragraph. Furthermore, one might define the slow manifold to be tangent to more than one eigenspace by choosing a cut-off point in an ordering of the real part eigenvalues in magnitude from least to greatest. In practice, one should be careful to see what definition the literature is suggesting.


Definition

Consider the
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 i ...
:\frac = \vec f(\vec) for an evolving state vector \vec x(t) and with
equilibrium point In mathematics, specifically in differential equations, an equilibrium point is a constant solution to a differential equation. Formal definition The point \tilde\in \mathbb^n is an equilibrium point for the differential equation :\frac = \m ...
\vec x^*. Then the linearization of the system at the equilibrium point is : \frac = A\vec \quad \text A = \frac(\vec x^*). The matrix A defines four
invariant subspace In mathematics, an invariant subspace of a linear mapping ''T'' : ''V'' → ''V '' i.e. from some vector space ''V'' to itself, is a subspace ''W'' of ''V'' that is preserved by ''T''; that is, ''T''(''W'') ⊆ ''W''. General descr ...
s characterized by the
eigenvalue 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 denot ...
s \lambda of the matrix: as described in the entry for the
center manifold In the mathematics of evolving systems, the concept of a center manifold was originally developed to determine stability of degenerate equilibria. Subsequently, the concept of center manifolds was realised to be fundamental to mathematical modelling ...
three of the subspaces are the stable, unstable and center subspaces corresponding to the span of the eigenvectors with eigenvalues \lambda that have real part negative, positive, and zero, respectively; the fourth subspace is the slow subspace given by the span of the eigenvectors, and generalized eigenvectors, corresponding to the eigenvalue \lambda=0 precisely (more generally, corresponding to all eigenvalues with , \lambda, \leq\alpha separated by a gap from all other eigenvalues, those with , \lambda, \geq\beta>r\alpha). The slow subspace is a subspace of the center subspace, or identical to it, or possibly empty. Correspondingly, the nonlinear system has
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, unstable manifold, su ...
s, made of trajectories of the nonlinear system, corresponding to each of these invariant subspaces. There is an invariant manifold tangent to the slow subspace and with the same dimension; this manifold is the slow manifold. Stochastic slow manifolds also exist for noisy dynamical systems (
stochastic differential equation A stochastic differential equation (SDE) is a differential equation in which one or more of the terms is a stochastic process, resulting in a solution which is also a stochastic process. SDEs are used to model various phenomena such as stock ...
), as do also stochastic center, stable and unstable manifolds. Such stochastic slow manifolds are similarly useful in modeling emergent stochastic dynamics, but there are many fascinating issues to resolve such as history and future dependent integrals of the noise.


Examples


Simple case with two variables

The coupled system in two variables x(t) and y(t) : \frac = -xy \quad\text\quad \frac = -y+x^2-2y^2 has the exact slow manifold y=x^2 on which the evolution is dx/dt=-x^3. Apart from exponentially decaying transients, this slow manifold and its evolution captures all solutions that are in the neighborhood of the origin. The neighborhood of attraction is, roughly, at least the half-space y>-1/2.


Slow dynamics among fast waves

Edward Norton Lorenz introduced the following dynamical system of five equations in five variables to explore the notion of a slow manifold of quasi- geostrophic flow :\begin \frac & = -VW+bVZ,\\ pt\frac & = UW-bUZ,\\ pt\frac & = -UV,\\ pt\frac & = -Z,\\ pt\frac & = X+bUV. \end Linearized about the origin the eigenvalue zero has multiplicity three, and there is a complex conjugate pair of eigenvalues, \pm i. Hence there exists a three-dimensional slow manifold (surrounded by 'fast' waves in the X and Z variables). Lorenz later argued a slow manifold did not exist! But normal form arguments suggest that there is a dynamical system that is exponentially close to the Lorenz system for which there is a good slow manifold.


Eliminate an infinity of variables

In modeling we aim to simplify enormously. This example uses a slow manifold to simplify the 'infinite dimensional' dynamics of a
partial differential equation In mathematics, a partial differential equation (PDE) is an equation which imposes relations between the various partial derivatives of a multivariable function. The function is often thought of as an "unknown" to be solved for, similarly to ...
to a model of one
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 contras ...
. Consider a field u(x,t) undergoing the nonlinear diffusion : \frac=u\frac \quad\text-1 with Robin boundary conditions :2bu\pm(1-b)\frac=0 \quad\textx=\pm1. Parametrising the boundary conditions by b empowers us to cover the insulating
Neumann boundary condition In mathematics, the Neumann (or second-type) boundary condition is a type of boundary condition, named after Carl Neumann. When imposed on an ordinary or a partial differential equation, the condition specifies the values of the derivative appli ...
case b=0, the
Dirichlet boundary condition In the mathematical study of differential equations, the Dirichlet (or first-type) boundary condition is a type of boundary condition, named after Peter Gustav Lejeune Dirichlet (1805–1859). When imposed on an ordinary or a partial differenti ...
case b=1, and all cases between. Now for a marvelous trick, much used in exploring dynamics with
bifurcation theory Bifurcation theory is the mathematical study of changes in the qualitative or topological structure of a given family of curves, such as the integral curves of a family of vector fields, and the solutions of a family of differential equations ...
. Since parameter b is constant, adjoin the trivially true differential equation :\frac=0 Then in the extended state space of the evolving field and parameter, (b,u(x)), there exists an infinity of equilibria, not just one equilibrium, with b=0 (insulating) and u=constant, say u=a. Without going into details, about each and every equilibria the linearized diffusion has two zero eigenvalues and for a>0 all the rest are negative (less than -\pi^2a/4). Thus the two-dimensional dynamics on the slow manifolds emerge (see
emergence In philosophy, systems theory, science, and art, emergence occurs when an entity is observed to have properties its parts do not have on their own, properties or behaviors that emerge only when the parts interact in a wider whole. Emergen ...
) from the nonlinear diffusion no matter how complicated the initial conditions. Here one can straightforwardly verify the slow manifold to be precisely the field u(x,t)=a(t)(1-bx^2) where amplitude a evolves according to :\frac=-2a^2b \quad\text \frac=0. That is, after the initial transients that by diffusion smooth internal structures, the emergent behavior is one of relatively slow decay of the amplitude (a) at a rate controlled by the type of boundary condition (constant b). Notice that this slow manifold model is global in a as each equilibria is necessarily in the slow subspace of each other equilibria, but is only local in parameter b. We cannot yet be sure how large b may be taken, but the theory assures us the results do hold for some finite parameter b.


Perhaps the simplest nontrivial stochastic slow manifold

Stochastic modeling is much more complicated—this example illustrates just one such complication. Consider for small parameter \epsilon the two variable dynamics of this linear system forced with noise from the
random walk In mathematics, a random walk is a random process that describes a path that consists of a succession of random steps on some mathematical space. An elementary example of a random walk is the random walk on the integer number line \mathbb ...
W(t): :dx = \varepsilon y\,dt \quad\text\quad dy=-y\,dt+dW \,. One could simply notice that the Ornstein–Uhlenbeck process y is formally the history integral : y=\int_^t \exp(s-t)\,dW(s) and then assert that x(t) is simply the integral of this history integral. However, this solution then inappropriately contains fast time integrals, due to the \exp(s-t) in the integrand, in a supposedly long time model. Alternatively, a stochastic coordinate transform extracts a sound model for the long term dynamics. Change variables to (X(t),Y(t)) where : y = Y + \int_^t \exp(s-t) \, dW(s) \quad\text\quad x=X-\varepsilon Y-\varepsilon \int_^t \exp(s-t) \, dW(s) then the new variables evolve according to the simple :dX = \varepsilon\,dW \quad\text\quad dY=-Y\,dt. In these new coordinates we readily deduce Y(t)\to0 exponentially quickly, leaving X(t)=\epsilon W(t) undergoing a
random walk In mathematics, a random walk is a random process that describes a path that consists of a succession of random steps on some mathematical space. An elementary example of a random walk is the random walk on the integer number line \mathbb ...
to be the long term model of the stochastic dynamics on the stochastic slow manifold obtained by setting Y=0. A web service constructs such slow manifolds in finite dimensions, both deterministic and stochastic.


See also

* Quasi-geostrophic equations


References

{{DEFAULTSORT:Slow Manifold Dynamical systems