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Eigenfunction

In mathematics, an eigenfunction of a linear operator D defined on some function space is any non-zero function in that space that, when acted upon by D, is only multiplied by some scaling factor called an eigenvalue. As an equation, this condition can be written as

This solution of the vibrating drum problem is, at any point in time, an eigenfunction of the Laplace operator on a disk.
for some scalar eigenvalue [1][2][3] The solutions to this equation may also be subject to boundary conditions that limit the allowable eigenvalues and eigenfunctions.

An eigenfunction is a type of eigenvector.

Eigenfunctions edit

In general, an eigenvector of a linear operator D defined on some vector space is a nonzero vector in the domain of D that, when D acts upon it, is simply scaled by some scalar value called an eigenvalue. In the special case where D is defined on a function space, the eigenvectors are referred to as eigenfunctions. That is, a function f is an eigenfunction of D if it satisfies the equation

 

(1)

where λ is a scalar.[1][2][3] The solutions to Equation (1) may also be subject to boundary conditions. Because of the boundary conditions, the possible values of λ are generally limited, for example to a discrete set λ1, λ2, … or to a continuous set over some range. The set of all possible eigenvalues of D is sometimes called its spectrum, which may be discrete, continuous, or a combination of both.[1]

Each value of λ corresponds to one or more eigenfunctions. If multiple linearly independent eigenfunctions have the same eigenvalue, the eigenvalue is said to be degenerate and the maximum number of linearly independent eigenfunctions associated with the same eigenvalue is the eigenvalue's degree of degeneracy or geometric multiplicity.[4][5]

Derivative example edit

A widely used class of linear operators acting on infinite dimensional spaces are differential operators on the space C of infinitely differentiable real or complex functions of a real or complex argument t. For example, consider the derivative operator   with eigenvalue equation

 

This differential equation can be solved by multiplying both sides by   and integrating. Its solution, the exponential function

 
is the eigenfunction of the derivative operator, where f0 is a parameter that depends on the boundary conditions. Note that in this case the eigenfunction is itself a function of its associated eigenvalue λ, which can take any real or complex value. In particular, note that for λ = 0 the eigenfunction f(t) is a constant.

Suppose in the example that f(t) is subject to the boundary conditions f(0) = 1 and  . We then find that

 
where λ = 2 is the only eigenvalue of the differential equation that also satisfies the boundary condition.

Link to eigenvalues and eigenvectors of matrices edit

Eigenfunctions can be expressed as column vectors and linear operators can be expressed as matrices, although they may have infinite dimensions. As a result, many of the concepts related to eigenvectors of matrices carry over to the study of eigenfunctions.

Define the inner product in the function space on which D is defined as

 
integrated over some range of interest for t called Ω. The * denotes the complex conjugate.

Suppose the function space has an orthonormal basis given by the set of functions {u1(t), u2(t), …, un(t)}, where n may be infinite. For the orthonormal basis,

 
where δij is the Kronecker delta and can be thought of as the elements of the identity matrix.

Functions can be written as a linear combination of the basis functions,

 
for example through a Fourier expansion of f(t). The coefficients bj can be stacked into an n by 1 column vector b = [b1 b2bn]T. In some special cases, such as the coefficients of the Fourier series of a sinusoidal function, this column vector has finite dimension.

Additionally, define a matrix representation of the linear operator D with elements

 

We can write the function Df(t) either as a linear combination of the basis functions or as D acting upon the expansion of f(t),

 

Taking the inner product of each side of this equation with an arbitrary basis function ui(t),

 

This is the matrix multiplication Ab = c written in summation notation and is a matrix equivalent of the operator D acting upon the function f(t) expressed in the orthonormal basis. If f(t) is an eigenfunction of D with eigenvalue λ, then Ab = λb.

Eigenvalues and eigenfunctions of Hermitian operators edit

Many of the operators encountered in physics are Hermitian. Suppose the linear operator D acts on a function space that is a Hilbert space with an orthonormal basis given by the set of functions {u1(t), u2(t), …, un(t)}, where n may be infinite. In this basis, the operator D has a matrix representation A with elements

 
integrated over some range of interest for t denoted Ω.

By analogy with Hermitian matrices, D is a Hermitian operator if Aij = Aji*, or:[6]

 

Consider the Hermitian operator D with eigenvalues λ1, λ2, … and corresponding eigenfunctions f1(t), f2(t), …. This Hermitian operator has the following properties:

  • Its eigenvalues are real, λi = λi*[4][6]
  • Its eigenfunctions obey an orthogonality condition,   if ij[6][7][8]

The second condition always holds for λiλj. For degenerate eigenfunctions with the same eigenvalue λi, orthogonal eigenfunctions can always be chosen that span the eigenspace associated with λi, for example by using the Gram-Schmidt process.[5] Depending on whether the spectrum is discrete or continuous, the eigenfunctions can be normalized by setting the inner product of the eigenfunctions equal to either a Kronecker delta or a Dirac delta function, respectively.[8][9]

For many Hermitian operators, notably Sturm–Liouville operators, a third property is

  • Its eigenfunctions form a basis of the function space on which the operator is defined[5]

As a consequence, in many important cases, the eigenfunctions of the Hermitian operator form an orthonormal basis. In these cases, an arbitrary function can be expressed as a linear combination of the eigenfunctions of the Hermitian operator.

Applications edit

Vibrating strings edit

 
The shape of a standing wave in a string fixed at its boundaries is an example of an eigenfunction of a differential operator. The admissible eigenvalues are governed by the length of the string and determine the frequency of oscillation.

Let h(x, t) denote the transverse displacement of a stressed elastic chord, such as the vibrating strings of a string instrument, as a function of the position x along the string and of time t. Applying the laws of mechanics to infinitesimal portions of the string, the function h satisfies the partial differential equation

 
which is called the (one-dimensional) wave equation. Here c is a constant speed that depends on the tension and mass of the string.

This problem is amenable to the method of separation of variables. If we assume that h(x, t) can be written as the product of the form X(x)T(t), we can form a pair of ordinary differential equations:

 

Each of these is an eigenvalue equation with eigenvalues   and ω2, respectively. For any values of ω and c, the equations are satisfied by the functions

 
where the phase angles φ and ψ are arbitrary real constants.

If we impose boundary conditions, for example that the ends of the string are fixed at x = 0 and x = L, namely X(0) = X(L) = 0, and that T(0) = 0, we constrain the eigenvalues. For these boundary conditions, sin(φ) = 0 and sin(ψ) = 0, so the phase angles φ = ψ = 0, and

 

This last boundary condition constrains ω to take a value ωn = ncπ/L, where n is any integer. Thus, the clamped string supports a family of standing waves of the form

 

In the example of a string instrument, the frequency ωn is the frequency of the n-th harmonic, which is called the (n − 1)-th overtone.

Schrödinger equation edit

In quantum mechanics, the Schrödinger equation

 
with the Hamiltonian operator
 
can be solved by separation of variables if the Hamiltonian does not depend explicitly on time.[10] In that case, the wave function Ψ(r,t) = φ(r)T(t) leads to the two differential equations,
 

(2)
 

(3)

Both of these differential equations are eigenvalue equations with eigenvalue E. As shown in an earlier example, the solution of Equation (3) is the exponential

 

Equation (2) is the time-independent Schrödinger equation. The eigenfunctions φk of the Hamiltonian operator are stationary states of the quantum mechanical system, each with a corresponding energy Ek. They represent allowable energy states of the system and may be constrained by boundary conditions.

The Hamiltonian operator H is an example of a Hermitian operator whose eigenfunctions form an orthonormal basis. When the Hamiltonian does not depend explicitly on time, general solutions of the Schrödinger equation are linear combinations of the stationary states multiplied by the oscillatory T(t),[11]   or, for a system with a continuous spectrum,

 

The success of the Schrödinger equation in explaining the spectral characteristics of hydrogen is considered one of the greatest triumphs of 20th century physics.

Signals and systems edit

In the study of signals and systems, an eigenfunction of a system is a signal f(t) that, when input into the system, produces a response y(t) = λf(t), where λ is a complex scalar eigenvalue.[12]

See also edit

Notes edit

Citations edit

  1. ^ a b c Davydov 1976, p. 20.
  2. ^ a b Kusse & Westwig 1998, p. 435.
  3. ^ a b Wasserman 2016.
  4. ^ a b Davydov 1976, p. 21.
  5. ^ a b c Kusse & Westwig 1998, p. 437.
  6. ^ a b c Kusse & Westwig 1998, p. 436.
  7. ^ Davydov 1976, p. 24.
  8. ^ a b Davydov 1976, p. 29.
  9. ^ Davydov 1976, p. 25.
  10. ^ Davydov 1976, p. 51.
  11. ^ Davydov 1976, p. 52.
  12. ^ Girod, Rabenstein & Stenger 2001, p. 49.

Works cited edit

  • Courant, Richard; Hilbert, David. Methods of Mathematical Physics. Vol. 1. Wiley. ISBN 047150447-5. (Volume 2: ISBN 047150439-4)
  • Davydov, A. S. (1976). Quantum Mechanics. Translated, edited, and with additions by D. ter Haar (2nd ed.). Oxford: Pergamon Press. ISBN 008020438-4.
  • Girod, Bernd; Rabenstein, Rudolf; Stenger, Alexander (2001). Signals and systems (2nd ed.). Wiley. ISBN 047198800-6.
  • Kusse, Bruce; Westwig, Erik (1998). Mathematical Physics. New York: Wiley Interscience. ISBN 047115431-8.
  • Wasserman, Eric W. (2016). "Eigenfunction". MathWorld. Wolfram Research. Retrieved April 12, 2016.

External links edit

  • More images (non-GPL) at Atom in a Box

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In mathematics an eigenfunction of a linear operator D defined on some function space is any non zero function f displaystyle f in that space that when acted upon by D is only multiplied by some scaling factor called an eigenvalue As an equation this condition can be written asThis solution of the vibrating drum problem is at any point in time an eigenfunction of the Laplace operator on a disk D f l f displaystyle Df lambda f for some scalar eigenvalue l displaystyle lambda 1 2 3 The solutions to this equation may also be subject to boundary conditions that limit the allowable eigenvalues and eigenfunctions An eigenfunction is a type of eigenvector Contents 1 Eigenfunctions 1 1 Derivative example 1 2 Link to eigenvalues and eigenvectors of matrices 1 3 Eigenvalues and eigenfunctions of Hermitian operators 2 Applications 2 1 Vibrating strings 2 2 Schrodinger equation 2 3 Signals and systems 3 See also 4 Notes 4 1 Citations 5 Works cited 6 External linksEigenfunctions editIn general an eigenvector of a linear operator D defined on some vector space is a nonzero vector in the domain of D that when D acts upon it is simply scaled by some scalar value called an eigenvalue In the special case where D is defined on a function space the eigenvectors are referred to as eigenfunctions That is a function f is an eigenfunction of D if it satisfies the equation D f l f displaystyle Df lambda f nbsp 1 where l is a scalar 1 2 3 The solutions to Equation 1 may also be subject to boundary conditions Because of the boundary conditions the possible values of l are generally limited for example to a discrete set l1 l2 or to a continuous set over some range The set of all possible eigenvalues of D is sometimes called its spectrum which may be discrete continuous or a combination of both 1 Each value of l corresponds to one or more eigenfunctions If multiple linearly independent eigenfunctions have the same eigenvalue the eigenvalue is said to be degenerate and the maximum number of linearly independent eigenfunctions associated with the same eigenvalue is the eigenvalue s degree of degeneracy or geometric multiplicity 4 5 Derivative example edit A widely used class of linear operators acting on infinite dimensional spaces are differential operators on the space C of infinitely differentiable real or complex functions of a real or complex argument t For example consider the derivative operator d d t textstyle frac d dt nbsp with eigenvalue equationd d t f t l f t displaystyle frac d dt f t lambda f t nbsp This differential equation can be solved by multiplying both sides by d t f t textstyle frac dt f t nbsp and integrating Its solution the exponential functionf t f 0 e l t displaystyle f t f 0 e lambda t nbsp is the eigenfunction of the derivative operator where f0 is a parameter that depends on the boundary conditions Note that in this case the eigenfunction is itself a function of its associated eigenvalue l which can take any real or complex value In particular note that for l 0 the eigenfunction f t is a constant Suppose in the example that f t is subject to the boundary conditions f 0 1 and d f d t t 0 2 textstyle left frac df dt right t 0 2 nbsp We then find thatf t e 2 t displaystyle f t e 2t nbsp where l 2 is the only eigenvalue of the differential equation that also satisfies the boundary condition Link to eigenvalues and eigenvectors of matrices edit Eigenfunctions can be expressed as column vectors and linear operators can be expressed as matrices although they may have infinite dimensions As a result many of the concepts related to eigenvectors of matrices carry over to the study of eigenfunctions Define the inner product in the function space on which D is defined as f g W f t g t d t displaystyle langle f g rangle int Omega f t g t dt nbsp integrated over some range of interest for t called W The denotes the complex conjugate Suppose the function space has an orthonormal basis given by the set of functions u1 t u2 t un t where n may be infinite For the orthonormal basis u i u j W u i t u j t d t d i j 1 i j 0 i j displaystyle langle u i u j rangle int Omega u i t u j t dt delta ij begin cases 1 amp i j 0 amp i neq j end cases nbsp where dij is the Kronecker delta and can be thought of as the elements of the identity matrix Functions can be written as a linear combination of the basis functions f t j 1 n b j u j t displaystyle f t sum j 1 n b j u j t nbsp for example through a Fourier expansion of f t The coefficients bj can be stacked into an n by 1 column vector b b1 b2 bn T In some special cases such as the coefficients of the Fourier series of a sinusoidal function this column vector has finite dimension Additionally define a matrix representation of the linear operator D with elementsA i j u i D u j W u i t D u j t d t displaystyle A ij langle u i Du j rangle int Omega u i t Du j t dt nbsp We can write the function Df t either as a linear combination of the basis functions or as D acting upon the expansion of f t D f t j 1 n c j u j t j 1 n b j D u j t displaystyle Df t sum j 1 n c j u j t sum j 1 n b j Du j t nbsp Taking the inner product of each side of this equation with an arbitrary basis function ui t j 1 n c j W u i t u j t d t j 1 n b j W u i t D u j t d t c i j 1 n b j A i j displaystyle begin aligned sum j 1 n c j int Omega u i t u j t dt amp sum j 1 n b j int Omega u i t Du j t dt c i amp sum j 1 n b j A ij end aligned nbsp This is the matrix multiplication Ab c written in summation notation and is a matrix equivalent of the operator D acting upon the function f t expressed in the orthonormal basis If f t is an eigenfunction of D with eigenvalue l then Ab lb Eigenvalues and eigenfunctions of Hermitian operators edit Many of the operators encountered in physics are Hermitian Suppose the linear operator D acts on a function space that is a Hilbert space with an orthonormal basis given by the set of functions u1 t u2 t un t where n may be infinite In this basis the operator D has a matrix representation A with elementsA i j u i D u j W d t u i t D u j t displaystyle A ij langle u i Du j rangle int Omega dt u i t Du j t nbsp integrated over some range of interest for t denoted W By analogy with Hermitian matrices D is a Hermitian operator if Aij Aji or 6 u i D u j D u i u j W d t u i t D u j t W d t u j t D u i t displaystyle begin aligned langle u i Du j rangle amp langle Du i u j rangle 1pt int Omega dt u i t Du j t amp int Omega dt u j t Du i t end aligned nbsp Consider the Hermitian operator D with eigenvalues l1 l2 and corresponding eigenfunctions f1 t f2 t This Hermitian operator has the following properties Its eigenvalues are real li li 4 6 Its eigenfunctions obey an orthogonality condition f i f j 0 displaystyle langle f i f j rangle 0 nbsp if i j 6 7 8 The second condition always holds for li lj For degenerate eigenfunctions with the same eigenvalue li orthogonal eigenfunctions can always be chosen that span the eigenspace associated with li for example by using the Gram Schmidt process 5 Depending on whether the spectrum is discrete or continuous the eigenfunctions can be normalized by setting the inner product of the eigenfunctions equal to either a Kronecker delta or a Dirac delta function respectively 8 9 For many Hermitian operators notably Sturm Liouville operators a third property is Its eigenfunctions form a basis of the function space on which the operator is defined 5 As a consequence in many important cases the eigenfunctions of the Hermitian operator form an orthonormal basis In these cases an arbitrary function can be expressed as a linear combination of the eigenfunctions of the Hermitian operator Applications editVibrating strings edit nbsp The shape of a standing wave in a string fixed at its boundaries is an example of an eigenfunction of a differential operator The admissible eigenvalues are governed by the length of the string and determine the frequency of oscillation Let h x t denote the transverse displacement of a stressed elastic chord such as the vibrating strings of a string instrument as a function of the position x along the string and of time t Applying the laws of mechanics to infinitesimal portions of the string the function h satisfies the partial differential equation 2 h t 2 c 2 2 h x 2 displaystyle frac partial 2 h partial t 2 c 2 frac partial 2 h partial x 2 nbsp which is called the one dimensional wave equation Here c is a constant speed that depends on the tension and mass of the string This problem is amenable to the method of separation of variables If we assume that h x t can be written as the product of the form X x T t we can form a pair of ordinary differential equations d 2 d x 2 X w 2 c 2 X d 2 d t 2 T w 2 T displaystyle frac d 2 dx 2 X frac omega 2 c 2 X qquad frac d 2 dt 2 T omega 2 T nbsp Each of these is an eigenvalue equation with eigenvalues w 2 c 2 textstyle frac omega 2 c 2 nbsp and w2 respectively For any values of w and c the equations are satisfied by the functionsX x sin w x c f T t sin w t ps displaystyle X x sin left frac omega x c varphi right qquad T t sin omega t psi nbsp where the phase angles f and ps are arbitrary real constants If we impose boundary conditions for example that the ends of the string are fixed at x 0 and x L namely X 0 X L 0 and that T 0 0 we constrain the eigenvalues For these boundary conditions sin f 0 and sin ps 0 so the phase angles f ps 0 andsin w L c 0 displaystyle sin left frac omega L c right 0 nbsp This last boundary condition constrains w to take a value wn ncp L where n is any integer Thus the clamped string supports a family of standing waves of the formh x t sin n p x L sin w n t displaystyle h x t sin left frac n pi x L right sin omega n t nbsp In the example of a string instrument the frequency wn is the frequency of the n th harmonic which is called the n 1 th overtone Schrodinger equation edit In quantum mechanics the Schrodinger equationi ℏ t PS r t H PS r t displaystyle i hbar frac partial partial t Psi mathbf r t H Psi mathbf r t nbsp with the Hamiltonian operator H ℏ 2 2 m 2 V r t displaystyle H frac hbar 2 2m nabla 2 V mathbf r t nbsp can be solved by separation of variables if the Hamiltonian does not depend explicitly on time 10 In that case the wave function PS r t f r T t leads to the two differential equations H f r E f r displaystyle H varphi mathbf r E varphi mathbf r nbsp 2 i ℏ T t t E T t displaystyle i hbar frac partial T t partial t ET t nbsp 3 Both of these differential equations are eigenvalue equations with eigenvalue E As shown in an earlier example the solution of Equation 3 is the exponentialT t e i E t ℏ displaystyle T t e iEt hbar nbsp Equation 2 is the time independent Schrodinger equation The eigenfunctions fk of the Hamiltonian operator are stationary states of the quantum mechanical system each with a corresponding energy Ek They represent allowable energy states of the system and may be constrained by boundary conditions The Hamiltonian operator H is an example of a Hermitian operator whose eigenfunctions form an orthonormal basis When the Hamiltonian does not depend explicitly on time general solutions of the Schrodinger equation are linear combinations of the stationary states multiplied by the oscillatory T t 11 PS r t k c k f k r e i E k t ℏ textstyle Psi mathbf r t sum k c k varphi k mathbf r e iE k t hbar nbsp or for a system with a continuous spectrum PS r t d E c E f E r e i E t ℏ displaystyle Psi mathbf r t int dE c E varphi E mathbf r e iEt hbar nbsp The success of the Schrodinger equation in explaining the spectral characteristics of hydrogen is considered one of the greatest triumphs of 20th century physics Signals and systems edit In the study of signals and systems an eigenfunction of a system is a signal f t that when input into the system produces a response y t lf t where l is a complex scalar eigenvalue 12 See also editEigenvalues and eigenvectors Hilbert Schmidt theorem Spectral theory of ordinary differential equations Fixed point combinator Fourier transform eigenfunctionsNotes editCitations edit a b c Davydov 1976 p 20 a b Kusse amp Westwig 1998 p 435 a b Wasserman 2016 a b Davydov 1976 p 21 a b c Kusse amp Westwig 1998 p 437 a b c Kusse amp Westwig 1998 p 436 Davydov 1976 p 24 a b Davydov 1976 p 29 Davydov 1976 p 25 Davydov 1976 p 51 Davydov 1976 p 52 Girod Rabenstein amp Stenger 2001 p 49 Works cited editCourant Richard Hilbert David Methods of Mathematical Physics Vol 1 Wiley ISBN 047150447 5 Volume 2 ISBN 047150439 4 Davydov A S 1976 Quantum Mechanics Translated edited and with additions by D ter Haar 2nd ed Oxford Pergamon Press ISBN 008020438 4 Girod Bernd Rabenstein Rudolf Stenger Alexander 2001 Signals and systems 2nd ed Wiley ISBN 047198800 6 Kusse Bruce Westwig Erik 1998 Mathematical Physics New York Wiley Interscience ISBN 047115431 8 Wasserman Eric W 2016 Eigenfunction MathWorld Wolfram Research Retrieved April 12 2016 External links editMore images non GPL at Atom in a Box Retrieved from https en wikipedia org w index php title Eigenfunction amp oldid 1115272845, wikipedia, wiki, book, books, library,

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