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Method of averaging

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Inmathematics,more specifically indynamical systems,themethod of averaging(also called averaging theory) exploits systems containing time-scales separation: afast oscillationversusaslow drift.It suggests that we perform an averaging over a given amount of time in order to iron out the fast oscillations and observe the qualitative behavior from the resulting dynamics. The approximated solution holds under finite time inversely proportional to the parameter denoting the slow time scale. It turns out to be a customary problem where there exists the trade off between how good is the approximated solution balanced by how much time it holds to be close to the original solution.

More precisely, the system has the following form of a phase space variableThefast oscillationis given byversusaslow driftof.The averaging method yields an autonomous dynamical system which approximates the solution curves ofinside a connected and compact region of the phase space and over time of.

Under the validity of this averaging technique, the asymptotic behavior of the original system is captured by the dynamical equation for.In this way, qualitative methods for autonomous dynamical systems may be employed to analyze theequilibriaand more complex structures, such asslow manifoldandinvariant manifolds,as well as theirstabilityin the phase space of the averaged system.

In addition, in a physical application it might be reasonable or natural to replace a mathematical model, which is given in the form of the differential equation for,with the corresponding averaged system,in order to use the averaged system to make a prediction and then test the prediction against the results of a physical experiment.[1]

The averaging method has a long history, which is deeply rooted inperturbationproblems that arose incelestial mechanics(see, for example in[2]).

First example[edit]

Figure 1: Solution to perturbed logistic growth equation(blue solid line) and the averaged equation(orange solid line).

Consider a perturbedlogistic growth and the averaged equation The purpose of the method of averaging is to tell us the qualitative behavior of the vector field when we average it over a period of time. It guarantees that the solutionapproximatesfor timesExceptionally:in this example the approximation is even better, it is valid for all times. We present it in a section below.

Definitions[edit]

We assume the vector fieldto be ofdifferentiability classwith(or even we will only say smooth), which we will denote.We expand this time-dependent vector field in aTaylor series(in powers of) with remainder.We introduce the following notation:[2] whereis the-th derivative with.As we are concerned with averaging problems, in generalis zero, so it turns out that we will be interested in vector fields given by Besides, we define the following initial value problem to be in thestandard form:[2]

Theorem: averaging in the periodic case[edit]

Consider for everyconnected and bounded and everythere existandsuch that the original system (a non-autonomous dynamical system) given by has solution,whereisperiodicwith periodandboth withbounded on bounded sets. Then there exists a constantsuch that the solutionof theaveragedsystem(autonomous dynamical system) is is forand.

Remarks[edit]

  • There are two approximations in this what is calledfirst approximationestimate: reduction to the average of the vector field and negligence ofterms.
  • Uniformity with respect to the initial condition:if we varythis affects the estimation ofand.The proof and discussion of this can be found in J. Murdock's book.[3]
  • Reduction of regularity: there is a more general form of this theorem which requires onlyto beLipschitzandcontinuous. It is a more recent proof and can be seen in Sanderset al..[2]The theorem statement presented here is due to the proof framework proposed byKrylov-Bogoliubovwhich is based on an introduction of a near-identity transformation. The advantage of this method is the extension to more general settings such as infinite-dimensional systems - partial differential equation or delay differential equations.
  • J. Hale presents generalizations to almost periodic vector-fields.[4]

Strategy of the proof[edit]

Krylov-Bogoliubovrealized that the slow dynamics of the system determines the leading order of the asymptotic solution.

In order to proof it, they proposed anear-identity transformation,which turned out to be a change of coordinates with its own time-scale transforming the original system to the averaged one.

Sketch of the proof[edit]

  1. Determination of a near-identity transformation: the smooth mappingwhereis assumed to be regular enough andperiodic. The proposed change of coordinates is given by.
  2. Choose an appropriatesolving thehomological equationof the averaging theory:.
  3. Change of coordinates carries the original system to
  4. Estimation of error due to truncation and comparison to the original variable.

Non-autonomous class of systems: more examples[edit]

Along the history of the averaging technique, there is class of system extensively studied which give us meaningful examples we will discuss below. The class of system is given by: whereis smooth. This system is similar to a linear system with a small nonlinear perturbation given by : differing from the standard form. Hence there is a necessity to perform a transformation to make it in the standard form explicitly.[2]We are able to change coordinates usingvariation of constantsmethod. We look at the unperturbed system, i.e.,given by

which has thefundamental solutioncorresponding to a rotation. Then the time-dependent change of coordinates iswhereis the coordinates respective to the standard form.

If we take the time derivative in both sides and invert the fundamental matrix we obtain

Remarks[edit]

  • The same can be done to time-dependent linear parts. Although the fundamental solution may be non-trivial to write down explicitly, the procedure is similar. See Sanderset al.[2]for further details.
  • If the eigenvalues ofare not all purely imaginary this is calledhyperbolicity condition.For this occasion, the perturbation equation may present some serious problems even whetheris bounded, since the solution grows exponentially fast.[2]However, qualitatively, we may be able to know the asymptotic solution, such asHartman-Grobmanresults and more.[1]
  • Occasionally, polar coordinates may yield standard forms that are simpler to analyze. Consider,which determines the initial conditionand the system

Ifwe may apply averaging so long as a neighborhood of the origin is excluded (since the polar coordinates fail): where the averaged system is

Example: Misleading averaging results[edit]

Figure 2: A simple harmonic oscillator with small periodic damping term given by.The numerical simulation of the original equation (blue solid line) is compared with averaging system (orange dashed line) and the crude averaged system (green dash-dotted line). The left plot displays the solution evolved in time and the right plot represents on the phase space. We note that the crude averaging disagrees with the expected solution.

The method contains some assumptions and restrictions. These limitations play important role when we average the original equation which is not into the standard form, and we can discuss counterexample of it. The following example in order to discourage this hurried averaging:[2] where we putfollowing the previous notation.

This systems corresponds to adamped harmonic oscillatorwhere the damping term oscillates betweenand.Averaging the friction term over one cycle ofyields the equation: The solution is which the convergence rate to the origin is.The averaged system obtained from the standard form yields: which in the rectangular coordinate shows explicitly that indeed the rate of convergence to the origin isdiffering from the previous crude averaged system:

Example: Van der Pol Equation[edit]

Figure 3: Phase space of a Van der Pol oscillator with.The stable limit cycle (orange solid line) in the system is captured correctly by the qualitative analysis of the averaged system. For two different initial conditions ( black dots ) we observe the trajectories.(dashed blue line) converging to the periodic orbit.

Van der Pol was concerned with obtaining approximate solutions for equations of the type wherefollowing the previous notation. This system is often called theVan der Pol oscillator.Applying periodic averaging to this nonlinear oscillator provides qualitative knowledge of the phase space without solving the system explicitly.

The averaged system is and we can analyze the fixed points and their stability. There is an unstable fixed point at the origin and a stable limit cycle represented by.

The existence of such stable limit-cycle can be stated as a theorem.

Theorem (Existence of a periodic orbit)[5]:Ifis a hyperbolic fixed point of
Then there existssuch that for all, has a unique hyperbolic periodic orbitof the same stability type as.

The proof can be found at Guckenheimer and Holmes,[5]Sanderset al.[2]and for the angle case in Chicone.[1]

Example: Restricting the time interval[edit]

Figure 4: The plot depicts two fundamental quantities the average technique is based on: the bounded and connected regionof the phase space and how long (defined by the constant) the averaged solution is valid. For this case,.Note that both solutions blow up in finite time. Hence,has been chosen accordingly in order to maintain the boundedness of the solution and the time interval of validity of the approximation is.

The average theorem assumes existence of a connected and bounded regionwhich affects the time intervalof the result validity. The following example points it out. Consider the where.The averaged system consists of which under this initial condition indicates that the original solution behaves like where it holds on a bounded region over.

Damped Pendulum[edit]

Consider adamped pendulumwhose point of suspension is vibrated vertically by a small amplitude, high frequency signal (this is usually known asdithering). The equation of motion for such a pendulum is given by wheredescribes the motion of the suspension point,describes the damping of the pendulum, andis the angle made by the pendulum with the vertical.

Thephase spaceform of this equation is given by where we have introduced the variableand written the system as anautonomous,first-order system in-space.

Suppose that the angular frequency of the vertical vibrations,,is much greater than the natural frequency of the pendulum,.Suppose also that the amplitude of the vertical vibrations,,is much less than the lengthof the pendulum. The pendulum's trajectory in phase space will trace out aspiralaround a curve,moving alongat the slow ratebut moving around it at the fast rate.The radius of the spiral aroundwill be small and proportional to.The average behaviour of the trajectory, over a timescale much larger than,will be to follow the curve.

Extension error estimates[edit]

Average technique for initial value problems has been treated up to now with an validity error estimates of order.However, there are circumstances where the estimates can be extended for further times, even the case for all times.[2]Below we deal with a system containing an asymptotically stable fixed point. Such situation recapitulates what is illustrated in Figure 1.

Theorem (Eckhaus[6]/Sanchez-Palencia[7])Consider the initial value problem Suppose exists and contains an asymptotically stable fixed pointin the linear approximation. Moreover,is continuously differentiable with respect toinand has a domain of attraction.For any compactand for all within the general case andin the periodic case.

References[edit]

  1. ^abcCharles., Chicone, Carmen (2006).Ordinary differential equations with applications(2nd ed.). New York: Springer.ISBN9780387307695.OCLC288193020.{{cite book}}:CS1 maint: multiple names: authors list (link)
  2. ^abcdefghijSanders, Jan A.; Verhulst, Ferdinand; Murdock, James (2007).Averaging Methods in Nonlinear Dynamical Systems.Applied Mathematical Sciences. Vol. 59.doi:10.1007/978-0-387-48918-6.ISBN978-0-387-48916-2.
  3. ^Murdock, James A. (1999).Perturbations: theory and methods.Philadelphia: Society for Industrial and Applied Mathematics.ISBN978-0898714432.OCLC41612407.
  4. ^Hale, Jack K. (1980).Ordinary differential equations(2nd ed.). Huntington, N.Y.: R.E. Krieger Pub. Co.ISBN978-0898740110.OCLC5170595.
  5. ^abGuckenheimer, John; Holmes, Philip (1983).Nonlinear Oscillations, Dynamical Systems, and Bifurcations of Vector Fields.Applied Mathematical Sciences. Vol. 42.doi:10.1007/978-1-4612-1140-2.ISBN978-1-4612-7020-1.ISSN0066-5452.
  6. ^Eckhaus, Wiktor (1975-03-01)."New approach to the asymptotic theory of nonlinear oscillations and wave-propagation".Journal of Mathematical Analysis and Applications.49(3): 575–611.doi:10.1016/0022-247X(75)90200-0.ISSN0022-247X.
  7. ^Sanchez-Palencia, Enrique (1976-01-01). "Methode de centrage-estimation de l'erreur et comportement des trajectoires dans l'espace des phases".International Journal of Non-Linear Mechanics.11(4): 251–263.Bibcode:1976IJNLM..11..251S.doi:10.1016/0020-7462(76)90004-4.ISSN0020-7462.