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In mathematics and physics, the heat equation is a parabolic partial differential equation. The theory of the heat equation was first developed by Joseph Fourier in 1822 for the purpose of modeling how a quantity such as heat diffuses through a given region. Since then, the heat equation and its variants have been found to be fundamental in many parts of both pure and applied mathematics.

Definition
Given an open subset U of Rn and a subinterval I of R, one says that a function u : U × I → R is a solution of the heat equation if
where (x1, ..., xn, t) denotes a general point of the domain. It is typical to refer to t as time and x1, ..., xn as spatial variables, even in abstract contexts where these phrases fail to have their intuitive meaning. The collection of spatial variables is often referred to simply as x. For any given value of t, the right-hand side of the equation is the Laplacian of the function u(⋅, t) : U → R. As such, the heat equation is often written more compactly as
In physics and engineering contexts, especially in the context of diffusion through a medium, it is more common to fix a Cartesian coordinate system and then to consider the specific case of a function u(x, y, z, t) of three spatial variables (x, y, z) and time variable t. One then says that u is a solution of the heat equation if
in which α is a positive coefficient called the thermal diffusivity of the medium. In addition to other physical phenomena, this equation describes the flow of heat in a homogeneous and isotropic medium, with u(x, y, z, t) being the temperature at the point (x, y, z) and time t. If the medium is not homogeneous and isotropic, then α would not be a fixed coefficient, and would instead depend on (x, y, z); the equation would also have a slightly different form. In the physics and engineering literature, it is common to use ∇2 to denote the Laplacian, rather than ∆.
In mathematics as well as in physics and engineering, it is common to use Newton's notation for time derivatives, so that is used to denote ∂u/∂t, so the equation can be written
Note also that the ability to use either ∆ or ∇2 to denote the Laplacian, without explicit reference to the spatial variables, is a reflection of the fact that the Laplacian is independent of the choice of coordinate system. In mathematical terms, one would say that the Laplacian is translationally and rotationally invariant. In fact, it is (loosely speaking) the simplest differential operator which has these symmetries. This can be taken as a significant (and purely mathematical) justification of the use of the Laplacian and of the heat equation in modeling any physical phenomena which are homogeneous and isotropic, of which heat diffusion is a principal example.
The diffusivity constant, α, is often not present in mathematical studies of the heat equation, while its value can be very important in engineering. This is not a major difference, for the following reason. Let u be a function with
Define a new function . Then, according to the chain rule, one has
⁎ |
Thus, there is a straightforward way of translating between solutions of the heat equation with a general value of α and solutions of the heat equation with α = 1. As such, for the sake of mathematical analysis, it is often sufficient to only consider the case α = 1.
Since there is another option to define a
satisfying
as in (⁎) above by setting
. Note that the two possible means of defining the new function
discussed here amount, in physical terms, to changing the unit of measure of time or the unit of measure of length.
Steady-state equation
The steady-state heat equation is by definition not dependent on time. In other words, it is assumed conditions exist such that:
This condition depends on the time constant and the amount of time passed since boundary conditions have been imposed. Thus, the condition is fulfilled in situations in which the time equilibrium constant is fast enough that the more complex time-dependent heat equation can be approximated by the steady-state case. Equivalently, the steady-state condition exists for all cases in which enough time has passed that the thermal field u no longer evolves in time.
In the steady-state case, a spatial thermal gradient may (or may not) exist, but if it does, it does not change in time. This equation therefore describes the end result in all thermal problems in which a source is switched on (for example, an engine started in an automobile), and enough time has passed for all permanent temperature gradients to establish themselves in space, after which these spatial gradients no longer change in time (as again, with an automobile in which the engine has been running for long enough). The other (trivial) solution is for all spatial temperature gradients to disappear as well, in which case the temperature become uniform in space, as well.
The equation is much simpler and can help to understand better the physics of the materials without focusing on the dynamic of the heat transport process. It is widely used for simple engineering problems assuming there is equilibrium of the temperature fields and heat transport, with time.
Steady-state condition:
The steady-state heat equation for a volume that contains a heat source (the inhomogeneous case), is the Poisson's equation:
where u is the temperature, k is the thermal conductivity and q is the rate of heat generation per unit volume.
In electrostatics, this is equivalent to the case where the space under consideration contains an electrical charge.
The steady-state heat equation without a heat source within the volume (the homogeneous case) is the equation in electrostatics for a volume of free space that does not contain a charge. It is described by Laplace's equation:
Interpretation
Informally, the Laplacian operator ∆ gives the difference between the average value of a function in the neighborhood of a point, and its value at that point. Thus, if u is the temperature, ∆u conveys if (and by how much) the material surrounding each point is hotter or colder, on the average, than the material at that point.
By the second law of thermodynamics, heat will flow from hotter bodies to adjacent colder bodies, in proportion to the difference of temperature and of the thermal conductivity of the material between them. When heat flows into (respectively, out of) a material, its temperature increases (respectively, decreases), in proportion to the amount of heat divided by the amount (mass) of material, with a proportionality factor called the specific heat capacity of the material.
By the combination of these observations, the heat equation says the rate at which the material at a point will heat up (or cool down) is proportional to how much hotter (or cooler) the surrounding material is. The coefficient α in the equation takes into account the thermal conductivity, specific heat, and density of the material.
Interpretation of the equation
The first half of the above physical thinking can be put into a mathematical form. The key is that, for any fixed x, one has
where u(x)(r) is the single-variable function denoting the average value of u over the surface of the sphere of radius r centered at x; it can be defined by
in which ωn − 1 denotes the surface area of the unit ball in n-dimensional Euclidean space. This formalizes the above statement that the value of ∆u at a point x measures the difference between the value of u(x) and the value of u at points nearby to x, in the sense that the latter is encoded by the values of u(x)(r) for small positive values of r.
Following this observation, one may interpret the heat equation as imposing an infinitesimal averaging of a function. Given a solution of the heat equation, the value of u(x, t + τ) for a small positive value of τ may be approximated as 1/2n times the average value of the function u(⋅, t) over a sphere of very small radius centered at x.
Character of the solutions
The heat equation implies that peaks (local maxima) of will be gradually eroded down, while depressions (local minima) will be filled in. The value at some point will remain stable only as long as it is equal to the average value in its immediate surroundings. In particular, if the values in a neighborhood are very close to a linear function
, then the value at the center of that neighborhood will not be changing at that time (that is, the derivative
will be zero).
A more subtle consequence is the maximum principle, that says that the maximum value of in any region
of the medium will not exceed the maximum value that previously occurred in
, unless it is on the boundary of
. That is, the maximum temperature in a region
can increase only if heat comes in from outside
. This is a property of parabolic partial differential equations and is not difficult to prove mathematically (see below).
Another interesting property is that even if initially has a sharp jump (discontinuity) of value across some surface inside the medium, the jump is immediately smoothed out by a momentary, infinitesimally short but infinitely large rate of flow of heat through that surface. For example, if two isolated bodies, initially at uniform but different temperatures
and
, are made to touch each other, the temperature at the point of contact will immediately assume some intermediate value, and a zone will develop around that point where
will gradually vary between
and
.
If a certain amount of heat is suddenly applied to a point in the medium, it will spread out in all directions in the form of a . Unlike the elastic and electromagnetic waves, the speed of a diffusion wave drops with time: as it spreads over a larger region, the temperature gradient decreases, and therefore the heat flow decreases too.
Specific examples
Heat flow in a uniform rod
For heat flow, the heat equation follows from the physical laws of conduction of heat and conservation of energy (Cannon 1984).
By Fourier's law for an isotropic medium, the rate of flow of heat energy per unit area through a surface is proportional to the negative temperature gradient across it:
where is the thermal conductivity of the material,
is the temperature, and
is a vector field that represents the magnitude and direction of the heat flow at the point
of space and time
.
If the medium is a thin rod of uniform section and material, the position x is a single coordinate and the heat flow towards
is a scalar field. The equation becomes
Let be the internal energy (heat) per unit volume of the bar at each point and time. The rate of change in heat per unit volume in the material,
, is proportional to the rate of change of its temperature,
. That is,
where is the specific heat capacity (at constant pressure, in case of a gas) and
is the density (mass per unit volume) of the material. This derivation assumes that the material has constant mass density and heat capacity through space as well as time.
Applying the law of conservation of energy to a small element of the medium centred at , one concludes that the rate at which heat changes at a given point
is equal to the derivative of the heat flow at that point (the difference between the heat flows either side of the particle). That is,
From the above equations it follows that
which is the heat equation in one dimension, with diffusivity coefficient
This quantity is called the thermal diffusivity of the medium.
Accounting for radiative loss
An additional term may be introduced into the equation to account for radiative loss of heat. According to the Stefan–Boltzmann law, this term is , where
is the temperature of the surroundings, and
is a coefficient that depends on the Stefan-Boltzmann constant, the emissivity of the material, and the geometry. The rate of change in internal energy becomes
and the equation for the evolution of becomes
Non-uniform isotropic medium
Note that the state equation, given by the first law of thermodynamics (i.e. conservation of energy), is written in the following form (assuming no mass transfer or radiation). This form is more general and particularly useful to recognize which property (e.g. cp or ) influences which term.
where is the volumetric heat source.
Heat flow in non-homogeneous anisotropic media
In general, the study of heat conduction is based on several principles. Heat flow is a form of energy flow, and as such it is meaningful to speak of the time rate of flow of heat into a region of space.
- The time rate of heat flow into a region V is given by a time-dependent quantity qt(V). We assume q has a density Q, so that
- Heat flow is a time-dependent vector function H(x) characterized as follows: the time rate of heat flowing through an infinitesimal surface element with area dS and with unit normal vector n is
Thus the rate of heat flow into V is also given by the surface integral
where n(x) is the outward pointing normal vector at x.
- The Fourier law states that heat energy flow has the following linear dependence on the temperature gradient
where A(x) is a 3 × 3 real matrix that is symmetric and positive definite.
- By the divergence theorem, the previous surface integral for heat flow into V can be transformed into the volume integral
- The time rate of temperature change at x is proportional to the heat flowing into an infinitesimal volume element, where the constant of proportionality is dependent on a constant κ
Putting these equations together gives the general equation of heat flow:
Remarks
- The coefficient κ(x) is the inverse of specific heat of the substance at x × density of the substance at x:
.
- In the case of an isotropic medium, the matrix A is a scalar matrix equal to thermal conductivity k.
- In the anisotropic case where the coefficient matrix A is not scalar and/or if it depends on x, then an explicit formula for the solution of the heat equation can seldom be written down, though it is usually possible to consider the associated abstract Cauchy problem and show that it is a well-posed problem and/or to show some qualitative properties (like preservation of positive initial data, infinite speed of propagation, convergence toward an equilibrium, smoothing properties). This is usually done by one-parameter semigroups theory: for instance, if A is a symmetric matrix, then the elliptic operator defined by
is self-adjoint and dissipative, thus by the spectral theorem it generates a one-parameter semigroup.
Three-dimensional problem
In the special cases of propagation of heat in an isotropic and homogeneous medium in a 3-dimensional space, this equation is
where:
is temperature as a function of space and time;
is the rate of change of temperature at a point over time;
,
, and
are the second spatial derivatives (thermal conductions) of temperature in the
,
, and
directions, respectively;
is the thermal diffusivity, a material-specific quantity depending on the thermal conductivity
, the specific heat capacity
, and the mass density
.
The heat equation is a consequence of Fourier's law of conduction (see heat conduction).
If the medium is not the whole space, in order to solve the heat equation uniquely we also need to specify boundary conditions for u. To determine uniqueness of solutions in the whole space it is necessary to assume additional conditions, for example an exponential bound on the growth of solutions or a sign condition (nonnegative solutions are unique by a result of David Widder).
Solutions of the heat equation are characterized by a gradual smoothing of the initial temperature distribution by the flow of heat from warmer to colder areas of an object. Generally, many different states and starting conditions will tend toward the same stable equilibrium. As a consequence, to reverse the solution and conclude something about earlier times or initial conditions from the present heat distribution is very inaccurate except over the shortest of time periods.
The heat equation is the prototypical example of a parabolic partial differential equation.
Using the Laplace operator, the heat equation can be simplified, and generalized to similar equations over spaces of arbitrary number of dimensions, as
where the Laplace operator, Δ or ∇2, the divergence of the gradient, is taken in the spatial variables.
The heat equation governs heat diffusion, as well as other diffusive processes, such as particle diffusion or the propagation of action potential in nerve cells. Although they are not diffusive in nature, some quantum mechanics problems are also governed by a mathematical analog of the heat equation (see below). It also can be used to model some phenomena arising in finance, like the Black–Scholes or the Ornstein-Uhlenbeck processes. The equation, and various non-linear analogues, has also been used in image analysis.
The heat equation is, technically, in violation of special relativity, because its solutions involve instantaneous propagation of a disturbance. The part of the disturbance outside the forward light cone can usually be safely neglected, but if it is necessary to develop a reasonable speed for the transmission of heat, a hyperbolic problem should be considered instead – like a partial differential equation involving a second-order time derivative. Some models of nonlinear heat conduction (which are also parabolic equations) have solutions with finite heat transmission speed.
Internal heat generation
The function u above represents temperature of a body. Alternatively, it is sometimes convenient to change units and represent u as the heat density of a medium. Since heat density is proportional to temperature in a homogeneous medium, the heat equation is still obeyed in the new units.
Suppose that a body obeys the heat equation and, in addition, generates its own heat per unit volume (e.g., in watts/litre - W/L) at a rate given by a known function q varying in space and time. Then the heat per unit volume u satisfies an equation
For example, a tungsten light bulb filament generates heat, so it would have a positive nonzero value for q when turned on. While the light is turned off, the value of q for the tungsten filament would be zero.
Solving the heat equation using Fourier series
The following solution technique for the heat equation was proposed by Joseph Fourier in his treatise Théorie analytique de la chaleur, published in 1822. Consider the heat equation for one space variable. This could be used to model heat conduction in a rod. The equation is
1 |
where u = u(x, t) is a function of two variables x and t. Here
- x is the space variable, so x ∈ [0, L], where L is the length of the rod.
- t is the time variable, so t ≥ 0.
We assume the initial condition
2 |
where the function f is given, and the boundary conditions
3 |
Let us attempt to find a solution of (1) that is not identically zero satisfying the boundary conditions (3) but with the following property: u is a product in which the dependence of u on x, t is separated, that is:
4 |
This solution technique is called separation of variables. Substituting u back into equation (1),
Since the right hand side depends only on x and the left hand side only on t, both sides are equal to some constant value −λ. Thus:
5 |
and
6 |
We will now show that nontrivial solutions for (6) for values of λ ≤ 0 cannot occur:
- Suppose that λ < 0. Then there exist real numbers B, C such that
From (3) we get X(0) = 0 = X(L) and therefore B = 0 = C which implies u is identically 0.
- Suppose that λ = 0. Then there exist real numbers B, C such that X(x) = Bx + C. From equation (3) we conclude in the same manner as in 1 that u is identically 0.
- Therefore, it must be the case that λ > 0. Then there exist real numbers A, B, C such that
and
From (3) we get C = 0 and that for some positive integer n,
This solves the heat equation in the special case that the dependence of u has the special form (4).
In general, the sum of solutions to (1) that satisfy the boundary conditions (3) also satisfies (1) and (3). We can show that the solution to (1), (2) and (3) is given by
where
Generalizing the solution technique
The solution technique used above can be greatly extended to many other types of equations. The idea is that the operator uxx with the zero boundary conditions can be represented in terms of its eigenfunctions. This leads naturally to one of the basic ideas of the spectral theory of linear self-adjoint operators.
Consider the linear operator Δu = uxx. The infinite sequence of functions
for n ≥ 1 are eigenfunctions of Δ. Indeed,
Moreover, any eigenfunction f of Δ with the boundary conditions f(0) = f(L) = 0 is of the form en for some n ≥ 1. The functions en for n ≥ 1 form an orthonormal sequence with respect to a certain inner product on the space of real-valued functions on [0, L]. This means
Finally, the sequence {en}n ∈ N spans a dense linear subspace of L2((0, L)). This shows that in effect we have diagonalized the operator Δ.
Mean-value property
Solutions of the heat equations
satisfy a mean-value property analogous to the mean-value properties of harmonic functions, solutions of
though a bit more complicated. Precisely, if u solves
and
then
where Eλ is a heat-ball, that is a super-level set of the fundamental solution of the heat equation:
Notice that
as λ → ∞ so the above formula holds for any (x, t) in the (open) set dom(u) for λ large enough.
Fundamental solutions
A fundamental solution of the heat equation is a solution that corresponds to the initial condition of an initial point source of heat at a known position. These can be used to find a general solution of the heat equation over certain domains (see, for instance, (Evans 2010)).
In one variable, the Green's function is a solution of the initial value problem (by Duhamel's principle, equivalent to the definition of Green's function as one with a delta function as solution to the first equation)
where is the Dirac delta function. The fundamental solution to this problem is given by the heat kernel
One can obtain the general solution of the one variable heat equation with initial condition u(x, 0) = g(x) for −∞ < x < ∞ and 0 < t < ∞ by applying a convolution:
In several spatial variables, the fundamental solution solves the analogous problem
The n-variable fundamental solution is the product of the fundamental solutions in each variable; i.e.,
The general solution of the heat equation on Rn is then obtained by a convolution, so that to solve the initial value problem with u(x, 0) = g(x), one has
The general problem on a domain Ω in Rn is
with either Dirichlet or Neumann boundary data. A Green's function always exists, but unless the domain Ω can be readily decomposed into one-variable problems (see below), it may not be possible to write it down explicitly. Other methods for obtaining Green's functions include the method of images, separation of variables, and Laplace transforms (Cole, 2011).
Some Green's function solutions in 1D
A variety of elementary Green's function solutions in one-dimension are recorded here; many others are available elsewhere. In some of these, the spatial domain is (−∞,∞). In others, it is the semi-infinite interval (0,∞) with either Neumann or Dirichlet boundary conditions. One further variation is that some of these solve the inhomogeneous equation
where f is some given function of x and t.
Homogeneous heat equation
- Initial value problem on (−∞,∞)
Interactive version.
Comment. This solution is the convolution with respect to the variable x of the fundamental solution
and the function g(x). (The Green's function number of the fundamental solution is X00.)
Therefore, according to the general properties of the convolution with respect to differentiation, u = g ∗ Φ is a solution of the same heat equation, for
Moreover,
so that, by general facts about approximation to the identity, Φ(⋅, t) ∗ g → g as t → 0 in various senses, according to the specific g. For instance, if g is assumed bounded and continuous on R then Φ(⋅, t) ∗ g converges uniformly to g as t → 0, meaning that u(x, t) is continuous on R × [0, ∞) with u(x, 0) = g(x).
- Initial value problem on (0,∞) with homogeneous Dirichlet boundary conditions
Comment. This solution is obtained from the preceding formula as applied to the data g(x) suitably extended to R, so as to be an odd function, that is, letting g(−x) := −g(x) for all x. Correspondingly, the solution of the initial value problem on (−∞,∞) is an odd function with respect to the variable x for all values of t, and in particular it satisfies the homogeneous Dirichlet boundary conditions u(0, t) = 0. The Green's function number of this solution is X10.
- Initial value problem on (0,∞) with homogeneous Neumann boundary conditions
Comment. This solution is obtained from the first solution formula as applied to the data g(x) suitably extended to R so as to be an even function, that is, letting g(−x) := g(x) for all x. Correspondingly, the solution of the initial value problem on R is an even function with respect to the variable x for all values of t > 0, and in particular, being smooth, it satisfies the homogeneous Neumann boundary conditions ux(0, t) = 0. The Green's function number of this solution is X20.
- Problem on (0,∞) with homogeneous initial conditions and non-homogeneous Dirichlet boundary conditions
Comment. This solution is the convolution with respect to the variable t of
and the function h(t). Since Φ(x, t) is the fundamental solution of
the function ψ(x, t) is also a solution of the same heat equation, and so is u := ψ ∗ h, thanks to general properties of the convolution with respect to differentiation. Moreover,
so that, by general facts about approximation to the identity, ψ(x, ⋅) ∗ h → h as x → 0 in various senses, according to the specific h. For instance, if h is assumed continuous on R with support in [0, ∞) then ψ(x, ⋅) ∗ h converges uniformly on compacta to h as x → 0, meaning that u(x, t) is continuous on [0, ∞) × [0, ∞) with u(0, t) = h(t).
Inhomogeneous heat equation
- Problem on (-∞,∞) homogeneous initial conditions
Comment. This solution is the convolution in R2, that is with respect to both the variables x and t, of the fundamental solution
and the function f(x, t), both meant as defined on the whole R2 and identically 0 for all t → 0. One verifies that
which expressed in the language of distributions becomes
where the distribution δ is the Dirac's delta function, that is the evaluation at 0.
- Problem on (0,∞) with homogeneous Dirichlet boundary conditions and initial conditions
Comment. This solution is obtained from the preceding formula as applied to the data f(x, t) suitably extended to R × [0,∞), so as to be an odd function of the variable x, that is, letting f(−x, t) := −f(x, t) for all x and t. Correspondingly, the solution of the inhomogeneous problem on (−∞,∞) is an odd function with respect to the variable x for all values of t, and in particular it satisfies the homogeneous Dirichlet boundary conditions u(0, t) = 0.
- Problem on (0,∞) with homogeneous Neumann boundary conditions and initial conditions
Comment. This solution is obtained from the first formula as applied to the data f(x, t) suitably extended to R × [0,∞), so as to be an even function of the variable x, that is, letting f(−x, t) := f(x, t) for all x and t. Correspondingly, the solution of the inhomogeneous problem on (−∞,∞) is an even function with respect to the variable x for all values of t, and in particular, being a smooth function, it satisfies the homogeneous Neumann boundary conditions ux(0, t) = 0.
Examples
Since the heat equation is linear, solutions of other combinations of boundary conditions, inhomogeneous term, and initial conditions can be found by taking an appropriate linear combination of the above Green's function solutions.
For example, to solve
let u = w + v where w and v solve the problems
Similarly, to solve
let u = w + v + r where w, v, and r solve the problems
Applications
As the prototypical parabolic partial differential equation, the heat equation is among the most widely studied topics in pure mathematics, and its analysis is regarded as fundamental to the broader field of partial differential equations. The heat equation can also be considered on Riemannian manifolds, leading to many geometric applications. Following work of Subbaramiah Minakshisundaram and Åke Pleijel, the heat equation is closely related with spectral geometry. A seminal nonlinear variant of the heat equation was introduced to differential geometry by James Eells and Joseph Sampson in 1964, inspiring the introduction of the Ricci flow by Richard Hamilton in 1982 and culminating in the proof of the Poincaré conjecture by Grigori Perelman in 2003. Certain solutions of the heat equation known as heat kernels provide subtle information about the region on which they are defined, as exemplified through their application to the Atiyah–Singer index theorem.
The heat equation, along with variants thereof, is also important in many fields of science and applied mathematics. In probability theory, the heat equation is connected with the study of random walks and Brownian motion via the Fokker–Planck equation. The Black–Scholes equation of financial mathematics is a small variant of the heat equation, and the Schrödinger equation of quantum mechanics can be regarded as a heat equation in imaginary time. In image analysis, the heat equation is sometimes used to resolve pixelation and to identify edges. Following Robert Richtmyer and John von Neumann's introduction of artificial viscosity methods, solutions of heat equations have been useful in the mathematical formulation of hydrodynamical shocks. Solutions of the heat equation have also been given much attention in the numerical analysis literature, beginning in the 1950s with work of Jim Douglas, D.W. Peaceman, and Henry Rachford Jr.
Particle diffusion
One can model particle diffusion by an equation involving either:
- the volumetric concentration of particles, denoted c, in the case of collective diffusion of a large number of particles, or
- the probability density function associated with the position of a single particle, denoted P.
In either case, one uses the heat equation
or
Both c and P are functions of position and time. D is the diffusion coefficient that controls the speed of the diffusive process, and is typically expressed in meters squared over second. If the diffusion coefficient D is not constant, but depends on the concentration c (or P in the second case), then one gets the nonlinear diffusion equation.
Brownian motion
Let the stochastic process be the solution to the stochastic differential equation
where is the Wiener process (standard Brownian motion). The probability density function of
is given at any time
by
which is the solution to the initial value problem
where is the Dirac delta function.
Schrödinger equation for a free particle
With a simple division, the Schrödinger equation for a single particle of mass m in the absence of any applied force field can be rewritten in the following way:
,
where i is the imaginary unit, ħ is the reduced Planck constant, and ψ is the wave function of the particle.
This equation is formally similar to the particle diffusion equation, which one obtains through the following transformation:
Applying this transformation to the expressions of the Green functions determined in the case of particle diffusion yields the Green functions of the Schrödinger equation, which in turn can be used to obtain the wave function at any time through an integral on the wave function at t = 0:
with
Remark: this analogy between quantum mechanics and diffusion is a purely formal one. Physically, the evolution of the wave function satisfying Schrödinger's equation might have an origin other than diffusion[citation needed].
Thermal diffusivity in polymers
A direct practical application of the heat equation, in conjunction with Fourier theory, in spherical coordinates, is the prediction of thermal transfer profiles and the measurement of the thermal diffusivity in polymers (Unsworth and Duarte). This dual theoretical-experimental method is applicable to rubber, various other polymeric materials of practical interest, and microfluids. These authors derived an expression for the temperature at the center of a sphere TC
where T0 is the initial temperature of the sphere and TS the temperature at the surface of the sphere, of radius L. This equation has also found applications in protein energy transfer and thermal modeling in biophysics.
Financial Mathematics
The heat equation arises in a number of phenomena and is often used in financial mathematics in the modeling of options. The Black–Scholes option pricing model's differential equation can be transformed into the heat equation allowing relatively easy solutions from a familiar body of mathematics. Many of the extensions to the simple option models do not have closed form solutions and thus must be solved numerically to obtain a modeled option price. The equation describing pressure diffusion in a porous medium is identical in form with the heat equation. Diffusion problems dealing with Dirichlet, Neumann and Robin boundary conditions have closed form analytic solutions (Thambynayagam 2011).
Image Analysis
The heat equation is also widely used in image analysis (Perona & Malik 1990) and in machine learning as the driving theory behind scale-space or graph Laplacian methods. The heat equation can be efficiently solved numerically using the implicit Crank–Nicolson method of (Crank & Nicolson 1947). This method can be extended to many of the models with no closed form solution, see for instance (Wilmott, Howison & Dewynne 1995).
Riemannian geometry
An abstract form of heat equation on manifolds provides a major approach to the Atiyah–Singer index theorem, and has led to much further work on heat equations in Riemannian geometry.
See also
- Caloric polynomial
- Curve-shortening flow
- Diffusion equation
- Relativistic heat conduction
- Schrödinger equation
- Weierstrass transform
Notes
- Stojanovic, Srdjan (2003), "3.3.1.3 Uniqueness for heat PDE with exponential growth at infinity", Computational Financial Mathematics using MATHEMATICA: Optimal Trading in Stocks and Options, Springer, pp. 112–114, ISBN 9780817641979
- John, Fritz (1991-11-20). Partial Differential Equations. Springer Science & Business Media. p. 222. ISBN 978-0-387-90609-6.
- The Mathworld: Porous Medium Equation and the other related models have solutions with finite wave propagation speed.
- Juan Luis Vazquez (2006-12-28), The Porous Medium Equation: Mathematical Theory, Oxford University Press, USA, ISBN 978-0-19-856903-9
- Note that the units of u must be selected in a manner compatible with those of q. Thus instead of being for thermodynamic temperature (Kelvin - K), units of u should be J/L.
- Conversely, any function u satisfying the above mean-value property on an open domain of Rn × R is a solution of the heat equation
- The Green's Function Library contains a variety of fundamental solutions to the heat equation.
- Berline, Nicole; Getzler, Ezra; Vergne, Michèle. Heat kernels and Dirac operators. Grundlehren der Mathematischen Wissenschaften, 298. Springer-Verlag, Berlin, 1992. viii+369 pp. ISBN 3-540-53340-0
References
- Cannon, John Rozier (1984), The one–dimensional heat equation, Encyclopedia of Mathematics and its Applications, vol. 23, Reading, MA: Addison-Wesley Publishing Company, Advanced Book Program, ISBN 0-201-13522-1, MR 0747979, Zbl 0567.35001
- Crank, J.; Nicolson, P. (1947), "A Practical Method for Numerical Evaluation of Solutions of Partial Differential Equations of the Heat-Conduction Type", Proceedings of the Cambridge Philosophical Society, 43 (1): 50–67, Bibcode:1947PCPS...43...50C, doi:10.1017/S0305004100023197, S2CID 16676040
- Evans, Lawrence C. (2010), Partial Differential Equations, Graduate Studies in Mathematics, vol. 19 (2nd ed.), Providence, RI: American Mathematical Society, ISBN 978-0-8218-4974-3
- Perona, P; Malik, J. (1990), "Scale-Space and Edge Detection Using Anisotropic Diffusion" (PDF), IEEE Transactions on Pattern Analysis and Machine Intelligence, 12 (7): 629–639, doi:10.1109/34.56205, S2CID 14502908
- Thambynayagam, R. K. M. (2011), The Diffusion Handbook: Applied Solutions for Engineers, McGraw-Hill Professional, ISBN 978-0-07-175184-1
- Wilmott, Paul; Howison, Sam; Dewynne, Jeff (1995), The mathematics of financial derivatives. A student introduction, Cambridge: Cambridge University Press, ISBN 0-521-49699-3
Further reading
- Carslaw, H.S.; Jaeger, J.C. (1988), Conduction of heat in solids, Oxford Science Publications (2nd ed.), New York: The Clarendon Press, Oxford University Press, ISBN 978-0-19-853368-9
- Cole, Kevin D.; Beck, James V.; Haji-Sheikh, A.; Litkouhi, Bahan (2011), Heat conduction using Green's functions, Series in Computational and Physical Processes in Mechanics and Thermal Sciences (2nd ed.), Boca Raton, FL: CRC Press, ISBN 978-1-43-981354-6
- Einstein, Albert (1905), "Über die von der molekularkinetischen Theorie der Wärme geforderte Bewegung von in ruhenden Flüssigkeiten suspendierten Teilchen" (PDF), Annalen der Physik, 322 (8): 549–560, Bibcode:1905AnP...322..549E, doi:10.1002/andp.19053220806
- Friedman, Avner (1964), Partial differential equations of parabolic type, Englewood Cliffs, N.J.: Prentice-Hall
- Unsworth, J.; Duarte, F. J. (1979), "Heat diffusion in a solid sphere and Fourier Theory", Am. J. Phys., 47 (11): 891–893, Bibcode:1979AmJPh..47..981U, doi:10.1119/1.11601
- Jili, Latif M. (2009), Heat Conduction, Springer (3rd ed.), Berlin-Heidelberg: Springer-Verlag, ISBN 978-3-642-01266-2
- Widder, D.V. (1975), The heat equation, Pure and Applied Mathematics, vol. 67, New York-London: Academic Press [Harcourt Brace Jovanovich, Publishers]
External links
- Derivation of the heat equation
- Linear heat equations: Particular solutions and boundary value problems - from EqWorld
- "The Heat Equation". PBS Infinite Series. November 17, 2017. Archived from the original on 2021-12-11 – via YouTube.
This article needs additional citations for verification Please help improve this article by adding citations to reliable sources Unsourced material may be challenged and removed Find sources Heat equation news newspapers books scholar JSTOR August 2024 Learn how and when to remove this message In mathematics and physics the heat equation is a parabolic partial differential equation The theory of the heat equation was first developed by Joseph Fourier in 1822 for the purpose of modeling how a quantity such as heat diffuses through a given region Since then the heat equation and its variants have been found to be fundamental in many parts of both pure and applied mathematics Animated plot of the evolution of the temperature in a square metal plate as predicted by the heat equation The height and redness indicate the temperature at each point The initial state has a uniformly hot hoof shaped region red surrounded by uniformly cold region yellow As time passes the heat diffuses into the cold region DefinitionGiven an open subset U of Rn and a subinterval I of R one says that a function u U I R is a solution of the heat equation if u t 2u x12 2u xn2 displaystyle frac partial u partial t frac partial 2 u partial x 1 2 cdots frac partial 2 u partial x n 2 where x1 xn t denotes a general point of the domain It is typical to refer to t as time and x1 xn as spatial variables even in abstract contexts where these phrases fail to have their intuitive meaning The collection of spatial variables is often referred to simply as x For any given value of t the right hand side of the equation is the Laplacian of the function u t U R As such the heat equation is often written more compactly as u t Du displaystyle frac partial u partial t Delta u In physics and engineering contexts especially in the context of diffusion through a medium it is more common to fix a Cartesian coordinate system and then to consider the specific case of a function u x y z t of three spatial variables x y z and time variable t One then says that u is a solution of the heat equation if u t a 2u x2 2u y2 2u z2 displaystyle frac partial u partial t alpha left frac partial 2 u partial x 2 frac partial 2 u partial y 2 frac partial 2 u partial z 2 right in which a is a positive coefficient called the thermal diffusivity of the medium In addition to other physical phenomena this equation describes the flow of heat in a homogeneous and isotropic medium with u x y z t being the temperature at the point x y z and time t If the medium is not homogeneous and isotropic then a would not be a fixed coefficient and would instead depend on x y z the equation would also have a slightly different form In the physics and engineering literature it is common to use 2 to denote the Laplacian rather than In mathematics as well as in physics and engineering it is common to use Newton s notation for time derivatives so that u displaystyle dot u is used to denote u t so the equation can be written u Du displaystyle dot u Delta u Note also that the ability to use either or 2 to denote the Laplacian without explicit reference to the spatial variables is a reflection of the fact that the Laplacian is independent of the choice of coordinate system In mathematical terms one would say that the Laplacian is translationally and rotationally invariant In fact it is loosely speaking the simplest differential operator which has these symmetries This can be taken as a significant and purely mathematical justification of the use of the Laplacian and of the heat equation in modeling any physical phenomena which are homogeneous and isotropic of which heat diffusion is a principal example The diffusivity constant a is often not present in mathematical studies of the heat equation while its value can be very important in engineering This is not a major difference for the following reason Let u be a function with u t aDu displaystyle frac partial u partial t alpha Delta u Define a new function v t x u t a x displaystyle v t x u t alpha x Then according to the chain rule one has tv t x tu t a x a 1 u t t a x Du t a x Dv t x displaystyle frac partial partial t v t x frac partial partial t u t alpha x alpha 1 frac partial u partial t t alpha x Delta u t alpha x Delta v t x Thus there is a straightforward way of translating between solutions of the heat equation with a general value of a and solutions of the heat equation with a 1 As such for the sake of mathematical analysis it is often sufficient to only consider the case a 1 Since a gt 0 displaystyle alpha gt 0 there is another option to define a v displaystyle v satisfying tv Dv textstyle frac partial partial t v Delta v as in above by setting v t x u t a1 2x displaystyle v t x u t alpha 1 2 x Note that the two possible means of defining the new function v displaystyle v discussed here amount in physical terms to changing the unit of measure of time or the unit of measure of length Steady state equation The steady state heat equation is by definition not dependent on time In other words it is assumed conditions exist such that u t 0 displaystyle frac partial u partial t 0 This condition depends on the time constant and the amount of time passed since boundary conditions have been imposed Thus the condition is fulfilled in situations in which the time equilibrium constant is fast enough that the more complex time dependent heat equation can be approximated by the steady state case Equivalently the steady state condition exists for all cases in which enough time has passed that the thermal field u no longer evolves in time In the steady state case a spatial thermal gradient may or may not exist but if it does it does not change in time This equation therefore describes the end result in all thermal problems in which a source is switched on for example an engine started in an automobile and enough time has passed for all permanent temperature gradients to establish themselves in space after which these spatial gradients no longer change in time as again with an automobile in which the engine has been running for long enough The other trivial solution is for all spatial temperature gradients to disappear as well in which case the temperature become uniform in space as well The equation is much simpler and can help to understand better the physics of the materials without focusing on the dynamic of the heat transport process It is widely used for simple engineering problems assuming there is equilibrium of the temperature fields and heat transport with time Steady state condition u t 0 displaystyle frac partial u partial t 0 The steady state heat equation for a volume that contains a heat source the inhomogeneous case is the Poisson s equation k 2u q displaystyle k nabla 2 u q where u is the temperature k is the thermal conductivity and q is the rate of heat generation per unit volume In electrostatics this is equivalent to the case where the space under consideration contains an electrical charge The steady state heat equation without a heat source within the volume the homogeneous case is the equation in electrostatics for a volume of free space that does not contain a charge It is described by Laplace s equation 2u 0 displaystyle nabla 2 u 0 InterpretationInformally the Laplacian operator gives the difference between the average value of a function in the neighborhood of a point and its value at that point Thus if u is the temperature u conveys if and by how much the material surrounding each point is hotter or colder on the average than the material at that point By the second law of thermodynamics heat will flow from hotter bodies to adjacent colder bodies in proportion to the difference of temperature and of the thermal conductivity of the material between them When heat flows into respectively out of a material its temperature increases respectively decreases in proportion to the amount of heat divided by the amount mass of material with a proportionality factor called the specific heat capacity of the material By the combination of these observations the heat equation says the rate u displaystyle dot u at which the material at a point will heat up or cool down is proportional to how much hotter or cooler the surrounding material is The coefficient a in the equation takes into account the thermal conductivity specific heat and density of the material Interpretation of the equation The first half of the above physical thinking can be put into a mathematical form The key is that for any fixed x one has u x 0 u x u x 0 0u x 0 1nDu x displaystyle begin aligned u x 0 amp u x u x 0 amp 0 u x 0 amp frac 1 n Delta u x end aligned where u x r is the single variable function denoting the average value of u over the surface of the sphere of radius r centered at x it can be defined by u x r 1wn 1rn 1 y x y r udHn 1 displaystyle u x r frac 1 omega n 1 r n 1 int y x y r u d mathcal H n 1 in which wn 1 denotes the surface area of the unit ball in n dimensional Euclidean space This formalizes the above statement that the value of u at a point x measures the difference between the value of u x and the value of u at points nearby to x in the sense that the latter is encoded by the values of u x r for small positive values of r Following this observation one may interpret the heat equation as imposing an infinitesimal averaging of a function Given a solution of the heat equation the value of u x t t for a small positive value of t may be approximated as 1 2n times the average value of the function u t over a sphere of very small radius centered at x Character of the solutions Solution of a 1D heat partial differential equation The temperature u displaystyle u is initially distributed over a one dimensional one unit long interval x 0 1 with insulated endpoints The distribution approaches equilibrium over time The behavior of temperature when the sides of a 1D rod are at fixed temperatures in this case 0 8 and 0 with initial Gaussian distribution The temperature approaches a linear function because that is the stable solution of the equation wherever temperature has a nonzero second spatial derivative the time derivative is nonzero as well The heat equation implies that peaks local maxima of u displaystyle u will be gradually eroded down while depressions local minima will be filled in The value at some point will remain stable only as long as it is equal to the average value in its immediate surroundings In particular if the values in a neighborhood are very close to a linear function Ax By Cz D displaystyle Ax By Cz D then the value at the center of that neighborhood will not be changing at that time that is the derivative u displaystyle dot u will be zero A more subtle consequence is the maximum principle that says that the maximum value of u displaystyle u in any region R displaystyle R of the medium will not exceed the maximum value that previously occurred in R displaystyle R unless it is on the boundary of R displaystyle R That is the maximum temperature in a region R displaystyle R can increase only if heat comes in from outside R displaystyle R This is a property of parabolic partial differential equations and is not difficult to prove mathematically see below Another interesting property is that even if u displaystyle u initially has a sharp jump discontinuity of value across some surface inside the medium the jump is immediately smoothed out by a momentary infinitesimally short but infinitely large rate of flow of heat through that surface For example if two isolated bodies initially at uniform but different temperatures u0 displaystyle u 0 and u1 displaystyle u 1 are made to touch each other the temperature at the point of contact will immediately assume some intermediate value and a zone will develop around that point where u displaystyle u will gradually vary between u0 displaystyle u 0 and u1 displaystyle u 1 If a certain amount of heat is suddenly applied to a point in the medium it will spread out in all directions in the form of a Unlike the elastic and electromagnetic waves the speed of a diffusion wave drops with time as it spreads over a larger region the temperature gradient decreases and therefore the heat flow decreases too Specific examplesHeat flow in a uniform rod For heat flow the heat equation follows from the physical laws of conduction of heat and conservation of energy Cannon 1984 By Fourier s law for an isotropic medium the rate of flow of heat energy per unit area through a surface is proportional to the negative temperature gradient across it q k u displaystyle mathbf q k nabla u where k displaystyle k is the thermal conductivity of the material u u x t displaystyle u u mathbf x t is the temperature and q q x t displaystyle mathbf q mathbf q mathbf x t is a vector field that represents the magnitude and direction of the heat flow at the point x displaystyle mathbf x of space and time t displaystyle t If the medium is a thin rod of uniform section and material the position x is a single coordinate and the heat flow q q t x displaystyle q q t x towards x displaystyle x is a scalar field The equation becomes q k u x displaystyle q k frac partial u partial x Let Q Q x t displaystyle Q Q x t be the internal energy heat per unit volume of the bar at each point and time The rate of change in heat per unit volume in the material Q t displaystyle partial Q partial t is proportional to the rate of change of its temperature u t displaystyle partial u partial t That is Q t cr u t displaystyle frac partial Q partial t c rho frac partial u partial t where c displaystyle c is the specific heat capacity at constant pressure in case of a gas and r displaystyle rho is the density mass per unit volume of the material This derivation assumes that the material has constant mass density and heat capacity through space as well as time Applying the law of conservation of energy to a small element of the medium centred at x displaystyle x one concludes that the rate at which heat changes at a given point x displaystyle x is equal to the derivative of the heat flow at that point the difference between the heat flows either side of the particle That is Q t q x displaystyle frac partial Q partial t frac partial q partial x From the above equations it follows that u t 1cr q x 1cr x k u x kcr 2u x2 displaystyle frac partial u partial t frac 1 c rho frac partial q partial x frac 1 c rho frac partial partial x left k frac partial u partial x right frac k c rho frac partial 2 u partial x 2 which is the heat equation in one dimension with diffusivity coefficient a kcr displaystyle alpha frac k c rho This quantity is called the thermal diffusivity of the medium Accounting for radiative loss An additional term may be introduced into the equation to account for radiative loss of heat According to the Stefan Boltzmann law this term is m u4 v4 displaystyle mu left u 4 v 4 right where v v x t displaystyle v v x t is the temperature of the surroundings and m displaystyle mu is a coefficient that depends on the Stefan Boltzmann constant the emissivity of the material and the geometry The rate of change in internal energy becomes Q t q x m u4 v4 displaystyle frac partial Q partial t frac partial q partial x mu left u 4 v 4 right and the equation for the evolution of u displaystyle u becomes u t kcr 2u x2 mcr u4 v4 displaystyle frac partial u partial t frac k c rho frac partial 2 u partial x 2 frac mu c rho left u 4 v 4 right Non uniform isotropic medium Note that the state equation given by the first law of thermodynamics i e conservation of energy is written in the following form assuming no mass transfer or radiation This form is more general and particularly useful to recognize which property e g cp or r displaystyle rho influences which term rcp T t k T q V displaystyle rho c p frac partial T partial t nabla cdot left k nabla T right dot q V where q V displaystyle dot q V is the volumetric heat source Heat flow in non homogeneous anisotropic media In general the study of heat conduction is based on several principles Heat flow is a form of energy flow and as such it is meaningful to speak of the time rate of flow of heat into a region of space The time rate of heat flow into a region V is given by a time dependent quantity qt V We assume q has a density Q so that qt V VQ x t dx displaystyle q t V int V Q x t dx quad Heat flow is a time dependent vector function H x characterized as follows the time rate of heat flowing through an infinitesimal surface element with area dS and with unit normal vector n is H x n x dS displaystyle mathbf H x cdot mathbf n x dS Thus the rate of heat flow into V is also given by the surface integral qt V VH x n x dS displaystyle q t V int partial V mathbf H x cdot mathbf n x dS where n x is the outward pointing normal vector at x The Fourier law states that heat energy flow has the following linear dependence on the temperature gradient H x A x u x displaystyle mathbf H x mathbf A x cdot nabla u x where A x is a 3 3 real matrix that is symmetric and positive definite By the divergence theorem the previous surface integral for heat flow into V can be transformed into the volume integral qt V VH x n x dS VA x u x n x dS V i j xi aij x xju x t dx displaystyle begin aligned q t V amp int partial V mathbf H x cdot mathbf n x dS amp int partial V mathbf A x cdot nabla u x cdot mathbf n x dS amp int V sum i j partial x i bigl a ij x partial x j u x t bigr dx end aligned The time rate of temperature change at x is proportional to the heat flowing into an infinitesimal volume element where the constant of proportionality is dependent on a constant k tu x t k x Q x t displaystyle partial t u x t kappa x Q x t Putting these equations together gives the general equation of heat flow tu x t k x i j xi aij x xju x t displaystyle partial t u x t kappa x sum i j partial x i bigl a ij x partial x j u x t bigr Remarks The coefficient k x is the inverse of specific heat of the substance at x density of the substance at x k 1 rcp displaystyle kappa 1 rho c p In the case of an isotropic medium the matrix A is a scalar matrix equal to thermal conductivity k In the anisotropic case where the coefficient matrix A is not scalar and or if it depends on x then an explicit formula for the solution of the heat equation can seldom be written down though it is usually possible to consider the associated abstract Cauchy problem and show that it is a well posed problem and or to show some qualitative properties like preservation of positive initial data infinite speed of propagation convergence toward an equilibrium smoothing properties This is usually done by one parameter semigroups theory for instance if A is a symmetric matrix then the elliptic operator defined by Au x i j xiaij x xju x displaystyle Au x sum i j partial x i a ij x partial x j u x is self adjoint and dissipative thus by the spectral theorem it generates a one parameter semigroup Three dimensional problem In the special cases of propagation of heat in an isotropic and homogeneous medium in a 3 dimensional space this equation is u t a 2u a 2u x2 2u y2 2u z2 displaystyle frac partial u partial t alpha nabla 2 u alpha left frac partial 2 u partial x 2 frac partial 2 u partial y 2 frac partial 2 u partial z 2 right a uxx uyy uzz displaystyle alpha left u xx u yy u zz right where u u x y z t displaystyle u u x y z t is temperature as a function of space and time u t displaystyle tfrac partial u partial t is the rate of change of temperature at a point over time uxx displaystyle u xx uyy displaystyle u yy and uzz displaystyle u zz are the second spatial derivatives thermal conductions of temperature in the x displaystyle x y displaystyle y and z displaystyle z directions respectively a kcpr displaystyle alpha equiv tfrac k c p rho is the thermal diffusivity a material specific quantity depending on the thermal conductivity k displaystyle k the specific heat capacity cp displaystyle c p and the mass density r displaystyle rho The heat equation is a consequence of Fourier s law of conduction see heat conduction If the medium is not the whole space in order to solve the heat equation uniquely we also need to specify boundary conditions for u To determine uniqueness of solutions in the whole space it is necessary to assume additional conditions for example an exponential bound on the growth of solutions or a sign condition nonnegative solutions are unique by a result of David Widder Solutions of the heat equation are characterized by a gradual smoothing of the initial temperature distribution by the flow of heat from warmer to colder areas of an object Generally many different states and starting conditions will tend toward the same stable equilibrium As a consequence to reverse the solution and conclude something about earlier times or initial conditions from the present heat distribution is very inaccurate except over the shortest of time periods The heat equation is the prototypical example of a parabolic partial differential equation Using the Laplace operator the heat equation can be simplified and generalized to similar equations over spaces of arbitrary number of dimensions as ut a 2u aDu displaystyle u t alpha nabla 2 u alpha Delta u where the Laplace operator D or 2 the divergence of the gradient is taken in the spatial variables The heat equation governs heat diffusion as well as other diffusive processes such as particle diffusion or the propagation of action potential in nerve cells Although they are not diffusive in nature some quantum mechanics problems are also governed by a mathematical analog of the heat equation see below It also can be used to model some phenomena arising in finance like the Black Scholes or the Ornstein Uhlenbeck processes The equation and various non linear analogues has also been used in image analysis The heat equation is technically in violation of special relativity because its solutions involve instantaneous propagation of a disturbance The part of the disturbance outside the forward light cone can usually be safely neglected but if it is necessary to develop a reasonable speed for the transmission of heat a hyperbolic problem should be considered instead like a partial differential equation involving a second order time derivative Some models of nonlinear heat conduction which are also parabolic equations have solutions with finite heat transmission speed Internal heat generation The function u above represents temperature of a body Alternatively it is sometimes convenient to change units and represent u as the heat density of a medium Since heat density is proportional to temperature in a homogeneous medium the heat equation is still obeyed in the new units Suppose that a body obeys the heat equation and in addition generates its own heat per unit volume e g in watts litre W L at a rate given by a known function q varying in space and time Then the heat per unit volume u satisfies an equation 1a u t 2u x2 2u y2 2u z2 1kq displaystyle frac 1 alpha frac partial u partial t left frac partial 2 u partial x 2 frac partial 2 u partial y 2 frac partial 2 u partial z 2 right frac 1 k q For example a tungsten light bulb filament generates heat so it would have a positive nonzero value for q when turned on While the light is turned off the value of q for the tungsten filament would be zero Solving the heat equation using Fourier seriesIdealized physical setting for heat conduction in a rod with homogeneous boundary conditions The following solution technique for the heat equation was proposed by Joseph Fourier in his treatise Theorie analytique de la chaleur published in 1822 Consider the heat equation for one space variable This could be used to model heat conduction in a rod The equation is ut auxx displaystyle displaystyle u t alpha u xx 1 where u u x t is a function of two variables x and t Here x is the space variable so x 0 L where L is the length of the rod t is the time variable so t 0 We assume the initial condition u x 0 f x x 0 L displaystyle u x 0 f x quad forall x in 0 L 2 where the function f is given and the boundary conditions u 0 t 0 u L t t gt 0 displaystyle u 0 t 0 u L t quad forall t gt 0 3 Let us attempt to find a solution of 1 that is not identically zero satisfying the boundary conditions 3 but with the following property u is a product in which the dependence of u on x t is separated that is u x t X x T t displaystyle u x t X x T t 4 This solution technique is called separation of variables Substituting u back into equation 1 T t aT t X x X x displaystyle frac T t alpha T t frac X x X x Since the right hand side depends only on x and the left hand side only on t both sides are equal to some constant value l Thus T t laT t displaystyle T t lambda alpha T t 5 and X x lX x displaystyle X x lambda X x 6 We will now show that nontrivial solutions for 6 for values of l 0 cannot occur Suppose that l lt 0 Then there exist real numbers B C such that X x Be lx Ce lx displaystyle X x Be sqrt lambda x Ce sqrt lambda x From 3 we get X 0 0 X L and therefore B 0 C which implies u is identically 0 Suppose that l 0 Then there exist real numbers B C such that X x Bx C From equation 3 we conclude in the same manner as in 1 that u is identically 0 Therefore it must be the case that l gt 0 Then there exist real numbers A B C such that T t Ae lat displaystyle T t Ae lambda alpha t and X x Bsin lx Ccos lx displaystyle X x B sin left sqrt lambda x right C cos left sqrt lambda x right From 3 we get C 0 and that for some positive integer n l npL displaystyle sqrt lambda n frac pi L This solves the heat equation in the special case that the dependence of u has the special form 4 In general the sum of solutions to 1 that satisfy the boundary conditions 3 also satisfies 1 and 3 We can show that the solution to 1 2 and 3 is given by u x t n 1 Dnsin npxL e n2p2atL2 displaystyle u x t sum n 1 infty D n sin left frac n pi x L right e frac n 2 pi 2 alpha t L 2 where Dn 2L 0Lf x sin npxL dx displaystyle D n frac 2 L int 0 L f x sin left frac n pi x L right dx Generalizing the solution technique The solution technique used above can be greatly extended to many other types of equations The idea is that the operator uxx with the zero boundary conditions can be represented in terms of its eigenfunctions This leads naturally to one of the basic ideas of the spectral theory of linear self adjoint operators Consider the linear operator Du uxx The infinite sequence of functions en x 2Lsin npxL displaystyle e n x sqrt frac 2 L sin left frac n pi x L right for n 1 are eigenfunctions of D Indeed Den n2p2L2en displaystyle Delta e n frac n 2 pi 2 L 2 e n Moreover any eigenfunction f of D with the boundary conditions f 0 f L 0 is of the form en for some n 1 The functions en for n 1 form an orthonormal sequence with respect to a certain inner product on the space of real valued functions on 0 L This means en em 0Len x em x dx dmn displaystyle langle e n e m rangle int 0 L e n x e m x dx delta mn Finally the sequence en n N spans a dense linear subspace of L2 0 L This shows that in effect we have diagonalized the operator D Mean value property Solutions of the heat equations t D u 0 displaystyle partial t Delta u 0 satisfy a mean value property analogous to the mean value properties of harmonic functions solutions of Du 0 displaystyle Delta u 0 though a bit more complicated Precisely if u solves t D u 0 displaystyle partial t Delta u 0 and x t El dom u displaystyle x t E lambda subset mathrm dom u then u x t l4 Elu x y t s y 2s2dsdy displaystyle u x t frac lambda 4 int E lambda u x y t s frac y 2 s 2 ds dy where El is a heat ball that is a super level set of the fundamental solution of the heat equation El y s F y s gt l displaystyle E lambda y s Phi y s gt lambda F x t 4tp n2exp x 24t displaystyle Phi x t 4t pi frac n 2 exp left frac x 2 4t right Notice that diam El o 1 displaystyle mathrm diam E lambda o 1 as l so the above formula holds for any x t in the open set dom u for l large enough Fundamental solutionsA fundamental solution of the heat equation is a solution that corresponds to the initial condition of an initial point source of heat at a known position These can be used to find a general solution of the heat equation over certain domains see for instance Evans 2010 In one variable the Green s function is a solution of the initial value problem by Duhamel s principle equivalent to the definition of Green s function as one with a delta function as solution to the first equation ut x t kuxx x t 0 x t R 0 u x 0 d x displaystyle begin cases u t x t ku xx x t 0 amp x t in mathbb R times 0 infty u x 0 delta x amp end cases where d displaystyle delta is the Dirac delta function The fundamental solution to this problem is given by the heat kernel F x t 14pktexp x24kt displaystyle Phi x t frac 1 sqrt 4 pi kt exp left frac x 2 4kt right One can obtain the general solution of the one variable heat equation with initial condition u x 0 g x for lt x lt and 0 lt t lt by applying a convolution u x t F x y t g y dy displaystyle u x t int Phi x y t g y dy In several spatial variables the fundamental solution solves the analogous problem ut x t k i 1nuxixi x t 0 x t Rn 0 u x 0 d x displaystyle begin cases u t mathbf x t k sum i 1 n u x i x i mathbf x t 0 amp mathbf x t in mathbb R n times 0 infty u mathbf x 0 delta mathbf x end cases The n variable fundamental solution is the product of the fundamental solutions in each variable i e F x t F x1 t F x2 t F xn t 1 4pkt nexp x x4kt displaystyle Phi mathbf x t Phi x 1 t Phi x 2 t cdots Phi x n t frac 1 sqrt 4 pi kt n exp left frac mathbf x cdot mathbf x 4kt right The general solution of the heat equation on Rn is then obtained by a convolution so that to solve the initial value problem with u x 0 g x one has u x t RnF x y t g y dy displaystyle u mathbf x t int mathbb R n Phi mathbf x mathbf y t g mathbf y d mathbf y The general problem on a domain W in Rn is ut x t k i 1nuxixi x t 0 x t W 0 u x 0 g x x W displaystyle begin cases u t mathbf x t k sum i 1 n u x i x i mathbf x t 0 amp mathbf x t in Omega times 0 infty u mathbf x 0 g mathbf x amp mathbf x in Omega end cases with either Dirichlet or Neumann boundary data A Green s function always exists but unless the domain W can be readily decomposed into one variable problems see below it may not be possible to write it down explicitly Other methods for obtaining Green s functions include the method of images separation of variables and Laplace transforms Cole 2011 Some Green s function solutions in 1D A variety of elementary Green s function solutions in one dimension are recorded here many others are available elsewhere In some of these the spatial domain is In others it is the semi infinite interval 0 with either Neumann or Dirichlet boundary conditions One further variation is that some of these solve the inhomogeneous equation ut kuxx f displaystyle u t ku xx f where f is some given function of x and t Homogeneous heat equation Initial value problem on ut kuxx x t R 0 u x 0 g x Initial condition displaystyle begin cases u t ku xx amp x t in mathbb R times 0 infty u x 0 g x amp text Initial condition end cases u x t 14pkt exp x y 24kt g y dy displaystyle u x t frac 1 sqrt 4 pi kt int infty infty exp left frac x y 2 4kt right g y dy Fundamental solution of the one dimensional heat equation Red time course of F x t displaystyle Phi x t Blue time courses of F x0 t displaystyle Phi x 0 t for two selected points x0 0 2 and x0 1 Note the different rise times delays and amplitudes Interactive version Comment This solution is the convolution with respect to the variable x of the fundamental solution F x t 14pktexp x24kt displaystyle Phi x t frac 1 sqrt 4 pi kt exp left frac x 2 4kt right and the function g x The Green s function number of the fundamental solution is X00 Therefore according to the general properties of the convolution with respect to differentiation u g F is a solution of the same heat equation for t k x2 F g t k x2 F g 0 displaystyle left partial t k partial x 2 right Phi g left left partial t k partial x 2 right Phi right g 0 Moreover F x t 1tF xt 1 displaystyle Phi x t frac 1 sqrt t Phi left frac x sqrt t 1 right F x t dx 1 displaystyle int infty infty Phi x t dx 1 so that by general facts about approximation to the identity F t g g as t 0 in various senses according to the specific g For instance if g is assumed bounded and continuous on R then F t g converges uniformly to g as t 0 meaning that u x t is continuous on R 0 with u x 0 g x Initial value problem on 0 with homogeneous Dirichlet boundary conditions ut kuxx x t 0 0 u x 0 g x ICu 0 t 0BC displaystyle begin cases u t ku xx amp x t in 0 infty times 0 infty u x 0 g x amp text IC u 0 t 0 amp text BC end cases u x t 14pkt 0 exp x y 24kt exp x y 24kt g y dy displaystyle u x t frac 1 sqrt 4 pi kt int 0 infty left exp left frac x y 2 4kt right exp left frac x y 2 4kt right right g y dy Comment This solution is obtained from the preceding formula as applied to the data g x suitably extended to R so as to be an odd function that is letting g x g x for all x Correspondingly the solution of the initial value problem on is an odd function with respect to the variable x for all values of t and in particular it satisfies the homogeneous Dirichlet boundary conditions u 0 t 0 The Green s function number of this solution is X10 Initial value problem on 0 with homogeneous Neumann boundary conditions ut kuxx x t 0 0 u x 0 g x ICux 0 t 0BC displaystyle begin cases u t ku xx amp x t in 0 infty times 0 infty u x 0 g x amp text IC u x 0 t 0 amp text BC end cases u x t 14pkt 0 exp x y 24kt exp x y 24kt g y dy displaystyle u x t frac 1 sqrt 4 pi kt int 0 infty left exp left frac x y 2 4kt right exp left frac x y 2 4kt right right g y dy Comment This solution is obtained from the first solution formula as applied to the data g x suitably extended to R so as to be an even function that is letting g x g x for all x Correspondingly the solution of the initial value problem on R is an even function with respect to the variable x for all values of t gt 0 and in particular being smooth it satisfies the homogeneous Neumann boundary conditions ux 0 t 0 The Green s function number of this solution is X20 Problem on 0 with homogeneous initial conditions and non homogeneous Dirichlet boundary conditions ut kuxx x t 0 0 u x 0 0ICu 0 t h t BC displaystyle begin cases u t ku xx amp x t in 0 infty times 0 infty u x 0 0 amp text IC u 0 t h t amp text BC end cases u x t 0tx4pk t s 3exp x24k t s h s ds x gt 0 displaystyle u x t int 0 t frac x sqrt 4 pi k t s 3 exp left frac x 2 4k t s right h s ds qquad forall x gt 0 Comment This solution is the convolution with respect to the variable t of ps x t 2k xF x t x4pkt3exp x24kt displaystyle psi x t 2k partial x Phi x t frac x sqrt 4 pi kt 3 exp left frac x 2 4kt right and the function h t Since F x t is the fundamental solution of t k x2 displaystyle partial t k partial x 2 the function ps x t is also a solution of the same heat equation and so is u ps h thanks to general properties of the convolution with respect to differentiation Moreover ps x t 1x2ps 1 tx2 displaystyle psi x t frac 1 x 2 psi left 1 frac t x 2 right 0 ps x t dt 1 displaystyle int 0 infty psi x t dt 1 so that by general facts about approximation to the identity ps x h h as x 0 in various senses according to the specific h For instance if h is assumed continuous on R with support in 0 then ps x h converges uniformly on compacta to h as x 0 meaning that u x t is continuous on 0 0 with u 0 t h t Depicted is a numerical solution of the non homogeneous heat equation The equation has been solved with 0 initial and boundary conditions and a source term representing a stove top burner Inhomogeneous heat equation Problem on homogeneous initial conditions Comment This solution is the convolution in R2 that is with respect to both the variables x and t of the fundamental solution F x t 14pktexp x24kt displaystyle Phi x t frac 1 sqrt 4 pi kt exp left frac x 2 4kt right and the function f x t both meant as defined on the whole R2 and identically 0 for all t 0 One verifies that t k x2 F f f displaystyle left partial t k partial x 2 right Phi f f which expressed in the language of distributions becomes t k x2 F d displaystyle left partial t k partial x 2 right Phi delta where the distribution d is the Dirac s delta function that is the evaluation at 0 Problem on 0 with homogeneous Dirichlet boundary conditions and initial conditions ut kuxx f x t x t 0 0 u x 0 0ICu 0 t 0BC displaystyle begin cases u t ku xx f x t amp x t in 0 infty times 0 infty u x 0 0 amp text IC u 0 t 0 amp text BC end cases u x t 0t 0 14pk t s exp x y 24k t s exp x y 24k t s f y s dyds displaystyle u x t int 0 t int 0 infty frac 1 sqrt 4 pi k t s left exp left frac x y 2 4k t s right exp left frac x y 2 4k t s right right f y s dy ds Comment This solution is obtained from the preceding formula as applied to the data f x t suitably extended to R 0 so as to be an odd function of the variable x that is letting f x t f x t for all x and t Correspondingly the solution of the inhomogeneous problem on is an odd function with respect to the variable x for all values of t and in particular it satisfies the homogeneous Dirichlet boundary conditions u 0 t 0 Problem on 0 with homogeneous Neumann boundary conditions and initial conditions ut kuxx f x t x t 0 0 u x 0 0ICux 0 t 0BC displaystyle begin cases u t ku xx f x t amp x t in 0 infty times 0 infty u x 0 0 amp text IC u x 0 t 0 amp text BC end cases u x t 0t 0 14pk t s exp x y 24k t s exp x y 24k t s f y s dyds displaystyle u x t int 0 t int 0 infty frac 1 sqrt 4 pi k t s left exp left frac x y 2 4k t s right exp left frac x y 2 4k t s right right f y s dy ds Comment This solution is obtained from the first formula as applied to the data f x t suitably extended to R 0 so as to be an even function of the variable x that is letting f x t f x t for all x and t Correspondingly the solution of the inhomogeneous problem on is an even function with respect to the variable x for all values of t and in particular being a smooth function it satisfies the homogeneous Neumann boundary conditions ux 0 t 0 Examples Since the heat equation is linear solutions of other combinations of boundary conditions inhomogeneous term and initial conditions can be found by taking an appropriate linear combination of the above Green s function solutions For example to solve ut kuxx f x t R 0 u x 0 g x IC displaystyle begin cases u t ku xx f amp x t in mathbb R times 0 infty u x 0 g x amp text IC end cases let u w v where w and v solve the problems vt kvxx f wt kwxx x t R 0 v x 0 0 w x 0 g x IC displaystyle begin cases v t kv xx f w t kw xx amp x t in mathbb R times 0 infty v x 0 0 w x 0 g x amp text IC end cases Similarly to solve ut kuxx f x t 0 0 u x 0 g x ICu 0 t h t BC displaystyle begin cases u t ku xx f amp x t in 0 infty times 0 infty u x 0 g x amp text IC u 0 t h t amp text BC end cases let u w v r where w v and r solve the problems vt kvxx f wt kwxx rt krxx x t 0 0 v x 0 0 w x 0 g x r x 0 0ICv 0 t 0 w 0 t 0 r 0 t h t BC displaystyle begin cases v t kv xx f w t kw xx r t kr xx amp x t in 0 infty times 0 infty v x 0 0 w x 0 g x r x 0 0 amp text IC v 0 t 0 w 0 t 0 r 0 t h t amp text BC end cases ApplicationsAs the prototypical parabolic partial differential equation the heat equation is among the most widely studied topics in pure mathematics and its analysis is regarded as fundamental to the broader field of partial differential equations The heat equation can also be considered on Riemannian manifolds leading to many geometric applications Following work of Subbaramiah Minakshisundaram and Ake Pleijel the heat equation is closely related with spectral geometry A seminal nonlinear variant of the heat equation was introduced to differential geometry by James Eells and Joseph Sampson in 1964 inspiring the introduction of the Ricci flow by Richard Hamilton in 1982 and culminating in the proof of the Poincare conjecture by Grigori Perelman in 2003 Certain solutions of the heat equation known as heat kernels provide subtle information about the region on which they are defined as exemplified through their application to the Atiyah Singer index theorem The heat equation along with variants thereof is also important in many fields of science and applied mathematics In probability theory the heat equation is connected with the study of random walks and Brownian motion via the Fokker Planck equation The Black Scholes equation of financial mathematics is a small variant of the heat equation and the Schrodinger equation of quantum mechanics can be regarded as a heat equation in imaginary time In image analysis the heat equation is sometimes used to resolve pixelation and to identify edges Following Robert Richtmyer and John von Neumann s introduction of artificial viscosity methods solutions of heat equations have been useful in the mathematical formulation of hydrodynamical shocks Solutions of the heat equation have also been given much attention in the numerical analysis literature beginning in the 1950s with work of Jim Douglas D W Peaceman and Henry Rachford Jr Particle diffusion One can model particle diffusion by an equation involving either the volumetric concentration of particles denoted c in the case of collective diffusion of a large number of particles or the probability density function associated with the position of a single particle denoted P In either case one uses the heat equation ct DDc displaystyle c t D Delta c or Pt DDP displaystyle P t D Delta P Both c and P are functions of position and time D is the diffusion coefficient that controls the speed of the diffusive process and is typically expressed in meters squared over second If the diffusion coefficient D is not constant but depends on the concentration c or P in the second case then one gets the nonlinear diffusion equation Brownian motion Let the stochastic process X displaystyle X be the solution to the stochastic differential equation dXt 2kdBtX0 0 displaystyle begin cases mathrm d X t sqrt 2k mathrm d B t X 0 0 end cases where B displaystyle B is the Wiener process standard Brownian motion The probability density function of X displaystyle X is given at any time t displaystyle t by 14pktexp x24kt displaystyle frac 1 sqrt 4 pi kt exp left frac x 2 4kt right which is the solution to the initial value problem ut x t kuxx x t 0 x t R 0 u x 0 d x displaystyle begin cases u t x t ku xx x t 0 amp x t in mathbb R times 0 infty u x 0 delta x end cases where d displaystyle delta is the Dirac delta function Schrodinger equation for a free particle With a simple division the Schrodinger equation for a single particle of mass m in the absence of any applied force field can be rewritten in the following way pst iℏ2mDps displaystyle psi t frac i hbar 2m Delta psi where i is the imaginary unit ħ is the reduced Planck constant and ps is the wave function of the particle This equation is formally similar to the particle diffusion equation which one obtains through the following transformation c R t ps R t D iℏ2m displaystyle begin aligned c mathbf R t amp to psi mathbf R t D amp to frac i hbar 2m end aligned Applying this transformation to the expressions of the Green functions determined in the case of particle diffusion yields the Green functions of the Schrodinger equation which in turn can be used to obtain the wave function at any time through an integral on the wave function at t 0 ps R t ps R0 t 0 G R R0 t dRx0dRy0dRz0 displaystyle psi mathbf R t int psi left mathbf R 0 t 0 right G left mathbf R mathbf R 0 t right dR x 0 dR y 0 dR z 0 with G R t m2piℏt 3 2e R2m2iℏt displaystyle G mathbf R t left frac m 2 pi i hbar t right 3 2 e frac mathbf R 2 m 2i hbar t Remark this analogy between quantum mechanics and diffusion is a purely formal one Physically the evolution of the wave function satisfying Schrodinger s equation might have an origin other than diffusion citation needed Thermal diffusivity in polymers A direct practical application of the heat equation in conjunction with Fourier theory in spherical coordinates is the prediction of thermal transfer profiles and the measurement of the thermal diffusivity in polymers Unsworth and Duarte This dual theoretical experimental method is applicable to rubber various other polymeric materials of practical interest and microfluids These authors derived an expression for the temperature at the center of a sphere TC TC TST0 TS 2 n 1 1 n 1exp n2p2atL2 displaystyle frac T C T S T 0 T S 2 sum n 1 infty 1 n 1 exp left frac n 2 pi 2 alpha t L 2 right where T0 is the initial temperature of the sphere and TS the temperature at the surface of the sphere of radius L This equation has also found applications in protein energy transfer and thermal modeling in biophysics Financial Mathematics The heat equation arises in a number of phenomena and is often used in financial mathematics in the modeling of options The Black Scholes option pricing model s differential equation can be transformed into the heat equation allowing relatively easy solutions from a familiar body of mathematics Many of the extensions to the simple option models do not have closed form solutions and thus must be solved numerically to obtain a modeled option price The equation describing pressure diffusion in a porous medium is identical in form with the heat equation Diffusion problems dealing with Dirichlet Neumann and Robin boundary conditions have closed form analytic solutions Thambynayagam 2011 Image Analysis The heat equation is also widely used in image analysis Perona amp Malik 1990 and in machine learning as the driving theory behind scale space or graph Laplacian methods The heat equation can be efficiently solved numerically using the implicit Crank Nicolson method of Crank amp Nicolson 1947 This method can be extended to many of the models with no closed form solution see for instance Wilmott Howison amp Dewynne 1995 Riemannian geometry An abstract form of heat equation on manifolds provides a major approach to the Atiyah Singer index theorem and has led to much further work on heat equations in Riemannian geometry See alsoCaloric polynomial Curve shortening flow Diffusion equation Relativistic heat conduction Schrodinger equation Weierstrass transformNotesStojanovic Srdjan 2003 3 3 1 3 Uniqueness for heat PDE with exponential growth at infinity Computational Financial Mathematics using MATHEMATICA Optimal Trading in Stocks and Options Springer pp 112 114 ISBN 9780817641979 John Fritz 1991 11 20 Partial Differential Equations Springer Science amp Business Media p 222 ISBN 978 0 387 90609 6 The Mathworld Porous Medium Equation and the other related models have solutions with finite wave propagation speed Juan Luis Vazquez 2006 12 28 The Porous Medium Equation Mathematical Theory Oxford University Press USA ISBN 978 0 19 856903 9 Note that the units of u must be selected in a manner compatible with those of q Thus instead of being for thermodynamic temperature Kelvin K units of u should be J L Conversely any function u satisfying the above mean value property on an open domain of Rn R is a solution of the heat equation The Green s Function Library contains a variety of fundamental solutions to the heat equation Berline Nicole Getzler Ezra Vergne Michele Heat kernels and Dirac operators Grundlehren der Mathematischen Wissenschaften 298 Springer Verlag Berlin 1992 viii 369 pp ISBN 3 540 53340 0ReferencesCannon John Rozier 1984 The one dimensional heat equation Encyclopedia of Mathematics and its Applications vol 23 Reading MA Addison Wesley Publishing Company Advanced Book Program ISBN 0 201 13522 1 MR 0747979 Zbl 0567 35001 Crank J Nicolson P 1947 A Practical Method for Numerical Evaluation of Solutions of Partial Differential Equations of the Heat Conduction Type Proceedings of the Cambridge Philosophical Society 43 1 50 67 Bibcode 1947PCPS 43 50C doi 10 1017 S0305004100023197 S2CID 16676040 Evans Lawrence C 2010 Partial Differential Equations Graduate Studies in Mathematics vol 19 2nd ed Providence RI American Mathematical Society ISBN 978 0 8218 4974 3 Perona P Malik J 1990 Scale Space and Edge Detection Using Anisotropic Diffusion PDF IEEE Transactions on Pattern Analysis and Machine Intelligence 12 7 629 639 doi 10 1109 34 56205 S2CID 14502908 Thambynayagam R K M 2011 The Diffusion Handbook Applied Solutions for Engineers McGraw Hill Professional ISBN 978 0 07 175184 1 Wilmott Paul Howison Sam Dewynne Jeff 1995 The mathematics of financial derivatives A student introduction Cambridge Cambridge University Press ISBN 0 521 49699 3Further readingCarslaw H S Jaeger J C 1988 Conduction of heat in solids Oxford Science Publications 2nd ed New York The Clarendon Press Oxford University Press ISBN 978 0 19 853368 9 Cole Kevin D Beck James V Haji Sheikh A Litkouhi Bahan 2011 Heat conduction using Green s functions Series in Computational and Physical Processes in Mechanics and Thermal Sciences 2nd ed Boca Raton FL CRC Press ISBN 978 1 43 981354 6 Einstein Albert 1905 Uber die von der molekularkinetischen Theorie der Warme geforderte Bewegung von in ruhenden Flussigkeiten suspendierten Teilchen PDF Annalen der Physik 322 8 549 560 Bibcode 1905AnP 322 549E doi 10 1002 andp 19053220806 Friedman Avner 1964 Partial differential equations of parabolic type Englewood Cliffs N J Prentice Hall Unsworth J Duarte F J 1979 Heat diffusion in a solid sphere and Fourier Theory Am J Phys 47 11 891 893 Bibcode 1979AmJPh 47 981U doi 10 1119 1 11601 Jili Latif M 2009 Heat Conduction Springer 3rd ed Berlin Heidelberg Springer Verlag ISBN 978 3 642 01266 2 Widder D V 1975 The heat equation Pure and Applied Mathematics vol 67 New York London Academic Press Harcourt Brace Jovanovich Publishers External linksWikiversity has learning resources about Heat equation Wikimedia Commons has media related to Heat equation Derivation of the heat equation Linear heat equations Particular solutions and boundary value problems from EqWorld The Heat Equation PBS Infinite Series November 17 2017 Archived from the original on 2021 12 11 via YouTube