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Diagram illustrating the Legendre transformation of the function f(x) . The function is shown in red, and the tangent line at point is shown in blue. The tangent line intersects the vertical axis at and is the value of the Legendre transform , where . Note that for any other point on the red curve, a line drawn through that point with the same slope as the blue line will have a y-intercept above the point , showing that is indeed a maximum.In mathematics, the Legendre transformation or Legendre transform, named after Adrien-Marie Legendre, is an operation that transforms one real-valued function of a real variable into another. Specifically, the Legendre transform of a function ƒ is the function ƒ∗ defined by If ƒ is differentiable, then ƒ∗(p) can be interpreted as the negative of the y-intercept of the tangent line to the graph of ƒ that has slope p. In particular, the value of x that attains the maximum has the property that That is, the derivative of the function ƒ becomes the argument to the function ƒ∗. In particular, if ƒ is convex (or concave up), then ƒ∗ satisfies the functional equation The Legendre transform is its own inverse. Like the familiar Fourier transform, the Legendre transform takes a function ƒ(x) and produces a function of a different variable p. However, while the Fourier transform consists of an integration with a kernel, the Legendre transform uses maximization as the transformation procedure. The transform is well behaved only if ƒ(x) is a convex function. The Legendre transformation is an application of the duality relationship between points and lines. The functional relationship specified by f(x) can be represented equally well as a set of (x, y) points, or as a set of tangent lines specified by their slope and intercept values. The Legendre transformation can be generalized to the Legendre-Fenchel transformation. It is commonly used in thermodynamics and in the Hamiltonian formulation of classical mechanics.
[edit] DefinitionsThe definition of the Legendre transform can be made more explicit. To maximize px − f(x) with respect to x, we set its derivative equal to zero: Thus, the expression is maximized when When f is convex, this is a maximum because the second derivative is negative: Next we invert (2) to obtain x as a function of p and plug this into (1) , which gives the more useful form, This definition gives the conventional procedure for calculating the Legendre transform of f(x): find [edit] Another definitionThere is a third definition of the Legendre transform: We can see this by taking derivative of Combining this equation with the maximization condition results in the following pair of reciprocal equations: We see that Df and Although in some cases (e.g. thermodynamic potentials) a non-standard requirement is used: The standard constraint will be considered in this article unless otherwise noted. The Legendre transformation is its own inverse, and is related to integration by parts. [edit] Applications[edit] ThermodynamicsThe strategy behind the use of Legendre transforms is to shift, from a function with one of its parameters an independent variable, to a new function with its dependence on a new variable (the partial derivative of the original function with respect to the independent variable). The new function is the difference between the original function and the product of the old and new variables. For example, while the internal energy is an explicit function of the extensive variables entropy, volume (and chemical composition) the enthalpy, the (non standard) Legendre transform of U with respect to −PV becomes a function of the entropy and the intensive quantity, pressure, as natural variables, and is useful when the (external) P is constant. The free energies (Helmholtz and Gibbs), are obtained through further Legendre transforms, by subtracting TS (from U and H respectively), shift dependence from the entropy S to its conjugate intensive variable temperature T, and are useful when it is constant. [edit] Hamilton-Lagrange mechanicsA Legendre transform is used in classical mechanics to derive the Hamiltonian formulation from the Lagrangian one, and conversely. While the Lagrangian is an explicit function of the positional coordinates qj and generalized velocities dqj /dt (and time), the Hamiltonian shifts the functional dependence to the positions and momenta,defined as Each of the two formulations has its own applicability, both in the theoretical foundations of the subject, and in practice, depending on the ease of calculation for a particular problem. The coordinates are not necessarily rectilinear, but can also be angles, etc. An optimum choice takes advantage of the actual physical symmetries. [edit] An example - variable capacitorAs another example from physics, consider a parallel-plate capacitor whose plates can approach or recede from one another, exchanging work with external mechanical forces which maintain the plate separation — analogous to a gas in a cylinder with a piston. We want the attractive force f between the plates as a function of the variable separation x. (The two vectors point in opposite directions.) If the charges on the plates remain constant as they move, the force is the negative gradient of the electrostatic energy However, if the voltage between the plates V is maintained constant by connection to a battery, which is a reservoir for charge at constant potential difference, the force now becomes the negative gradient of the Legendre transform The two functions happen to be negatives only because of the linearity of the capacitance. [edit] ExamplesThe exponential function ex has x ln x − x as a Legendre transform since their respective first derivatives ex and ln x are inverse to each other. This example shows that the respective domains of a function and its Legendre transform need not agree. Similarly, the quadratic form with A a symmetric invertible n-by-n-matrix has as a Legendre transform. [edit] Legendre transformation in one dimensionIn one dimension, a Legendre transform to a function f : R → R with an invertible first derivative may be found using the formula This can be seen by integrating both sides of the defining condition restricted to one-dimension from x0 to x1, making use of the fundamental theorem of calculus on the left hand side and substituting on the right hand side to find with f*′(y0) = x0, f*′(y1) = x1. Using integration by parts the last integral simplifies to Therefore, Since the left hand side of this equation does only depend on x1 and the right hand side only on x0, they have to evaluate to the same constant. Solving for f* and choosing C to be zero results in the above-mentioned formula. [edit] Geometric interpretationFor a strictly convex function the Legendre-transformation can be interpreted as a mapping between the graph of the function and the family of tangents of the graph. (For a function of one variable, the tangents are well-defined at all but at most countably many points since a convex function is differentiable at all but at most countably many points.) The equation of a line with slope m and y-intercept b is given by
For this line to be tangent to the graph of a function f at the point (x0, f(x0)) requires and f' is strictly monotone as the derivative of a strictly convex function, and the second equation can be solved for x0, allowing to eliminate x0 from the first giving the y-intercept b of the tangent as a function of its slope m: Here f* denotes the Legendre transform of f. The family of tangents of the graph of f is therefore (parameterized by m) given by or, written implicitly, by the solutions of the equation The graph of the original function can be reconstructed from this family of lines as the envelope of this family by demanding Eliminating m from these two equations gives Identifying y with f(x) and recognizing the right side of the preceding equation as the Legendre transform of f* we find [edit] Legendre transformation in more than one dimensionFor a differentiable real-valued function on an open subset U of Rn the Legendre conjugate of the pair (U, f) is defined to be the pair (V, g), where V is the image of U under the gradient mapping Df, and g is the function on V given by the formula where is the scalar product on Rn. Alternatively, if X is a real vector space and Y is its dual vector space, then for each point x of X and y of Y, there is a natural identification of the cotangent spaces T*Xx with Y and T*Yy with X. If f is a real differentiable function over X, then ∇f is a section of the cotangent bundle T*X and as such, we can construct a map from X to Y. Similarly, if g is a real differentiable function over Y, ∇g defines a map from Y to X. If both maps happen to be inverses of each other, we say we have a Legendre transform. [edit] Further propertiesIn the following the Legendre transform of a function f is denoted as f*. [edit] Scaling propertiesThe Legendre transformation has the following scaling properties: For a>0, It follows that if a function is homogeneous of degree r then its image under the Legendre transformation is a homogeneous function of degree s, where 1/r + 1/s = 1. Thus, the only monomial whose degree is invariant under Legendre transform is the quadratic. [edit] Behavior under translation[edit] Behavior under inversion[edit] Behavior under linear transformationsLet A be an automorphism of Rn. For any convex function f on Rn, one has where A* is the adjoint operator of A defined by A closed convex function f is symmetric with respect to a given set G of orthogonal linear transformations, if and only if f* is symmetric with respect to G. [edit] Infimal convolutionThe infimal convolution of two functions f and g is defined as Let f1, …, fm be proper convex functions on Rn. Then [edit] See also[edit] References
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