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This article includes a list of general references, but it lacks sufficient corresponding inline citations.(February 2016) |
Vector calculus or vector analysis is a branch of mathematics concerned with the differentiation and integration of vector fields, primarily in three-dimensional Euclidean space, The term vector calculus is sometimes used as a synonym for the broader subject of multivariable calculus, which spans vector calculus as well as partial differentiation and multiple integration. Vector calculus plays an important role in differential geometry and in the study of partial differential equations. It is used extensively in physics and engineering, especially in the description of electromagnetic fields, gravitational fields, and fluid flow.
Vector calculus was developed from the theory of quaternions by J. Willard Gibbs and Oliver Heaviside near the end of the 19th century, and most of the notation and terminology was established by Gibbs and Edwin Bidwell Wilson in their 1901 book, Vector Analysis. In its standard form using the cross product, vector calculus does not generalize to higher dimensions, but the alternative approach of geometric algebra, which uses the exterior product, does (see § Generalizations below for more).
Basic objects
Scalar fields
A scalar field associates a scalar value to every point in a space. The scalar is a mathematical number representing a physical quantity. Examples of scalar fields in applications include the temperature distribution throughout space, the pressure distribution in a fluid, and spin-zero quantum fields (known as scalar bosons), such as the Higgs field. These fields are the subject of scalar field theory.
Vector fields
A vector field is an assignment of a vector to each point in a space. A vector field in the plane, for instance, can be visualized as a collection of arrows with a given magnitude and direction each attached to a point in the plane. Vector fields are often used to model, for example, the speed and direction of a moving fluid throughout space, or the strength and direction of some force, such as the magnetic or gravitational force, as it changes from point to point. This can be used, for example, to calculate work done over a line.
Vectors and pseudovectors
In more advanced treatments, one further distinguishes pseudovector fields and pseudoscalar fields, which are identical to vector fields and scalar fields, except that they change sign under an orientation-reversing map: for example, the curl of a vector field is a pseudovector field, and if one reflects a vector field, the curl points in the opposite direction. This distinction is clarified and elaborated in geometric algebra, as described below.
Vector algebra
The algebraic (non-differential) operations in vector calculus are referred to as vector algebra, being defined for a vector space and then applied pointwise to a vector field. The basic algebraic operations consist of:
Operation | Notation | Description |
---|---|---|
Vector addition | Addition of two vectors, yielding a vector. | |
Scalar multiplication | Multiplication of a scalar and a vector, yielding a vector. | |
Dot product | Multiplication of two vectors, yielding a scalar. | |
Cross product | Multiplication of two vectors in |
Also commonly used are the two triple products:
Operation | Notation | Description |
---|---|---|
Scalar triple product | The dot product of the cross product of two vectors. | |
Vector triple product | The cross product of the cross product of two vectors. |
Operators and theorems
Differential operators
Vector calculus studies various differential operators defined on scalar or vector fields, which are typically expressed in terms of the del operator (), also known as "nabla". The three basic vector operators are:
Operation | Notation | Description | Notational analogy | Domain/Range |
---|---|---|---|---|
Gradient | Measures the rate and direction of change in a scalar field. | Scalar multiplication | Maps scalar fields to vector fields. | |
Divergence | Measures the scalar of a source or sink at a given point in a vector field. | Dot product | Maps vector fields to scalar fields. | |
Curl | Measures the tendency to rotate about a point in a vector field in | Cross product | Maps vector fields to (pseudo)vector fields. | |
f denotes a scalar field and F denotes a vector field |
Also commonly used are the two Laplace operators:
Operation | Notation | Description | Domain/Range |
---|---|---|---|
Laplacian | Measures the difference between the value of the scalar field with its average on infinitesimal balls. | Maps between scalar fields. | |
Vector Laplacian | Measures the difference between the value of the vector field with its average on infinitesimal balls. | Maps between vector fields. | |
f denotes a scalar field and F denotes a vector field |
A quantity called the Jacobian matrix is useful for studying functions when both the domain and range of the function are multivariable, such as a change of variables during integration.
Integral theorems
The three basic vector operators have corresponding theorems which generalize the fundamental theorem of calculus to higher dimensions:
Theorem | Statement | Description | ||
---|---|---|---|---|
Gradient theorem | The line integral of the gradient of a scalar field over a curve L is equal to the change in the scalar field between the endpoints p and q of the curve. | |||
Divergence theorem | The integral of the divergence of a vector field over an n-dimensional solid V is equal to the flux of the vector field through the (n−1)-dimensional closed boundary surface of the solid. | |||
Curl (Kelvin–Stokes) theorem | The integral of the curl of a vector field over a surface Σ in | |||
In two dimensions, the divergence and curl theorems reduce to the Green's theorem:
Theorem | Statement | Description | ||
---|---|---|---|---|
Green's theorem | The integral of the divergence (or curl) of a vector field over some region A in | |||
For divergence, F = (M, −L). For curl, F = (L, M, 0). L and M are functions of (x, y). |
Applications
Linear approximations
Linear approximations are used to replace complicated functions with linear functions that are almost the same. Given a differentiable function f(x, y) with real values, one can approximate f(x, y) for (x, y) close to (a, b) by the formula
The right-hand side is the equation of the plane tangent to the graph of z = f(x, y) at (a, b).
Optimization
For a continuously differentiable function of several real variables, a point P (that is, a set of values for the input variables, which is viewed as a point in Rn) is critical if all of the partial derivatives of the function are zero at P, or, equivalently, if its gradient is zero. The critical values are the values of the function at the critical points.
If the function is smooth, or, at least twice continuously differentiable, a critical point may be either a local maximum, a local minimum or a saddle point. The different cases may be distinguished by considering the eigenvalues of the Hessian matrix of second derivatives.
By Fermat's theorem, all local maxima and minima of a differentiable function occur at critical points. Therefore, to find the local maxima and minima, it suffices, theoretically, to compute the zeros of the gradient and the eigenvalues of the Hessian matrix at these zeros.
Generalizations
This section does not cite any sources.(August 2019) |
Vector calculus can also be generalized to other 3-manifolds and higher-dimensional spaces.
Different 3-manifolds
Vector calculus is initially defined for Euclidean 3-space, which has additional structure beyond simply being a 3-dimensional real vector space, namely: a norm (giving a notion of length) defined via an inner product (the dot product), which in turn gives a notion of angle, and an orientation, which gives a notion of left-handed and right-handed. These structures give rise to a volume form, and also the cross product, which is used pervasively in vector calculus.
The gradient and divergence require only the inner product, while the curl and the cross product also requires the handedness of the coordinate system to be taken into account (see Cross product § Handedness for more detail).
Vector calculus can be defined on other 3-dimensional real vector spaces if they have an inner product (or more generally a symmetric nondegenerate form) and an orientation; this is less data than an isomorphism to Euclidean space, as it does not require a set of coordinates (a frame of reference), which reflects the fact that vector calculus is invariant under rotations (the special orthogonal group SO(3)).
More generally, vector calculus can be defined on any 3-dimensional oriented Riemannian manifold, or more generally pseudo-Riemannian manifold. This structure simply means that the tangent space at each point has an inner product (more generally, a symmetric nondegenerate form) and an orientation, or more globally that there is a symmetric nondegenerate metric tensor and an orientation, and works because vector calculus is defined in terms of tangent vectors at each point.
Other dimensions
Most of the analytic results are easily understood, in a more general form, using the machinery of differential geometry, of which vector calculus forms a subset. Grad and div generalize immediately to other dimensions, as do the gradient theorem, divergence theorem, and Laplacian (yielding harmonic analysis), while curl and cross product do not generalize as directly.
From a general point of view, the various fields in (3-dimensional) vector calculus are uniformly seen as being k-vector fields: scalar fields are 0-vector fields, vector fields are 1-vector fields, pseudovector fields are 2-vector fields, and pseudoscalar fields are 3-vector fields. In higher dimensions there are additional types of fields (scalar, vector, pseudovector or pseudoscalar corresponding to 0, 1, n − 1 or n dimensions, which is exhaustive in dimension 3), so one cannot only work with (pseudo)scalars and (pseudo)vectors.
In any dimension, assuming a nondegenerate form, grad of a scalar function is a vector field, and div of a vector field is a scalar function, but only in dimension 3 or 7 (and, trivially, in dimension 0 or 1) is the curl of a vector field a vector field, and only in 3 or 7 dimensions can a cross product be defined (generalizations in other dimensionalities either require vectors to yield 1 vector, or are alternative Lie algebras, which are more general antisymmetric bilinear products). The generalization of grad and div, and how curl may be generalized is elaborated at Curl § Generalizations; in brief, the curl of a vector field is a bivector field, which may be interpreted as the special orthogonal Lie algebra of infinitesimal rotations; however, this cannot be identified with a vector field because the dimensions differ – there are 3 dimensions of rotations in 3 dimensions, but 6 dimensions of rotations in 4 dimensions (and more generally
dimensions of rotations in n dimensions).
There are two important alternative generalizations of vector calculus. The first, geometric algebra, uses k-vector fields instead of vector fields (in 3 or fewer dimensions, every k-vector field can be identified with a scalar function or vector field, but this is not true in higher dimensions). This replaces the cross product, which is specific to 3 dimensions, taking in two vector fields and giving as output a vector field, with the exterior product, which exists in all dimensions and takes in two vector fields, giving as output a bivector (2-vector) field. This product yields Clifford algebras as the algebraic structure on vector spaces (with an orientation and nondegenerate form). Geometric algebra is mostly used in generalizations of physics and other applied fields to higher dimensions.
The second generalization uses differential forms (k-covector fields) instead of vector fields or k-vector fields, and is widely used in mathematics, particularly in differential geometry, geometric topology, and harmonic analysis, in particular yielding Hodge theory on oriented pseudo-Riemannian manifolds. From this point of view, grad, curl, and div correspond to the exterior derivative of 0-forms, 1-forms, and 2-forms, respectively, and the key theorems of vector calculus are all special cases of the general form of Stokes' theorem.
From the point of view of both of these generalizations, vector calculus implicitly identifies mathematically distinct objects, which makes the presentation simpler but the underlying mathematical structure and generalizations less clear. From the point of view of geometric algebra, vector calculus implicitly identifies k-vector fields with vector fields or scalar functions: 0-vectors and 3-vectors with scalars, 1-vectors and 2-vectors with vectors. From the point of view of differential forms, vector calculus implicitly identifies k-forms with scalar fields or vector fields: 0-forms and 3-forms with scalar fields, 1-forms and 2-forms with vector fields. Thus for example the curl naturally takes as input a vector field or 1-form, but naturally has as output a 2-vector field or 2-form (hence pseudovector field), which is then interpreted as a vector field, rather than directly taking a vector field to a vector field; this is reflected in the curl of a vector field in higher dimensions not having as output a vector field.
See also
- Vector calculus identities
- Vector algebra relations
- Directional derivative
- Conservative vector field
- Solenoidal vector field
- Laplacian vector field
- Helmholtz decomposition
- Tensor
- Geometric calculus
References
Citations
- Kreyszig, Erwin; Kreyszig, Herbert; Norminton, E. J. (2011). Advanced engineering mathematics (10th ed.). Hoboken, NJ: John Wiley. ISBN 978-0-470-45836-5.
- Galbis, Antonio; Maestre, Manuel (2012). Vector Analysis Versus Vector Calculus. Springer. p. 12. ISBN 978-1-4614-2199-3.
- "Differential Operators". Math24. Retrieved 2020-09-17.
- Lizhong Peng & Lei Yang (1999) "The curl in seven dimensional space and its applications", Approximation Theory and Its Applications 15(3): 66 to 80 doi:10.1007/BF02837124
Sources
- Sandro Caparrini (2002) "The discovery of the vector representation of moments and angular velocity", Archive for History of Exact Sciences 56:151–81.
- Crowe, Michael J. (1967). A History of Vector Analysis : The Evolution of the Idea of a Vectorial System (reprint ed.). Dover Publications. ISBN 978-0-486-67910-5.
- Marsden, J. E. (1976). Vector Calculus. W. H. Freeman & Company. ISBN 978-0-7167-0462-1.
- Schey, H. M. (2005). Div Grad Curl and all that: An informal text on vector calculus. W. W. Norton & Company. ISBN 978-0-393-92516-6.
- Barry Spain (1965) Vector Analysis, 2nd edition, link from Internet Archive.
- Chen-To Tai (1995). A historical study of vector analysis. Technical Report RL 915, Radiation Laboratory, University of Michigan.
External links
- The Feynman Lectures on Physics Vol. II Ch. 2: Differential Calculus of Vector Fields
- "Vector analysis", Encyclopedia of Mathematics, EMS Press, 2001 [1994]
- "Vector algebra", Encyclopedia of Mathematics, EMS Press, 2001 [1994]
- A survey of the improper use of ∇ in vector analysis (1994) Tai, Chen-To
- Vector Analysis: A Text-book for the Use of Students of Mathematics and Physics, (based upon the lectures of Willard Gibbs) by Edwin Bidwell Wilson, published 1902.
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 February 2016 Learn how and when to remove this message Vector calculus or vector analysis is a branch of mathematics concerned with the differentiation and integration of vector fields primarily in three dimensional Euclidean space R3 displaystyle mathbb R 3 The term vector calculus is sometimes used as a synonym for the broader subject of multivariable calculus which spans vector calculus as well as partial differentiation and multiple integration Vector calculus plays an important role in differential geometry and in the study of partial differential equations It is used extensively in physics and engineering especially in the description of electromagnetic fields gravitational fields and fluid flow Vector calculus was developed from the theory of quaternions by J Willard Gibbs and Oliver Heaviside near the end of the 19th century and most of the notation and terminology was established by Gibbs and Edwin Bidwell Wilson in their 1901 book Vector Analysis In its standard form using the cross product vector calculus does not generalize to higher dimensions but the alternative approach of geometric algebra which uses the exterior product does see Generalizations below for more Basic objectsScalar fields A scalar field associates a scalar value to every point in a space The scalar is a mathematical number representing a physical quantity Examples of scalar fields in applications include the temperature distribution throughout space the pressure distribution in a fluid and spin zero quantum fields known as scalar bosons such as the Higgs field These fields are the subject of scalar field theory Vector fields A vector field is an assignment of a vector to each point in a space A vector field in the plane for instance can be visualized as a collection of arrows with a given magnitude and direction each attached to a point in the plane Vector fields are often used to model for example the speed and direction of a moving fluid throughout space or the strength and direction of some force such as the magnetic or gravitational force as it changes from point to point This can be used for example to calculate work done over a line Vectors and pseudovectors In more advanced treatments one further distinguishes pseudovector fields and pseudoscalar fields which are identical to vector fields and scalar fields except that they change sign under an orientation reversing map for example the curl of a vector field is a pseudovector field and if one reflects a vector field the curl points in the opposite direction This distinction is clarified and elaborated in geometric algebra as described below Vector algebraThe algebraic non differential operations in vector calculus are referred to as vector algebra being defined for a vector space and then applied pointwise to a vector field The basic algebraic operations consist of Notations in vector calculus Operation Notation DescriptionVector addition v1 v2 displaystyle mathbf v 1 mathbf v 2 Addition of two vectors yielding a vector Scalar multiplication av displaystyle a mathbf v Multiplication of a scalar and a vector yielding a vector Dot product v1 v2 displaystyle mathbf v 1 cdot mathbf v 2 Multiplication of two vectors yielding a scalar Cross product v1 v2 displaystyle mathbf v 1 times mathbf v 2 Multiplication of two vectors in R3 displaystyle mathbb R 3 yielding a pseudo vector Also commonly used are the two triple products Vector calculus triple products Operation Notation DescriptionScalar triple product v1 v2 v3 displaystyle mathbf v 1 cdot left mathbf v 2 times mathbf v 3 right The dot product of the cross product of two vectors Vector triple product v1 v2 v3 displaystyle mathbf v 1 times left mathbf v 2 times mathbf v 3 right The cross product of the cross product of two vectors Operators and theoremsDifferential operators Vector calculus studies various differential operators defined on scalar or vector fields which are typically expressed in terms of the del operator displaystyle nabla also known as nabla The three basic vector operators are Differential operators in vector calculus Operation Notation Description Notational analogy Domain RangeGradient grad f f displaystyle operatorname grad f nabla f Measures the rate and direction of change in a scalar field Scalar multiplication Maps scalar fields to vector fields Divergence div F F displaystyle operatorname div mathbf F nabla cdot mathbf F Measures the scalar of a source or sink at a given point in a vector field Dot product Maps vector fields to scalar fields Curl curl F F displaystyle operatorname curl mathbf F nabla times mathbf F Measures the tendency to rotate about a point in a vector field in R3 displaystyle mathbb R 3 Cross product Maps vector fields to pseudo vector fields f denotes a scalar field and F denotes a vector field Also commonly used are the two Laplace operators Laplace operators in vector calculus Operation Notation Description Domain RangeLaplacian Df 2f f displaystyle Delta f nabla 2 f nabla cdot nabla f Measures the difference between the value of the scalar field with its average on infinitesimal balls Maps between scalar fields Vector Laplacian 2F F F displaystyle nabla 2 mathbf F nabla nabla cdot mathbf F nabla times nabla times mathbf F Measures the difference between the value of the vector field with its average on infinitesimal balls Maps between vector fields f denotes a scalar field and F denotes a vector field A quantity called the Jacobian matrix is useful for studying functions when both the domain and range of the function are multivariable such as a change of variables during integration Integral theorems The three basic vector operators have corresponding theorems which generalize the fundamental theorem of calculus to higher dimensions Integral theorems of vector calculus Theorem Statement DescriptionGradient theorem L Rn f dr f q f p for L L p q displaystyle int L subset mathbb R n nabla varphi cdot d mathbf r varphi left mathbf q right varphi left mathbf p right text for L L p to q The line integral of the gradient of a scalar field over a curve L is equal to the change in the scalar field between the endpoints p and q of the curve Divergence theorem V Rn n F dV V n 1F dS displaystyle underbrace int cdots int V subset mathbb R n n nabla cdot mathbf F dV underbrace oint cdots oint partial V n 1 mathbf F cdot d mathbf S The integral of the divergence of a vector field over an n dimensional solid V is equal to the flux of the vector field through the n 1 dimensional closed boundary surface of the solid Curl Kelvin Stokes theorem S R3 F dS SF dr displaystyle iint Sigma subset mathbb R 3 nabla times mathbf F cdot d mathbf Sigma oint partial Sigma mathbf F cdot d mathbf r The integral of the curl of a vector field over a surface S in R3 displaystyle mathbb R 3 is equal to the circulation of the vector field around the closed curve bounding the surface f displaystyle varphi denotes a scalar field and F denotes a vector field In two dimensions the divergence and curl theorems reduce to the Green s theorem Green s theorem of vector calculus Theorem Statement DescriptionGreen s theorem A R2 M x L y dA A Ldx Mdy displaystyle iint A subset mathbb R 2 left frac partial M partial x frac partial L partial y right dA oint partial A left L dx M dy right The integral of the divergence or curl of a vector field over some region A in R2 displaystyle mathbb R 2 equals the flux or circulation of the vector field over the closed curve bounding the region For divergence F M L For curl F L M 0 L and M are functions of x y ApplicationsLinear approximations Linear approximations are used to replace complicated functions with linear functions that are almost the same Given a differentiable function f x y with real values one can approximate f x y for x y close to a b by the formula f x y f a b f x a b x a f y a b y b displaystyle f x y approx f a b tfrac partial f partial x a b x a tfrac partial f partial y a b y b The right hand side is the equation of the plane tangent to the graph of z f x y at a b Optimization For a continuously differentiable function of several real variables a point P that is a set of values for the input variables which is viewed as a point in Rn is critical if all of the partial derivatives of the function are zero at P or equivalently if its gradient is zero The critical values are the values of the function at the critical points If the function is smooth or at least twice continuously differentiable a critical point may be either a local maximum a local minimum or a saddle point The different cases may be distinguished by considering the eigenvalues of the Hessian matrix of second derivatives By Fermat s theorem all local maxima and minima of a differentiable function occur at critical points Therefore to find the local maxima and minima it suffices theoretically to compute the zeros of the gradient and the eigenvalues of the Hessian matrix at these zeros GeneralizationsThis section does not cite any sources Please help improve this section by adding citations to reliable sources Unsourced material may be challenged and removed August 2019 Learn how and when to remove this message Vector calculus can also be generalized to other 3 manifolds and higher dimensional spaces Different 3 manifolds Vector calculus is initially defined for Euclidean 3 space R3 displaystyle mathbb R 3 which has additional structure beyond simply being a 3 dimensional real vector space namely a norm giving a notion of length defined via an inner product the dot product which in turn gives a notion of angle and an orientation which gives a notion of left handed and right handed These structures give rise to a volume form and also the cross product which is used pervasively in vector calculus The gradient and divergence require only the inner product while the curl and the cross product also requires the handedness of the coordinate system to be taken into account see Cross product Handedness for more detail Vector calculus can be defined on other 3 dimensional real vector spaces if they have an inner product or more generally a symmetric nondegenerate form and an orientation this is less data than an isomorphism to Euclidean space as it does not require a set of coordinates a frame of reference which reflects the fact that vector calculus is invariant under rotations the special orthogonal group SO 3 More generally vector calculus can be defined on any 3 dimensional oriented Riemannian manifold or more generally pseudo Riemannian manifold This structure simply means that the tangent space at each point has an inner product more generally a symmetric nondegenerate form and an orientation or more globally that there is a symmetric nondegenerate metric tensor and an orientation and works because vector calculus is defined in terms of tangent vectors at each point Other dimensions Most of the analytic results are easily understood in a more general form using the machinery of differential geometry of which vector calculus forms a subset Grad and div generalize immediately to other dimensions as do the gradient theorem divergence theorem and Laplacian yielding harmonic analysis while curl and cross product do not generalize as directly From a general point of view the various fields in 3 dimensional vector calculus are uniformly seen as being k vector fields scalar fields are 0 vector fields vector fields are 1 vector fields pseudovector fields are 2 vector fields and pseudoscalar fields are 3 vector fields In higher dimensions there are additional types of fields scalar vector pseudovector or pseudoscalar corresponding to 0 1 n 1 or n dimensions which is exhaustive in dimension 3 so one cannot only work with pseudo scalars and pseudo vectors In any dimension assuming a nondegenerate form grad of a scalar function is a vector field and div of a vector field is a scalar function but only in dimension 3 or 7 and trivially in dimension 0 or 1 is the curl of a vector field a vector field and only in 3 or 7 dimensions can a cross product be defined generalizations in other dimensionalities either require n 1 displaystyle n 1 vectors to yield 1 vector or are alternative Lie algebras which are more general antisymmetric bilinear products The generalization of grad and div and how curl may be generalized is elaborated at Curl Generalizations in brief the curl of a vector field is a bivector field which may be interpreted as the special orthogonal Lie algebra of infinitesimal rotations however this cannot be identified with a vector field because the dimensions differ there are 3 dimensions of rotations in 3 dimensions but 6 dimensions of rotations in 4 dimensions and more generally n2 12n n 1 displaystyle textstyle binom n 2 frac 1 2 n n 1 dimensions of rotations in n dimensions There are two important alternative generalizations of vector calculus The first geometric algebra uses k vector fields instead of vector fields in 3 or fewer dimensions every k vector field can be identified with a scalar function or vector field but this is not true in higher dimensions This replaces the cross product which is specific to 3 dimensions taking in two vector fields and giving as output a vector field with the exterior product which exists in all dimensions and takes in two vector fields giving as output a bivector 2 vector field This product yields Clifford algebras as the algebraic structure on vector spaces with an orientation and nondegenerate form Geometric algebra is mostly used in generalizations of physics and other applied fields to higher dimensions The second generalization uses differential forms k covector fields instead of vector fields or k vector fields and is widely used in mathematics particularly in differential geometry geometric topology and harmonic analysis in particular yielding Hodge theory on oriented pseudo Riemannian manifolds From this point of view grad curl and div correspond to the exterior derivative of 0 forms 1 forms and 2 forms respectively and the key theorems of vector calculus are all special cases of the general form of Stokes theorem From the point of view of both of these generalizations vector calculus implicitly identifies mathematically distinct objects which makes the presentation simpler but the underlying mathematical structure and generalizations less clear From the point of view of geometric algebra vector calculus implicitly identifies k vector fields with vector fields or scalar functions 0 vectors and 3 vectors with scalars 1 vectors and 2 vectors with vectors From the point of view of differential forms vector calculus implicitly identifies k forms with scalar fields or vector fields 0 forms and 3 forms with scalar fields 1 forms and 2 forms with vector fields Thus for example the curl naturally takes as input a vector field or 1 form but naturally has as output a 2 vector field or 2 form hence pseudovector field which is then interpreted as a vector field rather than directly taking a vector field to a vector field this is reflected in the curl of a vector field in higher dimensions not having as output a vector field See alsoMathematics portalVector calculus identities Vector algebra relations Directional derivative Conservative vector field Solenoidal vector field Laplacian vector field Helmholtz decomposition Tensor Geometric calculusReferencesCitations Kreyszig Erwin Kreyszig Herbert Norminton E J 2011 Advanced engineering mathematics 10th ed Hoboken NJ John Wiley ISBN 978 0 470 45836 5 Galbis Antonio Maestre Manuel 2012 Vector Analysis Versus Vector Calculus Springer p 12 ISBN 978 1 4614 2199 3 Differential Operators Math24 Retrieved 2020 09 17 Lizhong Peng amp Lei Yang 1999 The curl in seven dimensional space and its applications Approximation Theory and Its Applications 15 3 66 to 80 doi 10 1007 BF02837124 Sources Sandro Caparrini 2002 The discovery of the vector representation of moments and angular velocity Archive for History of Exact Sciences 56 151 81 Crowe Michael J 1967 A History of Vector Analysis The Evolution of the Idea of a Vectorial System reprint ed Dover Publications ISBN 978 0 486 67910 5 Marsden J E 1976 Vector Calculus W H Freeman amp Company ISBN 978 0 7167 0462 1 Schey H M 2005 Div Grad Curl and all that An informal text on vector calculus W W Norton amp Company ISBN 978 0 393 92516 6 Barry Spain 1965 Vector Analysis 2nd edition link from Internet Archive Chen To Tai 1995 A historical study of vector analysis Technical Report RL 915 Radiation Laboratory University of Michigan External linksThe Feynman Lectures on Physics Vol II Ch 2 Differential Calculus of Vector Fields Vector analysis Encyclopedia of Mathematics EMS Press 2001 1994 Vector algebra Encyclopedia of Mathematics EMS Press 2001 1994 A survey of the improper use of in vector analysis 1994 Tai Chen To Vector Analysis A Text book for the Use of Students of Mathematics and Physics based upon the lectures of Willard Gibbs by Edwin Bidwell Wilson published 1902