![Multivariable calculus](https://www.english.nina.az/wikipedia/image/aHR0cHM6Ly91cGxvYWQud2lraW1lZGlhLm9yZy93aWtpcGVkaWEvY29tbW9ucy90aHVtYi8xLzE0LyUyOCUyOHglNUUyJTI5JTI4eSUyOSUyOSVFMiU4MSU4NCUyOCUyOHglNUU0JTI5JTJCJTI4eSU1RTIlMjklMjkucG5nLzE2MDBweC0lMjglMjh4JTVFMiUyOSUyOHklMjklMjklRTIlODElODQlMjglMjh4JTVFNCUyOSUyQiUyOHklNUUyJTI5JTI5LnBuZw==.png )
This article relies largely or entirely on a single source.(October 2015) |
Multivariable calculus (also known as multivariate calculus) is the extension of calculus in one variable to calculus with functions of several variables: the differentiation and integration of functions involving multiple variables (multivariate), rather than just one.
Multivariable calculus may be thought of as an elementary part of calculus on Euclidean space. The special case of calculus in three dimensional space is often called vector calculus.
Introduction
In single-variable calculus, operations like differentiation and integration are made to functions of a single variable. In multivariate calculus, it is required to generalize these to multiple variables, and the domain is therefore multi-dimensional. Care is therefore required in these generalizations, because of two key differences between 1D and higher dimensional spaces:
- There are infinite ways to approach a single point in higher dimensions, as opposed to two (from the positive and negative direction) in 1D;
- There are multiple extended objects associated with the dimension; for example, for a 1D function, it must be represented as a curve on the 2D Cartesian plane, but a function with two variables is a surface in 3D, while curves can also live in 3D space.
The consequence of the first difference is the difference in the definition of the limit and differentiation. Directional limits and derivatives define the limit and differential along a 1D parametrized curve, reducing the problem to the 1D case. Further higher-dimensional objects can be constructed from these operators.
The consequence of the second difference is the existence of multiple types of integration, including line integrals, surface integrals and volume integrals. Due to the non-uniqueness of these integrals, an antiderivative or indefinite integral cannot be properly defined.
Limits
A study of limits and continuity in multivariable calculus yields many counterintuitive results not demonstrated by single-variable functions.
A limit along a path may be defined by considering a parametrised path in n-dimensional Euclidean space. Any function
can then be projected on the path as a 1D function
. The limit of
to the point
along the path
can hence be defined as
1 |
Note that the value of this limit can be dependent on the form of , i.e. the path chosen, not just the point which the limit approaches.: 19–22 For example, consider the function
If the point is approached through the line
, or in parametric form:
![image](https://www.english.nina.az/wikipedia/image/aHR0cHM6Ly93d3cuZW5nbGlzaC5uaW5hLmF6L3dpa2lwZWRpYS9pbWFnZS9hSFIwY0hNNkx5OTFjR3h2WVdRdWQybHJhVzFsWkdsaExtOXlaeTkzYVd0cGNHVmthV0V2WTI5dGJXOXVjeTkwYUhWdFlpOHhMekUwTHlVeU9DVXlPSGdsTlVVeUpUSTVKVEk0ZVNVeU9TVXlPU1ZGTWlVNE1TVTROQ1V5T0NVeU9IZ2xOVVUwSlRJNUpUSkNKVEk0ZVNVMVJUSWxNamtsTWprdWNHNW5Mekl5TUhCNExTVXlPQ1V5T0hnbE5VVXlKVEk1SlRJNGVTVXlPU1V5T1NWRk1pVTRNU1U0TkNVeU9DVXlPSGdsTlVVMEpUSTVKVEpDSlRJNGVTVTFSVElsTWprbE1qa3VjRzVuLnBuZw==.png)
2 |
Then the limit along the path will be:
3 |
On the other hand, if the path (or parametrically,
) is chosen, then the limit becomes:
4 |
Since taking different paths towards the same point yields different values, a general limit at the point cannot be defined for the function.
A general limit can be defined if the limits to a point along all possible paths converge to the same value, i.e. we say for a function that the limit of
to some point
is L, if and only if
5 |
for all continuous functions such that
.
Continuity
From the concept of limit along a path, we can then derive the definition for multivariate continuity in the same manner, that is: we say for a function that
is continuous at the point
, if and only if
5 |
for all continuous functions such that
.
As with limits, being continuous along one path does not imply multivariate continuity.
Continuity in each argument not being sufficient for multivariate continuity can also be seen from the following example.: 17–19 For example, for a real-valued function with two real-valued parameters,
, continuity of
in
for fixed
and continuity of
in
for fixed
does not imply continuity of
.
Consider
It is easy to verify that this function is zero by definition on the boundary and outside of the quadrangle . Furthermore, the functions defined for constant
and
and
by
and
are continuous. Specifically,
for all x and y. Therefore,
and moreover, along the coordinate axes,
and
. Therefore the function is continuous along both individual arguments.
However, consider the parametric path . The parametric function becomes
6 |
Therefore,
7 |
It is hence clear that the function is not multivariate continuous, despite being continuous in both coordinates.
Theorems regarding multivariate limits and continuity
- All properties of linearity and superposition from single-variable calculus carry over to multivariate calculus.
- Composition: If
and
are both multivariate continuous functions at the points
and
respectively, then
is also a multivariate continuous function at the point
.
- Multiplication: If
and
are both continuous functions at the point
, then
is continuous at
, and
is also continuous at
provided that
.
- If
is a continuous function at point
, then
is also continuous at the same point.
- If
is Lipschitz continuous (with the appropriate normed spaces as needed) in the neighbourhood of the point
, then
is multivariate continuous at
.
Proof | |||
---|---|---|---|
From the Lipschitz continuity condition for
where Hence, for every |
Differentiation
Directional derivative
The derivative of a single-variable function is defined as
9 |
Using the extension of limits discussed above, one can then extend the definition of the derivative to a scalar-valued function along some path
:
10 |
Unlike limits, for which the value depends on the exact form of the path , it can be shown that the derivative along the path depends only on the tangent vector of the path at
, i.e.
, provided that
is Lipschitz continuous at
, and that the limit exits for at least one such path.
Proof | |||||||||
---|---|---|---|---|---|---|---|---|---|
For
where Substituting this into 10,
where Lipschitz continuity gives us Note also that given the continuity of Substituting these two conditions into 12,
whose limit depends only on |
It is therefore possible to generate the definition of the directional derivative as follows: The directional derivative of a scalar-valued function along the unit vector
at some point
is
14 |
or, when expressed in terms of ordinary differentiation,
15 |
which is a well defined expression because is a scalar function with one variable in
.
It is not possible to define a unique scalar derivative without a direction; it is clear for example that . It is also possible for directional derivatives to exist for some directions but not for others.
Partial derivative
The partial derivative generalizes the notion of the derivative to higher dimensions. A partial derivative of a multivariable function is a derivative with respect to one variable with all other variables held constant.: 26ff
A partial derivative may be thought of as the directional derivative of the function along a coordinate axis.
Partial derivatives may be combined in interesting ways to create more complicated expressions of the derivative. In vector calculus, the del operator () is used to define the concepts of gradient, divergence, and curl in terms of partial derivatives. A matrix of partial derivatives, the Jacobian matrix, may be used to represent the derivative of a function between two spaces of arbitrary dimension. The derivative can thus be understood as a linear transformation which directly varies from point to point in the domain of the function.
Differential equations containing partial derivatives are called partial differential equations or PDEs. These equations are generally more difficult to solve than ordinary differential equations, which contain derivatives with respect to only one variable.: 654ff
Multiple integration
The multiple integral extends the concept of the integral to functions of any number of variables. Double and triple integrals may be used to calculate areas and volumes of regions in the plane and in space. Fubini's theorem guarantees that a multiple integral may be evaluated as a repeated integral or iterated integral as long as the integrand is continuous throughout the domain of integration.: 367ff
The surface integral and the line integral are used to integrate over curved manifolds such as surfaces and curves.
Fundamental theorem of calculus in multiple dimensions
In single-variable calculus, the fundamental theorem of calculus establishes a link between the derivative and the integral. The link between the derivative and the integral in multivariable calculus is embodied by the integral theorems of vector calculus:: 543ff
- Gradient theorem
- Stokes' theorem
- Divergence theorem
- Green's theorem.
In a more advanced study of multivariable calculus, it is seen that these four theorems are specific incarnations of a more general theorem, the generalized Stokes' theorem, which applies to the integration of differential forms over manifolds.
Applications and uses
Techniques of multivariable calculus are used to study many objects of interest in the material world. In particular,
Type of functions | Applicable techniques | ||
---|---|---|---|
Curves | ![]() | for | Lengths of curves, line integrals, and curvature. |
Surfaces | ![]() | for | Areas of surfaces, surface integrals, flux through surfaces, and curvature. |
Scalar fields | ![]() | Maxima and minima, Lagrange multipliers, directional derivatives, level sets. | |
Vector fields | ![]() | Any of the operations of vector calculus including gradient, divergence, and curl. |
Multivariable calculus can be applied to analyze deterministic systems that have multiple degrees of freedom. Functions with independent variables corresponding to each of the degrees of freedom are often used to model these systems, and multivariable calculus provides tools for characterizing the system dynamics.
Multivariate calculus is used in the optimal control of continuous time dynamic systems. It is used in regression analysis to derive formulas for estimating relationships among various sets of empirical data.
Multivariable calculus is used in many fields of natural and social science and engineering to model and study high-dimensional systems that exhibit deterministic behavior. In economics, for example, consumer choice over a variety of goods, and producer choice over various inputs to use and outputs to produce, are modeled with multivariate calculus.
Non-deterministic, or stochastic systems can be studied using a different kind of mathematics, such as stochastic calculus.
See also
- List of multivariable calculus topics
- Multivariate statistics
References
External links
![image](https://www.english.nina.az/wikipedia/image/aHR0cHM6Ly93d3cuZW5nbGlzaC5uaW5hLmF6L3dpa2lwZWRpYS9pbWFnZS9hSFIwY0hNNkx5OTFjR3h2WVdRdWQybHJhVzFsWkdsaExtOXlaeTkzYVd0cGNHVmthV0V2Wlc0dmRHaDFiV0l2TkM4MFlTOURiMjF0YjI1ekxXeHZaMjh1YzNabkx6TXdjSGd0UTI5dGJXOXVjeTFzYjJkdkxuTjJaeTV3Ym1jPS5wbmc=.png)
- UC Berkeley video lectures on Multivariable Calculus, Fall 2009, Professor Edward Frenkel
- MIT video lectures on Multivariable Calculus, Fall 2007
- Multivariable Calculus: A free online textbook by George Cain and James Herod
- Multivariable Calculus Online: A free online textbook by Jeff Knisley
- Multivariable Calculus – A Very Quick Review, Prof. Blair Perot, University of Massachusetts Amherst
- Multivariable Calculus, Online text by Dr. Jerry Shurman
This article relies largely or entirely on a single source Relevant discussion may be found on the talk page Please help improve this article by introducing citations to additional sources Find sources Multivariable calculus news newspapers books scholar JSTOR October 2015 Multivariable calculus also known as multivariate calculus is the extension of calculus in one variable to calculus with functions of several variables the differentiation and integration of functions involving multiple variables multivariate rather than just one Multivariable calculus may be thought of as an elementary part of calculus on Euclidean space The special case of calculus in three dimensional space is often called vector calculus IntroductionIn single variable calculus operations like differentiation and integration are made to functions of a single variable In multivariate calculus it is required to generalize these to multiple variables and the domain is therefore multi dimensional Care is therefore required in these generalizations because of two key differences between 1D and higher dimensional spaces There are infinite ways to approach a single point in higher dimensions as opposed to two from the positive and negative direction in 1D There are multiple extended objects associated with the dimension for example for a 1D function it must be represented as a curve on the 2D Cartesian plane but a function with two variables is a surface in 3D while curves can also live in 3D space The consequence of the first difference is the difference in the definition of the limit and differentiation Directional limits and derivatives define the limit and differential along a 1D parametrized curve reducing the problem to the 1D case Further higher dimensional objects can be constructed from these operators The consequence of the second difference is the existence of multiple types of integration including line integrals surface integrals and volume integrals Due to the non uniqueness of these integrals an antiderivative or indefinite integral cannot be properly defined LimitsA study of limits and continuity in multivariable calculus yields many counterintuitive results not demonstrated by single variable functions A limit along a path may be defined by considering a parametrised path s t R Rn displaystyle s t mathbb R to mathbb R n in n dimensional Euclidean space Any function f x Rn Rm displaystyle f overrightarrow x mathbb R n to mathbb R m can then be projected on the path as a 1D function f s t displaystyle f s t The limit of f displaystyle f to the point s t0 displaystyle s t 0 along the path s t displaystyle s t can hence be defined as limx s t0 f x limt t0f s t displaystyle lim overrightarrow x to s t 0 f overrightarrow x lim t to t 0 f s t 1 Note that the value of this limit can be dependent on the form of s t displaystyle s t i e the path chosen not just the point which the limit approaches 19 22 For example consider the function f x y x2yx4 y2 displaystyle f x y frac x 2 y x 4 y 2 If the point 0 0 displaystyle 0 0 is approached through the line y kx displaystyle y kx or in parametric form Plot of the function f x y x y x4 y2 x t t y t kt displaystyle x t t y t kt 2 Then the limit along the path will be limt 0f x t y t limt 0kt3t4 k2t2 0 displaystyle lim t to 0 f x t y t lim t to 0 frac kt 3 t 4 k 2 t 2 0 3 On the other hand if the path y x2 displaystyle y pm x 2 or parametrically x t t y t t2 displaystyle x t t y t pm t 2 is chosen then the limit becomes limt 0f x t y t limt 0 t4t4 t4 12 displaystyle lim t to 0 f x t y t lim t to 0 frac pm t 4 t 4 t 4 pm frac 1 2 4 Since taking different paths towards the same point yields different values a general limit at the point 0 0 displaystyle 0 0 cannot be defined for the function A general limit can be defined if the limits to a point along all possible paths converge to the same value i e we say for a function f Rn Rm displaystyle f mathbb R n to mathbb R m that the limit of f displaystyle f to some point x0 Rn displaystyle x 0 in mathbb R n is L if and only if limt t0f s t L displaystyle lim t to t 0 f s t L 5 for all continuous functions s t R Rn displaystyle s t mathbb R to mathbb R n such that s t0 x0 displaystyle s t 0 x 0 Continuity From the concept of limit along a path we can then derive the definition for multivariate continuity in the same manner that is we say for a function f Rn Rm displaystyle f mathbb R n to mathbb R m that f displaystyle f is continuous at the point x0 displaystyle x 0 if and only if limt t0f s t f x0 displaystyle lim t to t 0 f s t f x 0 5 for all continuous functions s t R Rn displaystyle s t mathbb R to mathbb R n such that s t0 x0 displaystyle s t 0 x 0 As with limits being continuous along one path s t displaystyle s t does not imply multivariate continuity Continuity in each argument not being sufficient for multivariate continuity can also be seen from the following example 17 19 For example for a real valued function f R2 R displaystyle f mathbb R 2 to mathbb R with two real valued parameters f x y displaystyle f x y continuity of f displaystyle f in x displaystyle x for fixed y displaystyle y and continuity of f displaystyle f in y displaystyle y for fixed x displaystyle x does not imply continuity of f displaystyle f Consider f x y yx yif0 y lt x 1xy xif0 x lt y 11 xif0 lt x y0everywhere else displaystyle f x y begin cases frac y x y amp text if quad 0 leq y lt x leq 1 frac x y x amp text if quad 0 leq x lt y leq 1 1 x amp text if quad 0 lt x y 0 amp text everywhere else end cases It is easy to verify that this function is zero by definition on the boundary and outside of the quadrangle 0 1 0 1 displaystyle 0 1 times 0 1 Furthermore the functions defined for constant x displaystyle x and y displaystyle y and 0 a 1 displaystyle 0 leq a leq 1 by ga x f x a displaystyle g a x f x a quad and ha y f a y displaystyle quad h a y f a y quad are continuous Specifically g0 x f x 0 h0 0 y f 0 y 0 displaystyle g 0 x f x 0 h 0 0 y f 0 y 0 for all x and y Therefore f 0 0 0 displaystyle f 0 0 0 and moreover along the coordinate axes limx 0f x 0 0 displaystyle lim x to 0 f x 0 0 and limy 0f 0 y 0 displaystyle lim y to 0 f 0 y 0 Therefore the function is continuous along both individual arguments However consider the parametric path x t t y t t displaystyle x t t y t t The parametric function becomes f x t y t 1 tift gt 00everywhere else displaystyle f x t y t begin cases 1 t amp text if quad t gt 0 0 amp text everywhere else end cases 6 Therefore limt 0 f x t y t 1 f 0 0 0 displaystyle lim t to 0 f x t y t 1 neq f 0 0 0 7 It is hence clear that the function is not multivariate continuous despite being continuous in both coordinates Theorems regarding multivariate limits and continuity All properties of linearity and superposition from single variable calculus carry over to multivariate calculus Composition If f Rn Rm displaystyle f mathbb R n to mathbb R m and g Rm Rp displaystyle g mathbb R m to mathbb R p are both multivariate continuous functions at the points x0 Rn displaystyle x 0 in mathbb R n and f x0 Rm displaystyle f x 0 in mathbb R m respectively then g f Rn Rp displaystyle g circ f mathbb R n to mathbb R p is also a multivariate continuous function at the point x0 displaystyle x 0 Multiplication If f Rn R displaystyle f mathbb R n to mathbb R and g Rn R displaystyle g mathbb R n to mathbb R are both continuous functions at the point x0 Rn displaystyle x 0 in mathbb R n then fg Rn R displaystyle fg mathbb R n to mathbb R is continuous at x0 displaystyle x 0 and f g Rn R displaystyle f g mathbb R n to mathbb R is also continuous at x0 displaystyle x 0 provided that g x0 0 displaystyle g x 0 neq 0 If f Rn R displaystyle f mathbb R n to mathbb R is a continuous function at point x0 Rn displaystyle x 0 in mathbb R n then f displaystyle f is also continuous at the same point If f Rn Rm displaystyle f mathbb R n to mathbb R m is Lipschitz continuous with the appropriate normed spaces as needed in the neighbourhood of the point x0 Rn displaystyle x 0 in mathbb R n then f displaystyle f is multivariate continuous at x0 displaystyle x 0 ProofFrom the Lipschitz continuity condition for f displaystyle f we have f s t f s t0 K s t s t0 displaystyle f s t f s t 0 leq K s t s t 0 8 where K displaystyle K is the Lipschitz constant Note also that as s t displaystyle s t is continuous at t0 displaystyle t 0 for every d gt 0 displaystyle delta gt 0 there exists a ϵ gt 0 displaystyle epsilon gt 0 such that s t s t0 lt d displaystyle s t s t 0 lt delta t t0 lt ϵ displaystyle forall t t 0 lt epsilon Hence for every a gt 0 displaystyle alpha gt 0 choose d aK displaystyle delta frac alpha K there exists an ϵ gt 0 displaystyle epsilon gt 0 such that for all t displaystyle t satisfying t t0 lt ϵ displaystyle t t 0 lt epsilon s t s t0 lt d displaystyle s t s t 0 lt delta and f s t f s t0 K s t s t0 lt Kd a displaystyle f s t f s t 0 leq K s t s t 0 lt K delta alpha Hence limt t0f s t displaystyle lim t to t 0 f s t converges to f s t0 displaystyle f s t 0 regardless of the precise form of s t displaystyle s t DifferentiationDirectional derivative The derivative of a single variable function is defined as dfdx limh 0f x h f x h displaystyle frac df dx lim h to 0 frac f x h f x h 9 Using the extension of limits discussed above one can then extend the definition of the derivative to a scalar valued function f Rn R displaystyle f mathbb R n to mathbb R along some path s t R Rn displaystyle s t mathbb R to mathbb R n dfdx s t t t0 limh 0f s t0 h f s t0 s t0 h s t0 displaystyle left frac df dx right s t t t 0 lim h to 0 frac f s t 0 h f s t 0 s t 0 h s t 0 10 Unlike limits for which the value depends on the exact form of the path s t displaystyle s t it can be shown that the derivative along the path depends only on the tangent vector of the path at s t0 displaystyle s t 0 i e s t0 displaystyle s t 0 provided that f displaystyle f is Lipschitz continuous at s t0 displaystyle s t 0 and that the limit exits for at least one such path ProofFor s t displaystyle s t continuous up to the first derivative this statement is well defined as s displaystyle s is a function of one variable we can write the Taylor expansion of s displaystyle s around t0 displaystyle t 0 using Taylor s theorem to construct the remainder s t s t0 s t t t0 displaystyle s t s t 0 s tau t t 0 11 where t t0 t displaystyle tau in t 0 t Substituting this into 10 dfdx s t t t0 limh 0f s t0 s t h f s t0 s t h displaystyle left frac df dx right s t t t 0 lim h to 0 frac f s t 0 s tau h f s t 0 s tau h 12 where t h t0 t0 h displaystyle tau h in t 0 t 0 h Lipschitz continuity gives us f x f y K x y displaystyle f x f y leq K x y for some finite K displaystyle K x y Rn displaystyle forall x y in mathbb R n It follows that f x O h f x O h displaystyle f x O h f x sim O h Note also that given the continuity of s t displaystyle s t s t s t0 O h displaystyle s tau s t 0 O h as h 0 displaystyle h to 0 Substituting these two conditions into 12 dfdx s t t t0 limh 0f s t0 s t0 h f s t0 O h2 s t0 h O h2 displaystyle left frac df dx right s t t t 0 lim h to 0 frac f s t 0 s t 0 h f s t 0 O h 2 s t 0 h O h 2 13 whose limit depends only on s t0 displaystyle s t 0 as the dominant term It is therefore possible to generate the definition of the directional derivative as follows The directional derivative of a scalar valued function f Rn R displaystyle f mathbb R n to mathbb R along the unit vector u displaystyle hat mathbf u at some point x0 Rn displaystyle x 0 in mathbb R n is u f x0 limt 0f x0 u t f x0 t displaystyle nabla hat mathbf u f x 0 lim t to 0 frac f x 0 hat mathbf u t f x 0 t 14 or when expressed in terms of ordinary differentiation u f x0 df x0 u t dt t 0 displaystyle nabla hat mathbf u f x 0 left frac df x 0 hat mathbf u t dt right t 0 15 which is a well defined expression because f x0 u t displaystyle f x 0 hat mathbf u t is a scalar function with one variable in t displaystyle t It is not possible to define a unique scalar derivative without a direction it is clear for example that u f x0 u f x0 displaystyle nabla hat mathbf u f x 0 nabla hat mathbf u f x 0 It is also possible for directional derivatives to exist for some directions but not for others Partial derivative The partial derivative generalizes the notion of the derivative to higher dimensions A partial derivative of a multivariable function is a derivative with respect to one variable with all other variables held constant 26ff A partial derivative may be thought of as the directional derivative of the function along a coordinate axis Partial derivatives may be combined in interesting ways to create more complicated expressions of the derivative In vector calculus the del operator displaystyle nabla is used to define the concepts of gradient divergence and curl in terms of partial derivatives A matrix of partial derivatives the Jacobian matrix may be used to represent the derivative of a function between two spaces of arbitrary dimension The derivative can thus be understood as a linear transformation which directly varies from point to point in the domain of the function Differential equations containing partial derivatives are called partial differential equations or PDEs These equations are generally more difficult to solve than ordinary differential equations which contain derivatives with respect to only one variable 654ff Multiple integrationThe multiple integral extends the concept of the integral to functions of any number of variables Double and triple integrals may be used to calculate areas and volumes of regions in the plane and in space Fubini s theorem guarantees that a multiple integral may be evaluated as a repeated integral or iterated integral as long as the integrand is continuous throughout the domain of integration 367ff The surface integral and the line integral are used to integrate over curved manifolds such as surfaces and curves Fundamental theorem of calculus in multiple dimensions In single variable calculus the fundamental theorem of calculus establishes a link between the derivative and the integral The link between the derivative and the integral in multivariable calculus is embodied by the integral theorems of vector calculus 543ff Gradient theorem Stokes theorem Divergence theorem Green s theorem In a more advanced study of multivariable calculus it is seen that these four theorems are specific incarnations of a more general theorem the generalized Stokes theorem which applies to the integration of differential forms over manifolds Applications and usesTechniques of multivariable calculus are used to study many objects of interest in the material world In particular Type of functions Applicable techniquesCurves f R Rn displaystyle f mathbb R to mathbb R n for n gt 1 displaystyle n gt 1 Lengths of curves line integrals and curvature Surfaces f R2 Rn displaystyle f mathbb R 2 to mathbb R n for n gt 2 displaystyle n gt 2 Areas of surfaces surface integrals flux through surfaces and curvature Scalar fields f Rn R displaystyle f mathbb R n to mathbb R Maxima and minima Lagrange multipliers directional derivatives level sets Vector fields f Rm Rn displaystyle f mathbb R m to mathbb R n Any of the operations of vector calculus including gradient divergence and curl Multivariable calculus can be applied to analyze deterministic systems that have multiple degrees of freedom Functions with independent variables corresponding to each of the degrees of freedom are often used to model these systems and multivariable calculus provides tools for characterizing the system dynamics Multivariate calculus is used in the optimal control of continuous time dynamic systems It is used in regression analysis to derive formulas for estimating relationships among various sets of empirical data Multivariable calculus is used in many fields of natural and social science and engineering to model and study high dimensional systems that exhibit deterministic behavior In economics for example consumer choice over a variety of goods and producer choice over various inputs to use and outputs to produce are modeled with multivariate calculus Non deterministic or stochastic systems can be studied using a different kind of mathematics such as stochastic calculus See alsoList of multivariable calculus topics Multivariate statisticsReferencesRichard Courant Fritz John 14 December 1999 Introduction to Calculus and Analysis Volume II 2 Springer Science amp Business Media ISBN 978 3 540 66570 0 Spivak Michael 1965 Calculus on Manifolds New York W A Benjamin Inc ISBN 9780805390216 External linksWikimedia Commons has media related to Multivariate calculus UC Berkeley video lectures on Multivariable Calculus Fall 2009 Professor Edward Frenkel MIT video lectures on Multivariable Calculus Fall 2007 Multivariable Calculus A free online textbook by George Cain and James Herod Multivariable Calculus Online A free online textbook by Jeff Knisley Multivariable Calculus A Very Quick Review Prof Blair Perot University of Massachusetts Amherst Multivariable Calculus Online text by Dr Jerry Shurman