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Wikipedia

Bivector

In mathematics, a bivector or 2-vector is a quantity in exterior algebra or geometric algebra that extends the idea of scalars and vectors. Considering a scalar as a degree-zero quantity and a vector as a degree-one quantity, a bivector is of degree two. Bivectors have applications in many areas of mathematics and physics. They are related to complex numbers in two dimensions and to both pseudovectors and vector quaternions in three dimensions. They can be used to generate rotations in a space of any number of dimensions, and are a useful tool for classifying such rotations. They are also used in physics.

Parallel plane segments with the same orientation and area corresponding to the same bivector ab.[1]

Geometrically, a simple bivector can be interpreted as characterizing an directed plane segment, much as vectors can be thought of as characterizing directed line segments.[2] The bivector ab has an attitude (direction) of the plane spanned by a and b, has an area that is a scalar multiple of any reference plane segment with the same attitude (and in geometric algebra, it has a magnitude equal to the area of the parallelogram with edges a and b), and has an orientation being the side of a on which b lies within the plane spanned by a and b.[2][3] In layman terms, any surface defines the same bivector if it is parallel to the same plane (same attitude), has the same area, and same orientation (see figure).

Bivectors are generated by the exterior product on vectors: given two vectors a and b, their exterior product ab is a bivector, as is any sum of bivectors. Not all bivectors can be expressed as an exterior product without such summation. More precisely, a bivector that can be expressed as an exterior product is called simple; in up to three dimensions all bivectors are simple, but in higher dimensions this is not the case.[4] The exterior product of two vectors is alternating, so aa is the zero bivector, and ba is the negative of the bivector ab, producing the opposite orientation. Concepts directly related to bivector are rank-2 antisymmetric tensor and skew-symmetric matrix.

History edit

The bivector was first defined in 1844 by German mathematician Hermann Grassmann in exterior algebra as the result of the exterior product of two vectors. Just the previous year, in Ireland, William Rowan Hamilton had discovered quaternions. Hamilton coined both vector and bivector, the latter in his Lectures on Quaternions (1853) as he introduced biquaternions, which have bivectors for their vector parts. It was not until English mathematician William Kingdon Clifford in 1888 added the geometric product to Grassmann's algebra, incorporating the ideas of both Hamilton and Grassmann, and founded Clifford algebra, that the bivector of this article arose. Henry Forder used the term bivector to develop exterior algebra in 1941.[5]

In the 1890s Josiah Willard Gibbs and Oliver Heaviside developed vector calculus, which included separate cross product and dot products that were derived from quaternion multiplication.[6][7][8] The success of vector calculus, and of the book Vector Analysis by Gibbs and Wilson, had the effect that the insights of Hamilton and Clifford were overlooked for a long time, since much of 20th century mathematics and physics was formulated in vector terms. Gibbs used vectors to fill the role of bivectors in three dimensions, and used bivector in Hamilton's sense, a use that has sometimes been copied.[9][10][11] Today the bivector is largely studied as a topic in geometric algebra, a Clifford algebra over real or complex vector spaces with a quadratic form. Its resurgence was led by David Hestenes who, along with others, applied geometric algebra to a range of new applications in physics.[12]

Derivation edit

For this article, the bivector will be considered only in real geometric algebras, which may be applied in most areas of physics. Also unless otherwise stated, all examples have a Euclidean metric and so a positive-definite quadratic form.

Geometric algebra and the geometric product edit

The bivector arises from the definition of the geometric product over a vector space with an associated quadratic form sometimes called the metric. For vectors a, b and c, the geometric product satisfies the following properties:

Associativity
 
Left and right distributivity
 
Scalar square
 , where Q is the quadratic form, which need not be positive-definite.

Scalar product edit

From associativity, a(ab) = a2b, is a scalar times b. When b is not parallel to and hence not a scalar multiple of a, ab cannot be a scalar. But

 

is a sum of scalars and so a scalar. From the law of cosines on the triangle formed by the vectors its value is |a| |b| cos θ, where θ is the angle between the vectors. It is therefore identical to the scalar product between two vectors, and is written the same way,

 

It is symmetric, scalar-valued, and can be used to determine the angle between two vectors: in particular if a and b are orthogonal the product is zero.

Exterior product edit

Just as the scalar product can be formulated as the symmetric part of the geometric product of another quantity, the exterior product (sometimes known as the "wedge" or "progressive" product) can be formulated as its antisymmetric part:

 

It is antisymmetric in a and b

 

and by addition:

 

That is, the geometric product is the sum of the symmetric scalar product and alternating exterior product.

To examine the nature of ab, consider the formula

 

which using the Pythagorean trigonometric identity gives the value of (ab)2

 

With a negative square, it cannot be a scalar or vector quantity, so it is a new sort of object, a bivector. It has magnitude |a| |b| |sin θ|, where θ is the angle between the vectors, and so is zero for parallel vectors.

To distinguish them from vectors, bivectors are written here with bold capitals, for example:

 

although other conventions are used, in particular as vectors and bivectors are both elements of the geometric algebra.

Properties edit

The algebra generated by the geometric product (that is, all objects formed by taking repeated sums and geometric products of scalars and vectors) is the geometric algebra over the vector space. For an Euclidean vector space, this algebra is written   or Cln(R), where n is the dimension of the vector space Rn. Cln(R) is both a vector space and an algebra, generated by all the products between vectors in Rn, so it contains all vectors and bivectors. More precisely, as a vector space it contains the vectors and bivectors as linear subspaces, though not as subalgebras (since the geometric product of two vectors is not generally another vector).

The space ⋀2Rn edit

The space of all bivectors has dimension 1/2n(n − 1) and is written 2Rn,[13] and is the second exterior power of the original vector space.

Even subalgebra edit

The subalgebra generated by the bivectors is the even subalgebra of the geometric algebra, written Cl+
n
(R)
. This algebra results from considering all repeated sums and geometric products of scalars and bivectors. It has dimension 2n−1, and contains 2Rn as a linear subspace. In two and three dimensions the even subalgebra contains only scalars and bivectors, and each is of particular interest. In two dimensions, the even subalgebra is isomorphic to the complex numbers, C, while in three it is isomorphic to the quaternions, H. The even subalgebra contains the rotations in any dimension.

Magnitude edit

As noted in the previous section the magnitude of a simple bivector, that is one that is the exterior product of two vectors a and b, is |a| |b| sin θ, where θ is the angle between the vectors. It is written |B|, where B is the bivector.

For general bivectors, the magnitude can be calculated by taking the norm of the bivector considered as a vector in the space 2Rn. If the magnitude is zero then all the bivector's components are zero, and the bivector is the zero bivector which as an element of the geometric algebra equals the scalar zero.

Unit bivectors edit

A unit bivector is one with unit magnitude. It can be derived from any non-zero bivector by dividing the bivector by its magnitude, that is

 

Of particular interest are the unit bivectors formed from the products of the standard basis. If ei and ej are distinct basis vectors then the product eiej is a bivector. As the vectors are orthogonal this is just eiej, written eij, with unit magnitude as the vectors are unit vectors. The set of all such bivectors form a basis for 2Rn. For instance in four dimensions the basis for 2R4 is (e1e2, e1e3, e1e4, e2e3, e2e4, e3e4) or (e12, e13, e14, e23, e24, e34).[14]

Simple bivectors edit

The exterior product of two vectors is a bivector, but not all bivectors are exterior products of two vectors. For example, in four dimensions the bivector

 

cannot be written as the exterior product of two vectors. A bivector that can be written as the exterior product of two vectors is simple. In two and three dimensions all bivectors are simple, but not in four or more dimensions; in four dimensions every bivector is the sum of at most two exterior products. A bivector has a real square if and only if it is simple, and only simple bivectors can be represented geometrically by a directed plane area.[4]

Product of two bivectors edit

The geometric product of two bivectors, A and B, is

 

The quantity A · B is the scalar-valued scalar product, while AB is the grade 4 exterior product that arises in four or more dimensions. The quantity A × B is the bivector-valued commutator product, given by

 [15]

The space of bivectors 2Rn is a Lie algebra over R, with the commutator product as the Lie bracket. The full geometric product of bivectors generates the even subalgebra.

Of particular interest is the product of a bivector with itself. As the commutator product is antisymmetric the product simplifies to

 

If the bivector is simple the last term is zero and the product is the scalar-valued A · A, which can be used as a check for simplicity. In particular the exterior product of bivectors only exists in four or more dimensions, so all bivectors in two and three dimensions are simple.[4]

General bivectors and matrices edit

Bivectors are isomorphic to skew-symmetric matrices; the general bivector B23e23 + B31e31 + B12e12 maps to the matrix

 

This multiplied by vectors on both sides gives the same vector as the product of a vector and bivector minus the outer product; an example is the angular velocity tensor.

Skew symmetric matrices generate orthogonal matrices with determinant 1 through the exponential map. In particular, the exponent of a bivector associated with a rotation is a rotation matrix, that is the rotation matrix MR given by the above skew-symmetric matrix is

 

The rotation described by MR is the same as that described by the rotor R given by

 

and the matrix MR can be also calculated directly from rotor R:

 

Bivectors are related to the eigenvalues of a rotation matrix. Given a rotation matrix M the eigenvalues can be calculated by solving the characteristic equation for that matrix 0 = det(MλI). By the fundamental theorem of algebra this has three roots (only one of which is real as there is only one eigenvector, i.e., the axis of rotation). The other roots must be a complex conjugate pair. They have unit magnitude so purely imaginary logarithms, equal to the magnitude of the bivector associated with the rotation, which is also the angle of rotation. The eigenvectors associated with the complex eigenvalues are in the plane of the bivector, so the exterior product of two non-parallel eigenvectors results in the bivector (or a multiple thereof).

Two dimensions edit

When working with coordinates in geometric algebra it is usual to write the basis vectors as (e1, e2, ...), a convention that will be used here.

A vector in real two-dimensional space R2 can be written a = a1e1 + a2e2, where a1 and a2 are real numbers, e1 and e2 are orthonormal basis vectors. The geometric product of two such vectors is

 

This can be split into the symmetric, scalar-valued, scalar product and an antisymmetric, bivector-valued exterior product:

 

All bivectors in two dimensions are of this form, that is multiples of the bivector e1e2, written e12 to emphasise it is a bivector rather than a vector. The magnitude of e12 is 1, with

 

so it is called the unit bivector. The term unit bivector can be used in other dimensions but it is only uniquely defined (up to a sign) in two dimensions and all bivectors are multiples of e12. As the highest grade element of the algebra e12 is also the pseudoscalar which is given the symbol i.

Complex numbers edit

With the properties of negative square and unit magnitude, the unit bivector can be identified with the imaginary unit from complex numbers. The bivectors and scalars together form the even subalgebra of the geometric algebra, which is isomorphic to the complex numbers C. The even subalgebra has basis (1, e12), the whole algebra has basis (1, e1, e2, e12).

The complex numbers are usually identified with the coordinate axes and two-dimensional vectors, which would mean associating them with the vector elements of the geometric algebra. There is no contradiction in this, as to get from a general vector to a complex number an axis needs to be identified as the real axis, e1 say. This multiplies by all vectors to generate the elements of even subalgebra.

All the properties of complex numbers can be derived from bivectors, but two are of particular interest. First as with complex numbers products of bivectors and so the even subalgebra are commutative. This is only true in two dimensions, so properties of the bivector in two dimensions that depend on commutativity do not usually generalise to higher dimensions.

Second a general bivector can be written

 

where θ is a real number. Putting this into the Taylor series for the exponential map and using the property e122 = −1 results in a bivector version of Euler's formula,

 

which when multiplied by any vector rotates it through an angle θ about the origin:

 

The product of a vector with a bivector in two dimensions is anticommutative, so the following products all generate the same rotation

 

Of these the last product is the one that generalises into higher dimensions. The quantity needed is called a rotor and is given the symbol R, so in two dimensions a rotor that rotates through angle θ can be written

 

and the rotation it generates is[16]

 

Three dimensions edit

In three dimensions the geometric product of two vectors is

 

This can be split into the symmetric, scalar-valued, scalar product and the antisymmetric, bivector-valued, exterior product:

 

In three dimensions all bivectors are simple and so the result of an exterior product. The unit bivectors e23, e31 and e12 form a basis for the space of bivectors 2R3, which is itself a three-dimensional linear space. So if a general bivector is:

 

they can be added like vectors

 

while when multiplied they produce the following

 

which can be split into symmetric scalar and antisymmetric bivector parts as follows

 

The exterior product of two bivectors in three dimensions is zero.

A bivector B can be written as the product of its magnitude and a unit bivector, so writing β for |B| and using the Taylor series for the exponential map it can be shown that

 

This is another version of Euler's formula, but with a general bivector in three dimensions. Unlike in two dimensions bivectors are not commutative so properties that depend on commutativity do not apply in three dimensions. For example, in general exp(A + B) ≠ exp(A) exp(B) in three (or more) dimensions.

The full geometric algebra in three dimensions, Cl3(R), has basis (1, e1, e2, e3, e23, e31, e12, e123). The element e123 is a trivector and the pseudoscalar for the geometry. Bivectors in three dimensions are sometimes identified with pseudovectors[17] to which they are related, as discussed below.

Quaternions edit

Bivectors are not closed under the geometric product, but the even subalgebra is. In three dimensions it consists of all scalar and bivector elements of the geometric algebra, so a general element can be written for example a + A, where a is the scalar part and A is the bivector part. It is written Cl+
3
and has basis (1, e23, e31, e12). The product of two general elements of the even subalgebra is

 

The even subalgebra, that is the algebra consisting of scalars and bivectors, is isomorphic to the quaternions, H. This can be seen by comparing the basis to the quaternion basis, or from the above product which is identical to the quaternion product, except for a change of sign which relates to the negative products in the bivector scalar product A · B. Other quaternion properties can be similarly related to or derived from geometric algebra.

This suggests that the usual split of a quaternion into scalar and vector parts would be better represented as a split into scalar and bivector parts; if this is done the quaternion product is merely the geometric product. It also relates quaternions in three dimensions to complex numbers in two, as each is isomorphic to the even subalgebra for the dimension, a relationship that generalises to higher dimensions.

Rotation vector edit

The rotation vector, from the axis–angle representation of rotations, is a compact way of representing rotations in three dimensions. In its most compact form, it consists of a vector, the product of a unit vector ω that is the axis of rotation with the (signed) angle of rotation θ, so that the magnitude of the overall rotation vector θω equals the (unsigned) rotation angle.

The quaternion associated with the rotation is

 

In geometric algebra the rotation is represented by a bivector. This can be seen in its relation to quaternions. Let Ω be a unit bivector in the plane of rotation, and let θ be the angle of rotation. Then the rotation bivector is Ωθ. The quaternion closely corresponds to the exponential of half of the bivector Ωθ. That is, the components of the quaternion correspond to the scalar and bivector parts of the following expression:

 

The exponential can be defined in terms of its power series, and easily evaluated using the fact that Ω squared is −1.

So rotations can be represented by bivectors. Just as quaternions are elements of the geometric algebra, they are related by the exponential map in that algebra.

Rotors edit

The bivector Ωθ generates a rotation through the exponential map. The even elements generated rotate a general vector in three dimensions in the same way as quaternions:

 

As in two dimensions, the quantity exp(−1/2Ωθ) is called a rotor and written R. The quantity exp(1/2Ωθ) is then R−1, and they generate rotations as

 

This is identical to two dimensions, except here rotors are four-dimensional objects isomorphic to the quaternions. This can be generalised to all dimensions, with rotors, elements of the even subalgebra with unit magnitude, being generated by the exponential map from bivectors. They form a double cover over the rotation group, so the rotors R and R represent the same rotation.

Matrices edit

Axial vectors edit

 
The 3-angular momentum as a bivector (plane element) and axial vector, of a particle of mass m with instantaneous 3-position x and 3-momentum p.

The rotation vector is an example of an axial vector. Axial vectors, or pseudovectors, are vectors with the special feature that their coordinates undergo a sign change relative to the usual vectors (also called "polar vectors") under inversion through the origin, reflection in a plane, or other orientation-reversing linear transformation.[18] Examples include quantities like torque, angular momentum and vector magnetic fields. Quantities that would use axial vectors in vector algebra are properly represented by bivectors in geometric algebra.[19] More precisely, if an underlying orientation is chosen, the axial vectors are naturally identified with the usual vectors; the Hodge dual then gives the isomorphism between axial vectors and bivectors, so each axial vector is associated with a bivector and vice versa; that is

 

where   is the Hodge star. Note that if the underlying orientation is reversed by inversion through the origin, both the identification of the axial vectors with the usual vectors and the Hodge dual change sign, but the bivectors don't budge. Alternately, using the unit pseudoscalar in Cl3(R), i = e1e2e3 gives

 

This is easier to use as the product is just the geometric product. But it is antisymmetric because (as in two dimensions) the unit pseudoscalar i squares to −1, so a negative is needed in one of the products.

This relationship extends to operations like the vector-valued cross product and bivector-valued exterior product, as when written as determinants they are calculated in the same way:

 

so are related by the Hodge dual:

 

Bivectors have a number of advantages over axial vectors. They better disambiguate axial and polar vectors, that is the quantities represented by them, so it is clearer which operations are allowed and what their results are. For example, the inner product of a polar vector and an axial vector resulting from the cross product in the triple product should result in a pseudoscalar, a result which is more obvious if the calculation is framed as the exterior product of a vector and bivector. They generalise to other dimensions; in particular bivectors can be used to describe quantities like torque and angular momentum in two as well as three dimensions. Also, they closely match geometric intuition in a number of ways, as seen in the next section.[20]

Geometric interpretation edit

 
Parallel plane segments with the same orientation and area corresponding to the same bivector ab.[1]

As suggested by their name and that of the algebra, one of the attractions of bivectors is that they have a natural geometric interpretation. This can be described in any dimension but is best done in three where parallels can be drawn with more familiar objects, before being applied to higher dimensions. In two dimensions the geometric interpretation is trivial, as the space is two-dimensional so has only one plane, and all bivectors are associated with it differing only by a scale factor.

All bivectors can be interpreted as planes, or more precisely as directed plane segments. In three dimensions there are three properties of a bivector that can be interpreted geometrically:

  • The arrangement of the plane in space, precisely the attitude of the plane (or alternately the rotation, geometric orientation or gradient of the plane), is associated with the ratio of the bivector components. In particular the three basis bivectors, e23, e31 and e12, or scalar multiples of them, are associated with the yz-plane, zx-plane and xy-plane respectively.
  • The magnitude of the bivector is associated with the area of the plane segment. The area does not have a particular shape so any shape can be used. It can even be represented in other ways, such as by an angular measure. But if the vectors are interpreted as lengths the bivector is usually interpreted as an area with the same units, as follows.
  • Like the direction of a vector a plane associated with a bivector has a direction, a circulation or a sense of rotation in the plane, which takes two values seen as clockwise and counterclockwise when viewed from viewpoint not in the plane. This is associated with a change of sign in the bivector, that is if the direction is reversed the bivector is negated. Alternately if two bivectors have the same attitude and magnitude but opposite directions then one is the negative of the other.
  • If imagined as a parallelogram, with the origin for the vectors at 0, then signed area is the determinant of the vectors' Cartesian coordinates (ax bybx ay).[21]
 
The cross product a × b is orthogonal to the bivector ab.

In three dimensions all bivectors can be generated by the exterior product of two vectors. If the bivector B = ab then the magnitude of B is

 

where θ is the angle between the vectors. This is the area of the parallelogram with edges a and b, as shown in the diagram. One interpretation is that the area is swept out by b as it moves along a. The exterior product is antisymmetric, so reversing the order of a and b to make a move along b results in a bivector with the opposite direction that is the negative of the first. The plane of bivector ab contains both a and b so they are both parallel to the plane.

Bivectors and axial vectors are related by Hodge dual. In a real vector space the Hodge dual relates a subspace to its orthogonal complement, so if a bivector is represented by a plane then the axial vector associated with it is simply the plane's surface normal. The plane has two normals, one on each side, giving the two possible orientations for the plane and bivector.

 
Relationship between force F, torque τ, linear momentum p, and angular momentum L.

This relates the cross product to the exterior product. It can also be used to represent physical quantities, like torque and angular momentum. In vector algebra they are usually represented by vectors, perpendicular to the plane of the force, linear momentum or displacement that they are calculated from. But if a bivector is used instead the plane is the plane of the bivector, so is a more natural way to represent the quantities and the way they act. It also unlike the vector representation generalises into other dimensions.

The product of two bivectors has a geometric interpretation. For non-zero bivectors A and B the product can be split into symmetric and antisymmetric parts as follows:

 

Like vectors these have magnitudes |A · B| = |A| |B| cos θ and |A × B| = |A| |B| sin θ, where θ is the angle between the planes. In three dimensions it is the same as the angle between the normal vectors dual to the planes, and it generalises to some extent in higher dimensions.

 
Two bivectors, two of the non-parallel sides of a prism, being added to give a third bivector.[13]

Bivectors can be added together as areas. Given two non-zero bivectors B and C in three dimensions it is always possible to find a vector that is contained in both, a say, so the bivectors can be written as exterior products involving a:

 

This can be interpreted geometrically as seen in the diagram: the two areas sum to give a third, with the three areas forming faces of a prism with a, b, c and b + c as edges. This corresponds to the two ways of calculating the area using the distributivity of the exterior product:

 

This only works in three dimensions as it is the only dimension where a vector parallel to both bivectors must exist. In higher dimensions bivectors generally are not associated with a single plane, or if they are (simple bivectors) two bivectors may have no vector in common, and so sum to a non-simple bivector.

Four dimensions edit

In four dimensions, the basis elements for the space 2R4 of bivectors are (e12, e13, e14, e23, e24, e34), so a general bivector is of the form

 

Orthogonality edit

In four dimensions, the Hodge dual of a bivector is a bivector, and the space 2R4 is dual to itself. Normal vectors are not unique, instead every plane is orthogonal to all the vectors in its Hodge dual space. This can be used to partition the bivectors into two 'halves', in the following way. We have three pairs of orthogonal bivectors: (e12, e34), (e13, e24) and (e14, e23). There are four distinct ways of picking one bivector from each of the first two pairs, and once these first two are picked their sum yields the third bivector from the other pair. For example, (e12, e13, e14) and (e23, e24, e34).

Simple bivectors in 4D edit

In four dimensions bivectors are generated by the exterior product of vectors in R4, but with one important difference from R3 and R2. In four dimensions not all bivectors are simple. There are bivectors such as e12 + e34 that cannot be generated by the exterior product of two vectors. This also means they do not have a real, that is scalar, square. In this case

 

The element e1234 is the pseudoscalar in Cl4, distinct from the scalar, so the square is non-scalar.

All bivectors in four dimensions can be generated using at most two exterior products and four vectors. The above bivector can be written as

 

Similarly, every bivector can be written as the sum of two simple bivectors. It is useful to choose two orthogonal bivectors for this, and this is always possible to do. Moreover, for a generic bivector the choice of simple bivectors is unique, that is, there is only one way to decompose into orthogonal bivectors; the only exception is when the two orthogonal bivectors have equal magnitudes (as in the above example): in this case the decomposition is not unique.[4] The decomposition is always unique in the case of simple bivectors, with the added bonus that one of the orthogonal parts is zero.

Rotations in R4 edit

As in three dimensions bivectors in four dimension generate rotations through the exponential map, and all rotations can be generated this way. As in three dimensions if B is a bivector then the rotor R is exp 1/2B and rotations are generated in the same way:

 
 
A 3D projection of a tesseract performing an isoclinic rotation.

The rotations generated are more complex though. They can be categorised as follows:

simple rotations are those that fix a plane in 4D, and rotate by an angle "about" this plane.
double rotations have only one fixed point, the origin, and rotate through two angles about two orthogonal planes. In general the angles are different and the planes are uniquely specified
isoclinic rotations are double rotations where the angles of rotation are equal. In this case the planes about which the rotation is taking place are not unique.

These are generated by bivectors in a straightforward way. Simple rotations are generated by simple bivectors, with the fixed plane the dual or orthogonal to the plane of the bivector. The rotation can be said to take place about that plane, in the plane of the bivector. All other bivectors generate double rotations, with the two angles of the rotation equalling the magnitudes of the two simple bivectors that the non-simple bivector is composed of. Isoclinic rotations arise when these magnitudes are equal, in which case the decomposition into two simple bivectors is not unique.[22]

Bivectors in general do not commute, but one exception is orthogonal bivectors and exponents of them. So if the bivector B = B1 + B2, where B1 and B2 are orthogonal simple bivectors, is used to generate a rotation it decomposes into two simple rotations that commute as follows:

 

It is always possible to do this as all bivectors can be expressed as sums of orthogonal bivectors.

Spacetime rotations edit

Spacetime is a mathematical model for our universe used in special relativity. It consists of three space dimensions and one time dimension combined into a single four-dimensional space. It is naturally described using geometric algebra and bivectors, with the Euclidean metric replaced by a Minkowski metric. That algebra is identical to that of Euclidean space, except the signature is changed, so

 

(Note the order and indices above are not universal – here e4 is the time-like dimension). The geometric algebra is Cl3,1(R), and the subspace of bivectors is 2R3,1.

The simple bivectors are of two types. The simple bivectors e23, e31 and e12 have negative squares and span the bivectors of the three-dimensional subspace corresponding to Euclidean space, R3. These bivectors generate ordinary rotations in R3.

The simple bivectors e14, e24 and e34 have positive squares and as planes span a space dimension and the time dimension. These also generate rotations through the exponential map, but instead of trigonometric functions, hyperbolic functions are needed, which generates a rotor as follows:

 

where Ω is the bivector (e14, etc.), identified via the metric with an antisymmetric linear transformation of R3,1. These are Lorentz boosts, expressed in a particularly compact way, using the same kind of algebra as in R3 and R4.

In general all spacetime rotations are generated from bivectors through the exponential map, that is, a general rotor generated by bivector A is of the form

 

The set of all rotations in spacetime form the Lorentz group, and from them most of the consequences of special relativity can be deduced. More generally this show how transformations in Euclidean space and spacetime can all be described using the same kind of algebra.

Maxwell's equations edit

(Note: in this section traditional 3-vectors are indicated by lines over the symbols and spacetime vector and bivectors by bold symbols, with the vectors J and A exceptionally in uppercase)

Maxwell's equations are used in physics to describe the relationship between electric and magnetic fields. Normally given as four differential equations they have a particularly compact form when the fields are expressed as a spacetime bivector from 2R3,1. If the electric and magnetic fields in R3 are E and B then the electromagnetic bivector is

 

where e4 is again the basis vector for the time-like dimension and c is the speed of light. The product Be123 yields the bivector that is Hodge dual to B in three dimensions, as discussed above, while Ee4 as a product of orthogonal vectors is also bivector-valued. As a whole it is the electromagnetic tensor expressed more compactly as a bivector, and is used as follows. First it is related to the 4-current J, a vector quantity given by

 

where j is current density and ρ is charge density. They are related by a differential operator ∂, which is

 

The operator ∇ is a differential operator in geometric algebra, acting on the space dimensions and given by M = ∇·M + ∇∧M. When applied to vectors ∇·M is the divergence and ∇∧M is the curl but with a bivector rather than vector result, that is dual in three dimensions to the curl. For general quantity M they act as grade lowering and raising differential operators. In particular if M is a scalar then this operator is just the gradient, and it can be thought of as a geometric algebraic del operator.

Together these can be used to give a particularly compact form for Maxwell's equations with sources:

 

This equation, when decomposed according to geometric algebra, using geometric products which have both grade raising and grade lowering effects, is equivalent to Maxwell's four equations. It is also related to the electromagnetic four-potential, a vector A given by

 

where A is the vector magnetic potential and V is the electric potential. It is related to the electromagnetic bivector as follows

 

using the same differential operator .[23]

Higher dimensions edit

As has been suggested in earlier sections much of geometric algebra generalises well into higher dimensions. The geometric algebra for the real space Rn is Cln(R), and the subspace of bivectors is 2Rn.

The number of simple bivectors needed to form a general bivector rises with the dimension, so for n odd it is (n − 1) / 2, for n even it is n / 2. So for four and five dimensions only two simple bivectors are needed but three are required for six and seven dimensions. For example, in six dimensions with standard basis (e1, e2, e3, e4, e5, e6) the bivector

 

is the sum of three simple bivectors but no less. As in four dimensions it is always possible to find orthogonal simple bivectors for this sum.

Rotations in higher dimensions edit

As in three and four dimensions rotors are generated by the exponential map, so

 

is the rotor generated by bivector B. Simple rotations, that take place in a plane of rotation around a fixed blade of dimension (n − 2) are generated by simple bivectors, while other bivectors generate more complex rotations which can be described in terms of the simple bivectors they are sums of, each related to a plane of rotation. All bivectors can be expressed as the sum of orthogonal and commutative simple bivectors, so rotations can always be decomposed into a set of commutative rotations about the planes associated with these bivectors. The group of the rotors in n dimensions is the spin group, Spin(n).

One notable feature, related to the number of simple bivectors and so rotation planes, is that in odd dimensions every rotation has a fixed axis – it is misleading to call it an axis of rotation as in higher dimensions rotations are taking place in multiple planes orthogonal to it. This is related to bivectors, as bivectors in odd dimensions decompose into the same number of bivectors as the even dimension below, so have the same number of planes, but one extra dimension. As each plane generates rotations in two dimensions in odd dimensions there must be one dimension, that is an axis, that is not being rotated.[24]

Bivectors are also related to the rotation matrix in n dimensions. As in three dimensions the characteristic equation of the matrix can be solved to find the eigenvalues. In odd dimensions this has one real root, with eigenvector the fixed axis, and in even dimensions it has no real roots, so either all or all but one of the roots are complex conjugate pairs. Each pair is associated with a simple component of the bivector associated with the rotation. In particular, the log of each pair is the magnitude up to a sign, while eigenvectors generated from the roots are parallel to and so can be used to generate the bivector. In general the eigenvalues and bivectors are unique, and the set of eigenvalues gives the full decomposition into simple bivectors; if roots are repeated then the decomposition of the bivector into simple bivectors is not unique.

Projective geometry edit

Geometric algebra can be applied to projective geometry in a straightforward way. The geometric algebra used is Cln(R), n ≥ 3, the algebra of the real vector space Rn. This is used to describe objects in the real projective space RPn−1. The non-zero vectors in Cln(R) or Rn are associated with points in the projective space so vectors that differ only by a scale factor, so their exterior product is zero, map to the same point. Non-zero simple bivectors in 2Rn represent lines in RPn−1, with bivectors differing only by a (positive or negative) scale factor representing the same line.

A description of the projective geometry can be constructed in the geometric algebra using basic operations. For example, given two distinct points in RPn−1 represented by vectors a and b the line containing them is given by ab (or ba). Two lines intersect in a point if AB = 0 for their bivectors A and B. This point is given by the vector

 

The operation "" is the meet, which can be defined as above in terms of the join, J = AB [clarification needed] for non-zero AB. Using these operations projective geometry can be formulated in terms of geometric algebra. For example, given a third (non-zero) bivector C the point p lies on the line given by C if and only if

 

So the condition for the lines given by A, B and C to be collinear is

 

which in Cl3(R) and RP2 simplifies to

 

where the angle brackets denote the scalar part of the geometric product. In the same way all projective space operations can be written in terms of geometric algebra, with bivectors representing general lines in projective space, so the whole geometry can be developed using geometric algebra.[15]

Tensors and matrices edit

As noted above a bivector can be written as a skew-symmetric matrix, which through the exponential map generates a rotation matrix that describes the same rotation as the rotor, also generated by the exponential map but applied to the vector. But it is also used with other bivectors such as the angular velocity tensor and the electromagnetic tensor, respectively a 3×3 and 4×4 skew-symmetric matrix or tensor.

Real bivectors in 2Rn are isomorphic to n × n skew-symmetric matrices, or alternately to antisymmetric tensors of degree 2 on Rn. While bivectors are isomorphic to vectors (via the dual) in three dimensions they can be represented by skew-symmetric matrices in any dimension. This is useful for relating bivectors to problems described by matrices, so they can be re-cast in terms of bivectors, given a geometric interpretation, then often solved more easily or related geometrically to other bivector problems.[25]

More generally, every real geometric algebra is isomorphic to a matrix algebra. These contain bivectors as a subspace, though often in a way which is not especially useful. These matrices are mainly of interest as a way of classifying Clifford algebras.[26]

See also edit

Notes edit

  1. ^ a b Dorst, Leo; Fontijne, Daniel; Mann, Stephen (2009). Geometric Algebra for Computer Science: An Object-Oriented Approach to Geometry (2nd ed.). Morgan Kaufmann. p. 32. ISBN 978-0-12-374942-0. The algebraic bivector is not specific on shape; geometrically it is an amount of directed area in a specific plane, that's all.
  2. ^ a b Hestenes, David (1999). New foundations for classical mechanics: Fundamental Theories of Physics (2nd ed.). Springer. p. 21. ISBN 978-0-7923-5302-7.
  3. ^ Lounesto 2001, p. 33
  4. ^ a b c d Lounesto 2001, p. 87
  5. ^ Forder, Henry (1941). The Calculus of Extension. p. 79 – via Internet Archive.
  6. ^ Parshall, Karen Hunger; Rowe, David E. (1997). The Emergence of the American Mathematical Research Community, 1876–1900. American Mathematical Society. p. 31 ff. ISBN 978-0-8218-0907-5.
  7. ^ Farouki, Rida T. (2007). "Chapter 5: Quaternions". Pythagorean-hodograph curves: algebra and geometry inseparable. Springer. p. 60 ff. ISBN 978-3-540-73397-3.
  8. ^ A discussion of quaternions from these years is at: McAulay, Alexander (1911). "Quaternions" . In Chisholm, Hugh (ed.). Encyclopædia Britannica. Vol. 22 (11th ed.). Cambridge University Press. pp. 718–723.
  9. ^ Gibbs, Josiah Willard; Wilson, Edwin Bidwell (1901). Vector analysis: a text-book for the use of students of mathematics and physics. Yale University Press. p. 481ff. directional ellipse.
  10. ^ Boulanger, Philippe; Hayes, Michael A. (1993). Bivectors and waves in mechanics and optics. Springer. ISBN 978-0-412-46460-7.
  11. ^ Boulanger, P.H.; Hayes, M. (1991). "Bivectors and inhomogeneous plane waves in anisotropic elastic bodies". In Wu, Julian J.; Ting, Thomas Chi-tsai; Barnett, David M. (eds.). Modern theory of anisotropic elasticity and applications. Society for Industrial and Applied Mathematics (SIAM). p. 280 et seq. ISBN 978-0-89871-289-6.
  12. ^ Hestenes 1999, p. 61
  13. ^ a b Lounesto 2001, p. 35
  14. ^ Lounesto 2001, p. 86
  15. ^ a b Hestenes, David; Ziegler, Renatus (1991). (PDF). Acta Applicandae Mathematicae. 23: 25–63. CiteSeerX 10.1.1.125.368. doi:10.1007/bf00046919. S2CID 1702787. Archived from the original (PDF) on 2016-03-03. Retrieved 2010-01-01.
  16. ^ Lounesto 2001, p. 29
  17. ^ William E Baylis (1994). Theoretical methods in the physical sciences: an introduction to problem solving using Maple V. Birkhäuser. p. 234, see footnote. ISBN 978-0-8176-3715-6. The terms axial vector and pseudovector are often treated as synonymous, but it is quite useful to be able to distinguish a bivector (...the pseudovector) from its dual (... the axial vector).
  18. ^ In strict mathematical terms, axial vectors are an n-dimensional vector space equipped with the usual structure group GL(n, R), but with the nonstandard representation AA det(A) / |det(A)|.
  19. ^ Chris Doran; Anthony Lasenby (2003). Geometric algebra for physicists. Cambridge University Press. p. 56. ISBN 978-0-521-48022-2.
  20. ^ Lounesto 2001, pp. 37–39
  21. ^ Wildberger, Norman J. (2010). Area and Volume. Wild Linear Algebra. Vol. 4. University of New South Wales – via YouTube.
  22. ^ Lounesto 2001, pp. 89–90
  23. ^ Lounesto 2001, pp. 109–110
  24. ^ Lounesto 2001, p. 222
  25. ^ Lounesto 2001, p. 193
  26. ^ Lounesto 2001, p. 217

General references edit

bivector, mathematics, bivector, vector, quantity, exterior, algebra, geometric, algebra, that, extends, idea, scalars, vectors, considering, scalar, degree, zero, quantity, vector, degree, quantity, bivector, degree, have, applications, many, areas, mathemati. In mathematics a bivector or 2 vector is a quantity in exterior algebra or geometric algebra that extends the idea of scalars and vectors Considering a scalar as a degree zero quantity and a vector as a degree one quantity a bivector is of degree two Bivectors have applications in many areas of mathematics and physics They are related to complex numbers in two dimensions and to both pseudovectors and vector quaternions in three dimensions They can be used to generate rotations in a space of any number of dimensions and are a useful tool for classifying such rotations They are also used in physics Parallel plane segments with the same orientation and area corresponding to the same bivector a b 1 Geometrically a simple bivector can be interpreted as characterizing an directed plane segment much as vectors can be thought of as characterizing directed line segments 2 The bivector a b has an attitude direction of the plane spanned by a and b has an area that is a scalar multiple of any reference plane segment with the same attitude and in geometric algebra it has a magnitude equal to the area of the parallelogram with edges a and b and has an orientation being the side of a on which b lies within the plane spanned by a and b 2 3 In layman terms any surface defines the same bivector if it is parallel to the same plane same attitude has the same area and same orientation see figure Bivectors are generated by the exterior product on vectors given two vectors a and b their exterior product a b is a bivector as is any sum of bivectors Not all bivectors can be expressed as an exterior product without such summation More precisely a bivector that can be expressed as an exterior product is called simple in up to three dimensions all bivectors are simple but in higher dimensions this is not the case 4 The exterior product of two vectors is alternating so a a is the zero bivector and b a is the negative of the bivector a b producing the opposite orientation Concepts directly related to bivector are rank 2 antisymmetric tensor and skew symmetric matrix Contents 1 History 2 Derivation 2 1 Geometric algebra and the geometric product 2 2 Scalar product 2 3 Exterior product 3 Properties 3 1 The space 2Rn 3 2 Even subalgebra 3 3 Magnitude 3 4 Unit bivectors 3 5 Simple bivectors 3 6 Product of two bivectors 3 7 General bivectors and matrices 4 Two dimensions 4 1 Complex numbers 5 Three dimensions 5 1 Quaternions 5 2 Rotation vector 5 3 Rotors 5 4 Matrices 5 5 Axial vectors 5 6 Geometric interpretation 6 Four dimensions 6 1 Orthogonality 6 2 Simple bivectors in 4D 6 3 Rotations in R4 6 4 Spacetime rotations 6 5 Maxwell s equations 7 Higher dimensions 7 1 Rotations in higher dimensions 8 Projective geometry 8 1 Tensors and matrices 9 See also 10 Notes 11 General referencesHistory editThe bivector was first defined in 1844 by German mathematician Hermann Grassmann in exterior algebra as the result of the exterior product of two vectors Just the previous year in Ireland William Rowan Hamilton had discovered quaternions Hamilton coined both vector and bivector the latter in his Lectures on Quaternions 1853 as he introduced biquaternions which have bivectors for their vector parts It was not until English mathematician William Kingdon Clifford in 1888 added the geometric product to Grassmann s algebra incorporating the ideas of both Hamilton and Grassmann and founded Clifford algebra that the bivector of this article arose Henry Forder used the term bivector to develop exterior algebra in 1941 5 In the 1890s Josiah Willard Gibbs and Oliver Heaviside developed vector calculus which included separate cross product and dot products that were derived from quaternion multiplication 6 7 8 The success of vector calculus and of the book Vector Analysis by Gibbs and Wilson had the effect that the insights of Hamilton and Clifford were overlooked for a long time since much of 20th century mathematics and physics was formulated in vector terms Gibbs used vectors to fill the role of bivectors in three dimensions and used bivector in Hamilton s sense a use that has sometimes been copied 9 10 11 Today the bivector is largely studied as a topic in geometric algebra a Clifford algebra over real or complex vector spaces with a quadratic form Its resurgence was led by David Hestenes who along with others applied geometric algebra to a range of new applications in physics 12 Derivation editFor this article the bivector will be considered only in real geometric algebras which may be applied in most areas of physics Also unless otherwise stated all examples have a Euclidean metric and so a positive definite quadratic form Geometric algebra and the geometric product edit The bivector arises from the definition of the geometric product over a vector space with an associated quadratic form sometimes called the metric For vectors a b and c the geometric product satisfies the following properties Associativity ab c a bc displaystyle mathbf ab mathbf c mathbf a mathbf bc nbsp Left and right distributivity a b c ab ac b c a ba ca displaystyle begin aligned mathbf a mathbf b mathbf c amp mathbf ab mathbf ac mathbf b mathbf c mathbf a amp mathbf ba mathbf ca end aligned nbsp Scalar square a2 Q a displaystyle mathbf a 2 Q mathbf a nbsp where Q is the quadratic form which need not be positive definite Scalar product edit From associativity a ab a2b is a scalar times b When b is not parallel to and hence not a scalar multiple of a ab cannot be a scalar But 12 ab ba 12 a b 2 a2 b2 displaystyle tfrac 1 2 mathbf ab mathbf ba tfrac 1 2 left mathbf a mathbf b 2 mathbf a 2 mathbf b 2 right nbsp is a sum of scalars and so a scalar From the law of cosines on the triangle formed by the vectors its value is a b cos 8 where 8 is the angle between the vectors It is therefore identical to the scalar product between two vectors and is written the same way a b 12 ab ba displaystyle mathbf a cdot mathbf b tfrac 1 2 mathbf ab mathbf ba nbsp It is symmetric scalar valued and can be used to determine the angle between two vectors in particular if a and b are orthogonal the product is zero Exterior product edit Just as the scalar product can be formulated as the symmetric part of the geometric product of another quantity the exterior product sometimes known as the wedge or progressive product can be formulated as its antisymmetric part a b 12 ab ba displaystyle mathbf a wedge mathbf b tfrac 1 2 mathbf ab mathbf ba nbsp It is antisymmetric in a and b b a 12 ba ab 12 ab ba a b displaystyle mathbf b wedge mathbf a tfrac 1 2 mathbf ba mathbf ab tfrac 1 2 mathbf ab mathbf ba mathbf a wedge mathbf b nbsp and by addition a b a b 12 ab ba 12 ab ba ab displaystyle mathbf a cdot mathbf b mathbf a wedge mathbf b tfrac 1 2 mathbf ab mathbf ba tfrac 1 2 mathbf ab mathbf ba mathbf ab nbsp That is the geometric product is the sum of the symmetric scalar product and alternating exterior product To examine the nature of a b consider the formula a b 2 a b 2 a2b2 displaystyle mathbf a cdot mathbf b 2 mathbf a wedge mathbf b 2 mathbf a 2 mathbf b 2 nbsp which using the Pythagorean trigonometric identity gives the value of a b 2 a b 2 a b 2 a2b2 a 2 b 2 cos2 8 1 a 2 b 2sin2 8 displaystyle mathbf a wedge mathbf b 2 mathbf a cdot mathbf b 2 mathbf a 2 mathbf b 2 left mathbf a right 2 left mathbf b right 2 cos 2 theta 1 left mathbf a right 2 left mathbf b right 2 sin 2 theta nbsp With a negative square it cannot be a scalar or vector quantity so it is a new sort of object a bivector It has magnitude a b sin 8 where 8 is the angle between the vectors and so is zero for parallel vectors To distinguish them from vectors bivectors are written here with bold capitals for example A a b b a displaystyle mathbf A mathbf a wedge mathbf b mathbf b wedge mathbf a nbsp although other conventions are used in particular as vectors and bivectors are both elements of the geometric algebra Properties editThe algebra generated by the geometric product that is all objects formed by taking repeated sums and geometric products of scalars and vectors is the geometric algebra over the vector space For an Euclidean vector space this algebra is written Gn displaystyle mathcal G n nbsp or Cln R where n is the dimension of the vector space Rn Cln R is both a vector space and an algebra generated by all the products between vectors in Rn so it contains all vectors and bivectors More precisely as a vector space it contains the vectors and bivectors as linear subspaces though not as subalgebras since the geometric product of two vectors is not generally another vector The space 2Rn edit The space of all bivectors has dimension 1 2 n n 1 and is written 2Rn 13 and is the second exterior power of the original vector space Even subalgebra edit The subalgebra generated by the bivectors is the even subalgebra of the geometric algebra written Cl n R This algebra results from considering all repeated sums and geometric products of scalars and bivectors It has dimension 2n 1 and contains 2Rn as a linear subspace In two and three dimensions the even subalgebra contains only scalars and bivectors and each is of particular interest In two dimensions the even subalgebra is isomorphic to the complex numbers C while in three it is isomorphic to the quaternions H The even subalgebra contains the rotations in any dimension Magnitude edit As noted in the previous section the magnitude of a simple bivector that is one that is the exterior product of two vectors a and b is a b sin 8 where 8 is the angle between the vectors It is written B where B is the bivector For general bivectors the magnitude can be calculated by taking the norm of the bivector considered as a vector in the space 2Rn If the magnitude is zero then all the bivector s components are zero and the bivector is the zero bivector which as an element of the geometric algebra equals the scalar zero Unit bivectors edit A unit bivector is one with unit magnitude It can be derived from any non zero bivector by dividing the bivector by its magnitude that is B B displaystyle frac mathbf B left vert mathbf B right vert nbsp Of particular interest are the unit bivectors formed from the products of the standard basis If ei and ej are distinct basis vectors then the product ei ej is a bivector As the vectors are orthogonal this is just eiej written eij with unit magnitude as the vectors are unit vectors The set of all such bivectors form a basis for 2Rn For instance in four dimensions the basis for 2R4 is e1e2 e1e3 e1e4 e2e3 e2e4 e3e4 or e12 e13 e14 e23 e24 e34 14 Simple bivectors edit The exterior product of two vectors is a bivector but not all bivectors are exterior products of two vectors For example in four dimensions the bivector B e1 e2 e3 e4 e1e2 e3e4 e12 e34 displaystyle mathbf B mathbf e 1 wedge mathbf e 2 mathbf e 3 wedge mathbf e 4 mathbf e 1 mathbf e 2 mathbf e 3 mathbf e 4 mathbf e 12 mathbf e 34 nbsp cannot be written as the exterior product of two vectors A bivector that can be written as the exterior product of two vectors is simple In two and three dimensions all bivectors are simple but not in four or more dimensions in four dimensions every bivector is the sum of at most two exterior products A bivector has a real square if and only if it is simple and only simple bivectors can be represented geometrically by a directed plane area 4 Product of two bivectors edit The geometric product of two bivectors A and B is AB A B A B A B displaystyle mathbf A mathbf B mathbf A cdot mathbf B mathbf A times mathbf B mathbf A wedge mathbf B nbsp The quantity A B is the scalar valued scalar product while A B is the grade 4 exterior product that arises in four or more dimensions The quantity A B is the bivector valued commutator product given by A B 12 AB BA displaystyle mathbf A times mathbf B tfrac 1 2 mathbf AB mathbf BA nbsp 15 The space of bivectors 2Rn is a Lie algebra over R with the commutator product as the Lie bracket The full geometric product of bivectors generates the even subalgebra Of particular interest is the product of a bivector with itself As the commutator product is antisymmetric the product simplifies to AA A A A A displaystyle mathbf A mathbf A mathbf A cdot mathbf A mathbf A wedge mathbf A nbsp If the bivector is simple the last term is zero and the product is the scalar valued A A which can be used as a check for simplicity In particular the exterior product of bivectors only exists in four or more dimensions so all bivectors in two and three dimensions are simple 4 General bivectors and matrices edit Bivectors are isomorphic to skew symmetric matrices the general bivector B23e23 B31e31 B12e12 maps to the matrix MB 0B12 B31 B120B23B31 B230 displaystyle M B begin pmatrix 0 amp B 12 amp B 31 B 12 amp 0 amp B 23 B 31 amp B 23 amp 0 end pmatrix nbsp This multiplied by vectors on both sides gives the same vector as the product of a vector and bivector minus the outer product an example is the angular velocity tensor Skew symmetric matrices generate orthogonal matrices with determinant 1 through the exponential map In particular the exponent of a bivector associated with a rotation is a rotation matrix that is the rotation matrix MR given by the above skew symmetric matrix is MR exp MB displaystyle M R exp M B nbsp The rotation described by MR is the same as that described by the rotor R given by R exp 12B displaystyle R exp tfrac 1 2 B nbsp and the matrix MR can be also calculated directly from rotor R MR Re1R 1 e1 Re2R 1 e1 Re3R 1 e1 Re1R 1 e2 Re2R 1 e2 Re3R 1 e2 Re1R 1 e3 Re2R 1 e3 Re3R 1 e3 displaystyle M R begin pmatrix R mathbf e 1 R 1 cdot mathbf e 1 amp R mathbf e 2 R 1 cdot mathbf e 1 amp R mathbf e 3 R 1 cdot mathbf e 1 R mathbf e 1 R 1 cdot mathbf e 2 amp R mathbf e 2 R 1 cdot mathbf e 2 amp R mathbf e 3 R 1 cdot mathbf e 2 R mathbf e 1 R 1 cdot mathbf e 3 amp R mathbf e 2 R 1 cdot mathbf e 3 amp R mathbf e 3 R 1 cdot mathbf e 3 end pmatrix nbsp Bivectors are related to the eigenvalues of a rotation matrix Given a rotation matrix M the eigenvalues can be calculated by solving the characteristic equation for that matrix 0 det M lI By the fundamental theorem of algebra this has three roots only one of which is real as there is only one eigenvector i e the axis of rotation The other roots must be a complex conjugate pair They have unit magnitude so purely imaginary logarithms equal to the magnitude of the bivector associated with the rotation which is also the angle of rotation The eigenvectors associated with the complex eigenvalues are in the plane of the bivector so the exterior product of two non parallel eigenvectors results in the bivector or a multiple thereof Two dimensions editWhen working with coordinates in geometric algebra it is usual to write the basis vectors as e1 e2 a convention that will be used here A vector in real two dimensional space R2 can be written a a1e1 a2e2 where a1 and a2 are real numbers e1 and e2 are orthonormal basis vectors The geometric product of two such vectors is ab a1e1 a2e2 b1e1 b2e2 a1b1e1e1 a1b2e1e2 a2b1e2e1 a2b2e2e2 a1b1 a2b2 a1b2 a2b1 e1e2 displaystyle begin aligned mathbf a mathbf b amp a 1 mathbf e 1 a 2 mathbf e 2 b 1 mathbf e 1 b 2 mathbf e 2 amp a 1 b 1 mathbf e 1 mathbf e 1 a 1 b 2 mathbf e 1 mathbf e 2 a 2 b 1 mathbf e 2 mathbf e 1 a 2 b 2 mathbf e 2 mathbf e 2 amp a 1 b 1 a 2 b 2 a 1 b 2 a 2 b 1 mathbf e 1 mathbf e 2 end aligned nbsp This can be split into the symmetric scalar valued scalar product and an antisymmetric bivector valued exterior product a b a1b1 a2b2 a b a1b2 a2b1 e1e2 a1b2 a2b1 e12 displaystyle begin aligned mathbf a cdot mathbf b amp a 1 b 1 a 2 b 2 mathbf a wedge mathbf b amp a 1 b 2 a 2 b 1 mathbf e 1 mathbf e 2 a 1 b 2 a 2 b 1 mathbf e 12 end aligned nbsp All bivectors in two dimensions are of this form that is multiples of the bivector e1e2 written e12 to emphasise it is a bivector rather than a vector The magnitude of e12 is 1 with e122 1 displaystyle mathbf e 12 2 1 nbsp so it is called the unit bivector The term unit bivector can be used in other dimensions but it is only uniquely defined up to a sign in two dimensions and all bivectors are multiples of e12 As the highest grade element of the algebra e12 is also the pseudoscalar which is given the symbol i Complex numbers edit With the properties of negative square and unit magnitude the unit bivector can be identified with the imaginary unit from complex numbers The bivectors and scalars together form the even subalgebra of the geometric algebra which is isomorphic to the complex numbers C The even subalgebra has basis 1 e12 the whole algebra has basis 1 e1 e2 e12 The complex numbers are usually identified with the coordinate axes and two dimensional vectors which would mean associating them with the vector elements of the geometric algebra There is no contradiction in this as to get from a general vector to a complex number an axis needs to be identified as the real axis e1 say This multiplies by all vectors to generate the elements of even subalgebra All the properties of complex numbers can be derived from bivectors but two are of particular interest First as with complex numbers products of bivectors and so the even subalgebra are commutative This is only true in two dimensions so properties of the bivector in two dimensions that depend on commutativity do not usually generalise to higher dimensions Second a general bivector can be written 8e12 i8 displaystyle theta mathbf e 12 i theta nbsp where 8 is a real number Putting this into the Taylor series for the exponential map and using the property e122 1 results in a bivector version of Euler s formula exp 8e12 exp i8 cos 8 isin 8 displaystyle exp theta mathbf e 12 exp i theta cos theta i sin theta nbsp which when multiplied by any vector rotates it through an angle 8 about the origin x e1 y e2 xe1 ye2 exp i8 displaystyle x mathbf e 1 y mathbf e 2 x mathbf e 1 y mathbf e 2 exp i theta nbsp The product of a vector with a bivector in two dimensions is anticommutative so the following products all generate the same rotation v vexp i8 exp i8 v exp i8 2 vexp i8 2 displaystyle mathbf v mathbf v exp i theta exp i theta mathbf v exp i theta 2 mathbf v exp i theta 2 nbsp Of these the last product is the one that generalises into higher dimensions The quantity needed is called a rotor and is given the symbol R so in two dimensions a rotor that rotates through angle 8 can be written R exp 12i8 exp 128e12 displaystyle R exp tfrac 1 2 i theta exp tfrac 1 2 theta mathbf e 12 nbsp and the rotation it generates is 16 v RvR 1 displaystyle mathbf v R mathbf v R 1 nbsp Three dimensions editIn three dimensions the geometric product of two vectors is ab a1e1 a2e2 a3e3 b1e1 b2e2 b3e3 a1b1e12 a2b2e22 a3b3e32 a2b3 a3b2 e2e3 a3b1 a1b3 e3e1 a1b2 a2b1 e1e2 displaystyle begin aligned mathbf ab amp a 1 mathbf e 1 a 2 mathbf e 2 a 3 mathbf e 3 b 1 mathbf e 1 b 2 mathbf e 2 b 3 mathbf e 3 amp a 1 b 1 mathbf e 1 2 a 2 b 2 mathbf e 2 2 a 3 b 3 mathbf e 3 2 a 2 b 3 a 3 b 2 mathbf e 2 mathbf e 3 a 3 b 1 a 1 b 3 mathbf e 3 mathbf e 1 a 1 b 2 a 2 b 1 mathbf e 1 mathbf e 2 end aligned nbsp This can be split into the symmetric scalar valued scalar product and the antisymmetric bivector valued exterior product a b a1b1 a2b2 a3b3a b a2b3 a3b2 e23 a3b1 a1b3 e31 a1b2 a2b1 e12 displaystyle begin aligned mathbf a cdot mathbf b amp a 1 b 1 a 2 b 2 a 3 b 3 mathbf a wedge mathbf b amp a 2 b 3 a 3 b 2 mathbf e 23 a 3 b 1 a 1 b 3 mathbf e 31 a 1 b 2 a 2 b 1 mathbf e 12 end aligned nbsp In three dimensions all bivectors are simple and so the result of an exterior product The unit bivectors e23 e31 and e12 form a basis for the space of bivectors 2R3 which is itself a three dimensional linear space So if a general bivector is A A23e23 A31e31 A12e12 displaystyle mathbf A A 23 mathbf e 23 A 31 mathbf e 31 A 12 mathbf e 12 nbsp they can be added like vectors A B A23 B23 e23 A31 B31 e31 A12 B12 e12 displaystyle mathbf A mathbf B A 23 B 23 mathbf e 23 A 31 B 31 mathbf e 31 A 12 B 12 mathbf e 12 nbsp while when multiplied they produce the following AB A23B23 A31B31 A12B12 A12B31 A31B12 e23 A23B12 A12B23 e31 A31B23 A23B31 e12 displaystyle mathbf A mathbf B A 23 B 23 A 31 B 31 A 12 B 12 A 12 B 31 A 31 B 12 mathbf e 23 A 23 B 12 A 12 B 23 mathbf e 31 A 31 B 23 A 23 B 31 mathbf e 12 nbsp which can be split into symmetric scalar and antisymmetric bivector parts as follows A B A12B12 A31B31 A23B23A B A23B31 A31B23 e12 A12B23 A23B12 e13 A31B12 A12B31 e23 displaystyle begin aligned mathbf A cdot mathbf B amp A 12 B 12 A 31 B 31 A 23 B 23 mathbf A times mathbf B amp A 23 B 31 A 31 B 23 mathbf e 12 A 12 B 23 A 23 B 12 mathbf e 13 A 31 B 12 A 12 B 31 mathbf e 23 end aligned nbsp The exterior product of two bivectors in three dimensions is zero A bivector B can be written as the product of its magnitude and a unit bivector so writing b for B and using the Taylor series for the exponential map it can be shown that exp B exp bBb cos b Bbsin b displaystyle exp mathbf B exp beta frac mathbf B beta cos beta frac mathbf B beta sin beta nbsp This is another version of Euler s formula but with a general bivector in three dimensions Unlike in two dimensions bivectors are not commutative so properties that depend on commutativity do not apply in three dimensions For example in general exp A B exp A exp B in three or more dimensions The full geometric algebra in three dimensions Cl3 R has basis 1 e1 e2 e3 e23 e31 e12 e123 The element e123 is a trivector and the pseudoscalar for the geometry Bivectors in three dimensions are sometimes identified with pseudovectors 17 to which they are related as discussed below Quaternions edit Bivectors are not closed under the geometric product but the even subalgebra is In three dimensions it consists of all scalar and bivector elements of the geometric algebra so a general element can be written for example a A where a is the scalar part and A is the bivector part It is written Cl 3 and has basis 1 e23 e31 e12 The product of two general elements of the even subalgebra is a A b B ab aB bA A B A B displaystyle a mathbf A b mathbf B ab a mathbf B b mathbf A mathbf A cdot mathbf B mathbf A times mathbf B nbsp The even subalgebra that is the algebra consisting of scalars and bivectors is isomorphic to the quaternions H This can be seen by comparing the basis to the quaternion basis or from the above product which is identical to the quaternion product except for a change of sign which relates to the negative products in the bivector scalar product A B Other quaternion properties can be similarly related to or derived from geometric algebra This suggests that the usual split of a quaternion into scalar and vector parts would be better represented as a split into scalar and bivector parts if this is done the quaternion product is merely the geometric product It also relates quaternions in three dimensions to complex numbers in two as each is isomorphic to the even subalgebra for the dimension a relationship that generalises to higher dimensions Rotation vector edit The rotation vector from the axis angle representation of rotations is a compact way of representing rotations in three dimensions In its most compact form it consists of a vector the product of a unit vector w that is the axis of rotation with the signed angle of rotation 8 so that the magnitude of the overall rotation vector 8w equals the unsigned rotation angle The quaternion associated with the rotation is q cos 128 wsin 128 displaystyle q left cos tfrac 1 2 theta omega sin tfrac 1 2 theta right nbsp In geometric algebra the rotation is represented by a bivector This can be seen in its relation to quaternions Let W be a unit bivector in the plane of rotation and let 8 be the angle of rotation Then the rotation bivector is W8 The quaternion closely corresponds to the exponential of half of the bivector W8 That is the components of the quaternion correspond to the scalar and bivector parts of the following expression exp 12W8 cos 128 Wsin 128 displaystyle exp tfrac 1 2 boldsymbol Omega theta cos tfrac 1 2 theta boldsymbol Omega sin tfrac 1 2 theta nbsp The exponential can be defined in terms of its power series and easily evaluated using the fact that W squared is 1 So rotations can be represented by bivectors Just as quaternions are elements of the geometric algebra they are related by the exponential map in that algebra Rotors edit The bivector W8 generates a rotation through the exponential map The even elements generated rotate a general vector in three dimensions in the same way as quaternions v exp 12W8 vexp 12W8 displaystyle mathbf v exp tfrac 1 2 boldsymbol Omega theta mathbf v exp tfrac 1 2 boldsymbol Omega theta nbsp As in two dimensions the quantity exp 1 2 W8 is called a rotor and written R The quantity exp 1 2 W8 is then R 1 and they generate rotations asv RvR 1 displaystyle mathbf v R mathbf v R 1 nbsp This is identical to two dimensions except here rotors are four dimensional objects isomorphic to the quaternions This can be generalised to all dimensions with rotors elements of the even subalgebra with unit magnitude being generated by the exponential map from bivectors They form a double cover over the rotation group so the rotors R and R represent the same rotation Matrices edit Axial vectors edit nbsp The 3 angular momentum as a bivector plane element and axial vector of a particle of mass m with instantaneous 3 position x and 3 momentum p The rotation vector is an example of an axial vector Axial vectors or pseudovectors are vectors with the special feature that their coordinates undergo a sign change relative to the usual vectors also called polar vectors under inversion through the origin reflection in a plane or other orientation reversing linear transformation 18 Examples include quantities like torque angular momentum and vector magnetic fields Quantities that would use axial vectors in vector algebra are properly represented by bivectors in geometric algebra 19 More precisely if an underlying orientation is chosen the axial vectors are naturally identified with the usual vectors the Hodge dual then gives the isomorphism between axial vectors and bivectors so each axial vector is associated with a bivector and vice versa that is A a a A displaystyle mathbf A star mathbf a quad mathbf a star mathbf A nbsp where displaystyle star nbsp is the Hodge star Note that if the underlying orientation is reversed by inversion through the origin both the identification of the axial vectors with the usual vectors and the Hodge dual change sign but the bivectors don t budge Alternately using the unit pseudoscalar in Cl3 R i e1e2e3 gives A ai a Ai displaystyle mathbf A mathbf a i quad mathbf a mathbf A i nbsp This is easier to use as the product is just the geometric product But it is antisymmetric because as in two dimensions the unit pseudoscalar i squares to 1 so a negative is needed in one of the products This relationship extends to operations like the vector valued cross product and bivector valued exterior product as when written as determinants they are calculated in the same way a b e1e2e3a1a2a3b1b2b3 a b e23e31e12a1a2a3b1b2b3 displaystyle mathbf a times mathbf b begin vmatrix mathbf e 1 amp mathbf e 2 amp mathbf e 3 a 1 amp a 2 amp a 3 b 1 amp b 2 amp b 3 end vmatrix quad mathbf a wedge mathbf b begin vmatrix mathbf e 23 amp mathbf e 31 amp mathbf e 12 a 1 amp a 2 amp a 3 b 1 amp b 2 amp b 3 end vmatrix nbsp so are related by the Hodge dual a b a b a b a b displaystyle star mathbf a wedge mathbf b mathbf a times b quad star mathbf a times b mathbf a wedge mathbf b nbsp Bivectors have a number of advantages over axial vectors They better disambiguate axial and polar vectors that is the quantities represented by them so it is clearer which operations are allowed and what their results are For example the inner product of a polar vector and an axial vector resulting from the cross product in the triple product should result in a pseudoscalar a result which is more obvious if the calculation is framed as the exterior product of a vector and bivector They generalise to other dimensions in particular bivectors can be used to describe quantities like torque and angular momentum in two as well as three dimensions Also they closely match geometric intuition in a number of ways as seen in the next section 20 Geometric interpretation edit nbsp Parallel plane segments with the same orientation and area corresponding to the same bivector a b 1 As suggested by their name and that of the algebra one of the attractions of bivectors is that they have a natural geometric interpretation This can be described in any dimension but is best done in three where parallels can be drawn with more familiar objects before being applied to higher dimensions In two dimensions the geometric interpretation is trivial as the space is two dimensional so has only one plane and all bivectors are associated with it differing only by a scale factor All bivectors can be interpreted as planes or more precisely as directed plane segments In three dimensions there are three properties of a bivector that can be interpreted geometrically The arrangement of the plane in space precisely the attitude of the plane or alternately the rotation geometric orientation or gradient of the plane is associated with the ratio of the bivector components In particular the three basis bivectors e23 e31 and e12 or scalar multiples of them are associated with the yz plane zx plane and xy plane respectively The magnitude of the bivector is associated with the area of the plane segment The area does not have a particular shape so any shape can be used It can even be represented in other ways such as by an angular measure But if the vectors are interpreted as lengths the bivector is usually interpreted as an area with the same units as follows Like the direction of a vector a plane associated with a bivector has a direction a circulation or a sense of rotation in the plane which takes two values seen as clockwise and counterclockwise when viewed from viewpoint not in the plane This is associated with a change of sign in the bivector that is if the direction is reversed the bivector is negated Alternately if two bivectors have the same attitude and magnitude but opposite directions then one is the negative of the other If imagined as a parallelogram with the origin for the vectors at 0 then signed area is the determinant of the vectors Cartesian coordinates ax by bxay 21 nbsp The cross product a b is orthogonal to the bivector a b In three dimensions all bivectors can be generated by the exterior product of two vectors If the bivector B a b then the magnitude of B is B a b sin 8 displaystyle mathbf B mathbf a mathbf b sin theta nbsp where 8 is the angle between the vectors This is the area of the parallelogram with edges a and b as shown in the diagram One interpretation is that the area is swept out by b as it moves along a The exterior product is antisymmetric so reversing the order of a and b to make a move along b results in a bivector with the opposite direction that is the negative of the first The plane of bivector a b contains both a and b so they are both parallel to the plane Bivectors and axial vectors are related by Hodge dual In a real vector space the Hodge dual relates a subspace to its orthogonal complement so if a bivector is represented by a plane then the axial vector associated with it is simply the plane s surface normal The plane has two normals one on each side giving the two possible orientations for the plane and bivector nbsp Relationship between force F torque t linear momentum p and angular momentum L This relates the cross product to the exterior product It can also be used to represent physical quantities like torque and angular momentum In vector algebra they are usually represented by vectors perpendicular to the plane of the force linear momentum or displacement that they are calculated from But if a bivector is used instead the plane is the plane of the bivector so is a more natural way to represent the quantities and the way they act It also unlike the vector representation generalises into other dimensions The product of two bivectors has a geometric interpretation For non zero bivectors A and B the product can be split into symmetric and antisymmetric parts as follows AB A B A B displaystyle mathbf AB mathbf A cdot mathbf B mathbf A times mathbf B nbsp Like vectors these have magnitudes A B A B cos 8 and A B A B sin 8 where 8 is the angle between the planes In three dimensions it is the same as the angle between the normal vectors dual to the planes and it generalises to some extent in higher dimensions nbsp Two bivectors two of the non parallel sides of a prism being added to give a third bivector 13 Bivectors can be added together as areas Given two non zero bivectors B and C in three dimensions it is always possible to find a vector that is contained in both a say so the bivectors can be written as exterior products involving a B a bC a c displaystyle begin aligned mathbf B amp mathbf a wedge mathbf b mathbf C amp mathbf a wedge mathbf c end aligned nbsp This can be interpreted geometrically as seen in the diagram the two areas sum to give a third with the three areas forming faces of a prism with a b c and b c as edges This corresponds to the two ways of calculating the area using the distributivity of the exterior product B C a b a c a b c displaystyle begin aligned mathbf B mathbf C amp mathbf a wedge mathbf b mathbf a wedge mathbf c amp mathbf a wedge mathbf b mathbf c end aligned nbsp This only works in three dimensions as it is the only dimension where a vector parallel to both bivectors must exist In higher dimensions bivectors generally are not associated with a single plane or if they are simple bivectors two bivectors may have no vector in common and so sum to a non simple bivector Four dimensions editIn four dimensions the basis elements for the space 2R4 of bivectors are e12 e13 e14 e23 e24 e34 so a general bivector is of the form A a12e12 a13e13 a14e14 a23e23 a24e24 a34e34 displaystyle mathbf A a 12 mathbf e 12 a 13 mathbf e 13 a 14 mathbf e 14 a 23 mathbf e 23 a 24 mathbf e 24 a 34 mathbf e 34 nbsp Orthogonality edit In four dimensions the Hodge dual of a bivector is a bivector and the space 2R4 is dual to itself Normal vectors are not unique instead every plane is orthogonal to all the vectors in its Hodge dual space This can be used to partition the bivectors into two halves in the following way We have three pairs of orthogonal bivectors e12 e34 e13 e24 and e14 e23 There are four distinct ways of picking one bivector from each of the first two pairs and once these first two are picked their sum yields the third bivector from the other pair For example e12 e13 e14 and e23 e24 e34 Simple bivectors in 4D edit In four dimensions bivectors are generated by the exterior product of vectors in R4 but with one important difference from R3 and R2 In four dimensions not all bivectors are simple There are bivectors such as e12 e34 that cannot be generated by the exterior product of two vectors This also means they do not have a real that is scalar square In this case e12 e34 2 e12e12 e12e34 e34e12 e34e34 2 2e1234 displaystyle mathbf e 12 mathbf e 34 2 mathbf e 12 mathbf e 12 mathbf e 12 mathbf e 34 mathbf e 34 mathbf e 12 mathbf e 34 mathbf e 34 2 2 mathbf e 1234 nbsp The element e1234 is the pseudoscalar in Cl4 distinct from the scalar so the square is non scalar All bivectors in four dimensions can be generated using at most two exterior products and four vectors The above bivector can be written as e12 e34 e1 e2 e3 e4 displaystyle mathbf e 12 mathbf e 34 mathbf e 1 wedge mathbf e 2 mathbf e 3 wedge mathbf e 4 nbsp Similarly every bivector can be written as the sum of two simple bivectors It is useful to choose two orthogonal bivectors for this and this is always possible to do Moreover for a generic bivector the choice of simple bivectors is unique that is there is only one way to decompose into orthogonal bivectors the only exception is when the two orthogonal bivectors have equal magnitudes as in the above example in this case the decomposition is not unique 4 The decomposition is always unique in the case of simple bivectors with the added bonus that one of the orthogonal parts is zero Rotations in R4 edit As in three dimensions bivectors in four dimension generate rotations through the exponential map and all rotations can be generated this way As in three dimensions if B is a bivector then the rotor R is exp 1 2 B and rotations are generated in the same way v RvR 1 displaystyle v RvR 1 nbsp nbsp A 3D projection of a tesseract performing an isoclinic rotation The rotations generated are more complex though They can be categorised as follows simple rotations are those that fix a plane in 4D and rotate by an angle about this plane double rotations have only one fixed point the origin and rotate through two angles about two orthogonal planes In general the angles are different and the planes are uniquely specified isoclinic rotations are double rotations where the angles of rotation are equal In this case the planes about which the rotation is taking place are not unique These are generated by bivectors in a straightforward way Simple rotations are generated by simple bivectors with the fixed plane the dual or orthogonal to the plane of the bivector The rotation can be said to take place about that plane in the plane of the bivector All other bivectors generate double rotations with the two angles of the rotation equalling the magnitudes of the two simple bivectors that the non simple bivector is composed of Isoclinic rotations arise when these magnitudes are equal in which case the decomposition into two simple bivectors is not unique 22 Bivectors in general do not commute but one exception is orthogonal bivectors and exponents of them So if the bivector B B1 B2 where B1 and B2 are orthogonal simple bivectors is used to generate a rotation it decomposes into two simple rotations that commute as follows R exp 12 B1 B2 exp 12B1 exp 12B2 exp 12B2 exp 12B1 displaystyle R exp tfrac 1 2 mathbf B 1 mathbf B 2 exp tfrac 1 2 mathbf B 1 exp tfrac 1 2 mathbf B 2 exp tfrac 1 2 mathbf B 2 exp tfrac 1 2 mathbf B 1 nbsp It is always possible to do this as all bivectors can be expressed as sums of orthogonal bivectors Spacetime rotations edit Spacetime is a mathematical model for our universe used in special relativity It consists of three space dimensions and one time dimension combined into a single four dimensional space It is naturally described using geometric algebra and bivectors with the Euclidean metric replaced by a Minkowski metric That algebra is identical to that of Euclidean space except the signature is changed so ei2 1 i 1 2 3 1 i 4 displaystyle mathbf e i 2 begin cases 1 amp i 1 2 3 1 amp i 4 end cases nbsp Note the order and indices above are not universal here e4 is the time like dimension The geometric algebra is Cl3 1 R and the subspace of bivectors is 2R3 1 The simple bivectors are of two types The simple bivectors e23 e31 and e12 have negative squares and span the bivectors of the three dimensional subspace corresponding to Euclidean space R3 These bivectors generate ordinary rotations in R3 The simple bivectors e14 e24 and e34 have positive squares and as planes span a space dimension and the time dimension These also generate rotations through the exponential map but instead of trigonometric functions hyperbolic functions are needed which generates a rotor as follows exp 12W8 cosh 128 Wsinh 128 displaystyle exp tfrac 1 2 boldsymbol Omega theta cosh tfrac 1 2 theta boldsymbol Omega sinh tfrac 1 2 theta nbsp where W is the bivector e14 etc identified via the metric with an antisymmetric linear transformation of R3 1 These are Lorentz boosts expressed in a particularly compact way using the same kind of algebra as in R3 and R4 In general all spacetime rotations are generated from bivectors through the exponential map that is a general rotor generated by bivector A is of the form R exp 12A displaystyle R exp tfrac 1 2 mathbf A nbsp The set of all rotations in spacetime form the Lorentz group and from them most of the consequences of special relativity can be deduced More generally this show how transformations in Euclidean space and spacetime can all be described using the same kind of algebra Maxwell s equations edit Note in this section traditional 3 vectors are indicated by lines over the symbols and spacetime vector and bivectors by bold symbols with the vectors J and A exceptionally in uppercase Maxwell s equations are used in physics to describe the relationship between electric and magnetic fields Normally given as four differential equations they have a particularly compact form when the fields are expressed as a spacetime bivector from 2R3 1 If the electric and magnetic fields in R3 are E and B then the electromagnetic bivector is F 1cE e4 B e123 displaystyle mathbf F frac 1 c overline E mathbf e 4 overline B mathbf e 123 nbsp where e4 is again the basis vector for the time like dimension and c is the speed of light The product B e123 yields the bivector that is Hodge dual to B in three dimensions as discussed above while E e4 as a product of orthogonal vectors is also bivector valued As a whole it is the electromagnetic tensor expressed more compactly as a bivector and is used as follows First it is related to the 4 current J a vector quantity given by J j cre4 displaystyle mathbf J overline j c rho mathbf e 4 nbsp where j is current density and r is charge density They are related by a differential operator which is e41c t displaystyle partial nabla mathbf e 4 frac 1 c frac partial partial t nbsp The operator is a differential operator in geometric algebra acting on the space dimensions and given by M M M When applied to vectors M is the divergence and M is the curl but with a bivector rather than vector result that is dual in three dimensions to the curl For general quantity M they act as grade lowering and raising differential operators In particular if M is a scalar then this operator is just the gradient and it can be thought of as a geometric algebraic del operator Together these can be used to give a particularly compact form for Maxwell s equations with sources F J displaystyle partial mathbf F mathbf J nbsp This equation when decomposed according to geometric algebra using geometric products which have both grade raising and grade lowering effects is equivalent to Maxwell s four equations It is also related to the electromagnetic four potential a vector A given by A A 1cVe4 displaystyle mathbf A overline A frac 1 c V mathbf e 4 nbsp where A is the vector magnetic potential and V is the electric potential It is related to the electromagnetic bivector as follows A F displaystyle partial mathbf A mathbf F nbsp using the same differential operator 23 Higher dimensions editAs has been suggested in earlier sections much of geometric algebra generalises well into higher dimensions The geometric algebra for the real space Rn is Cln R and the subspace of bivectors is 2Rn The number of simple bivectors needed to form a general bivector rises with the dimension so for n odd it is n 1 2 for n even it is n 2 So for four and five dimensions only two simple bivectors are needed but three are required for six and seven dimensions For example in six dimensions with standard basis e1 e2 e3 e4 e5 e6 the bivector e12 e34 e56 displaystyle mathbf e 12 mathbf e 34 mathbf e 56 nbsp is the sum of three simple bivectors but no less As in four dimensions it is always possible to find orthogonal simple bivectors for this sum Rotations in higher dimensions edit As in three and four dimensions rotors are generated by the exponential map so exp 12B displaystyle exp tfrac 1 2 mathbf B nbsp is the rotor generated by bivector B Simple rotations that take place in a plane of rotation around a fixed blade of dimension n 2 are generated by simple bivectors while other bivectors generate more complex rotations which can be described in terms of the simple bivectors they are sums of each related to a plane of rotation All bivectors can be expressed as the sum of orthogonal and commutative simple bivectors so rotations can always be decomposed into a set of commutative rotations about the planes associated with these bivectors The group of the rotors in n dimensions is the spin group Spin n One notable feature related to the number of simple bivectors and so rotation planes is that in odd dimensions every rotation has a fixed axis it is misleading to call it an axis of rotation as in higher dimensions rotations are taking place in multiple planes orthogonal to it This is related to bivectors as bivectors in odd dimensions decompose into the same number of bivectors as the even dimension below so have the same number of planes but one extra dimension As each plane generates rotations in two dimensions in odd dimensions there must be one dimension that is an axis that is not being rotated 24 Bivectors are also related to the rotation matrix in n dimensions As in three dimensions the characteristic equation of the matrix can be solved to find the eigenvalues In odd dimensions this has one real root with eigenvector the fixed axis and in even dimensions it has no real roots so either all or all but one of the roots are complex conjugate pairs Each pair is associated with a simple component of the bivector associated with the rotation In particular the log of each pair is the magnitude up to a sign while eigenvectors generated from the roots are parallel to and so can be used to generate the bivector In general the eigenvalues and bivectors are unique and the set of eigenvalues gives the full decomposition into simple bivectors if roots are repeated then the decomposition of the bivector into simple bivectors is not unique Projective geometry editGeometric algebra can be applied to projective geometry in a straightforward way The geometric algebra used is Cln R n 3 the algebra of the real vector space Rn This is used to describe objects in the real projective space RPn 1 The non zero vectors in Cln R or Rn are associated with points in the projective space so vectors that differ only by a scale factor so their exterior product is zero map to the same point Non zero simple bivectors in 2Rn represent lines in RPn 1 with bivectors differing only by a positive or negative scale factor representing the same line A description of the projective geometry can be constructed in the geometric algebra using basic operations For example given two distinct points in RPn 1 represented by vectors a and b the line containing them is given by a b or b a Two lines intersect in a point if A B 0 for their bivectors A and B This point is given by the vector p A B A B J 1 displaystyle mathbf p mathbf A lor mathbf B mathbf A times mathbf B J 1 nbsp The operation is the meet which can be defined as above in terms of the join J A B clarification needed for non zero A B Using these operations projective geometry can be formulated in terms of geometric algebra For example given a third non zero bivector C the point p lies on the line given by C if and only if p C 0 displaystyle mathbf p land mathbf C 0 nbsp So the condition for the lines given by A B and C to be collinear is A B C 0 displaystyle mathbf A lor mathbf B land mathbf C 0 nbsp which in Cl3 R and RP2 simplifies to ABC 0 displaystyle langle mathbf ABC rangle 0 nbsp where the angle brackets denote the scalar part of the geometric product In the same way all projective space operations can be written in terms of geometric algebra with bivectors representing general lines in projective space so the whole geometry can be developed using geometric algebra 15 Tensors and matrices edit As noted above a bivector can be written as a skew symmetric matrix which through the exponential map generates a rotation matrix that describes the same rotation as the rotor also generated by the exponential map but applied to the vector But it is also used with other bivectors such as the angular velocity tensor and the electromagnetic tensor respectively a 3 3 and 4 4 skew symmetric matrix or tensor Real bivectors in 2Rn are isomorphic to n n skew symmetric matrices or alternately to antisymmetric tensors of degree 2 on Rn While bivectors are isomorphic to vectors via the dual in three dimensions they can be represented by skew symmetric matrices in any dimension This is useful for relating bivectors to problems described by matrices so they can be re cast in terms of bivectors given a geometric interpretation then often solved more easily or related geometrically to other bivector problems 25 More generally every real geometric algebra is isomorphic to a matrix algebra These contain bivectors as a subspace though often in a way which is not especially useful These matrices are mainly of interest as a way of classifying Clifford algebras 26 See also edit nbsp Look up bivector in Wiktionary the free dictionary Dyadics Multivector Multilinear algebraNotes edit a b Dorst Leo Fontijne Daniel Mann Stephen 2009 Geometric Algebra for Computer Science An Object Oriented Approach to Geometry 2nd ed Morgan Kaufmann p 32 ISBN 978 0 12 374942 0 The algebraic bivector is not specific on shape geometrically it is an amount of directed area in a specific plane that s all a b Hestenes David 1999 New foundations for classical mechanics Fundamental Theories of Physics 2nd ed Springer p 21 ISBN 978 0 7923 5302 7 Lounesto 2001 p 33 a b c d Lounesto 2001 p 87 Forder Henry 1941 The Calculus of Extension p 79 via Internet Archive Parshall Karen Hunger Rowe David E 1997 The Emergence of the American Mathematical Research Community 1876 1900 American Mathematical Society p 31 ff ISBN 978 0 8218 0907 5 Farouki Rida T 2007 Chapter 5 Quaternions Pythagorean hodograph curves algebra and geometry inseparable Springer p 60 ff ISBN 978 3 540 73397 3 A discussion of quaternions from these years is at McAulay Alexander 1911 Quaternions In Chisholm Hugh ed Encyclopaedia Britannica Vol 22 11th ed Cambridge University Press pp 718 723 Gibbs Josiah Willard Wilson Edwin Bidwell 1901 Vector analysis a text book for the use of students of mathematics and physics Yale University Press p 481ff directional ellipse Boulanger Philippe Hayes Michael A 1993 Bivectors and waves in mechanics and optics Springer ISBN 978 0 412 46460 7 Boulanger P H Hayes M 1991 Bivectors and inhomogeneous plane waves in anisotropic elastic bodies In Wu Julian J Ting Thomas Chi tsai Barnett David M eds Modern theory of anisotropic elasticity and applications Society for Industrial and Applied Mathematics SIAM p 280 et seq ISBN 978 0 89871 289 6 Hestenes 1999 p 61 a b Lounesto 2001 p 35 Lounesto 2001 p 86 a b Hestenes David Ziegler Renatus 1991 Projective Geometry with Clifford Algebra PDF Acta Applicandae Mathematicae 23 25 63 CiteSeerX 10 1 1 125 368 doi 10 1007 bf00046919 S2CID 1702787 Archived from the original PDF on 2016 03 03 Retrieved 2010 01 01 Lounesto 2001 p 29 William E Baylis 1994 Theoretical methods in the physical sciences an introduction to problem solving using Maple V Birkhauser p 234 see footnote ISBN 978 0 8176 3715 6 The terms axial vector and pseudovector are often treated as synonymous but it is quite useful to be able to distinguish a bivector the pseudovector from its dual the axial vector In strict mathematical terms axial vectors are an n dimensional vector space equipped with the usual structure group GL n R but with the nonstandard representation A A det A det A Chris Doran Anthony Lasenby 2003 Geometric algebra for physicists Cambridge University Press p 56 ISBN 978 0 521 48022 2 Lounesto 2001 pp 37 39 Wildberger Norman J 2010 Area and Volume Wild Linear Algebra Vol 4 University of New South Wales via YouTube Lounesto 2001 pp 89 90 Lounesto 2001 pp 109 110 Lounesto 2001 p 222 Lounesto 2001 p 193 Lounesto 2001 p 217General references editDorst Leo Fontijne Daniel Mann Stephen 2009 2 3 3 Visualizing bivectors Geometric Algebra for Computer Science An Object Oriented Approach to Geometry 2nd ed Morgan Kaufmann p 31 ff ISBN 978 0 12 374942 0 Whitney Hassler 1957 Geometric Integration Theory Princeton Princeton University Press ISBN 978 0 486 44583 0 Lounesto Pertti 2001 Clifford algebras and spinors Cambridge Cambridge University Press ISBN 978 0 521 00551 7 permanent dead link Chris Doran amp Anthony Lasenby 2003 1 6 The outer product Geometric Algebra for Physicists Cambridge Cambridge University Press p 11 et seq ISBN 978 0 521 71595 9 Retrieved from https en wikipedia org w index php title Bivector amp oldid 1214745066, wikipedia, wiki, book, books, library,

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