![Three dimensional space](https://www.english.nina.az/wikipedia/image/aHR0cHM6Ly91cGxvYWQud2lraW1lZGlhLm9yZy93aWtpcGVkaWEvY29tbW9ucy90aHVtYi84LzgzL0Nvb3JkX3BsYW5lc19jb2xvci5zdmcvMTYwMHB4LUNvb3JkX3BsYW5lc19jb2xvci5zdmcucG5n.png )
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In geometry, a three-dimensional space (3D space, 3-space or, rarely, tri-dimensional space) is a mathematical space in which three values (coordinates) are required to determine the position of a point. Most commonly, it is the three-dimensional Euclidean space, that is, the Euclidean space of dimension three, which models physical space. More general three-dimensional spaces are called 3-manifolds. The term may also refer colloquially to a subset of space, a three-dimensional region (or 3D domain), a solid figure.
![image](https://www.english.nina.az/wikipedia/image/aHR0cHM6Ly93d3cuZW5nbGlzaC5uaW5hLmF6L3dpa2lwZWRpYS9pbWFnZS9hSFIwY0hNNkx5OTFjR3h2WVdRdWQybHJhVzFsWkdsaExtOXlaeTkzYVd0cGNHVmthV0V2WTI5dGJXOXVjeTkwYUhWdFlpODRMemd6TDBOdmIzSmtYM0JzWVc1bGMxOWpiMnh2Y2k1emRtY3ZNakl3Y0hndFEyOXZjbVJmY0d4aGJtVnpYMk52Ykc5eUxuTjJaeTV3Ym1jPS5wbmc=.png)
Technically, a tuple of n numbers can be understood as the Cartesian coordinates of a location in a n-dimensional Euclidean space. The set of these n-tuples is commonly denoted and can be identified to the pair formed by a n-dimensional Euclidean space and a Cartesian coordinate system. When n = 3, this space is called the three-dimensional Euclidean space (or simply "Euclidean space" when the context is clear). In classical physics, it serves as a model of the physical universe, in which all known matter exists. When relativity theory is considered, it can be considered a local subspace of space-time. While this space remains the most compelling and useful way to model the world as it is experienced, it is only one example of a 3-manifold. In this classical example, when the three values refer to measurements in different directions (coordinates), any three directions can be chosen, provided that these directions do not lie in the same plane. Furthermore, if these directions are pairwise perpendicular, the three values are often labeled by the terms width/breadth, height/depth, and length.
History
Books XI to XIII of Euclid's Elements dealt with three-dimensional geometry. Book XI develops notions of orthogonality and parallelism of lines and planes, and defines solids including parallelpipeds, pyramids, prisms, spheres, octahedra, icosahedra and dodecahedra. Book XII develops notions of similarity of solids. Book XIII describes the construction of the five regular Platonic solids in a sphere.
In the 17th century, three-dimensional space was described with Cartesian coordinates, with the advent of analytic geometry developed by René Descartes in his work La Géométrie and Pierre de Fermat in the manuscript Ad locos planos et solidos isagoge (Introduction to Plane and Solid Loci), which was unpublished during Fermat's lifetime. However, only Fermat's work dealt with three-dimensional space.
In the 19th century, developments of the geometry of three-dimensional space came with William Rowan Hamilton's development of the quaternions. In fact, it was Hamilton who coined the terms scalar and vector, and they were first defined within his geometric framework for quaternions. Three dimensional space could then be described by quaternions which had vanishing scalar component, that is,
. While not explicitly studied by Hamilton, this indirectly introduced notions of basis, here given by the quaternion elements
, as well as the dot product and cross product, which correspond to (the negative of) the scalar part and the vector part of the product of two vector quaternions.
It was not until Josiah Willard Gibbs that these two products were identified in their own right, and the modern notation for the dot and cross product were introduced in his classroom teaching notes, found also in the 1901 textbook Vector Analysis written by Edwin Bidwell Wilson based on Gibbs' lectures.
Also during the 19th century came developments in the abstract formalism of vector spaces, with the work of Hermann Grassmann and Giuseppe Peano, the latter of whom first gave the modern definition of vector spaces as an algebraic structure.
In Euclidean geometry
Coordinate systems
In mathematics, analytic geometry (also called Cartesian geometry) describes every point in three-dimensional space by means of three coordinates. Three coordinate axes are given, each perpendicular to the other two at the origin, the point at which they cross. They are usually labeled x, y, and z. Relative to these axes, the position of any point in three-dimensional space is given by an ordered triple of real numbers, each number giving the distance of that point from the origin measured along the given axis, which is equal to the distance of that point from the plane determined by the other two axes.
Other popular methods of describing the location of a point in three-dimensional space include cylindrical coordinates and spherical coordinates, though there are an infinite number of possible methods. For more, see Euclidean space.
Below are images of the above-mentioned systems.
-
- Cylindrical coordinate system
- Spherical coordinate system
Lines and planes
Two distinct points always determine a (straight) line. Three distinct points are either collinear or determine a unique plane. On the other hand, four distinct points can either be collinear, coplanar, or determine the entire space.
Two distinct lines can either intersect, be parallel or be skew. Two parallel lines, or two intersecting lines, lie in a unique plane, so skew lines are lines that do not meet and do not lie in a common plane.
Two distinct planes can either meet in a common line or are parallel (i.e., do not meet). Three distinct planes, no pair of which are parallel, can either meet in a common line, meet in a unique common point, or have no point in common. In the last case, the three lines of intersection of each pair of planes are mutually parallel.
A line can lie in a given plane, intersect that plane in a unique point, or be parallel to the plane. In the last case, there will be lines in the plane that are parallel to the given line.
A hyperplane is a subspace of one dimension less than the dimension of the full space. The hyperplanes of a three-dimensional space are the two-dimensional subspaces, that is, the planes. In terms of Cartesian coordinates, the points of a hyperplane satisfy a single linear equation, so planes in this 3-space are described by linear equations. A line can be described by a pair of independent linear equations—each representing a plane having this line as a common intersection.
Varignon's theorem states that the midpoints of any quadrilateral in form a parallelogram, and hence are coplanar.
Spheres and balls
![image](https://www.english.nina.az/wikipedia/image/aHR0cHM6Ly93d3cuZW5nbGlzaC5uaW5hLmF6L3dpa2lwZWRpYS9pbWFnZS9hSFIwY0hNNkx5OTFjR3h2WVdRdWQybHJhVzFsWkdsaExtOXlaeTkzYVd0cGNHVmthV0V2WTI5dGJXOXVjeTkwYUhWdFlpODNMemRsTDFOd2FHVnlaVjkzYVhKbFpuSmhiV1ZmTVRCa1pXZGZObkl1YzNabkx6SXlNSEI0TFZOd2FHVnlaVjkzYVhKbFpuSmhiV1ZmTVRCa1pXZGZObkl1YzNabkxuQnVadz09LnBuZw==.png)
A sphere in 3-space (also called a 2-sphere because it is a 2-dimensional object) consists of the set of all points in 3-space at a fixed distance r from a central point P. The solid enclosed by the sphere is called a ball (or, more precisely a 3-ball).
The volume of the ball is given by
and the surface area of the sphere is
Another type of sphere arises from a 4-ball, whose three-dimensional surface is the 3-sphere: points equidistant to the origin of the euclidean space R4. If a point has coordinates, P(x, y, z, w), then x2 + y2 + z2 + w2 = 1 characterizes those points on the unit 3-sphere centered at the origin.
This 3-sphere is an example of a 3-manifold: a space which is 'looks locally' like 3-D space. In precise topological terms, each point of the 3-sphere has a neighborhood which is homeomorphic to an open subset of 3-D space.
Polytopes
In three dimensions, there are nine regular polytopes: the five convex Platonic solids and the four nonconvex Kepler-Poinsot polyhedra.
Class | Platonic solids | Kepler-Poinsot polyhedra | |||||||
---|---|---|---|---|---|---|---|---|---|
Symmetry | Td | Oh | Ih | ||||||
Coxeter group | A3, [3,3] | B3, [4,3] | H3, [5,3] | ||||||
Order | 24 | 48 | 120 | ||||||
Regular polyhedron | ![]() {3,3} | ![]() {4,3} | ![]() {3,4} | ![]() {5,3} | ![]() {3,5} | ![]() {5/2,5} | ![]() {5,5/2} | ![]() {5/2,3} | ![]() {3,5/2} |
Surfaces of revolution
A surface generated by revolving a plane curve about a fixed line in its plane as an axis is called a surface of revolution. The plane curve is called the generatrix of the surface. A section of the surface, made by intersecting the surface with a plane that is perpendicular (orthogonal) to the axis, is a circle.
Simple examples occur when the generatrix is a line. If the generatrix line intersects the axis line, the surface of revolution is a right circular cone with vertex (apex) the point of intersection. However, if the generatrix and axis are parallel, then the surface of revolution is a circular cylinder.
Quadric surfaces
In analogy with the conic sections, the set of points whose Cartesian coordinates satisfy the general equation of the second degree, namely, where A, B, C, F, G, H, J, K, L and M are real numbers and not all of A, B, C, F, G and H are zero, is called a quadric surface.
There are six types of non-degenerate quadric surfaces:
- Ellipsoid
- Hyperboloid of one sheet
- Hyperboloid of two sheets
- Elliptic cone
- Elliptic paraboloid
- Hyperbolic paraboloid
The degenerate quadric surfaces are the empty set, a single point, a single line, a single plane, a pair of planes or a quadratic cylinder (a surface consisting of a non-degenerate conic section in a plane π and all the lines of R3 through that conic that are normal to π). Elliptic cones are sometimes considered to be degenerate quadric surfaces as well.
Both the hyperboloid of one sheet and the hyperbolic paraboloid are ruled surfaces, meaning that they can be made up from a family of straight lines. In fact, each has two families of generating lines, the members of each family are disjoint and each member one family intersects, with just one exception, every member of the other family. Each family is called a regulus.
In linear algebra
Another way of viewing three-dimensional space is found in linear algebra, where the idea of independence is crucial. Space has three dimensions because the length of a box is independent of its width or breadth. In the technical language of linear algebra, space is three-dimensional because every point in space can be described by a linear combination of three independent vectors.
Dot product, angle, and length
A vector can be pictured as an arrow. The vector's magnitude is its length, and its direction is the direction the arrow points. A vector in can be represented by an ordered triple of real numbers. These numbers are called the components of the vector.
The dot product of two vectors A = [A1, A2, A3] and B = [B1, B2, B3] is defined as:
The magnitude of a vector A is denoted by ||A||. The dot product of a vector A = [A1, A2, A3] with itself is
which gives
the formula for the Euclidean length of the vector.
Without reference to the components of the vectors, the dot product of two non-zero Euclidean vectors A and B is given by
where θ is the angle between A and B.
Cross product
The cross product or vector product is a binary operation on two vectors in three-dimensional space and is denoted by the symbol ×. The cross product A × B of the vectors A and B is a vector that is perpendicular to both and therefore normal to the plane containing them. It has many applications in mathematics, physics, and engineering.
In function language, the cross product is a function .
The components of the cross product are , and can also be written in components, using Einstein summation convention as
where
is the Levi-Civita symbol. It has the property that
.
Its magnitude is related to the angle between
and
by the identity
The space and product form an algebra over a field, which is not commutative nor associative, but is a Lie algebra with the cross product being the Lie bracket. Specifically, the space together with the product, is isomorphic to the Lie algebra of three-dimensional rotations, denoted
. In order to satisfy the axioms of a Lie algebra, instead of associativity the cross product satisfies the Jacobi identity. For any three vectors
and
One can in n dimensions take the product of n − 1 vectors to produce a vector perpendicular to all of them. But if the product is limited to non-trivial binary products with vector results, it exists only in three and seven dimensions.
![image](https://www.english.nina.az/wikipedia/image/aHR0cHM6Ly93d3cuZW5nbGlzaC5uaW5hLmF6L3dpa2lwZWRpYS9pbWFnZS9hSFIwY0hNNkx5OTFjR3h2WVdRdWQybHJhVzFsWkdsaExtOXlaeTkzYVd0cGNHVmthV0V2WTI5dGJXOXVjeTkwYUhWdFlpOWlMMkl3TDBOeWIzTnpYM0J5YjJSMVkzUmZkbVZqZEc5eUxuTjJaeTh5TWpCd2VDMURjbTl6YzE5d2NtOWtkV04wWDNabFkzUnZjaTV6ZG1jdWNHNW4ucG5n.png)
Abstract description
It can be useful to describe three-dimensional space as a three-dimensional vector space over the real numbers. This differs from
in a subtle way. By definition, there exists a basis
for
. This corresponds to an isomorphism between
and
: the construction for the isomorphism is found here. However, there is no 'preferred' or 'canonical basis' for
.
On the other hand, there is a preferred basis for , which is due to its description as a Cartesian product of copies of
, that is,
. This allows the definition of canonical projections,
, where
. For example,
. This then allows the definition of the standard basis
defined by
where
is the Kronecker delta. Written out in full, the standard basis is
Therefore can be viewed as the abstract vector space, together with the additional structure of a choice of basis. Conversely,
can be obtained by starting with
and 'forgetting' the Cartesian product structure, or equivalently the standard choice of basis.
As opposed to a general vector space , the space
is sometimes referred to as a coordinate space.
Physically, it is conceptually desirable to use the abstract formalism in order to assume as little structure as possible if it is not given by the parameters of a particular problem. For example, in a problem with rotational symmetry, working with the more concrete description of three-dimensional space assumes a choice of basis, corresponding to a set of axes. But in rotational symmetry, there is no reason why one set of axes is preferred to say, the same set of axes which has been rotated arbitrarily. Stated another way, a preferred choice of axes breaks the rotational symmetry of physical space.
Computationally, it is necessary to work with the more concrete description in order to do concrete computations.
Affine description
A more abstract description still is to model physical space as a three-dimensional affine space over the real numbers. This is unique up to affine isomorphism. It is sometimes referred to as three-dimensional Euclidean space. Just as the vector space description came from 'forgetting the preferred basis' of
, the affine space description comes from 'forgetting the origin' of the vector space. Euclidean spaces are sometimes called Euclidean affine spaces for distinguishing them from Euclidean vector spaces.
This is physically appealing as it makes the translation invariance of physical space manifest. A preferred origin breaks the translational invariance.
Inner product space
The above discussion does not involve the dot product. The dot product is an example of an inner product. Physical space can be modelled as a vector space which additionally has the structure of an inner product. The inner product defines notions of length and angle (and therefore in particular the notion of orthogonality). For any inner product, there exist bases under which the inner product agrees with the dot product, but again, there are many different possible bases, none of which are preferred. They differ from one another by a rotation, an element of the group of rotations SO(3).
In calculus
Gradient, divergence and curl
In a rectangular coordinate system, the gradient of a (differentiable) function is given by
and in index notation is written
The divergence of a (differentiable) vector field F = U i + V j + W k, that is, a function , is equal to the scalar-valued function:
In index notation, with Einstein summation convention this is
Expanded in Cartesian coordinates (see Del in cylindrical and spherical coordinates for spherical and cylindrical coordinate representations), the curl ∇ × F is, for F composed of [Fx, Fy, Fz]:
where i, j, and k are the unit vectors for the x-, y-, and z-axes, respectively. This expands as follows:
In index notation, with Einstein summation convention this is where
is the totally antisymmetric symbol, the Levi-Civita symbol.
Line, surface, and volume integrals
For some scalar field f : U ⊆ Rn → R, the line integral along a piecewise smooth curve C ⊂ U is defined as
where r: [a, b] → C is an arbitrary bijective parametrization of the curve C such that r(a) and r(b) give the endpoints of C and .
For a vector field F : U ⊆ Rn → Rn, the line integral along a piecewise smooth curve C ⊂ U, in the direction of r, is defined as
where · is the dot product and r: [a, b] → C is a bijective parametrization of the curve C such that r(a) and r(b) give the endpoints of C.
A surface integral is a generalization of multiple integrals to integration over surfaces. It can be thought of as the double integral analog of the line integral. To find an explicit formula for the surface integral, we need to parameterize the surface of interest, S, by considering a system of curvilinear coordinates on S, like the latitude and longitude on a sphere. Let such a parameterization be x(s, t), where (s, t) varies in some region T in the plane. Then, the surface integral is given by
where the expression between bars on the right-hand side is the magnitude of the cross product of the partial derivatives of x(s, t), and is known as the surface element. Given a vector field v on S, that is a function that assigns to each x in S a vector v(x), the surface integral can be defined component-wise according to the definition of the surface integral of a scalar field; the result is a vector.
A volume integral is an integral over a three-dimensional domain or region. When the integrand is trivial (unity), the volume integral is simply the region's volume. It can also mean a triple integral within a region D in R3 of a function and is usually written as:
Fundamental theorem of line integrals
The fundamental theorem of line integrals, says that a line integral through a gradient field can be evaluated by evaluating the original scalar field at the endpoints of the curve.
Let . Then
Stokes' theorem
Stokes' theorem relates the surface integral of the curl of a vector field F over a surface Σ in Euclidean three-space to the line integral of the vector field over its boundary ∂Σ:
Divergence theorem
Suppose V is a subset of (in the case of n = 3, V represents a volume in 3D space) which is compact and has a piecewise smooth boundary S (also indicated with ∂V = S). If F is a continuously differentiable vector field defined on a neighborhood of V, then the divergence theorem says:
The left side is a volume integral over the volume V, the right side is the surface integral over the boundary of the volume V. The closed manifold ∂V is quite generally the boundary of V oriented by outward-pointing normals, and n is the outward pointing unit normal field of the boundary ∂V. (dS may be used as a shorthand for ndS.)
In topology
![image](https://www.english.nina.az/wikipedia/image/aHR0cHM6Ly93d3cuZW5nbGlzaC5uaW5hLmF6L3dpa2lwZWRpYS9pbWFnZS9hSFIwY0hNNkx5OTFjR3h2WVdRdWQybHJhVzFsWkdsaExtOXlaeTkzYVd0cGNHVmthV0V2WTI5dGJXOXVjeTkwYUhWdFlpODRMemd6TDFkcGEybHdaV1JwWVVkc2IySmxUMjVsVUdsbFkyVXVjM1JzTHpJMk1IQjRMVmRwYTJsd1pXUnBZVWRzYjJKbFQyNWxVR2xsWTJVdWMzUnNMbkJ1Wnc9PS5wbmc=.png)
Three-dimensional space has a number of topological properties that distinguish it from spaces of other dimension numbers. For example, at least three dimensions are required to tie a knot in a piece of string.
In differential geometry the generic three-dimensional spaces are 3-manifolds, which locally resemble .
In finite geometry
Many ideas of dimension can be tested with finite geometry. The simplest instance is PG(3,2), which has Fano planes as its 2-dimensional subspaces. It is an instance of Galois geometry, a study of projective geometry using finite fields. Thus, for any Galois field GF(q), there is a projective space PG(3,q) of three dimensions. For example, any three skew lines in PG(3,q) are contained in exactly one regulus.
See also
- 3D rotation
- Rotation formalisms in three dimensions
- Dimensional analysis
- Distance from a point to a plane
- Four-dimensional space
- Skew lines § Distance
- Three-dimensional graph
- Solid geometry
- Terms of orientation
Notes
- "IEC 60050 — Details for IEV number 102-04-39: "three-dimensional domain"". International Electrotechnical Vocabulary (in Japanese). Retrieved 2023-09-19.
- "Euclidean space - Encyclopedia of Mathematics". encyclopediaofmath.org. Retrieved 2020-08-12.
- "Details for IEV number 113-01-02: "space"". International Electrotechnical Vocabulary (in Japanese). Retrieved 2023-11-07.
- "Euclidean space | geometry". Encyclopedia Britannica. Retrieved 2020-08-12.
- Hughes-Hallett, Deborah; McCallum, William G.; Gleason, Andrew M. (2013). Calculus : Single and Multivariable (6 ed.). John wiley. ISBN 978-0470-88861-2.
- Brannan, Esplen & Gray 1999, pp. 34–35
- Brannan, Esplen & Gray 1999, pp. 41–42
- Anton 1994, p. 133
- Anton 1994, p. 131
- Massey, WS (1983). "Cross products of vectors in higher dimensional Euclidean spaces". The American Mathematical Monthly. 90 (10): 697–701. doi:10.2307/2323537. JSTOR 2323537.
If one requires only three basic properties of the cross product ... it turns out that a cross product of vectors exists only in 3-dimensional and 7-dimensional Euclidean space.
- Lang 1987, ch. I.1
- Berger 1987, Chapter 9.
- Arfken, p. 43.
- "IEC 60050 — Details for IEV number 102-04-40: "volume"". International Electrotechnical Vocabulary (in Japanese). Retrieved 2023-09-19.
- M. R. Spiegel; S. Lipschutz; D. Spellman (2009). Vector Analysis. Schaum's Outlines (2nd ed.). US: McGraw Hill. ISBN 978-0-07-161545-7.
- Rolfsen, Dale (1976). Knots and Links. Berkeley, California: Publish or Perish. ISBN 0-914098-16-0.
- Albrecht Beutelspacher & Ute Rosenbaum (1998) Projective Geometry, page 72, Cambridge University Press ISBN 0-521-48277-1
References
- Anton, Howard (1994), Elementary Linear Algebra (7th ed.), John Wiley & Sons, ISBN 978-0-471-58742-2
- Arfken, George B. and Hans J. Weber. Mathematical Methods For Physicists, Academic Press; 6 edition (June 21, 2005). ISBN 978-0-12-059876-2.
- Berger, Marcel (1987), Geometry I, Berlin: Springer, ISBN 3-540-11658-3
- Brannan, David A.; Esplen, Matthew F.; Gray, Jeremy J. (1999), Geometry, Cambridge University Press, ISBN 978-0-521-59787-6
- Lang, Serge (1987), Linear algebra, Undergraduate Texts in Mathematics (3rd ed.), Springer, doi:10.1007/978-1-4757-1949-9, ISBN 978-1-4757-1949-9
External links
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The dictionary definition of three-dimensional at Wiktionary
- Weisstein, Eric W. "Four-Dimensional Geometry". MathWorld.
- Elementary Linear Algebra - Chapter 8: Three-dimensional Geometry Keith Matthews from University of Queensland, 1991
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 April 2016 Learn how and when to remove this message In geometry a three dimensional space 3D space 3 space or rarely tri dimensional space is a mathematical space in which three values coordinates are required to determine the position of a point Most commonly it is the three dimensional Euclidean space that is the Euclidean space of dimension three which models physical space More general three dimensional spaces are called 3 manifolds The term may also refer colloquially to a subset of space a three dimensional region or 3D domain a solid figure A representation of a three dimensional Cartesian coordinate system Technically a tuple of n numbers can be understood as the Cartesian coordinates of a location in a n dimensional Euclidean space The set of these n tuples is commonly denoted Rn displaystyle mathbb R n and can be identified to the pair formed by a n dimensional Euclidean space and a Cartesian coordinate system When n 3 this space is called the three dimensional Euclidean space or simply Euclidean space when the context is clear In classical physics it serves as a model of the physical universe in which all known matter exists When relativity theory is considered it can be considered a local subspace of space time While this space remains the most compelling and useful way to model the world as it is experienced it is only one example of a 3 manifold In this classical example when the three values refer to measurements in different directions coordinates any three directions can be chosen provided that these directions do not lie in the same plane Furthermore if these directions are pairwise perpendicular the three values are often labeled by the terms width breadth height depth and length HistoryBooks XI to XIII of Euclid s Elements dealt with three dimensional geometry Book XI develops notions of orthogonality and parallelism of lines and planes and defines solids including parallelpipeds pyramids prisms spheres octahedra icosahedra and dodecahedra Book XII develops notions of similarity of solids Book XIII describes the construction of the five regular Platonic solids in a sphere In the 17th century three dimensional space was described with Cartesian coordinates with the advent of analytic geometry developed by Rene Descartes in his work La Geometrie and Pierre de Fermat in the manuscript Ad locos planos et solidos isagoge Introduction to Plane and Solid Loci which was unpublished during Fermat s lifetime However only Fermat s work dealt with three dimensional space In the 19th century developments of the geometry of three dimensional space came with William Rowan Hamilton s development of the quaternions In fact it was Hamilton who coined the terms scalar and vector and they were first defined within his geometric framework for quaternions Three dimensional space could then be described by quaternions q a ui vj wk displaystyle q a ui vj wk which had vanishing scalar component that is a 0 displaystyle a 0 While not explicitly studied by Hamilton this indirectly introduced notions of basis here given by the quaternion elements i j k displaystyle i j k as well as the dot product and cross product which correspond to the negative of the scalar part and the vector part of the product of two vector quaternions It was not until Josiah Willard Gibbs that these two products were identified in their own right and the modern notation for the dot and cross product were introduced in his classroom teaching notes found also in the 1901 textbook Vector Analysis written by Edwin Bidwell Wilson based on Gibbs lectures Also during the 19th century came developments in the abstract formalism of vector spaces with the work of Hermann Grassmann and Giuseppe Peano the latter of whom first gave the modern definition of vector spaces as an algebraic structure In Euclidean geometryCoordinate systems In mathematics analytic geometry also called Cartesian geometry describes every point in three dimensional space by means of three coordinates Three coordinate axes are given each perpendicular to the other two at the origin the point at which they cross They are usually labeled x y and z Relative to these axes the position of any point in three dimensional space is given by an ordered triple of real numbers each number giving the distance of that point from the origin measured along the given axis which is equal to the distance of that point from the plane determined by the other two axes Other popular methods of describing the location of a point in three dimensional space include cylindrical coordinates and spherical coordinates though there are an infinite number of possible methods For more see Euclidean space Below are images of the above mentioned systems Cartesian coordinate system Cylindrical coordinate system Spherical coordinate systemLines and planes Two distinct points always determine a straight line Three distinct points are either collinear or determine a unique plane On the other hand four distinct points can either be collinear coplanar or determine the entire space Two distinct lines can either intersect be parallel or be skew Two parallel lines or two intersecting lines lie in a unique plane so skew lines are lines that do not meet and do not lie in a common plane Two distinct planes can either meet in a common line or are parallel i e do not meet Three distinct planes no pair of which are parallel can either meet in a common line meet in a unique common point or have no point in common In the last case the three lines of intersection of each pair of planes are mutually parallel A line can lie in a given plane intersect that plane in a unique point or be parallel to the plane In the last case there will be lines in the plane that are parallel to the given line A hyperplane is a subspace of one dimension less than the dimension of the full space The hyperplanes of a three dimensional space are the two dimensional subspaces that is the planes In terms of Cartesian coordinates the points of a hyperplane satisfy a single linear equation so planes in this 3 space are described by linear equations A line can be described by a pair of independent linear equations each representing a plane having this line as a common intersection Varignon s theorem states that the midpoints of any quadrilateral in R3 displaystyle mathbb R 3 form a parallelogram and hence are coplanar Spheres and balls A perspective projection of a sphere onto two dimensions A sphere in 3 space also called a 2 sphere because it is a 2 dimensional object consists of the set of all points in 3 space at a fixed distance r from a central point P The solid enclosed by the sphere is called a ball or more precisely a 3 ball The volume of the ball is given by V 43pr3 displaystyle V frac 4 3 pi r 3 and the surface area of the sphere is A 4pr2 displaystyle A 4 pi r 2 Another type of sphere arises from a 4 ball whose three dimensional surface is the 3 sphere points equidistant to the origin of the euclidean space R4 If a point has coordinates P x y z w then x2 y2 z2 w2 1 characterizes those points on the unit 3 sphere centered at the origin This 3 sphere is an example of a 3 manifold a space which is looks locally like 3 D space In precise topological terms each point of the 3 sphere has a neighborhood which is homeomorphic to an open subset of 3 D space Polytopes In three dimensions there are nine regular polytopes the five convex Platonic solids and the four nonconvex Kepler Poinsot polyhedra Regular polytopes in three dimensions Class Platonic solids Kepler Poinsot polyhedraSymmetry Td Oh IhCoxeter group A3 3 3 B3 4 3 H3 5 3 Order 24 48 120Regular polyhedron 3 3 4 3 3 4 5 3 3 5 5 2 5 5 5 2 5 2 3 3 5 2 Surfaces of revolution A surface generated by revolving a plane curve about a fixed line in its plane as an axis is called a surface of revolution The plane curve is called the generatrix of the surface A section of the surface made by intersecting the surface with a plane that is perpendicular orthogonal to the axis is a circle Simple examples occur when the generatrix is a line If the generatrix line intersects the axis line the surface of revolution is a right circular cone with vertex apex the point of intersection However if the generatrix and axis are parallel then the surface of revolution is a circular cylinder Quadric surfaces In analogy with the conic sections the set of points whose Cartesian coordinates satisfy the general equation of the second degree namely Ax2 By2 Cz2 Fxy Gyz Hxz Jx Ky Lz M 0 displaystyle Ax 2 By 2 Cz 2 Fxy Gyz Hxz Jx Ky Lz M 0 where A B C F G H J K L and M are real numbers and not all of A B C F G and H are zero is called a quadric surface There are six types of non degenerate quadric surfaces Ellipsoid Hyperboloid of one sheet Hyperboloid of two sheets Elliptic cone Elliptic paraboloid Hyperbolic paraboloid The degenerate quadric surfaces are the empty set a single point a single line a single plane a pair of planes or a quadratic cylinder a surface consisting of a non degenerate conic section in a plane p and all the lines of R3 through that conic that are normal to p Elliptic cones are sometimes considered to be degenerate quadric surfaces as well Both the hyperboloid of one sheet and the hyperbolic paraboloid are ruled surfaces meaning that they can be made up from a family of straight lines In fact each has two families of generating lines the members of each family are disjoint and each member one family intersects with just one exception every member of the other family Each family is called a regulus In linear algebraAnother way of viewing three dimensional space is found in linear algebra where the idea of independence is crucial Space has three dimensions because the length of a box is independent of its width or breadth In the technical language of linear algebra space is three dimensional because every point in space can be described by a linear combination of three independent vectors Dot product angle and length A vector can be pictured as an arrow The vector s magnitude is its length and its direction is the direction the arrow points A vector in R3 displaystyle mathbb R 3 can be represented by an ordered triple of real numbers These numbers are called the components of the vector The dot product of two vectors A A1 A2 A3 and B B1 B2 B3 is defined as A B A1B1 A2B2 A3B3 i 13AiBi displaystyle mathbf A cdot mathbf B A 1 B 1 A 2 B 2 A 3 B 3 sum i 1 3 A i B i The magnitude of a vector A is denoted by A The dot product of a vector A A1 A2 A3 with itself is A A A 2 A12 A22 A32 displaystyle mathbf A cdot mathbf A mathbf A 2 A 1 2 A 2 2 A 3 2 which gives A A A A12 A22 A32 displaystyle mathbf A sqrt mathbf A cdot mathbf A sqrt A 1 2 A 2 2 A 3 2 the formula for the Euclidean length of the vector Without reference to the components of the vectors the dot product of two non zero Euclidean vectors A and B is given by A B A B cos 8 displaystyle mathbf A cdot mathbf B mathbf A mathbf B cos theta where 8 is the angle between A and B Cross product The cross product or vector product is a binary operation on two vectors in three dimensional space and is denoted by the symbol The cross product A B of the vectors A and B is a vector that is perpendicular to both and therefore normal to the plane containing them It has many applications in mathematics physics and engineering In function language the cross product is a function R3 R3 R3 displaystyle times mathbb R 3 times mathbb R 3 rightarrow mathbb R 3 The components of the cross product are A B A2B3 B2A3 A3B1 B3A1 A1B2 B1A2 displaystyle mathbf A times mathbf B A 2 B 3 B 2 A 3 A 3 B 1 B 3 A 1 A 1 B 2 B 1 A 2 and can also be written in components using Einstein summation convention as A B i eijkAjBk displaystyle mathbf A times mathbf B i varepsilon ijk A j B k where eijk displaystyle varepsilon ijk is the Levi Civita symbol It has the property that A B B A displaystyle mathbf A times mathbf B mathbf B times mathbf A Its magnitude is related to the angle 8 displaystyle theta between A displaystyle mathbf A and B displaystyle mathbf B by the identity A B A B sin 8 displaystyle left mathbf A times mathbf B right left mathbf A right cdot left mathbf B right cdot left sin theta right The space and product form an algebra over a field which is not commutative nor associative but is a Lie algebra with the cross product being the Lie bracket Specifically the space together with the product R3 displaystyle mathbb R 3 times is isomorphic to the Lie algebra of three dimensional rotations denoted so 3 displaystyle mathfrak so 3 In order to satisfy the axioms of a Lie algebra instead of associativity the cross product satisfies the Jacobi identity For any three vectors A B displaystyle mathbf A mathbf B and C displaystyle mathbf C A B C B C A C A B 0 displaystyle mathbf A times mathbf B times mathbf C mathbf B times mathbf C times mathbf A mathbf C times mathbf A times mathbf B 0 One can in n dimensions take the product of n 1 vectors to produce a vector perpendicular to all of them But if the product is limited to non trivial binary products with vector results it exists only in three and seven dimensions The cross product in respect to a right handed coordinate systemAbstract description It can be useful to describe three dimensional space as a three dimensional vector space V displaystyle V over the real numbers This differs from R3 displaystyle mathbb R 3 in a subtle way By definition there exists a basis B e1 e2 e3 displaystyle mathcal B e 1 e 2 e 3 for V displaystyle V This corresponds to an isomorphism between V displaystyle V and R3 displaystyle mathbb R 3 the construction for the isomorphism is found here However there is no preferred or canonical basis for V displaystyle V On the other hand there is a preferred basis for R3 displaystyle mathbb R 3 which is due to its description as a Cartesian product of copies of R displaystyle mathbb R that is R3 R R R displaystyle mathbb R 3 mathbb R times mathbb R times mathbb R This allows the definition of canonical projections pi R3 R displaystyle pi i mathbb R 3 rightarrow mathbb R where 1 i 3 displaystyle 1 leq i leq 3 For example p1 x1 x2 x3 x displaystyle pi 1 x 1 x 2 x 3 x This then allows the definition of the standard basis BStandard E1 E2 E3 displaystyle mathcal B text Standard E 1 E 2 E 3 defined by pi Ej dij displaystyle pi i E j delta ij where dij displaystyle delta ij is the Kronecker delta Written out in full the standard basis is E1 100 E2 010 E3 001 displaystyle E 1 begin pmatrix 1 0 0 end pmatrix E 2 begin pmatrix 0 1 0 end pmatrix E 3 begin pmatrix 0 0 1 end pmatrix Therefore R3 displaystyle mathbb R 3 can be viewed as the abstract vector space together with the additional structure of a choice of basis Conversely V displaystyle V can be obtained by starting with R3 displaystyle mathbb R 3 and forgetting the Cartesian product structure or equivalently the standard choice of basis As opposed to a general vector space V displaystyle V the space R3 displaystyle mathbb R 3 is sometimes referred to as a coordinate space Physically it is conceptually desirable to use the abstract formalism in order to assume as little structure as possible if it is not given by the parameters of a particular problem For example in a problem with rotational symmetry working with the more concrete description of three dimensional space R3 displaystyle mathbb R 3 assumes a choice of basis corresponding to a set of axes But in rotational symmetry there is no reason why one set of axes is preferred to say the same set of axes which has been rotated arbitrarily Stated another way a preferred choice of axes breaks the rotational symmetry of physical space Computationally it is necessary to work with the more concrete description R3 displaystyle mathbb R 3 in order to do concrete computations Affine description A more abstract description still is to model physical space as a three dimensional affine space E 3 displaystyle E 3 over the real numbers This is unique up to affine isomorphism It is sometimes referred to as three dimensional Euclidean space Just as the vector space description came from forgetting the preferred basis of R3 displaystyle mathbb R 3 the affine space description comes from forgetting the origin of the vector space Euclidean spaces are sometimes called Euclidean affine spaces for distinguishing them from Euclidean vector spaces This is physically appealing as it makes the translation invariance of physical space manifest A preferred origin breaks the translational invariance Inner product space The above discussion does not involve the dot product The dot product is an example of an inner product Physical space can be modelled as a vector space which additionally has the structure of an inner product The inner product defines notions of length and angle and therefore in particular the notion of orthogonality For any inner product there exist bases under which the inner product agrees with the dot product but again there are many different possible bases none of which are preferred They differ from one another by a rotation an element of the group of rotations SO 3 In calculusGradient divergence and curl In a rectangular coordinate system the gradient of a differentiable function f R3 R displaystyle f mathbb R 3 rightarrow mathbb R is given by f f xi f yj f zk displaystyle nabla f frac partial f partial x mathbf i frac partial f partial y mathbf j frac partial f partial z mathbf k and in index notation is written f i if displaystyle nabla f i partial i f The divergence of a differentiable vector field F U i V j W k that is a function F R3 R3 displaystyle mathbf F mathbb R 3 rightarrow mathbb R 3 is equal to the scalar valued function divF F U x V y W z displaystyle operatorname div mathbf F nabla cdot mathbf F frac partial U partial x frac partial V partial y frac partial W partial z In index notation with Einstein summation convention this is F iFi displaystyle nabla cdot mathbf F partial i F i Expanded in Cartesian coordinates see Del in cylindrical and spherical coordinates for spherical and cylindrical coordinate representations the curl F is for F composed of Fx Fy Fz ijk x y zFxFyFz displaystyle begin vmatrix mathbf i amp mathbf j amp mathbf k frac partial partial x amp frac partial partial y amp frac partial partial z F x amp F y amp F z end vmatrix where i j and k are the unit vectors for the x y and z axes respectively This expands as follows Fz y Fy z i Fx z Fz x j Fy x Fx y k displaystyle left frac partial F z partial y frac partial F y partial z right mathbf i left frac partial F x partial z frac partial F z partial x right mathbf j left frac partial F y partial x frac partial F x partial y right mathbf k In index notation with Einstein summation convention this is F i ϵijk jFk displaystyle nabla times mathbf F i epsilon ijk partial j F k where ϵijk displaystyle epsilon ijk is the totally antisymmetric symbol the Levi Civita symbol Line surface and volume integrals For some scalar field f U Rn R the line integral along a piecewise smooth curve C U is defined as Cfds abf r t r t dt displaystyle int limits C f ds int a b f mathbf r t mathbf r t dt where r a b C is an arbitrary bijective parametrization of the curve C such that r a and r b give the endpoints of C and a lt b displaystyle a lt b For a vector field F U Rn Rn the line integral along a piecewise smooth curve C U in the direction of r is defined as CF r dr abF r t r t dt displaystyle int limits C mathbf F mathbf r cdot d mathbf r int a b mathbf F mathbf r t cdot mathbf r t dt where is the dot product and r a b C is a bijective parametrization of the curve C such that r a and r b give the endpoints of C A surface integral is a generalization of multiple integrals to integration over surfaces It can be thought of as the double integral analog of the line integral To find an explicit formula for the surface integral we need to parameterize the surface of interest S by considering a system of curvilinear coordinates on S like the latitude and longitude on a sphere Let such a parameterization be x s t where s t varies in some region T in the plane Then the surface integral is given by SfdS Tf x s t x s x t dsdt displaystyle iint S f mathrm d S iint T f mathbf x s t left partial mathbf x over partial s times partial mathbf x over partial t right mathrm d s mathrm d t where the expression between bars on the right hand side is the magnitude of the cross product of the partial derivatives of x s t and is known as the surface element Given a vector field v on S that is a function that assigns to each x in S a vector v x the surface integral can be defined component wise according to the definition of the surface integral of a scalar field the result is a vector A volume integral is an integral over a three dimensional domain or region When the integrand is trivial unity the volume integral is simply the region s volume It can also mean a triple integral within a region D in R3 of a function f x y z displaystyle f x y z and is usually written as Df x y z dxdydz displaystyle iiint limits D f x y z dx dy dz Fundamental theorem of line integrals The fundamental theorem of line integrals says that a line integral through a gradient field can be evaluated by evaluating the original scalar field at the endpoints of the curve Let f U Rn R displaystyle varphi U subseteq mathbb R n to mathbb R Then f q f p g p q f r dr displaystyle varphi left mathbf q right varphi left mathbf p right int gamma mathbf p mathbf q nabla varphi mathbf r cdot d mathbf r Stokes theorem Stokes theorem relates the surface integral of the curl of a vector field F over a surface S in Euclidean three space to the line integral of the vector field over its boundary S S F dS SF dr displaystyle iint Sigma nabla times mathbf F cdot mathrm d mathbf Sigma oint partial Sigma mathbf F cdot mathrm d mathbf r Divergence theorem Suppose V is a subset of Rn displaystyle mathbb R n in the case of n 3 V represents a volume in 3D space which is compact and has a piecewise smooth boundary S also indicated with V S If F is a continuously differentiable vector field defined on a neighborhood of V then the divergence theorem says V F dV displaystyle iiint V left mathbf nabla cdot mathbf F right dV S displaystyle scriptstyle S F n dS displaystyle mathbf F cdot mathbf n dS The left side is a volume integral over the volume V the right side is the surface integral over the boundary of the volume V The closed manifold V is quite generally the boundary of V oriented by outward pointing normals and n is the outward pointing unit normal field of the boundary V dS may be used as a shorthand for ndS In topologyWikipedia s globe logo in 3 D Three dimensional space has a number of topological properties that distinguish it from spaces of other dimension numbers For example at least three dimensions are required to tie a knot in a piece of string In differential geometry the generic three dimensional spaces are 3 manifolds which locally resemble R3 displaystyle mathbb R 3 In finite geometryMany ideas of dimension can be tested with finite geometry The simplest instance is PG 3 2 which has Fano planes as its 2 dimensional subspaces It is an instance of Galois geometry a study of projective geometry using finite fields Thus for any Galois field GF q there is a projective space PG 3 q of three dimensions For example any three skew lines in PG 3 q are contained in exactly one regulus See also3D rotation Rotation formalisms in three dimensions Dimensional analysis Distance from a point to a plane Four dimensional space Skew lines Distance Three dimensional graph Solid geometry Terms of orientationNotes IEC 60050 Details for IEV number 102 04 39 three dimensional domain International Electrotechnical Vocabulary in Japanese Retrieved 2023 09 19 Euclidean space Encyclopedia of Mathematics encyclopediaofmath org Retrieved 2020 08 12 Details for IEV number 113 01 02 space International Electrotechnical Vocabulary in Japanese Retrieved 2023 11 07 Euclidean space geometry Encyclopedia Britannica Retrieved 2020 08 12 Hughes Hallett Deborah McCallum William G Gleason Andrew M 2013 Calculus Single and Multivariable 6 ed John wiley ISBN 978 0470 88861 2 Brannan Esplen amp Gray 1999 pp 34 35 Brannan Esplen amp Gray 1999 pp 41 42 Anton 1994 p 133 Anton 1994 p 131 Massey WS 1983 Cross products of vectors in higher dimensional Euclidean spaces The American Mathematical Monthly 90 10 697 701 doi 10 2307 2323537 JSTOR 2323537 If one requires only three basic properties of the cross product it turns out that a cross product of vectors exists only in 3 dimensional and 7 dimensional Euclidean space Lang 1987 ch I 1 Berger 1987 Chapter 9 Arfken p 43 IEC 60050 Details for IEV number 102 04 40 volume International Electrotechnical Vocabulary in Japanese Retrieved 2023 09 19 M R Spiegel S Lipschutz D Spellman 2009 Vector Analysis Schaum s Outlines 2nd ed US McGraw Hill ISBN 978 0 07 161545 7 Rolfsen Dale 1976 Knots and Links Berkeley California Publish or Perish ISBN 0 914098 16 0 Albrecht Beutelspacher amp Ute Rosenbaum 1998 Projective Geometry page 72 Cambridge University Press ISBN 0 521 48277 1ReferencesAnton Howard 1994 Elementary Linear Algebra 7th ed John Wiley amp Sons ISBN 978 0 471 58742 2 Arfken George B and Hans J Weber Mathematical Methods For Physicists Academic Press 6 edition June 21 2005 ISBN 978 0 12 059876 2 Berger Marcel 1987 Geometry I Berlin Springer ISBN 3 540 11658 3 Brannan David A Esplen Matthew F Gray Jeremy J 1999 Geometry Cambridge University Press ISBN 978 0 521 59787 6 Lang Serge 1987 Linear algebra Undergraduate Texts in Mathematics 3rd ed Springer doi 10 1007 978 1 4757 1949 9 ISBN 978 1 4757 1949 9External linksWikiquote has quotations related to Three dimensional space Wikimedia Commons has media related to 3D The dictionary definition of three dimensional at Wiktionary Weisstein Eric W Four Dimensional Geometry MathWorld Elementary Linear Algebra Chapter 8 Three dimensional Geometry Keith Matthews from University of Queensland 1991