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In
mathematics Mathematics is an area of knowledge that includes the topics of numbers, formulas and related structures, shapes and the spaces in which they are contained, and quantities and their changes. These topics are represented in modern mathematics ...
, a singular perturbation problem is a problem containing a small parameter that cannot be approximated by setting the parameter value to zero. More precisely, the solution cannot be uniformly approximated by an
asymptotic expansion In mathematics, an asymptotic expansion, asymptotic series or Poincaré expansion (after Henri Poincaré) is a formal series of functions which has the property that truncating the series after a finite number of terms provides an approximation to ...
:\varphi(x) \approx \sum_^N \delta_n(\varepsilon) \psi_n(x) \, as \varepsilon \to 0. Here \varepsilon is the small parameter of the problem and \delta_n(\varepsilon) are a sequence of functions of \varepsilon of increasing order, such as \delta_n(\varepsilon) = \varepsilon^n. This is in contrast to regular perturbation problems, for which a uniform approximation of this form can be obtained. Singularly perturbed problems are generally characterized by dynamics operating on multiple scales. Several classes of singular perturbations are outlined below. The term "singular perturbation" was coined in the 1940s by
Kurt Otto Friedrichs Kurt Otto Friedrichs (September 28, 1901 – December 31, 1982) was a noted German-American mathematician. He was the co-founder of the Courant Institute at New York University, and a recipient of the National Medal of Science. Biography Friedri ...
and Wolfgang R. Wasow.


Methods of analysis

A perturbed problem whose solution can be approximated on the whole problem domain, whether space or time, by a single
asymptotic expansion In mathematics, an asymptotic expansion, asymptotic series or Poincaré expansion (after Henri Poincaré) is a formal series of functions which has the property that truncating the series after a finite number of terms provides an approximation to ...
has a regular perturbation. Most often in applications, an acceptable approximation to a regularly perturbed problem is found by simply replacing the small parameter \varepsilon by zero everywhere in the problem statement. This corresponds to taking only the first term of the expansion, yielding an approximation that converges, perhaps slowly, to the true solution as \varepsilon decreases. The solution to a singularly perturbed problem cannot be approximated in this way: As seen in the examples below, a singular perturbation generally occurs when a problem's small parameter multiplies its highest operator. Thus naively taking the parameter to be zero changes the very nature of the problem. In the case of differential equations, boundary conditions cannot be satisfied; in algebraic equations, the possible number of solutions is decreased. Singular perturbation theory is a rich and ongoing area of exploration for mathematicians, physicists, and other researchers. The methods used to tackle problems in this field are many. The more basic of these include the
method of matched asymptotic expansions In mathematics, the method of matched asymptotic expansions is a common approach to finding an accurate approximation to the solution to an equation, or system of equations. It is particularly used when solving singularly perturbed differential eq ...
and
WKB approximation In mathematical physics, the WKB approximation or WKB method is a method for finding approximate solutions to linear differential equations with spatially varying coefficients. It is typically used for a semiclassical calculation in quantum mecha ...
for spatial problems, and in time, the
Poincaré–Lindstedt method In perturbation theory, the Poincaré–Lindstedt method or Lindstedt–Poincaré method is a technique for uniformly approximating periodic solutions to ordinary differential equations, when regular perturbation approaches fail. The method remove ...
, the method of multiple scales and periodic averaging. The numerical methods for solving singular perturbation problems are also very popular. For books on singular perturbation in ODE and PDE's, see for example Holmes, ''Introduction to Perturbation Methods'',Holmes, Mark H. ''Introduction to Perturbation Methods''. Springer, 1995. Hinch, ''Perturbation methods''Hinch, E. J. ''Perturbation methods''. Cambridge University Press, 1991. or Bender and Orszag, ''Advanced Mathematical Methods for Scientists and Engineers''.Bender, Carl M. and Orszag, Steven A. ''Advanced Mathematical Methods for Scientists and Engineers''. Springer, 1999.


Examples of singular perturbative problems

Each of the examples described below shows how a naive perturbation analysis, which assumes that the problem is regular instead of singular, will fail. Some show how the problem may be solved by more sophisticated singular methods.


Vanishing coefficients in ordinary differential equations

Differential equations that contain a small parameter that premultiplies the highest order term typically exhibit boundary layers, so that the solution evolves in two different scales. For example, consider the boundary value problem :\begin \varepsilon u^(x)+u^(x) =-e^,\ \ 0 Its solution when \varepsilon=0.1 is the solid curve shown below. Note that the solution changes rapidly near the origin. If we naively set \varepsilon=0, we would get the solution labelled "outer" below which does not model the boundary layer, for which ''x'' is close to zero. For more details that show how to obtain the uniformly valid approximation, see
method of matched asymptotic expansions In mathematics, the method of matched asymptotic expansions is a common approach to finding an accurate approximation to the solution to an equation, or system of equations. It is particularly used when solving singularly perturbed differential eq ...
.


Examples in time

An electrically driven robot manipulator can have slower mechanical dynamics and faster electrical dynamics, thus exhibiting two time scales. In such cases, we can divide the system into two subsystems, one corresponding to faster dynamics and other corresponding to slower dynamics, and then design controllers for each one of them separately. Through a singular perturbation technique, we can make these two subsystems independent of each other, thereby simplifying the control problem. Consider a class of system described by the following set of equations: :\dot_1 = f_1(x_1,x_2) + \varepsilon g_1(x_1,x_2,\varepsilon), \, :\varepsilon\dot_2 = f_2(x_1,x_2) + \varepsilon g_2(x_1,x_2,\varepsilon), \, :x_1(0) = a_1, x_2(0) = a_2, \, with 0<\varepsilon \ll 1. The second equation indicates that the dynamics of x_2 is much faster than that of x_1. A theorem due to TikhonovTikhonov, A. N. (1952), "Systems of differential equations containing a small parameter multiplying the derivative" (in Russian), ''Mat. Sb.'' 31 (73), pp. 575–586 states that, with the correct conditions on the system, it will initially and very quickly approximate the solution to the equations :\dot_1 = f_1(x_1,x_2), \, :f_2(x_1,x_2) = 0, \, :x_1(0)=a_1,\, on some interval of time and that, as \varepsilon decreases toward zero, the system will approach the solution more closely in that same interval.Verhulst, Ferdinand. ''Methods and Applications of Singular Perturbations: Boundary Layers and Multiple Timescale Dynamics'', Springer, 2005. .


Examples in space

In
fluid mechanics Fluid mechanics is the branch of physics concerned with the mechanics of fluids ( liquids, gases, and plasmas) and the forces on them. It has applications in a wide range of disciplines, including mechanical, aerospace, civil, chemical and bio ...
, the properties of a slightly viscous fluid are dramatically different outside and inside a narrow
boundary layer In physics and fluid mechanics, a boundary layer is the thin layer of fluid in the immediate vicinity of a bounding surface formed by the fluid flowing along the surface. The fluid's interaction with the wall induces a no-slip boundary condi ...
. Thus the fluid exhibits multiple spatial scales.
Reaction–diffusion system Reaction–diffusion systems are mathematical models which correspond to several physical phenomena. The most common is the change in space and time of the concentration of one or more chemical substances: local chemical reactions in which the s ...
s in which one reagent diffuses much more slowly than another can form spatial patterns marked by areas where a reagent exists, and areas where it does not, with sharp transitions between them. In
ecology Ecology () is the study of the relationships between living organisms, including humans, and their physical environment. Ecology considers organisms at the individual, population, community, ecosystem, and biosphere level. Ecology overlaps wi ...
, predator-prey models such as :u_t = \varepsilon u_ + uf(u) - vg(u), \, :v_t = v_ + vh(u), \, where u is the prey and v is the predator, have been shown to exhibit such patterns.Owen, M. R. and Lewis, M. A. "How Predation can Slow, Stop, or Reverse a Prey Invasion", ''Bulletin of Mathematical Biology'' (2001) 63, 655-684.


Algebraic equations

Consider the problem of finding all
roots A root is the part of a plant, generally underground, that anchors the plant body, and absorbs and stores water and nutrients. Root or roots may also refer to: Art, entertainment, and media * ''The Root'' (magazine), an online magazine focusing ...
of the polynomial p(x) = \varepsilon x^3-x^2+1. In the limit \varepsilon\to 0, this cubic degenerates into the quadratic 1 - x^2 with roots at x = \pm 1. Substituting a regular perturbation series :x(\varepsilon) = x_0 + \varepsilon x_1 + \varepsilon^2 x_2+\cdots in the equation and equating equal powers of \varepsilon only yields corrections to these two roots: :x(\varepsilon) = \pm 1 + \frac\varepsilon \pm \frac\varepsilon^2+\cdots . To find the other root, singular perturbation analysis must be used. We must then deal with the fact that the equation degenerates into a quadratic when we let \varepsilon tend to zero, in that limit one of the roots escapes to infinity. To prevent this root from becoming invisible to the perturbative analysis, we must rescale x to keep track with this escaping root so that in terms of the rescaled variables, it doesn't escape. We define a rescaled variable x= \frac where the exponent \nu will be chosen such that we rescale just fast enough so that the root is at a finite value of y in the limit of \varepsilon to zero, but such that it doesn't collapse to zero where the other two roots will end up. In terms of y we have :y^3 -\varepsilon^y^2 + \varepsilon^ = 0 . We can see that for \nu < 1 the y^3 is dominated by the lower degree terms, while at \nu =1 it becomes as dominant as the y^2 term while they both dominate the remaining term. This point where the highest order term will no longer vanish in the limit \varepsilon to zero by becoming equally dominant to another term, is called significant degeneration; this yields the correct rescaling to make the remaining root visible. This choice yields :y^3 -y^2 + \varepsilon^2 = 0 . Substituting the perturbation series :y(\varepsilon) = y_0 + \varepsilon^2 y_1 + \varepsilon^4 y_2+\cdots yields :y_0^3 - y_0^2 = 0. We are then interested in the root at y_0 = 1; the double root at y_0 = 0 are the two roots that we've found above that collapse to zero in the limit of an infinite rescaling. Calculating the first few terms of the series then yields :x(\varepsilon) = \frac = \frac{\varepsilon} - \varepsilon - 2\varepsilon^3+\cdots.


References

Differential equations Nonlinear control Perturbation theory