fbpx
Wikipedia

Total derivative

In mathematics, the total derivative of a function f at a point is the best linear approximation near this point of the function with respect to its arguments. Unlike partial derivatives, the total derivative approximates the function with respect to all of its arguments, not just a single one. In many situations, this is the same as considering all partial derivatives simultaneously. The term "total derivative" is primarily used when f is a function of several variables, because when f is a function of a single variable, the total derivative is the same as the ordinary derivative of the function.[1]: 198–203 

The total derivative as a linear map Edit

Let   be an open subset. Then a function   is said to be (totally) differentiable at a point   if there exists a linear transformation   such that

 

The linear map   is called the (total) derivative or (total) differential of   at  . Other notations for the total derivative include   and  . A function is (totally) differentiable if its total derivative exists at every point in its domain.

Conceptually, the definition of the total derivative expresses the idea that   is the best linear approximation to   at the point  . This can be made precise by quantifying the error in the linear approximation determined by  . To do so, write

 

where   equals the error in the approximation. To say that the derivative of   at   is   is equivalent to the statement

 

where   is little-o notation and indicates that   is much smaller than   as  . The total derivative   is the unique linear transformation for which the error term is this small, and this is the sense in which it is the best linear approximation to  .

The function   is differentiable if and only if each of its components   is differentiable, so when studying total derivatives, it is often possible to work one coordinate at a time in the codomain. However, the same is not true of the coordinates in the domain. It is true that if   is differentiable at  , then each partial derivative   exists at  . The converse does not hold: it can happen that all of the partial derivatives of   at   exist, but   is not differentiable at  . This means that the function is very "rough" at  , to such an extreme that its behavior cannot be adequately described by its behavior in the coordinate directions. When   is not so rough, this cannot happen. More precisely, if all the partial derivatives of   at   exist and are continuous in a neighborhood of  , then   is differentiable at  . When this happens, then in addition, the total derivative of   is the linear transformation corresponding to the Jacobian matrix of partial derivatives at that point.[2]

The total derivative as a differential form Edit

When the function under consideration is real-valued, the total derivative can be recast using differential forms. For example, suppose that   is a differentiable function of variables  . The total derivative of   at   may be written in terms of its Jacobian matrix, which in this instance is a row matrix:

 

The linear approximation property of the total derivative implies that if

 

is a small vector (where the   denotes transpose, so that this vector is a column vector), then

 

Heuristically, this suggests that if   are infinitesimal increments in the coordinate directions, then

 

In fact, the notion of the infinitesimal, which is merely symbolic here, can be equipped with extensive mathematical structure. Techniques, such as the theory of differential forms, effectively give analytical and algebraic descriptions of objects like infinitesimal increments,  . For instance,   may be inscribed as a linear functional on the vector space  . Evaluating   at a vector   in   measures how much   points in the  th coordinate direction. The total derivative   is a linear combination of linear functionals and hence is itself a linear functional. The evaluation   measures how much   points in the direction determined by   at  , and this direction is the gradient. This point of view makes the total derivative an instance of the exterior derivative.

Suppose now that   is a vector-valued function, that is,  . In this case, the components   of   are real-valued functions, so they have associated differential forms  . The total derivative   amalgamates these forms into a single object and is therefore an instance of a vector-valued differential form.

The chain rule for total derivatives Edit

The chain rule has a particularly elegant statement in terms of total derivatives. It says that, for two functions   and  , the total derivative of the composite function   at   satisfies

 

If the total derivatives of   and   are identified with their Jacobian matrices, then the composite on the right-hand side is simply matrix multiplication. This is enormously useful in applications, as it makes it possible to account for essentially arbitrary dependencies among the arguments of a composite function.

Example: Differentiation with direct dependencies Edit

Suppose that f is a function of two variables, x and y. If these two variables are independent, so that the domain of f is  , then the behavior of f may be understood in terms of its partial derivatives in the x and y directions. However, in some situations, x and y may be dependent. For example, it might happen that f is constrained to a curve  . In this case, we are actually interested in the behavior of the composite function  . The partial derivative of f with respect to x does not give the true rate of change of f with respect to changing x because changing x necessarily changes y. However, the chain rule for the total derivative takes such dependencies into account. Write  . Then, the chain rule says

 

By expressing the total derivative using Jacobian matrices, this becomes:

 

Suppressing the evaluation at   for legibility, we may also write this as

 

This gives a straightforward formula for the derivative of   in terms of the partial derivatives of   and the derivative of  .

For example, suppose

 

The rate of change of f with respect to x is usually the partial derivative of f with respect to x; in this case,

 

However, if y depends on x, the partial derivative does not give the true rate of change of f as x changes because the partial derivative assumes that y is fixed. Suppose we are constrained to the line

 

Then

 

and the total derivative of f with respect to x is

 

which we see is not equal to the partial derivative  . Instead of immediately substituting for y in terms of x, however, we can also use the chain rule as above:

 

Example: Differentiation with indirect dependencies Edit

While one can often perform substitutions to eliminate indirect dependencies, the chain rule provides for a more efficient and general technique. Suppose   is a function of time   and   variables   which themselves depend on time. Then, the time derivative of   is

 

The chain rule expresses this derivative in terms of the partial derivatives of   and the time derivatives of the functions  :

 

This expression is often used in physics for a gauge transformation of the Lagrangian, as two Lagrangians that differ only by the total time derivative of a function of time and the   generalized coordinates lead to the same equations of motion. An interesting example concerns the resolution of causality concerning the Wheeler–Feynman time-symmetric theory. The operator in brackets (in the final expression above) is also called the total derivative operator (with respect to  ).

For example, the total derivative of   is

 

Here there is no   term since   itself does not depend on the independent variable   directly.

Total differential equation Edit

A total differential equation is a differential equation expressed in terms of total derivatives. Since the exterior derivative is coordinate-free, in a sense that can be given a technical meaning, such equations are intrinsic and geometric.

Application to equation systems Edit

In economics, it is common for the total derivative to arise in the context of a system of equations.[1]: pp. 217–220  For example, a simple supply-demand system might specify the quantity q of a product demanded as a function D of its price p and consumers' income I, the latter being an exogenous variable, and might specify the quantity supplied by producers as a function S of its price and two exogenous resource cost variables r and w. The resulting system of equations

 
 

determines the market equilibrium values of the variables p and q. The total derivative   of p with respect to r, for example, gives the sign and magnitude of the reaction of the market price to the exogenous variable r. In the indicated system, there are a total of six possible total derivatives, also known in this context as comparative static derivatives: dp / dr, dp / dw, dp / dI, dq / dr, dq / dw, and dq / dI. The total derivatives are found by totally differentiating the system of equations, dividing through by, say dr, treating dq / dr and dp / dr as the unknowns, setting dI = dw = 0, and solving the two totally differentiated equations simultaneously, typically by using Cramer's rule.

See also Edit

References Edit

  1. ^ a b Chiang, Alpha C. (1984). Fundamental Methods of Mathematical Economics (Third ed.). McGraw-Hill. ISBN 0-07-010813-7.
  2. ^ Abraham, Ralph; Marsden, J. E.; Ratiu, Tudor (2012). Manifolds, Tensor Analysis, and Applications. Springer Science & Business Media. p. 78. ISBN 9781461210290.
  • A. D. Polyanin and V. F. Zaitsev, Handbook of Exact Solutions for Ordinary Differential Equations (2nd edition), Chapman & Hall/CRC Press, Boca Raton, 2003. ISBN 1-58488-297-2
  • From thesaurus.maths.org

External links Edit

total, derivative, confused, with, total, differential, fluid, mechanics, this, article, includes, list, general, references, lacks, sufficient, corresponding, inline, citations, please, help, improve, this, article, introducing, more, precise, citations, july. Not to be confused with Total differential or Total derivative fluid mechanics This article includes a list of general references but it lacks sufficient corresponding inline citations Please help to improve this article by introducing more precise citations July 2013 Learn how and when to remove this template message In mathematics the total derivative of a function f at a point is the best linear approximation near this point of the function with respect to its arguments Unlike partial derivatives the total derivative approximates the function with respect to all of its arguments not just a single one In many situations this is the same as considering all partial derivatives simultaneously The term total derivative is primarily used when f is a function of several variables because when f is a function of a single variable the total derivative is the same as the ordinary derivative of the function 1 198 203 Contents 1 The total derivative as a linear map 2 The total derivative as a differential form 3 The chain rule for total derivatives 3 1 Example Differentiation with direct dependencies 3 2 Example Differentiation with indirect dependencies 4 Total differential equation 5 Application to equation systems 6 See also 7 References 8 External linksThe total derivative as a linear map EditLet U R n displaystyle U subseteq mathbb R n nbsp be an open subset Then a function f U R m displaystyle f U to mathbb R m nbsp is said to be totally differentiable at a point a U displaystyle a in U nbsp if there exists a linear transformation d f a R n R m displaystyle df a mathbb R n to mathbb R m nbsp such that lim x a f x f a d f a x a x a 0 displaystyle lim x to a frac f x f a df a x a x a 0 nbsp The linear map d f a displaystyle df a nbsp is called the total derivative or total differential of f displaystyle f nbsp at a displaystyle a nbsp Other notations for the total derivative include D a f displaystyle D a f nbsp and D f a displaystyle Df a nbsp A function is totally differentiable if its total derivative exists at every point in its domain Conceptually the definition of the total derivative expresses the idea that d f a displaystyle df a nbsp is the best linear approximation to f displaystyle f nbsp at the point a displaystyle a nbsp This can be made precise by quantifying the error in the linear approximation determined by d f a displaystyle df a nbsp To do so write f a h f a d f a h e h displaystyle f a h f a df a h varepsilon h nbsp where e h displaystyle varepsilon h nbsp equals the error in the approximation To say that the derivative of f displaystyle f nbsp at a displaystyle a nbsp is d f a displaystyle df a nbsp is equivalent to the statement e h o h displaystyle varepsilon h o lVert h rVert nbsp where o displaystyle o nbsp is little o notation and indicates that e h displaystyle varepsilon h nbsp is much smaller than h displaystyle lVert h rVert nbsp as h 0 displaystyle h to 0 nbsp The total derivative d f a displaystyle df a nbsp is the unique linear transformation for which the error term is this small and this is the sense in which it is the best linear approximation to f displaystyle f nbsp The function f displaystyle f nbsp is differentiable if and only if each of its components f i U R displaystyle f i colon U to mathbb R nbsp is differentiable so when studying total derivatives it is often possible to work one coordinate at a time in the codomain However the same is not true of the coordinates in the domain It is true that if f displaystyle f nbsp is differentiable at a displaystyle a nbsp then each partial derivative f x i displaystyle partial f partial x i nbsp exists at a displaystyle a nbsp The converse does not hold it can happen that all of the partial derivatives of f displaystyle f nbsp at a displaystyle a nbsp exist but f displaystyle f nbsp is not differentiable at a displaystyle a nbsp This means that the function is very rough at a displaystyle a nbsp to such an extreme that its behavior cannot be adequately described by its behavior in the coordinate directions When f displaystyle f nbsp is not so rough this cannot happen More precisely if all the partial derivatives of f displaystyle f nbsp at a displaystyle a nbsp exist and are continuous in a neighborhood of a displaystyle a nbsp then f displaystyle f nbsp is differentiable at a displaystyle a nbsp When this happens then in addition the total derivative of f displaystyle f nbsp is the linear transformation corresponding to the Jacobian matrix of partial derivatives at that point 2 The total derivative as a differential form EditWhen the function under consideration is real valued the total derivative can be recast using differential forms For example suppose that f R n R displaystyle f colon mathbb R n to mathbb R nbsp is a differentiable function of variables x 1 x n displaystyle x 1 ldots x n nbsp The total derivative of f displaystyle f nbsp at a displaystyle a nbsp may be written in terms of its Jacobian matrix which in this instance is a row matrix D f a f x 1 a f x n a displaystyle Df a begin bmatrix frac partial f partial x 1 a amp cdots amp frac partial f partial x n a end bmatrix nbsp The linear approximation property of the total derivative implies that if D x D x 1 D x n T displaystyle Delta x begin bmatrix Delta x 1 amp cdots amp Delta x n end bmatrix mathsf T nbsp is a small vector where the T displaystyle mathsf T nbsp denotes transpose so that this vector is a column vector then f a D x f a D f a D x i 1 n f x i a D x i displaystyle f a Delta x f a approx Df a cdot Delta x sum i 1 n frac partial f partial x i a cdot Delta x i nbsp Heuristically this suggests that if d x 1 d x n displaystyle dx 1 ldots dx n nbsp are infinitesimal increments in the coordinate directions then d f a i 1 n f x i a d x i displaystyle df a sum i 1 n frac partial f partial x i a cdot dx i nbsp In fact the notion of the infinitesimal which is merely symbolic here can be equipped with extensive mathematical structure Techniques such as the theory of differential forms effectively give analytical and algebraic descriptions of objects like infinitesimal increments d x i displaystyle dx i nbsp For instance d x i displaystyle dx i nbsp may be inscribed as a linear functional on the vector space R n displaystyle mathbb R n nbsp Evaluating d x i displaystyle dx i nbsp at a vector h displaystyle h nbsp in R n displaystyle mathbb R n nbsp measures how much h displaystyle h nbsp points in the i displaystyle i nbsp th coordinate direction The total derivative d f a displaystyle df a nbsp is a linear combination of linear functionals and hence is itself a linear functional The evaluation d f a h displaystyle df a h nbsp measures how much h displaystyle h nbsp points in the direction determined by f displaystyle f nbsp at a displaystyle a nbsp and this direction is the gradient This point of view makes the total derivative an instance of the exterior derivative Suppose now that f displaystyle f nbsp is a vector valued function that is f R n R m displaystyle f colon mathbb R n to mathbb R m nbsp In this case the components f i displaystyle f i nbsp of f displaystyle f nbsp are real valued functions so they have associated differential forms d f i displaystyle df i nbsp The total derivative d f displaystyle df nbsp amalgamates these forms into a single object and is therefore an instance of a vector valued differential form The chain rule for total derivatives EditMain article Chain rule The chain rule has a particularly elegant statement in terms of total derivatives It says that for two functions f displaystyle f nbsp and g displaystyle g nbsp the total derivative of the composite function g f displaystyle g circ f nbsp at a displaystyle a nbsp satisfies d g f a d g f a d f a displaystyle d g circ f a dg f a cdot df a nbsp If the total derivatives of f displaystyle f nbsp and g displaystyle g nbsp are identified with their Jacobian matrices then the composite on the right hand side is simply matrix multiplication This is enormously useful in applications as it makes it possible to account for essentially arbitrary dependencies among the arguments of a composite function Example Differentiation with direct dependencies Edit Suppose that f is a function of two variables x and y If these two variables are independent so that the domain of f is R 2 displaystyle mathbb R 2 nbsp then the behavior of f may be understood in terms of its partial derivatives in the x and y directions However in some situations x and y may be dependent For example it might happen that f is constrained to a curve y y x displaystyle y y x nbsp In this case we are actually interested in the behavior of the composite function f x y x displaystyle f x y x nbsp The partial derivative of f with respect to x does not give the true rate of change of f with respect to changing x because changing x necessarily changes y However the chain rule for the total derivative takes such dependencies into account Write g x x y x displaystyle gamma x x y x nbsp Then the chain rule says d f g x 0 d f x 0 y x 0 d g x 0 displaystyle d f circ gamma x 0 df x 0 y x 0 cdot d gamma x 0 nbsp By expressing the total derivative using Jacobian matrices this becomes d f x y x d x x 0 f x x 0 y x 0 x x x 0 f y x 0 y x 0 y x x 0 displaystyle frac df x y x dx x 0 frac partial f partial x x 0 y x 0 cdot frac partial x partial x x 0 frac partial f partial y x 0 y x 0 cdot frac partial y partial x x 0 nbsp Suppressing the evaluation at x 0 displaystyle x 0 nbsp for legibility we may also write this as d f x y x d x f x x x f y y x displaystyle frac df x y x dx frac partial f partial x frac partial x partial x frac partial f partial y frac partial y partial x nbsp This gives a straightforward formula for the derivative of f x y x displaystyle f x y x nbsp in terms of the partial derivatives of f displaystyle f nbsp and the derivative of y x displaystyle y x nbsp For example suppose f x y x y displaystyle f x y xy nbsp The rate of change of f with respect to x is usually the partial derivative of f with respect to x in this case f x y displaystyle frac partial f partial x y nbsp However if y depends on x the partial derivative does not give the true rate of change of f as x changes because the partial derivative assumes that y is fixed Suppose we are constrained to the line y x displaystyle y x nbsp Then f x y f x x x 2 displaystyle f x y f x x x 2 nbsp and the total derivative of f with respect to x is d f d x 2 x displaystyle frac df dx 2x nbsp which we see is not equal to the partial derivative f x displaystyle partial f partial x nbsp Instead of immediately substituting for y in terms of x however we can also use the chain rule as above d f d x f x f y d y d x y x 1 x y 2 x displaystyle frac df dx frac partial f partial x frac partial f partial y frac dy dx y x cdot 1 x y 2x nbsp Example Differentiation with indirect dependencies Edit While one can often perform substitutions to eliminate indirect dependencies the chain rule provides for a more efficient and general technique Suppose L t x 1 x n displaystyle L t x 1 dots x n nbsp is a function of time t displaystyle t nbsp and n displaystyle n nbsp variables x i displaystyle x i nbsp which themselves depend on time Then the time derivative of L displaystyle L nbsp is d L d t d d t L t x 1 t x n t displaystyle frac dL dt frac d dt L bigl t x 1 t ldots x n t bigr nbsp The chain rule expresses this derivative in terms of the partial derivatives of L displaystyle L nbsp and the time derivatives of the functions x i displaystyle x i nbsp d L d t L t i 1 n L x i d x i d t t i 1 n d x i d t x i L displaystyle frac dL dt frac partial L partial t sum i 1 n frac partial L partial x i frac dx i dt biggl frac partial partial t sum i 1 n frac dx i dt frac partial partial x i biggr L nbsp This expression is often used in physics for a gauge transformation of the Lagrangian as two Lagrangians that differ only by the total time derivative of a function of time and the n displaystyle n nbsp generalized coordinates lead to the same equations of motion An interesting example concerns the resolution of causality concerning the Wheeler Feynman time symmetric theory The operator in brackets in the final expression above is also called the total derivative operator with respect to t displaystyle t nbsp For example the total derivative of f x t y t displaystyle f x t y t nbsp is d f d t f x d x d t f y d y d t displaystyle frac df dt partial f over partial x dx over dt partial f over partial y dy over dt nbsp Here there is no f t displaystyle partial f partial t nbsp term since f displaystyle f nbsp itself does not depend on the independent variable t displaystyle t nbsp directly Total differential equation EditMain article Total differential equation A total differential equation is a differential equation expressed in terms of total derivatives Since the exterior derivative is coordinate free in a sense that can be given a technical meaning such equations are intrinsic and geometric Application to equation systems EditIn economics it is common for the total derivative to arise in the context of a system of equations 1 pp 217 220 For example a simple supply demand system might specify the quantity q of a product demanded as a function D of its price p and consumers income I the latter being an exogenous variable and might specify the quantity supplied by producers as a function S of its price and two exogenous resource cost variables r and w The resulting system of equations q D p I displaystyle q D p I nbsp q S p r w displaystyle q S p r w nbsp determines the market equilibrium values of the variables p and q The total derivative d p d r displaystyle dp dr nbsp of p with respect to r for example gives the sign and magnitude of the reaction of the market price to the exogenous variable r In the indicated system there are a total of six possible total derivatives also known in this context as comparative static derivatives dp dr dp dw dp dI dq dr dq dw and dq dI The total derivatives are found by totally differentiating the system of equations dividing through by say dr treating dq dr and dp dr as the unknowns setting dI dw 0 and solving the two totally differentiated equations simultaneously typically by using Cramer s rule See also EditDirectional derivative Instantaneous rate of change of the function Frechet derivative Derivative defined on normed spaces generalization of the total derivative Gateaux derivative Generalization of the concept of directional derivative Generalizations of the derivative Fundamental construction of differential calculus Gradient Total derivative Multivariate derivative mathematics References Edit a b Chiang Alpha C 1984 Fundamental Methods of Mathematical Economics Third ed McGraw Hill ISBN 0 07 010813 7 Abraham Ralph Marsden J E Ratiu Tudor 2012 Manifolds Tensor Analysis and Applications Springer Science amp Business Media p 78 ISBN 9781461210290 A D Polyanin and V F Zaitsev Handbook of Exact Solutions for Ordinary Differential Equations 2nd edition Chapman amp Hall CRC Press Boca Raton 2003 ISBN 1 58488 297 2 From thesaurus maths org total derivativeExternal links EditWeisstein Eric W Total Derivative MathWorld Ronald D Kriz 2007 Envisioning total derivatives of scalar functions of two dimensions using raised surfaces and tangent planes from Virginia Tech Retrieved from https en wikipedia org w index php title Total derivative amp oldid 1161798894, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.