In
mathematics, a 'partial differential equation' ('PDE') is a type of
differential equation, i. e. a
relation involving an unknown
function of several
independent variables and its
partial derivatives with respect to those variables. Partial differential equations are used to formulate and solve problems that involve unknown functions of several variables, such as the propagation of
sound or
heat,
electrostatics,
electrodynamics,
fluid flow,
elasticity, or more generally any
process that is distributed in
space, or distributed in space and
time. Completely distinct physical problems may have identical mathematical formulations.
Introduction
A very simple partial differential equation is
:
This relation
implies that the values ''u''(''x'',''y'') are actually independent of ''x''. Hence the
general solution of this equation is
:
where ''f'' is an arbitrary (differentiable) function of ''y''. The analogous
ordinary differential equation is
:
which has the solution
:
where ''c'' is any
constant value (independent of ''x''). These two examples illustrate that general solutions of ordinary differential equations involve arbitrary constants, but solutions of partial differential equations involve arbitrary functions. A solution of a partial differential equation is generally not
unique; additional conditions must generally be specified on the
boundary of the region where the solution is defined. For instance,
in the simple example above, the function
can be determined if
is specified on the line
.
Existence and uniqueness
Although the issue of the existence and uniqueness of solutions of ordinary differential equations has a very satisfactory answer with the
Picard-Lindelöf theorem, that is far from the case for partial differential equations. There is a general theorem (the
Cauchy-Kovalevskaya theorem) that states that the
Cauchy problem for any partial differential equation that is
analytic in the unknown function and its derivatives has a unique analytic solution. Although this result might appear to settle the existence and uniqueness of solutions, there are examples of linear partial differential equations whose coefficients have derivatives of all orders (which are nevertheless not analytic) but which have no solutions at all: see Lewy (1957). Even if the solution of a partial differential equation exists and is unique, it may nevertheless have undesirable properties.
An example of pathological behavior is the sequence of Cauchy problems (depending upon ''n'') for the
Laplace equation
:
with
initial conditions
:
:
where ''n'' is an integer. The derivative of ''u'' with respect to ''y'' approaches 0 uniformly in ''x'' as ''n'' increases, but the solution is
:
This solution approaches infinity if ''nx'' is not an integer multiple of
π for any non-zero value of ''y''. The Cauchy problem for the Laplace equation is called ''ill-posed'' or ''not
well posed'', since the solution does not depend continuously upon the data of the problem. Such ill-posed problems are not usually satisfactory for physical applications.
Notation and examples
In PDEs, it is common to denote partial derivatives using subscripts. That is:
:
:
Especially in (mathematical) physics, one often prefers use of the
nabla operator (which in cartesian coordinates is written
for spatial derivatives and a dot
for time derivatives, e.g. to write the
wave equation (see below) as
:
(math notation)
:
(physics notation)
Heat equation in one space dimension
The equation for conduction of heat in one dimension has the form
:
where ''u''(''t'',''x'') is temperature, and α is a positive constant that describes the rate of diffusion. The Cauchy problem for this equation consists in specifying
,
where ''f''(''x'') is an arbitrary function.
General solutions of the heat equation can be found by the method of
separation of variables. Some examples appear in the
heat equation article.
They are examples of
Fourier series for periodic ''f'' and
Fourier Transforms for non-periodic ''f''. Using the Fourier transform, a
general solution of the heat equation has the form
:
where ''F'' is an arbitrary function. In order to satisfy the initial condition, ''F'' is given by the (the Fourier transform of ''f''), that is
:
If ''f'' represents a very small but intense source of heat, then the preceding integral can be approximated by the
delta distribution, multiplied by the strength of the source. For a source whose strength is normalized to 1, the result is
:
and the resulting solution of the heat equation is
:
This is a
Gaussian integral. It may be evaluated to obtain
:
This result corresponds to a normal probability density for ''x'' with mean 0 and variance 2α''t''. The heat equation and similar
diffusion equations are useful tools to study random phenomena.
Wave equation in one spatial dimension
The
wave equation is an equation for an unknown function ''u''(''t'', ''x'') of the form
:
Here ''u'' might describe the displacement of a stretched string from equilibrium, or the difference in air pressure in a tube, or the magnitude of an electromagnetic field in a tube, and ''c'' is a number that corresponds to the velocity of the wave. The Cauchy problem for this equation consists in prescribing the initial displacement and velocity of a string or other medium:
:
:
where ''f'' and ''g'' are arbitrary given functions. The solution of this problem is given by
d'Alembert's formula:
:
This formula implies that the solution at (''t'',''x'') depends only upon the data on the segment of the initial line that is cut out by the
characteristic curves
:
that are drawn backwards from that point. These curves correspond to signals that propagate with velocity ''c'' forward and backward.
Conversely, the influence of the data at any given point on the initial line propagates with the finite velocity ''c'': there is no effect outside a triangle through that point whose sides are characteristic curves. This behavior
is very different from the solution for the heat equation, where the effect of a
point source appears (with small amplitude) instantaneously at every point in space. The solution given above is also valid if ''t'' is negative, and the explicit formula shows that the solution depends smoothly upon the data: both the forward and backward Cauchy problems for the wave equation are well-posed.
Spherical waves
Spherical waves are waves whose amplitude depends only upon the radial distance ''r'' from a central
point source. For such waves, the three-dimensional wave equation takes the form
:
This is equivalent to
:
and hence the quantity ''ru'' satisfies the one-dimensional wave equation. Therefore a general solution for spherical waves has the form
:
where ''F'' and ''G'' are completely arbitrary functions. Radiation from an antenna corresponds to the case where ''G'' is identically zero. Thus the wave form transmitted from an antenna has no distortion in time: the only distorting factor is 1/''r''. This feature of undistorted propagation of waves is not present if there are two spatial dimensions.
Laplace equation in two dimensions
The
Laplace equation for an unknown function of two variables φ has the form
:
Solutions of Laplace's equation are called
harmonic functions.
Connection with analytic functions
Solutions of the Laplace equation are intimately connected with analytic functions of a complex variable: the real and imaginary parts of any analytic function are 'conjugate harmonic' functions: they both satisfy the Laplace equation, and their gradients are orthogonal. If ''f''=''u''+''iv'', then the
Cauchy-Riemann equations state that
:
and it follows that
:
Conversely, given any harmonic function, it is the real part of an analytic function, at least locally. Details are given in
Laplace equation.
A typical boundary value problem
A typical problem for Laplace's equation is to find a solution that satisfies arbitrary values on the boundary of a domain. For example, we may seek a harmonic function that takes on the values ''u''(θ) on a circle of radius one. The solution was given by
Poisson:
:
Petrovsky (1967, p. 248) shows how this formula can be obtained by summing a Fourier series for φ. If ''r''<1, the derivatives of φ may be computed by differentiating under the integral sign, and one can verify that φ is analytic, even if ''u'' is continuous but not necessarily differentiable. This behavior is typical for solutions of
elliptic partial differential equations: the solutions may be much more smooth than the boundary data. This is in contrast to solutions of the
wave equation, and more general
hyperbolic partial differential equations, which typically have no more derivatives than the data.
Euler-Tricomi equation
The
Euler-Tricomi equation is used in the investigation of
transonic flow. It is
:
Advection equation
The
advection equation describes the transport of a conserved scalar
in a velocity field
. It is:
:
If the velocity field is
solenoidal (that is,
), then the equation may be simplified to
:
The one dimensional steady flow advection equation
(where
is constant) is commonly referred to as the
pigpen problem. If
is not constant and equal to
the equation is referred to as
Burgers' equation.
Ginzburg-Landau equation
The
Ginzburg-Landau equation is used in modelling
superconductivity. It is
:
where
and
are constants and
is the imaginary unit.
The Dym equation
The
Dym equation is named for
Harry Dym and occurs in the study of
solitons. It is
:
Other examples
The
Schrödinger equation is a PDE at the heart of non-relativistic
quantum mechanics. In the
WKB approximation it is the
Hamilton-Jacobi equation.
Except for the Dym equation and the Ginzburg-Landau equation, the above equations are 'linear' in the sense that they can be written in the form ''Au'' = ''f'' for a given
linear operator ''A'' and a given function ''f''. Other important non-linear equations include the
Navier-Stokes equations describing the flow of fluids, and
Einstein's
field equations of
general relativity.
Methods to solve PDEs
The method of
separation of variables will yield particular solutions of a linear PDE on very simple domains such as rectangles that may satisfy initial or boundary conditions. Because any
superposition of solutions of a linear PDE is again a solution, the particular solutions may then be combined to obtain more general solutions. If the domain is finite or periodic, an infinite sum of solutions such as a
Fourier series is appropriate, but an integral of solutions such as a
Fourier integral is generally required for infinite domains. The solution for a point source for the heat equation given above is an example for use of a Fourier integral.
Initial-boundary value problems
Many problems of
Mathematical Physics are formulated as initial-boundary value problems.
Vibrating string
If the string is stretched between two points where ''x''=0 and ''x''=''L'' and ''u'' denotes the amplitude of the displacement of the string, then ''u'' satisfies the one-dimensional wave equation in the region where 0<''x''<''L'' and ''t'' is unlimited. Since the string is tied down at the ends, ''u'' must also satisfy the boundary conditions
:
as well as the initial conditions
:
The method of separation of variables for the wave equation
:
leads to solutions of the form
:
where
:
where the constant ''k'' must be determined. The boundary conditions then imply that ''X'' is a multiple of sin ''kx'', and ''k'' must have the form
:
where ''n'' is an integer. Each term in the sum corresponds to a mode of vibration of the string. The mode with ''n''=1 is called the fundamental mode, and the frequencies of the other modes are all multiples of this frequency. They form the
overtone series of the string, and they are the basis for musical acoustics. The initial conditions may then be satisfied by representing ''f'' and ''g'' as infinite sums of these modes.
Wind instruments typically correspond to vibrations of an air column with one end open and one end closed. The corresponding boundary conditions are
:
The method of separation of variables can also be applied in this case, and it leads to a series of odd overtones.
The general problem of this type is solved in
Sturm-Liouville theory.
Vibrating membrane
If a membrane is stretched over a curve ''C'' that forms the boundary of a domain ''D'' in the plane, its vibrations are governed by the wave equation
:
if ''t''>0 and (''x'',''y'') is in ''D''. The boundary condition is
if
is on
. The method of separation of variables leads to the form
:
which in turn must satisfy
:
:
The latter equation is called the
Helmholtz Equation. The constant ''k'' must be determined in order to allow a non-trivial ''v'' to satisfy the boundary condition on ''C''. Such values of ''k
2'' are called the eigenvalues of the Laplacian in ''D'', and the associated solutions are the eigenfunctions of the Laplacian in ''D''. The Sturm-Liouville theory may be extended to this elliptic eigenvalue problem (Jost, 2002).
There are no generally applicable methods to solve non-linear PDEs. Still, existence and uniqueness results (such as the
Cauchy-Kovalevskaya theorem) are often possible, as are proofs of important qualitative and quantitative properties of solutions (getting these results is a major part of
analysis). Computational solution to the nonlinear PDEs, the
Split-step method, exist for specific equations like Non-Linear Schrodinger equation.
Nevertheless, some techniques can be used for several types of equations. The
h-principle is the most powerful method to solve
underdetermined equations. The
Riquier-Janet theory is an effective method for obtaining information about many analytic
overdetermined systems.
The
method of characteristics (
Similarity Transformation method) can be used in some very special cases to solve partial differential equations.
In some cases, a PDE can be solved via perturbation analysis in which the solution is considered to be a correction to an equation with a known solution. Alternatives are
numerical analysis techniques from simple
finite difference schemes to the more mature
multigrid and
finite element methods. Many interesting problems in science and engineering are solved in this way using
computers, sometimes high performance
supercomputers.
Classification
Some linear, second-order partial differential equations can be classified as
parabolic,
hyperbolic or
elliptic. Others such as the
Euler-Tricomi equation have different types in different regions. The classification provides a guide to appropriate initial and boundary conditions, and to smoothness of the solutions.
Equations of second order
Assuming
the general second-order PDE in two independent variables has the form
:
where the coefficients ''A'', ''B'', ''C'' etc. may depend upon ''x'' and ''y''. This form is analogous to the equation for a conic section:
:
Just as one classifies
conic sections into parabolic, hyperbolic, and elliptic based on the
discriminant , the same can be done for a second-order PDE at a given point.
#
: solutions of
elliptic PDEs are as smooth as the coefficients allow, within the interior of the region where the equation and solutions are defined. For example, solutions of Laplace's equation are analytic within the domain where they are defined, but solutions may assume boundary values that are not smooth. The motion of a fluid at subsonic speeds can be approximated with elliptic PDEs, and the Euler-Tricomi equation is elliptic where ''x''<0.
#
: equations that are
parabolic at every point can be transformed into a form analogous to the heat equation by a change of independent variables. Solutions smooth out as the transformed time variable increases. The Euler-Tricomi equation has parabolic type on the line where ''x''=0.
#
:
hyperbolic equations retain any discontinuities of functions or derivatives in the initial data. An example is the
wave equation. The motion of a fluid at supersonic speeds can be approximated with hyperbolic PDEs, and the Euler-Tricomi equation is hyperbolic where ''x''>0.
If there are ''n'' independent variables ''x''
1, ''x''
2 , ..., ''x''
''n'', a general linear partial differential equation of second order has the form
:
The classification depends upon the signature of the eigenvalues of the coefficient matrix.
# Elliptic: The eigenvalues are all positive or all negative.
# Parabolic : The eigenvalues are all positive or all negative, save one which is zero.
# Hyperbolic: There is only one negative eigenvalue and all the rest are positive, or there is only one positive eigenvalue and all the rest are negative.
# Ultrahyperbolic: There is more than one positive eigenvalue and more than one negative eigenvalue, and there are no zero eigenvalues. There is only limited theory for ultrahyperbolic equations (Courant and Hilbert, 1962).
Systems of first-order equations and characteristic surfaces
The classification of partial differential equations can be extended to systems of first-order equations, where the unknown ''u'' is now a vector with ''m'' components, and the coefficient matrices
are ''m'' by ''m'' matrices for
. The partial differential equation takes the form
:
where the coefficient matrices ''A''
ν and the vector ''B'' may depend upon ''x'' and ''u''. If a hypersurface ''S'' is given in the implicit form
:
where φ has a non-zero gradient, then ''S'' is a 'characteristic surface' for the operator ''L'' at a given point if the characteristic form vanishes:
:
The geometric interpretation of this condition is as follows: if data for ''u'' are prescribed on the surface ''S'', then it may be possible to determine the normal derivative of ''u'' on ''S'' from the differential equation. If the data on ''S'' and the differential equation determine the normal derivative of ''u'' on ''S'', then ''S'' is non-characteristic. If the data on ''S'' and the differential equation ''do not'' determine the normal derivative of ''u'' on ''S'', then the surface is 'characteristic', and the differential equation restricts the data on ''S'': the differential equation is ''internal'' to ''S''.
# A first-order system ''Lu''=0 is ''elliptic'' if no surface is characteristic for ''L'': the values of ''u'' on ''S'' and the differential equation always determine the normal derivative of ''u'' on ''S''.
# A first-order system is ''hyperbolic'' at a point if there is a 'space-like' surface ''S'' with normal ξ at that point. This means that, given any non-trivial vector η orthogonal to ξ, and a scalar multiplier λ, the equation
:
has ''m'' real roots λ
1, λ
2, ..., λ
m. The system is 'strictly hyperbolic' if these roots are always distinct. The geometrical interpretation of this condition is as follows: the characteristic form ''Q''(ζ)=0 defines a cone (the normal cone) with homogeneous coordinates ζ. In the hyperbolic case, this cone has ''m'' sheets, and the axis ζ = λ ξ runs inside these sheets: it does not intersect any of them. But when displaced from the origin by η, this axis intersects every sheet. In the elliptic case, the normal cone has no real sheets.
Equations of mixed type
If a PDE has coefficients which are not constant, it is possible that it will not belong to any of these categories but rather be of 'mixed type'. A simple but important example is the Euler-Tricomi equation
:
which is called 'elliptic-hyperbolic' because it is elliptic in the region ''x'' < 0, hyperbolic in the region ''x'' > 0, and degenerate parabolic on the line ''x'' = 0.
External links
★
Partial Differential Equations: Exact Solutions at EqWorld: The World of Mathematical Equations.
★
Partial Differential Equations: Index at EqWorld: The World of Mathematical Equations.
★
Partial Differential Equations: Methods at EqWorld: The World of Mathematical Equations.
★
Example problems with solutions at exampleproblems.com
★
Partial Differential Equations at mathworld.wolfram.com
★
Dispersive PDE Wiki
References
★ R. Courant and D. Hilbert, ''Methods of Mathematical Physics'', vol II. Wiley-Interscience, New York, 1962.
★ L.C. Evans, ''Partial Differential Equations'', American Mathematical Society, Providence, 1998. ISBN 0-8218-0772-2
★ J. Jost, Partial Differential Equations, Springer-Verlag, New York, 2002.
★ Hans Lewy (1957) An example of a smooth linear partial differential equation without solution. Annals of Mathematics, 2nd Series, 66(1),155-158.
★
I.G. Petrovskii, ''Partial Differential Equations'', W. B. Saunders Co., Philadelphia, 1967.
★ A. D. Polyanin, ''Handbook of Linear Partial Differential Equations for Engineers and Scientists'', Chapman & Hall/CRC Press, Boca Raton, 2002. ISBN 1-58488-299-9
★ A. D. Polyanin and V. F. Zaitsev, ''Handbook of Nonlinear Partial Differential Equations'', Chapman & Hall/CRC Press, Boca Raton, 2004. ISBN 1-58488-355-3
★ A. D. Polyanin, V. F. Zaitsev, and A. Moussiaux, Handbook of First Order Partial Differential Equations'', Taylor & Francis, London, 2002. ISBN 0-415-27267-X
★ D. Zwillinger, ''Handbook of Differential Equations (3rd edition)'', Academic Press, Boston, 1997.
★ Y. Pinchover and J. Rubinstein, ''An Introduction to Partial Differential Equations'', Cambridge University Press, Cambridge, 2005. ISBN 978-0-521-84886-2