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[[File:Rectangular coordinate systems index lowered.svg|thumb|Two different 3d [[Orthonormal basis|orthonormal bases]]: each basis consists of unit vectors that are mutually perpendicular.]]
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In [[geometry]] and [[linear algebra]], a '''Cartesian tensor''' uses an [[orthonormal basis]] to [[Representation (mathematics)|represent]] a [[tensor]] in a [[Euclidean space]] in the form of components. Converting a tensor's components from one such basis to another is through an [[orthogonal transformation]].
 
The most familiar coordinate systems are the [[Two-dimensional space|two-dimensional]] and [[Three-dimensional space|three-dimensional]] [[Cartesian coordinate]] systems. Cartesian tensors may be used with any Euclidean space, or more technically, any finite-dimensional [[vector space]] over the [[field (mathematics)|field]] of [[real number]]s that has an [[inner product]].
 
Use of Cartesian tensors occurs in [[physics]] and [[engineering]], such as with the [[Cauchy stress tensor]] and the [[moment of inertia]] tensor in [[rigid body dynamics]]. Sometimes general [[curvilinear coordinates]] are convenient, as in high-deformation [[continuum mechanics]], or even necessary, as in [[general relativity]]. While orthonormal bases may be found for some such coordinate systems (e.g. [[tangent]] to [[Spherical coordinate system|spherical coordinates]]), Cartesian tensors may provide considerable simplification for applications in which rotations of rectilinear coordinate axes suffice. The transformation is a [[passive transformation]], since the coordinates are changed and not the physical system.
 
==Cartesian basis and related terminology==
 
===Vectors in three dimensions===
 
In [[three-dimensional space|3d]] [[Euclidean space]], ℝ<sup>3</sup>, the [[standard basis]] is '''e'''<sub>x</sub>, '''e'''<sub>y</sub>, '''e'''<sub>z</sub>. Each basis vector points along the x-, y-, and z-axes, and the vectors are all [[unit vector]]s (or normalized), so the basis is [[orthonormal]].
 
Throughout, when referring to [[Cartesian coordinates]] in [[three dimensions]], a right-handed system is assumed and this is much more common than a left-handed system in practice, see [[orientation (vector space)]] for details.
 
For Cartesian tensors of order order 1, a Cartesian vector '''a''' can be written algebraically as a [[linear combination]] of the basis vectors '''e'''<sub>x</sub>, '''e'''<sub>y</sub>, '''e'''<sub>z</sub>:
 
:<math>\mathbf{a} = a_\text{x}\mathbf{e}_\text{x} + a_\text{y}\mathbf{e}_\text{y} + a_\text{z}\mathbf{e}_\text{z} </math>
 
where the [[coordinate vector|coordinate]]s of the vector with respect to the Cartesian basis are denoted ''a''<sub>x</sub>, ''a''<sub>y</sub>, ''a''<sub>z</sub>. It is common and helpful to display the basis vectors as [[column vector]]s
 
:<math> \mathbf{e}_\text{x} = \begin{pmatrix} 1 \\ 0 \\ 0 \end{pmatrix} \,,\quad \mathbf{e}_\text{y} = \begin{pmatrix} 0 \\ 1 \\ 0 \end{pmatrix} \,,\quad \mathbf{e}_\text{z} = \begin{pmatrix} 0 \\ 0 \\ 1 \end{pmatrix} </math>
 
when we have a [[coordinate vector]] in a column vector representation:
 
:<math>\mathbf{a} = \begin{pmatrix} a_\text{x} \\ a_\text{y} \\ a_\text{z} \end{pmatrix} </math>
 
A [[row vector]] representation is also legitimate, although in the context of general curvilinear coordinate systems the row and column vector representations are used separately for specific reasons – see [[Einstein notation]] and [[covariance and contravariance of vectors]] for why.
 
The term "component" of a vector is ambiguous: it could refer to:
 
*a specific coordinate of the vector such as ''a''<sub>z</sub> (a scalar), and similarly for ''x'' and ''y'', or
*the coordinate scalar-multiplying the corresponding basis vector, in which case the "y-component" of '''a''' is ''a''<sub>y</sub>'''e'''<sub>y</sub> (a vector), and similarly for y and z.
 
A more general notation is [[tensor index notation]], which has the flexibility of numerical values rather than fixed coordinate labels. {{anchor|indices replace labels}}<!---PLEASE DON'T DELETE THIS ANCHOR, IT'S USED LATER--->The Cartesian labels are replaced by tensor indices in the basis vectors '''e'''<sub>x</sub> ↦ '''e'''<sub>1</sub>, '''e'''<sub>y</sub> ↦ '''e'''<sub>2</sub>, '''e'''<sub>z</sub> ↦ '''e'''<sub>3</sub> and coordinates ''A''<sub>x</sub> ↦ ''A''<sub>1</sub>, ''A''<sub>y</sub> ↦ ''A''<sub>2</sub>, ''A''<sub>z</sub> ↦ ''A''<sub>3</sub>. In general, the notation '''e'''<sub>1</sub>, '''e'''<sub>2</sub>, '''e'''<sub>3</sub> refers to ''any'' basis, and ''A''<sub>1</sub>, ''A''<sub>2</sub>, ''A''<sub>3</sub> refers to the corresponding coordinate system; although here they are restricted to the Cartesian system. Then:
 
:<math>\mathbf{a} = a_1\mathbf{e}_1 + a_2\mathbf{e}_2 + a_3\mathbf{e}_3 = \sum_{i=1}^3 a_i\mathbf{e}_i</math>
 
It is standard to use the [[Einstein notation]] – the summation sign for summation over an index repeated only twice within a term may be suppressed for notational conciseness:
 
:<math>\mathbf{a} = \sum_{i=1}^3 a_i\mathbf{e}_i \equiv a_i\mathbf{e}_i </math>
 
An advantage of the index notation over coordinate-specific notations is the independence of the dimension of the underlying vector space, i.e. the same expression on the right hand side takes the same form in higher dimensions (see below). Previously, the Cartesian labels x, y, z were just labels and ''not'' indices. (It is informal to say "''i'' = x, y, z").
 
===Second order tensors in three dimensions===
 
A [[dyadic tensor]] '''T''' is an order 2 tensor formed by the [[tensor product]] &otimes; of two Cartesian vectors '''a''' and '''b''', written '''T''' = '''a''' &otimes; '''b'''. Analogous to vectors, it can be written as a linear combination of the tensor basis {{nowrap|'''e'''<sub>x</sub> &otimes; '''e'''<sub>x</sub> ≡ '''e'''<sub>xx</sub>}}, {{nowrap|'''e'''<sub>x</sub> &otimes; '''e'''<sub>y</sub> ≡ '''e'''<sub>xy</sub>}}, ..., {{nowrap|'''e'''<sub>z</sub> &otimes; '''e'''<sub>z</sub> ≡ '''e'''<sub>zz</sub>}} (the right hand side of each identity is only an abbreviation, nothing more):
 
:<math>\begin{array}{ccl}
\mathbf{T} & = & \left(a_\text{x}\mathbf{e}_\text{x} + a_\text{y}\mathbf{e}_\text{y} + a_\text{z}\mathbf{e}_\text{z}\right)\otimes\left(b_\text{x}\mathbf{e}_\text{x} + b_\text{y}\mathbf{e}_\text{y} + b_\text{z}\mathbf{e}_\text{z}\right) \\
&  & \\
& = & a_\text{x} b_\text{x} \mathbf{e}_\text{x} \otimes \mathbf{e}_\text{x} + a_\text{x} b_\text{y}\mathbf{e}_\text{x} \otimes \mathbf{e}_\text{y} + a_\text{x} b_\text{z}\mathbf{e}_\text{x} \otimes \mathbf{e}_\text{z} \\
& & {} + a_\text{y} b_\text{x}\mathbf{e}_\text{y} \otimes \mathbf{e}_\text{x} + a_\text{y} b_\text{y}\mathbf{e}_\text{y} \otimes \mathbf{e}_\text{y} + a_\text{y} b_\text{z}\mathbf{e}_\text{y} \otimes \mathbf{e}_\text{z} \\
& & {} + a_\text{z} b_\text{x} \mathbf{e}_\text{z} \otimes \mathbf{e}_\text{x} + a_\text{z} b_\text{y}\mathbf{e}_\text{z} \otimes \mathbf{e}_\text{y} + a_\text{z} b_\text{z}\mathbf{e}_\text{z} \otimes \mathbf{e}_\text{z}  \\
\end{array}</math>
 
Representing each basis tensor as a matrix:
 
:<math>
{\mathbf{e}_\text{x} \otimes \mathbf{e}_\text{x}} \equiv \mathbf{e}_\text{xx} = \begin{pmatrix}
1 & 0 & 0\\
0 & 0 & 0\\
0 & 0 & 0
\end{pmatrix}\,,\quad
{\mathbf{e}_\text{x} \otimes \mathbf{e}_\text{y}} \equiv \mathbf{e}_\text{xy} = \begin{pmatrix}
0 & 1 & 0\\
0 & 0 & 0\\
0 & 0 & 0
\end{pmatrix}\,,\cdots \quad {\mathbf{e}_\text{z} \otimes \mathbf{e}_\text{z}} \equiv \mathbf{e}_\text{zz} = \begin{pmatrix}
0 & 0 & 0\\
0 & 0 & 0\\
0 & 0 & 1
\end{pmatrix}</math>
 
then '''T''' can be represented more systematically as a matrix:
 
:<math> \mathbf{T} = \begin{pmatrix}
a_\text{x} b_\text{x} & a_\text{x} b_\text{y} & a_\text{x} b_\text{z} \\
a_\text{y} b_\text{x} & a_\text{y} b_\text{y} & a_\text{y} b_\text{z} \\
a_\text{z} b_\text{x} & a_\text{z} b_\text{y} & a_\text{z} b_\text{z}
\end{pmatrix}</math>
 
See [[matrix multiplication#The inner and outer products|matrix multiplication]] for the notational correspondence between matrices and the dot and tensor products.
 
More generally, whether or not '''T''' is a tensor product of two vectors, it is always a linear combination of the basis tensors with coordinates ''T''<sub>xx</sub>, ''T''<sub>xy</sub>, ... ''T''<sub>zz</sub>:
 
:<math>\begin{array}{ccl}
\mathbf{T}& = & T_\text{xx}\mathbf{e}_\text{xx} + T_\text{xy}\mathbf{e}_\text{xy} + T_\text{xz}\mathbf{e}_\text{xz} \\
& & {} + T_\text{yx}\mathbf{e}_\text{yx} + T_\text{yy}\mathbf{e}_\text{yy} + T_\text{yz}\mathbf{e}_\text{yz} \\
& & {} + T_\text{zx}\mathbf{e}_\text{zx} + T_\text{zy}\mathbf{e}_\text{zy} + T_\text{zz}\mathbf{e}_\text{zz} 
\end{array}</math>
 
while in terms of tensor indices:
 
:<math>\mathbf{T} = T_{ij} \mathbf{e}_{ij} \equiv \sum_{ij} T_{ij} \mathbf{e}_i \otimes \mathbf{e}_j \,,</math>
 
and in matrix form:
 
:<math> \mathbf{T} = \begin{pmatrix}
T_\text{xx} & T_\text{xy} & T_\text{xz} \\
T_\text{yx} & T_\text{yy} & T_\text{yz} \\
T_\text{zx} & T_\text{zy} & T_\text{zz}
\end{pmatrix}</math>
 
Second order tensors occur naturally in physics and engineering when physical quantities have directional dependence in the system, often in a "stimulus-response" way. This can be mathematically seen through one aspect of tensors - they are [[multilinear function]]s. A second order tensor '''T''' which takes in a vector '''u''' of some magnitude and direction will return a vector '''v'''; of a different magnitude and in a different direction to '''u''', in general. The notation used for [[function (mathematics)|function]]s in [[mathematical analysis]] leads us to write {{nowrap|'''v''' {{=}} '''T'''('''u''')}},<ref name="MTW notation">{{cite book|author=[[Charles W. Misner|C.W. Misner]], [[Kip S. Thorne|K.S. Thorne]], [[John A. Wheeler|J.A. Wheeler]]|title=[[Gravitation (book)|Gravitation]]|page=|isbn=0-7167-0344-0}}, used throughout</ref> while the same idea can be expressed in matrix and index notations<ref name="Kibble notation">{{cite book|title=classical mechanics|year=1973|publisher=McGraw Hill|edition=2nd|series=European physics series|author=T. W. B. Kibble|isbn=978-0-07-084018-8}}, see Appendix C.</ref> (including the summation convention), respectively:
 
:<math> \begin{pmatrix}
v_\text{x} \\
v_\text{y} \\
v_\text{z}
\end{pmatrix} = \begin{pmatrix}
T_\text{xx} & T_\text{xy} & T_\text{xz} \\
T_\text{yx} & T_\text{yy} & T_\text{yz} \\
T_\text{zx} & T_\text{zy} & T_\text{zz}
\end{pmatrix}\begin{pmatrix}
u_\text{x} \\
u_\text{y} \\
u_\text{z}
\end{pmatrix}\,,\quad v_i = T_{ij}u_j </math>
 
By "linear", if {{nowrap|'''u''' {{=}} ''ρ'''''r''' + ''σ'''''s'''}} for two scalars ''ρ'' and ''σ'' and vectors '''r''' and '''s''', then in function and index notations:
 
:<math> \mathbf{v} = \mathbf{T}(\rho\mathbf{r} + \sigma\mathbf{s}) = \rho\mathbf{T}(\mathbf{r}) + \sigma\mathbf{T}(\mathbf{s}) </math>
:<math> v_i = T_{ij}(\rho r_j + \sigma s_j) = \rho T_{ij} r_j + \sigma T_{ij} s_j </math>
 
and similarly for the matrix notation. The function, matrix, and index notations all mean the same thing. The matrix forms provide a clear display of the components, while the index form allows easier tensor-algebraic manipulation of the formulae in a compact manner. Both provide the physical interpretation of ''directions''; vectors have one direction, while second order tensors connect two directions together. One can associate a tensor index or coordinate label with a basis vector direction.
 
The use of second order tensors are the minimum to describe changes in magnitudes and directions of vectors, as the [[dot product]] of two vectors is always a scalar, while the [[cross product]] of two vectors is always a pseudovector perpendicular to the plane defined by the vectors, so these products of vectors alone cannot obtain a new vector of any magnitude in any direction. (See also below for more on the dot and cross products). The tensor product of two vectors is a second order tensor, although this has no obvious directional interpretation by itself.
 
The previous idea can be continued: if '''T''' takes in two vectors '''p''' and '''q''', it will return a scalar ''r''. In function notation we write ''r'' = '''T'''('''p''', '''q'''), while in matrix and index notations (including the summation convention) respectively:
 
:<math> r = \begin{pmatrix}
p_\text{x} &
p_\text{y} &
p_\text{z}
\end{pmatrix}\begin{pmatrix}
T_\text{xx} & T_\text{xy} & T_\text{xz} \\
T_\text{yx} & T_\text{yy} & T_\text{yz} \\
T_\text{zx} & T_\text{zy} & T_\text{zz}
\end{pmatrix}\begin{pmatrix}
q_\text{x} \\
q_\text{y} \\
q_\text{z}
\end{pmatrix}\,,\quad r = p_i T_{ij} q_j </math>
 
The tensor '''T''' is linear in both input vectors. When vectors and tensors are written without reference to components, and indices are not used, sometimes a dot · is placed where summations over indices (known as [[tensor contraction]]s) are taken. For the above cases:<ref name="MTW notation"/><ref name="Kibble notation"/>
 
:<math>\mathbf{v} = \mathbf{T}\cdot\mathbf{u}</math>
:<math> r = \mathbf{p}\cdot\mathbf{T}\cdot\mathbf{q}</math>
 
motivated by the dot product notation:
 
:<math>\mathbf{a}\cdot\mathbf{b} \equiv a_i b_i</math>
 
More generally, a tensor of order ''m'' which takes in ''n'' vectors (where ''n'' is between 0 and ''m'' inclusive) will return a tensor of order {{nowrap|''m'' − ''n''}}, see [[tensor#As multilinear maps|Tensor: As multilinear maps]] for further generalizations and details. The concepts above also apply to pseudovectors in the same way as for vectors. The vectors and tensors themselves can vary within throughout space, in which case we have [[vector field]]s and [[tensor field]]s, and can also depend on time.
 
Following are some examples:
 
:{| class="wikitable"
|-
! scope="col" width="200" | An applied or given...
! scope="col" width="200" | ...to a material or object of...
! scope="col" width="200" | ...results in...
! scope="col" width="200" | ...in the material or object, given by:
|-
| [[unit vector]] '''n''' || [[Cauchy stress tensor]] '''σ''' || a traction force '''t''' || <math>\mathbf{t}=\boldsymbol{\sigma}\cdot\mathbf{n}</math>
|-
|scope="row" rowspan="2"| [[angular velocity]] '''ω''' || [[moment of inertia]] '''I''' || an [[angular momentum]] '''J''' || <math>\mathbf{J}=\mathbf{I}\cdot\boldsymbol{\omega}</math>
|-
|| [[moment of inertia]] '''I''' || a rotational [[kinetic energy]] ''T'' || <math>T=\frac{1}{2}\boldsymbol{\omega}\cdot\mathbf{I}\cdot\boldsymbol{\omega}</math>
|-
|scope="row" rowspan="2"| [[electric field]] '''E''' || [[electrical conductivity]] '''σ''' || a [[current density]] flow '''J''' || <math>\mathbf{J}=\boldsymbol{\sigma}\cdot\mathbf{E}</math>
|-
|| [[polarizability]] '''α''' (related to the [[permittivity]] '''ε''' and [[electric susceptibility]] '''χ'''<sub>E</sub>) || an induced [[polarization density|polarization]] field '''P''' || <math>\mathbf{P}=\boldsymbol{\alpha}\cdot\mathbf{E}</math>
|-
| [[magnetic field|magnetic '''H''' field]] || [[magnetic permeability]] '''μ''' || a [[magnetic field|magnetic '''B''' field]] || <math>\mathbf{B}=\boldsymbol{\mu}\cdot\mathbf{H}</math>
|-
|}
 
For the electrical conduction example, the index and matrix notations would be:
 
:<math>J_i = \sigma_{ij}E_j \equiv \sum_{j} \sigma_{ij}E_j </math>
:<math>\begin{pmatrix} J_\text{x} \\ J_\text{y} \\ J_\text{z} \end{pmatrix} = \begin{pmatrix}
\sigma_\text{xx} & \sigma_\text{xy} & \sigma_\text{xz} \\
\sigma_\text{yx} & \sigma_\text{yy} & \sigma_\text{yz} \\
\sigma_\text{zx} & \sigma_\text{zy} & \sigma_\text{zz}
\end{pmatrix} \begin{pmatrix} E_\text{x} \\ E_\text{y} \\ E_\text{z} \end{pmatrix} </math>
 
while for the rotational kinetic energy ''T'':
 
:<math>T = \frac{1}{2} \omega_i I_{ij} \omega_j \equiv \frac{1}{2} \sum_{ij} \omega_i I_{ij} \omega_j \,,</math>
:<math>T = \frac{1}{2} \begin{pmatrix} \omega_\text{x} & \omega_\text{y} & \omega_\text{z} \end{pmatrix} \begin{pmatrix}
I_\text{xx} & I_\text{xy} & I_\text{xz} \\
I_\text{yx} & I_\text{yy} & I_\text{yz} \\
I_\text{zx} & I_\text{zy} & I_\text{zz}
\end{pmatrix} \begin{pmatrix} \omega_\text{x} \\ \omega_\text{y} \\ \omega_\text{z} \end{pmatrix} \,.</math>
 
See also [[constitutive equation]] for more specialized examples.
 
===Vectors and tensors in ''n'' dimensions===
 
In ''n''-dimensional Euclidean space over the real numbers, ℝ<sup>''n''</sup>, the standard basis is denoted '''e'''<sub>1</sub>, '''e'''<sub>2</sub>, '''e'''<sub>3</sub>, ... '''e'''<sub>''n''</sub>. Each basis vector '''e'''<sub>''i''</sub> points along the positive ''x<sub>i</sub>'' axis, with the basis being orthonormal. Component ''j'' of '''e'''<sub>''i''</sub> is given by the [[Kronecker delta]]:
 
:<math>(\mathbf{e}_i)_j = \delta_{ij} </math>
 
A vector in ℝ<sup>''n''</sup> takes the form:
 
:<math>\mathbf{a} = a_i\mathbf{e}_i \equiv \sum_i a_i\mathbf{e}_i \,.</math>
 
Similarly for the order 2 tensor above, for each vector '''a''' and '''b''' in ℝ<sup>''n''</sup>:
 
:<math>\mathbf{T} = a_i b_j \mathbf{e}_{ij} \equiv \sum_{ij} a_i b_j \mathbf{e}_i \otimes \mathbf{e}_j \,,</math>
 
or more generally:
 
:<math> \mathbf{T} = T_{ij} \mathbf{e}_{ij} \equiv \sum_{ij} T_{ij} \mathbf{e}_i \otimes \mathbf{e}_j \,.</math>
 
==Transformations of Cartesian vectors (any number of dimensions)==
 
[[File:Rectangular coordinate system position vector index lowered.svg|thumb|The same [[position vector]] '''x''' represented in two 3d rectangular coordinate systems each with an [[orthonormal basis]], the cuboids illustrate the [[parallelogram law]] for adding vector components.]]
 
===Meaning of "invariance" under coordinate transformations===
 
The [[position vector]] '''x''' in ℝ<sup>''n''</sup> is a simple and common example of a vector, and can be represented in ''any'' [[coordinate system]]. Consider the case of [[rectangular coordinate system]]s with orthonormal bases only. It is possible to have a coordinate system with rectangular geometry if the basis vectors are all mutually perpendicular and not normalized, in which case the basis is ortho''gonal'' but not ortho''normal''. However, orthonormal bases are easier to manipulate and are often used in practice. The following results are true for orthonormal bases, not orthogonal ones.
 
In one rectangular coordinate system, '''x''' as a contravector has coordinates ''x<sup>i</sup>'' and basis vectors '''e'''<sub>''i''</sub>, while as a covector it has coordinates ''x<sub>i</sub>'' and basis covectors '''e'''<sup>''i''</sup>, and we have:
 
:<math>\mathbf{x}=x^i\mathbf{e}_i\,,\quad \mathbf{x}=x_i\mathbf{e}^i</math>
 
In another rectangular coordinate system, '''x''' as a contravector has coordinates ''{{overline|x}}<sup>i</sup>'' and bases {{overline|'''e'''}}<sub>''i''</sub>, while as a covector it has coordinates ''{{overline|x}}<sub>i</sub>'' and bases {{overline|'''e'''}}<sup>''i''</sup>, and we have:
 
:<math>\mathbf{x}=\bar{x}^i\bar{\mathbf{e}}_i\,,\quad \mathbf{x}=\bar{x}_i\bar{\mathbf{e}}^i</math>
 
Each new coordinate is a function of all the old ones, and vice versa for the [[inverse function]]:
 
:<math>\bar{x}{}^i=\bar{x}{}^i\left(x^1,x^2,\cdots\right) \quad \rightleftharpoons \quad x{}^i = x{}^i\left(\bar{x}^1,\bar{x}^2,\cdots\right)</math>
 
:<math>\bar{x}{}_i=\bar{x}{}_i\left(x_1,x_2,\cdots\right) \quad \rightleftharpoons \quad x{}_i = x{}_i\left(\bar{x}_1,\bar{x}_2,\cdots\right)</math>
 
and similarly each new basis vector is a function of all the old ones, and vice versa for the inverse function:
 
:<math>\bar{\mathbf{e}}{}_j = \bar{\mathbf{e}}{}_j\left(\mathbf{e}_1,\mathbf{e}_2\cdots\right) \quad \rightleftharpoons \quad \mathbf{e}{}_j = \mathbf{e}{}_j \left(\bar{\mathbf{e}}_1,\bar{\mathbf{e}}_2\cdots\right)</math>
 
:<math>\bar{\mathbf{e}}{}^j = \bar{\mathbf{e}}{}^j\left(\mathbf{e}^1,\mathbf{e}^2\cdots\right) \quad \rightleftharpoons \quad \mathbf{e}{}^j = \mathbf{e}{}^j \left(\bar{\mathbf{e}}^1,\bar{\mathbf{e}}^2\cdots\right)</math>
 
for all ''i'', ''j''.
 
A vector is invariant under any change of basis, so if coordinates transform according to a [[transformation matrix]] '''L''', the bases transform according to the [[matrix inverse]] '''L'''<sup>−1</sup>, and conversely if the coordinates transform according to inverse '''L'''<sup>−1</sup>, the bases transform according to the matrix '''L'''. The difference between each of these transformations is shown conventionally through the indices as superscripts for contravariance and subscripts for covariance, and the coordinates and bases are [[linear transformation|linearly transformed]] according to the following rules:
 
:{| class="wikitable"
|-
! Vector elements
! Contravariant transformation law
! Covariant transformation law
|-
! Coordinates
| <math>\bar{x}^j = x^i (\boldsymbol{\mathsf{L}})_i{}^j = x^i \mathsf{L}_i{}^j</math>
| <math>\bar{x}_j = x_k(\boldsymbol{\mathsf{L}}^{-1})_j{}^k</math>
|-
! Basis
| <math>\bar{\mathbf{e}}_j = (\boldsymbol{\mathsf{L}}^{-1})_j{}^k\mathbf{e}_k</math>
| <math>\bar{\mathbf{e}}^j = (\boldsymbol{\mathsf{L}})_i{}^j \mathbf{e}^i = \mathsf{L}_i{}^j \mathbf{e}^i</math>
|-
! Any vector
| <math>\bar{x}^j \bar{\mathbf{e}}_j = x^i \mathsf{L}_i{}^j (\boldsymbol{\mathsf{L}}^{-1})_j{}^k \mathbf{e}_k = x^i \delta_i{}^k \mathbf{e}_k = x^i \mathbf{e}_i </math>
| <math>\bar{x}_j \bar{\mathbf{e}}^j = x_i (\boldsymbol{\mathsf{L}}^{-1})_j{}^i \mathsf{L}_k{}^j \mathbf{e}^k = x_i \delta^i{}_k \mathbf{e}^k = x_i \mathbf{e}^i</math>
|-
|}
 
where L<sub>''i''</sub><sup>''j''</sup> represents the entries of the [[transformation matrix]] (row number is ''i'' and column number is ''j'') and ('''L'''<sup>−1</sup>)<sub>''i''</sub><sup>''k''</sup> denotes the entries of the [[inverse matrix]] of the matrix L<sub>''i''</sub><sup>''k''</sup>.
 
If '''L''' is an [[orthogonal transformation]] ([[orthogonal matrix]]), the objects transforming by it are defined as '''Cartesian tensors'''. This geometrically has the interpretation that a rectangular coordinate system is mapped to another rectangular coordinate system, in which the [[Norm (mathematics)|norm]] of the vector '''x''' is preserved (and distances are preserved).
 
The [[determinant]] of '''L''' is det('''L''') = ±1, which corresponds to two types of orthogonal transformation: (+1) for [[rotation (mathematics)|rotations]] and (−1) for [[improper rotation]]s (including [[reflection (mathematics)|reflection]]s).
 
There are considerable algebraic simplifications, the [[matrix transpose]] is the [[inverse matrix|inverse]] from the definition of an orthogonal transformation:
 
:<math>\boldsymbol{\mathsf{L}}^{\mathrm{T}}=\boldsymbol{\mathsf{L}}^{-1}\Rightarrow(\boldsymbol{\mathsf{L}}^{-1})_i{}^j=(\boldsymbol{\mathsf{L}}^{\mathrm{T}})_i{}^j=(\boldsymbol{\mathsf{L}})^j{}_i=\mathsf{L}^j{}_i</math>
 
From the previous table, orthogonal transformations of covectors and contravectors are identical. There is no need to differ between [[raising and lowering indices]], and in this context and applications to physics and engineering the indices are usually all subscripted to remove confusion for [[exponent]]s. All indices will be lowered in the remainder of this article. One can determine the actual raised and lowered indices by considering which quantities are covectors or contravectors, and the relevant transformation rules.
 
Exactly the same transformation rules apply to any vector '''a''', not only the position vector. If its components ''a''<sub>''i''</sub> do not transform according to the rules, '''a''' is not a vector.
 
Despite the similarity between the expressions above, for the change of coordinates such as {{nowrap|''{{overline|x}}<sup>j</sup>'' {{=}} '''L'''<sub>''i''</sub><sup>''j''</sup>''x<sup>i</sup>''}}, and the action of a tensor on a vector like {{nowrap|''b<sub>i</sub>'' {{=}} ''T<sub>ij</sub>a<sub>j</sub>''}}, '''L''' is not a tensor, but '''T''' is. In the change of coordinates, '''L''' is a ''matrix'', used to relate two rectangular coordinate systems with orthonormal bases together. For the tensor relating a vector to a vector, the vectors and tensors throughout the equation all belong to the same coordinate system and basis.
 
===Derivatives and Jacobian matrix elements===
 
The entries of '''L''' are [[partial derivative]]s of the new or old coordinates with respect to the old or new coordinates, respectively.
 
Differentiating ''{{overline|x}}<sub>i</sub>'' with respect to ''x<sub>k</sub>'':
 
:<math>\frac{\partial\bar{x}_i}{\partial x_k}=\frac{\partial}{\partial x_k}(x_j \mathsf{L}_{ji})=\mathsf{L}_{ji}\frac{\partial x_j}{\partial x_k}= \delta_{kj}\mathsf{L}_{ji} = \mathsf{L}_{ki}</math>
 
so
 
:<math>\mathsf{L}_i{}^j \equiv \mathsf{L}_{ij} = \frac{\partial\bar{x}_j}{\partial x_i} </math>
 
is an element of the [[Jacobian matrix]]. There is a (partially mnemonical) correspondence between index positions attached to '''L''' and in the partial derivative: ''i'' at the top and ''j'' at the bottom, in each case, although for Cartesian tensors the indices can be lowered.
 
Conversely, differentiating ''x<sub>j</sub>'' with respect to ''{{overline|x}}<sub>i</sub>'':
 
:<math>\frac{\partial x_j}{\partial\bar{x}_k}=\frac{\partial}{\partial\bar{x}_k}(\bar{x}_i(\boldsymbol{\mathsf{L}}^{-1})_{ij})=\frac{\partial\bar{x}_i}{\partial\bar{x}_k}(\boldsymbol{\mathsf{L}}^{-1})_{ij}=\delta_{ki} (\boldsymbol{\mathsf{L}}^{-1})_{ij}=(\boldsymbol{\mathsf{L}}^{-1})_{kj}</math>
so
 
:<math>(\boldsymbol{\mathsf{L}}^{-1})_i{}^j \equiv (\boldsymbol{\mathsf{L}}^{-1})_{ij}=\frac{\partial x_j}{\partial\bar{x}_i}</math>
 
is an element of the inverse Jacobian matrix, with a similar index correspondence.
   
Many sources state transformations in terms of the partial derivatives:
 
{{Equation box 1
|indent =:
|equation = <math>\begin{array}{c}
\bar{x}_j = x_i\frac{\partial\bar{x}_j}{\partial x_i} \\
\upharpoonleft\downharpoonright\\
x_j = \bar{x}_i\frac{\partial x_j}{\partial\bar{x}_i}
\end{array}
</math>
|cellpadding= 6
|border = 1
|border colour = black
|background colour=white}}
 
and the explicit matrix equations in 3d are:
 
:<math>\bar{\mathbf{x}}=\boldsymbol{\mathsf{L}}\mathbf{x}</math>
 
:<math>\begin{pmatrix}\bar{x}_1\\
\bar{x}_2\\
\bar{x}_3
\end{pmatrix}=\begin{pmatrix}\frac{\partial\bar{x}_1}{\partial x_1} & \frac{\partial\bar{x}_1}{\partial x_2} & \frac{\partial\bar{x}_1}{\partial x_3}\\
\frac{\partial\bar{x}_2}{\partial x_1} & \frac{\partial\bar{x}_2}{\partial x_2} & \frac{\partial\bar{x}_2}{\partial x_3}\\
\frac{\partial\bar{x}_3}{\partial x_1} & \frac{\partial\bar{x}_3}{\partial x_2} & \frac{\partial\bar{x}_3}{\partial x_3}
\end{pmatrix}\begin{pmatrix}x_1\\
x_2\\
x_3
\end{pmatrix}
</math>
 
similarly for
 
:<math>\mathbf{x}=\boldsymbol{\mathsf{L}}^{-1}\bar{\mathbf{x}}=\boldsymbol{\mathsf{L}}^{\mathrm{T}}\bar{\mathbf{x}}</math>
 
===Projections along coordinate axes===
 
[[File:Rectangular coordinate systems angles index lowered.svg|500px|thumb|'''Top:''' Angles from the ''x<sub>i</sub>'' axes to the ''{{overline|x}}<sub>i</sub>'' axes. '''Bottom:''' Vice versa.]]
 
As with all linear transformations, '''L''' depends on the basis chosen. For two orthonormal bases
 
:<math>\bar{\mathbf{e}}_i\cdot\bar{\mathbf{e}}_j=\mathbf{e}_i\cdot\mathbf{e}_j=\delta_{ij}\,,\quad\left|\mathbf{e}_i\right|=\left|\bar{\mathbf{e}}_i\right|=1\,,</math>
   
* projecting '''x''' to the ''{{overline|x}}'' axes: <math>\bar{x}_i=\bar{\mathbf{e}}_i\cdot\mathbf{x}=\bar{\mathbf{e}}_i\cdot x_j\mathbf{e}_j=x_i \mathsf{L}_{ij} \,, </math>
 
* projecting '''x''' to the ''x'' axes: <math>x_i=\mathbf{e}_i\cdot\mathbf{x}=\mathbf{e}_i\cdot\bar{x}_j\bar{\mathbf{e}}_j=\bar{x}_j(\boldsymbol{\mathsf{L}}^{-1})_{ji} \,.</math>
 
Hence the components reduce to [[direction cosine]]s between the ''{{overline|x}}<sub>i</sub>'' and ''x<sub>j</sub>'' axes:
 
:<math>\mathsf{L}_{ij} = \bar{\mathbf{e}}_i\cdot\mathbf{e}_j=\cos\theta_{ij}</math>
:<math>(\boldsymbol{\mathsf{L}}^{-1})_{ij} = \mathbf{e}_i\cdot\bar{\mathbf{e}}_j=\cos\theta_{ji}</math>
 
where ''θ<sub>ij</sub>'' and ''θ<sub>ji</sub>'' are the angles between the ''{{overline|x}}<sub>i</sub>'' and ''x<sub>j</sub>'' axes. In general, ''θ<sub>ij</sub>'' is not equal to ''θ<sub>ji</sub>'', because for example ''θ''<sub>12</sub> and ''θ''<sub>21</sub> are two different angles.
 
The transformation of coordinates can be written:
 
{{Equation box 1
|indent =:
|equation = <math>\begin{array}{c}
\bar{x}_j = x_i \left(\bar{\mathbf{e}}_i\cdot\mathbf{e}_j \right) = x_i\cos\theta_{ij}\\
\upharpoonleft\downharpoonright\\
x_j = \bar{x}_i \left( \mathbf{e}_i\cdot\bar{\mathbf{e}}_j \right) = \bar{x}_i\cos\theta_{ji}
\end{array}
</math>
|cellpadding= 6
|border = 1
|border colour = black
|background colour=white}}
 
and the explicit matrix equations in 3d are:
 
:<math>\bar{\mathbf{x}}=\boldsymbol{\mathsf{L}}\mathbf{x}</math>
 
:<math>\begin{pmatrix}
\bar{x}_1\\
\bar{x}_2\\
\bar{x}_3
\end{pmatrix}=\begin{pmatrix}\bar{\mathbf{e}}_1\cdot\mathbf{e}_1 & \bar{\mathbf{e}}_1\cdot\mathbf{e}_2 & \bar{\mathbf{e}}_1\cdot\mathbf{e}_3\\
\bar{\mathbf{e}}_2\cdot\mathbf{e}_1 & \bar{\mathbf{e}}_2\cdot\mathbf{e}_2 & \bar{\mathbf{e}}_2\cdot\mathbf{e}_3\\
\bar{\mathbf{e}}_3\cdot\mathbf{e}_1 & \bar{\mathbf{e}}_3\cdot\mathbf{e}_2 & \bar{\mathbf{e}}_3\cdot\mathbf{e}_3
\end{pmatrix}\begin{pmatrix}x_1\\
x_2\\
x_3
\end{pmatrix}=\begin{pmatrix}\cos\theta_{11} & \cos\theta_{12} & \cos\theta_{13}\\
\cos\theta_{21} & \cos\theta_{22} & \cos\theta_{23}\\
\cos\theta_{31} & \cos\theta_{32} & \cos\theta_{33}
\end{pmatrix}\begin{pmatrix}x_1\\
x_2\\
x_3
\end{pmatrix}
</math>
 
similarly for
 
:<math>\mathbf{x}=\boldsymbol{\mathsf{L}}^{-1}\bar{\mathbf{x}}=\boldsymbol{\mathsf{L}}^{\mathrm{T}}\bar{\mathbf{x}}</math>
 
The geometric interpretation is the ''{{overline|x}}<sub>i</sub>'' components equal to the sum of projecting the ''x<sub>j</sub>'' components onto the ''{{overline|x}}<sub>j</sub>'' axes.
 
The numbers '''e'''<sub>''i''</sub>&sdot;'''e'''<sub>''j''</sub> arranged into a matrix would form a [[symmetric matrix]] (a matrix equal to its own transpose) due to the symmetry in the dot products, in fact it is the [[metric tensor]] '''g'''. By contrast '''e'''<sub>''i''</sub>&sdot;{{overline|'''e'''}}<sub>''j''</sub> or {{overline|'''e'''}}<sub>''i''</sub>&sdot;'''e'''<sub>''j''</sub> do ''not'' form symmetric matrices in general, as displayed above. Therefore, while the '''L''' matrices are still orthogonal, they are not symmetric.
 
Apart from a rotation about any one axis, in which the ''x<sub>i</sub>'' and ''{{overline|x}}<sub>i</sub>'' for some ''i'' coincide, the angles are not the same as [[Euler angle]]s, and so the '''L''' matrices are not the same as the [[rotation matrix|rotation matrices]].
 
==Transformation of the dot and cross products (three dimensions only)==
 
The [[dot product]] and [[cross product]] occur very frequently, in applications of vector analysis to physics and engineering, examples include:
 
*[[power (physics)|power]] transferred ''P'' by an object exerting a force '''F''' with velocity '''v''' along a straight-line path:  
::<math>P = \mathbf{v} \cdot \mathbf{F}</math>
*tangential [[velocity]] '''v''' at a point '''x''' of a rotating [[rigid body]] with [[angular velocity]] '''ω''':
::<math>\mathbf{v} = \boldsymbol{\omega} \times \mathbf{x}</math>
*[[potential energy]] ''U'' of a [[magnetic dipole]] of [[magnetic moment]] '''m''' in an external [[magnetic field]] '''B''':
::<math>U=-\mathbf{m}\cdot\mathbf{B}</math>
*[[angular momentum]] '''J''' for a particle with [[position vector]] '''r''' and [[momentum]] '''p''':
::<math>\mathbf{J} = \mathbf{r}\times \mathbf{p}</math>
*[[torque]] '''τ''' acting on an [[electric dipole]] of [[electric dipole moment]] '''p''' in an external [[electric field]] '''E''':
::<math>\boldsymbol{\tau} = \mathbf{p}\times\mathbf{E}</math>
*induced surface [[current density]] '''j'''<sub>S</sub> in a magnetic material of [[magnetization]] '''M''' on a surface with [[unit normal]] '''n''':
::<math>\mathbf{j}_\mathrm{S} = \mathbf{M} \times \mathbf{n}</math>
 
How these products transform under orthogonal transformations is illustrated below.
 
===Dot product, Kronecker delta, and metric tensor===
 
The [[dot product]] &sdot; of each possible pairing of the basis vectors follows from the basis being orthonormal. For perpendicular pairs we have
 
:<math>\begin{array}{cccc}
\mathbf{e}_\text{x}\cdot\mathbf{e}_\text{y} & = \mathbf{e}_\text{y}\cdot\mathbf{e}_\text{z} & =\mathbf{e}_\text{z}\cdot\mathbf{e}_\text{x}\\
\mathbf{e}_\text{y}\cdot\mathbf{e}_\text{x} & =\mathbf{e}_\text{z}\cdot\mathbf{e}_\text{y} & =\mathbf{e}_\text{x}\cdot\mathbf{e}_\text{z} & =0
\end{array}
</math>
 
while for parallel pairs we have
 
:<math>\mathbf{e}_\text{x}\cdot\mathbf{e}_\text{x}=\mathbf{e}_\text{y}\cdot\mathbf{e}_\text{y}=\mathbf{e}_\text{z}\cdot\mathbf{e}_\text{z}=1 .</math>
 
Replacing Cartesian labels by index notation as shown [[#indices replace labels|above]], these results can be summarized by
 
:<math>\mathbf{e}_i\cdot\mathbf{e}_j = \delta_{ij} </math>
 
where ''δ<sub>ij</sub>'' are the components of the [[Kronecker delta]]. The Cartesian basis can be used to represent ''δ'' in this way.
 
In addition, each [[metric tensor]] component ''g<sub>ij</sub>'' with respect to any basis is the dot product of a pairing of basis vectors:
 
:<math>g_{ij} = \mathbf{e}_i\cdot\mathbf{e}_j .</math>
 
For the Cartesian basis the components arranged into a matrix are:
 
:<math>\mathbf{g} = \begin{pmatrix}
g_\text{xx} & g_\text{xy} & g_\text{xz} \\
g_\text{yx} & g_\text{yy} & g_\text{zz} \\
g_\text{zx} & g_\text{zy} & g_\text{zz} \\
\end{pmatrix} = \begin{pmatrix}
\mathbf{e}_\text{x}\cdot\mathbf{e}_\text{x} & \mathbf{e}_\text{x}\cdot\mathbf{e}_\text{y} & \mathbf{e}_\text{x}\cdot\mathbf{e}_\text{z} \\
\mathbf{e}_\text{y}\cdot\mathbf{e}_\text{x} & \mathbf{e}_\text{y}\cdot\mathbf{e}_\text{y} & \mathbf{e}_\text{y}\cdot\mathbf{e}_\text{z} \\
\mathbf{e}_\text{z}\cdot\mathbf{e}_\text{x} & \mathbf{e}_\text{z}\cdot\mathbf{e}_\text{y} & \mathbf{e}_\text{z}\cdot\mathbf{e}_\text{z} \\
\end{pmatrix} = \begin{pmatrix}
1 & 0 & 0 \\
0 & 1 & 0 \\
0 & 0 & 1 \\
\end{pmatrix}</math>
 
so are the simplest possible for the metric tensor, namely the [[identity matrix|''δ'']]:
 
:<math>g_{ij} = \delta_{ij}</math>
 
This is ''not'' true for general bases: [[orthogonal coordinates]] have [[diagonal matrix|diagonal]] metrics containing various scale factors (i.e. not necessarily 1), while general [[curvilinear coordinates]] could also have nonzero entries for off-diagonal components.
 
The dot product of two vectors '''a''' and '''b''' transforms according to
 
:<math>\mathbf{a}\cdot\mathbf{b} = \bar{a}_j \bar{b}_j = a_i \mathsf{L}_{ij} b_k(\boldsymbol{\mathsf{L}}^{-1})_{jk} = a_i \delta_i{}_k b_k = a_i b_i </math>
 
which is intuitive, since the dot product of two vectors is a single scalar independent of any coordinates. This also applies more generally to any coordinate systems, not just rectangular ones; the dot product in one coordinate system is the same in any other.
 
===Cross and product, Levi-Civita symbol, and pseudovectors===
 
{{multiple image
|width=170
|image1=Epsilon volume cyclic permutations.svg
|image2=Epsilon volume anticyclic permutations.svg
|caption1=Cyclic permutations of index values and positively oriented cubic volume.
|caption2=Anticyclic permutations of index values and negatively oriented cubic volume.
|footer=Non-zero values of the [[Levi-Civita symbol]] ''ε<sub>ijk</sub>'' as the volume {{nowrap|'''e'''<sub>''i''</sub> · '''e'''<sub>''j''</sub> × '''e'''<sub>''k''</sub>}} of a cube spanned by the 3d orthonormal basis.}}
 
For the [[cross product]] × of two vectors, the results are (almost) the other way round. Again, assuming a right-handed 3d Cartesian coordinate system, [[cyclic permutation]]s in perpendicular directions yield the next vector in the cyclic collection of vectors:
 
:<math>\mathbf{e}_\text{x}\times\mathbf{e}_\text{y} = \mathbf{e}_\text{z}\,\quad \mathbf{e}_\text{y}\times\mathbf{e}_\text{z} = \mathbf{e}_\text{x}\,\quad \mathbf{e}_\text{z}\times\mathbf{e}_\text{x} = \mathbf{e}_\text{y}</math>
 
:<math>\mathbf{e}_\text{y}\times\mathbf{e}_\text{x} = - \mathbf{e}_\text{z}\,\quad \mathbf{e}_\text{z}\times\mathbf{e}_\text{y} = -\mathbf{e}_\text{x}\,\quad \mathbf{e}_\text{x}\times\mathbf{e}_\text{z} = -\mathbf{e}_\text{y}</math>
 
while parallel vectors clearly vanish:
 
:<math>\mathbf{e}_\text{x}\times\mathbf{e}_\text{x}=\mathbf{e}_\text{y}\times\mathbf{e}_\text{y}=\mathbf{e}_\text{z}\times\mathbf{e}_\text{z} = \boldsymbol{0}</math>
 
and replacing Cartesian labels by index notation as [[#indices replace labels|above]], these can be summarized by:
 
:<math>\mathbf{e}_i\times\mathbf{e}_j=\left [ \begin{array}{cc}
+\mathbf{e}_k & \text{cyclic permutations: } (i,j,k) = (1,2,3), (2,3,1), (3,1,2) \\
-\mathbf{e}_k & \text{anticyclic permutations: } (i,j,k) = (2,1,3), (3,2,1), (1,3,2) \\
\boldsymbol{0} & i=j
\end{array}\right.
</math>
 
where ''i'', ''j'', ''k'' are indices which take values 1, 2, 3. It follows that:
 
:<math>{\mathbf{e}_k\cdot\mathbf{e}_i\times\mathbf{e}_j}=\left[ \begin{array}{cc}
+1 & \text{cyclic permutations: } (i,j,k) = (1,2,3), (2,3,1), (3,1,2) \\
-1 & \text{anticyclic permutations: } (i,j,k) = (2,1,3), (3,2,1), (1,3,2) \\
0 & i=j\text{ or }j=k\text{ or }k=i
\end{array}\right.
</math>
 
These permutation relations and their corresponding values are important, and there is an object coinciding with this property: the [[Levi-Civita symbol]], denoted by ''ε''. The Levi-Civita symbol entries can be represented by the Cartesian basis:
 
:<math>\varepsilon_{ijk} = \mathbf{e}_i\cdot \mathbf{e}_j\times\mathbf{e}_k</math>
 
which geometrically corresponds to the [[volume]] of a [[cube]] spanned by the orthonormal basis vectors, with sign indicating [[orientation (vector space)|orientation]] (and ''not'' a "positive or negative volume"). Here, the orientation is fixed by ''ε''<sub>123</sub> = +1, for a right-handed system. A left-handed system would fix ''ε''<sub>123</sub> = −1 or equivalently ''ε''<sub>321</sub> = +1.
 
The [[scalar triple product]] can now be written:
 
:<math>\mathbf{c} \cdot \mathbf{a} \times \mathbf{b} = c_i\mathbf{e}_i \cdot a_j\mathbf{e}_j \times b_k\mathbf{e}_k = \varepsilon_{ijk} c_i a_j b_k </math>
 
with the geometric interpretation of volume (of the [[parallelepiped]] spanned by '''a''', '''b''', '''c''') and algebraically is a [[determinant]]:<ref>{{cite book|edition=2nd| author=M. R. Spiegel, S. Lipcshutz, D. Spellman| title=Vector analysis| series=Schaum’s Outlines|publisher=McGraw Hill |page=23|year=2009 | isbn=978-0-07-161545-7}}</ref>
 
:<math>\mathbf{c} \cdot \mathbf{a} \times \mathbf{b} = \begin{vmatrix} c_\text{x} & a_\text{x} & b_\text{x} \\ c_\text{y} & a_\text{y} & b_\text{y} \\ c_\text{z} & a_\text{z} & b_\text{z} \end{vmatrix} </math>
 
This in turn can be used to rewrite the [[cross product]] of two vectors as follows:
 
:<math>\begin{array}{ll}
& (\mathbf{a} \times \mathbf{b})_i = {\mathbf{e}_i \cdot \mathbf{a} \times \mathbf{b}} = \varepsilon_{\ell jk} {(\mathbf{e}_i)}_\ell a_j b_k = \varepsilon_{\ell jk} \delta_{i \ell} a_j b_k = \varepsilon_{ijk} a_j b_k \\
\Rightarrow & {\mathbf{a} \times \mathbf{b}} = (\mathbf{a} \times \mathbf{b})_i \mathbf{e}_i = \varepsilon_{ijk} a_j b_k \mathbf{e}_i
\end{array}</math>
 
Contrary to its appearance, the Levi-Civita symbol is ''not a tensor'', but a [[pseudotensor]], the components transform according to:
 
:<math>\bar{\varepsilon}_{pqr} = \det(\boldsymbol{\mathsf{L}}) \varepsilon_{ijk} \mathsf{L}_{ip}\mathsf{L}_{jq}\mathsf{L}_{kr} \,.</math>
 
Therefore the transformation of the cross product of '''a''' and '''b''' is:
<!---PLEASE LEAVE THE SPACES \;\; FOR CLARITY, AND LEAVE IN ALL THE STEPS - CLARITY IS NOT "TEXTBOOKY" - THANKS--->
:<math>\begin{align}
(\bar{\mathbf{a}} \times \bar{\mathbf{b}})_i & = \bar{\varepsilon}_{ijk} \bar{a}_j \bar{b}_k \\
& = \det(\boldsymbol{\mathsf{L}}) \;\; \varepsilon_{pqr} \mathsf{L}_{pi}\mathsf{L}_{qj} \mathsf{L}_{rk} \;\; a_m \mathsf{L}_{mj} \;\; b_n \mathsf{L}_{nk} \\
& = \det(\boldsymbol{\mathsf{L}}) \;\; \varepsilon_{pqr} \;\; \mathsf{L}_{pi} \;\; \mathsf{L}_{qj} (\boldsymbol{\mathsf{L}}^{-1})_{jm} \;\; \mathsf{L}_{rk} (\boldsymbol{\mathsf{L}}^{-1})_{kn} \;\; a_m \;\; b_n \\
& = \det(\boldsymbol{\mathsf{L}}) \;\; \varepsilon_{pqr} \;\; \mathsf{L}_{pi} \;\;  \delta_{qm} \;\; \delta_{rn} \;\; a_m \;\; b_n \\
& = \det(\boldsymbol{\mathsf{L}}) \;\; \mathsf{L}_{pi}  \;\;  \varepsilon_{pqr} a_q b_r \\
& = \det(\boldsymbol{\mathsf{L}}) \;\; (\mathbf{a}\times\mathbf{b})_p  \mathsf{L}_{pi}
\end{align}</math>
 
and so '''a''' × '''b''' transforms as a [[pseudovector]], because of the determinant factor.
 
The [[tensor index notation]] applies to any object which has entities that form [[multidimensional array]]s – not everything with indices is a tensor by default. Instead, tensors are defined by how their coordinates and basis elements change under a transformation from one coordinate system to another.
 
Note the cross product of two vectors is a pseudovector, while the cross product of a pseudovector with a vector is another vector.
 
===Applications of the ''δ'' tensor and ''ε'' pseudotensor===
 
Other identities can be formed from the ''δ'' tensor and ''ε'' pseudotensor, a notable and very useful identity is one that converts two Levi-Civita symbols adjacently contracted over two indices into an antisymmetrized combination of Kronecker deltas:
 
:<math>\varepsilon_{ijk}\varepsilon_{pqk} = \delta_{ip}\delta_{jq} - \delta_{iq}\delta_{jp} </math>
 
The index forms of the dot and cross products, together with this identity, greatly facilitate the manipulation and derivation of other [[vector calculus identities|identities in vector calculus]] and algebra, which in turn are used extensively in physics and engineering. For instance, it is clear the dot and cross products are distributive over vector addition:
 
:<math>\mathbf{a}\cdot(\mathbf{b} + \mathbf{c} ) =  a_i ( b_i + c_i ) =  a_i b_i + a_i c_i = \mathbf{a}\cdot\mathbf{b} + \mathbf{a}\cdot\mathbf{c} </math>
:<math> \mathbf{a}\times(\mathbf{b}+\mathbf{c}) = \mathbf{e}_i\varepsilon_{ijk} a_j ( b_k + c_k ) = \mathbf{e}_i \varepsilon_{ijk} a_j b_k + \mathbf{e}_i \varepsilon_{ijk} a_j c_k = \mathbf{a}\times\mathbf{b} + \mathbf{a}\times\mathbf{c}</math>
 
without resort to any geometric constructions - the derivation in each case is a quick line of algebra. Although the procedure is less obvious, the vector triple product can also be derived. Rewriting in index notation:
 
:<math> \left[ \mathbf{a}\times(\mathbf{b}\times\mathbf{c})\right]_i = \varepsilon_{ijk} a_j ( \varepsilon_{k \ell m} b_\ell c_m ) = (\varepsilon_{ijk} \varepsilon_{k \ell m} ) a_j b_\ell c_m </math>
 
and because cyclic permutations of indices in the ''ε'' symbol does not change its value, cyclically permuting indices in ''ε<sub>k{{ell}}m</sub>'' to obtain ''ε<sub>{{ell}}mk</sub>'' allows us to use the above ''δ''-''ε'' identity to convert the ''ε'' symbols into ''δ'' tensors:
 
:<math> \begin{align}
\left[ \mathbf{a}\times(\mathbf{b}\times\mathbf{c})\right]_i & = ( \delta_{i\ell} \delta_{jm} - \delta_{im} \delta_{j\ell} ) a_j b_\ell c_m \\
& = \delta_{i\ell} \delta_{jm} a_j b_\ell c_m - \delta_{im} \delta_{j\ell} a_j b_\ell c_m \\
& = a_j b_i c_j -  a_j b_j c_i \\
\end{align}</math>
 
thusly:
 
:<math>\mathbf{a}\times(\mathbf{b}\times\mathbf{c}) = (\mathbf{a}\cdot\mathbf{c})\mathbf{b} -  (\mathbf{a}\cdot\mathbf{b})\mathbf{c}</math>
 
Note this is antisymmetric in '''b''' and '''c''', as expected from the left hand side. Similarly, via index notation or even just cyclically relabelling '''a''', '''b''', and '''c''' in the previous result and taking the negative:
 
:<math>(\mathbf{a}\times \mathbf{b})\times\mathbf{c} = (\mathbf{c}\cdot\mathbf{a})\mathbf{b} - (\mathbf{c}\cdot\mathbf{b})\mathbf{a} </math>
 
and the difference in results show that the cross product is not associative. More complex identities, like quadruple products;
 
:<math>(\mathbf{a}\times \mathbf{b})\cdot(\mathbf{c}\times\mathbf{d}), \quad (\mathbf{a}\times \mathbf{b})\times(\mathbf{c}\times\mathbf{d}) ,\ldots</math>
 
and so on, can be derived in a similar manner.
 
==Transformations of Cartesian tensors (any number of dimensions)==
 
Tensors are defined as quantities which transform in a certain way under linear transformations of coordinates.
 
===Second order===
 
Let '''a''' = ''a<sub>i</sub>'''''e'''<sub>''i''</sub> and '''b''' = ''b<sub>i</sub>'''''e'''<sub>''i''</sub> be two vectors, so that they transform according to ''{{overline|a}}<sub>j</sub>'' = ''a<sub>i</sub>L<sub>i</sub><sub>j</sub>'', ''{{overline|b}}<sub>j</sub>'' = ''b<sub>i</sub>L<sub>i</sub><sub>j</sub>''.
 
Taking the tensor product gives:
 
:<math>\mathbf{a}\otimes\mathbf{b}=a_i\mathbf{e}_i\otimes b_j\mathbf{e}_j=a_i b_j\mathbf{e}_i\otimes\mathbf{e}_j</math>
 
then applying the transformation to the components
 
:<math>\bar{a}_p\bar{b}_q= a_i \mathsf{L}_i{}_p b_j \mathsf{L}_j{}_q = \mathsf{L}_i{}_p\mathsf{L}_j{}_q a_i b_j </math>
 
and to the bases
 
:<math>\bar{\mathbf{e}}_p\otimes\bar{\mathbf{e}}_q = (\boldsymbol{\mathsf{L}}^{-1})_{pi}\mathbf{e}_i\otimes(\boldsymbol{\mathsf{L}}^{-1})_{qj}\bar{\mathbf{e}}_j = (\boldsymbol{\mathsf{L}}^{-1})_{pi}(\boldsymbol{\mathsf{L}}^{-1})_{qj}\mathbf{e}_i\otimes\bar{\mathbf{e}}_j = \mathsf{L}_{ip} \mathsf{L}_{jq} \mathbf{e}_i\otimes\bar{\mathbf{e}}_j</math>
 
gives the transformation law of an order-2 tensor. The tensor '''a'''&otimes;'''b''' is invariant under this transformation:
 
:<math>\begin{array}{cl}
\bar{a}_p\bar{b}_q\bar{\mathbf{e}}_p\otimes\bar{\mathbf{e}}_q & = \mathsf{L}_{kp} \mathsf{L}_{\ell q} a_k b_{\ell} \, (\boldsymbol{\mathsf{L}}^{-1})_{pi} (\boldsymbol{\mathsf{L}}^{-1})_{qj} \mathbf{e}_i\otimes\mathbf{e}_j \\
& = \mathsf{L}_{kp} (\boldsymbol{\mathsf{L}}^{-1})_{pi} \mathsf{L}_{\ell q} (\boldsymbol{\mathsf{L}}^{-1})_{q j} \, a_k b_{\ell} \mathbf{e}_i\otimes\mathbf{e}_j \\
& = \delta_k{}_i \delta_{\ell j}  \, a_k b_{\ell} \mathbf{e}_i\otimes\mathbf{e}_j \\
& = a_ib_j\mathbf{e}_i\otimes\mathbf{e}_j
\end{array}
</math>
 
More generally, for any order-2 tensor
 
:<math>\mathbf{R}=R_{ij}\mathbf{e}_i\otimes\mathbf{e}_j\,,</math>
 
the components transform according to;
 
:<math>\bar{R}_{pq}=\mathsf{L}_i{}_p\mathsf{L}_j{}_q R_{ij}</math>,
 
and the basis transforms by:
 
:<math>\bar{\mathbf{e}}_p\otimes\bar{\mathbf{e}}_q = (\boldsymbol{\mathsf{L}}^{-1})_{ip}\mathbf{e}_i\otimes (\boldsymbol{\mathsf{L}}^{-1})_{jq}\mathbf{e}_j</math>
 
If '''R''' does not transform according to this rule - whatever quantity '''R''' may be, it's not an order 2 tensor.
 
===Any order===
 
More generally, for any order ''p'' tensor
 
:<math>\mathbf{T} = T_{j_1 j_2 \cdots j_p} \mathbf{e}_{j_1}\otimes\mathbf{e}_{j_2}\otimes\cdots\mathbf{e}_{j_p}</math>
 
the components transform according to;
 
:<math>\bar{T}_{j_1j_2\cdots j_p} = \mathsf{L}_{i_1 j_1} \mathsf{L}_{i_2 j_2}\cdots \mathsf{L}_{i_p j_p} T_{i_1 i_2\cdots i_p}</math>
 
and the basis transforms by:
 
:<math>\bar{\mathbf{e}}_{j_1}\otimes\bar{\mathbf{e}}_{j_2}\cdots\otimes\bar{\mathbf{e}}_{j_p}=(\boldsymbol{\mathsf{L}}^{-1})_{j_1 i_1}\mathbf{e}_{i_1}\otimes(\boldsymbol{\mathsf{L}}^{-1})_{j_2 i_2}\mathbf{e}_{i_2}\cdots\otimes(\boldsymbol{\mathsf{L}}^{-1})_{j_p i_p}\mathbf{e}_{i_p}</math>
 
For a [[pseudotensor]] '''S''' of order ''p'', the components transform according to;
 
:<math>\bar{S}_{j_1j_2\cdots j_p} = \det(\boldsymbol{\mathsf{L}}) \mathsf{L}_{i_1 j_1} \mathsf{L}_{i_2 j_2}\cdots \mathsf{L}_{i_p j_p} S_{i_1 i_2\cdots i_p}\,.</math>
 
==Pseudovectors as antisymmetric second order tensors==
 
The antisymmetric nature of the cross product can be recast into a tensorial form as follows.<ref>{{cite book|title=classical mechanics|year=1973|publisher=McGraw Hill|edition=2nd|series=European physics series|pages=234–235|author=T. W. B. Kibble|isbn=978-0-07-084018-8}}, see Appendix C.</ref> Let '''c''' be a vector, '''a''' be a pseudovector, '''b''' be another vector, and '''T''' be a second order tensor such that:
 
:<math>\mathbf{c} = \mathbf{a}\times\mathbf{b} = \mathbf{T}\cdot\mathbf{b} </math>
 
As the cross product is linear in '''a''' and '''b''', the components of '''T''' can be found by inspection, and they are:
 
:<math>\mathbf{T} = \begin{pmatrix}
0 & - a_\text{z} & a_\text{y} \\
a_\text{z} & 0 & - a_\text{x} \\
- a_\text{y} & a_\text{x} & 0 \\
\end{pmatrix}</math>
 
so the pseudovector '''a''' can be written as an antisymmetric tensor. This transforms as a tensor, not a pseudotensor. For the mechanical example above for the tangential velocity of a rigid body, given by {{nowrap|'''v''' {{=}} '''ω''' × '''x'''}}, this can be rewritten as {{nowrap|'''v''' {{=}} '''Ω''' · '''x'''}} where '''Ω''' is the tensor corresponding to the pseudovector '''ω''':
 
:<math>\boldsymbol{\Omega} = \begin{pmatrix}
0 & - \omega_\text{z} & \omega_\text{y} \\
\omega_\text{z} & 0 & - \omega_\text{x} \\
- \omega_\text{y} & \omega_\text{x} & 0 \\
\end{pmatrix}</math>
 
For an example in [[electromagnetism]], while the [[electric field]] '''E''' is a [[vector field]], the [[magnetic field]] '''B''' is a pseudovector field. These fields are defined from the [[Lorentz force]] for a particle of [[electric charge]] ''q'' traveling at velocity '''v''':
 
:<math>\mathbf{F} = q(\mathbf{E} + \mathbf{v} \times \mathbf{B}) = q(\mathbf{E} - \mathbf{B} \times \mathbf{v})</math>
 
and considering the second term containing the cross product of a pseudovector '''B''' and velocity vector '''v''', it can be written in matrix form, with '''F''', '''E''', and '''v''' as column vectors and '''B''' as an antisymmetric matrix:
 
:<math> \begin{pmatrix}
F_\text{x} \\
F_\text{y} \\
F_\text{z} \\
\end{pmatrix} = q\begin{pmatrix}
E_\text{x} \\
E_\text{y} \\
E_\text{z} \\
\end{pmatrix} - q \begin{pmatrix}
0 & - B_\text{z} & B_\text{y} \\
B_\text{z} & 0 & - B_\text{x} \\
- B_\text{y} & B_\text{x} & 0 \\
\end{pmatrix} \begin{pmatrix}
v_\text{x} \\
v_\text{y} \\
v_\text{z} \\
\end{pmatrix}</math>
 
If a pseudovector is explicitly given by a cross product of two vectors (as opposed to entering the cross product with another vector), then such pseudovectors can also be written as antisymmetric tensors of second order, with each entry a component of the cross product. The angular momentum of a classical pointlike particle orbiting about an axis, defined by {{nowrap|'''J''' {{=}} '''x''' × '''p'''}}, is another example of a pesudovector, with corresponding antisymmetric tensor:
 
:<math>\mathbf{J} = \begin{pmatrix}
0 & - J_\text{z} & J_\text{y} \\
J_\text{z} & 0 & - J_\text{x} \\
- J_\text{y} & J_\text{x} & 0 \\
\end{pmatrix} = \begin{pmatrix}
0 & - (x p_\text{y} - y p_\text{x}) & (z p_\text{x} - x p_\text{z}) \\
(x p_\text{y} - y p_\text{x}) & 0 & - (y p_\text{z} - z p_\text{y}) \\
- (z p_\text{x} - x p_\text{z}) & (y p_\text{z} - z p_\text{y}) & 0 \\
\end{pmatrix}</math>
 
Although Cartesian tensors do not occur in the theory of relativity; the tensor form of orbital angular momentum '''J''' enters the spacelike part of the [[relativistic angular momentum]] tensor, and the above tensor form of the magnetic field '''B''' enters the spacelike part of the [[electromagnetic tensor]].
 
==Vector and tensor calculus==
 
It should be emphasized the following formulae are only so simple in Cartesian coordinates - in general curvilinear coordinates there are factors of the metric and its determinant - see [[tensors in curvilinear coordinates]] for more general analysis.
 
===Vector calculus===
 
Following are the differential operators of [[vector calculus]]. Throughout, left Φ('''r''', ''t'') be a [[scalar field]], and
 
:<math>\mathbf{A}(\mathbf{r},t) = A_\text{x}(\mathbf{r},t)\mathbf{e}_\text{x} + A_\text{y}(\mathbf{r},t)\mathbf{e}_\text{y} + A_\text{z}(\mathbf{r},t)\mathbf{e}_\text{z}</math>
:<math>\mathbf{B}(\mathbf{r},t) = B_\text{x}(\mathbf{r},t)\mathbf{e}_\text{x} + B_\text{y}(\mathbf{r},t)\mathbf{e}_\text{y} + B_\text{z}(\mathbf{r},t)\mathbf{e}_\text{z}</math>
 
be [[vector field]]s, in which all scalar and vector fields are functions of the [[position vector]] '''r''' and time ''t''.
 
The [[gradient]] operator in Cartesian coordinates is given by:
 
:<math>\nabla = \mathbf{e}_\text{x}\frac{\partial}{\partial x} + \mathbf{e}_\text{y}\frac{\partial}{\partial y} + \mathbf{e}_\text{z}\frac{\partial}{\partial z} </math>
 
and in index notation, this is usually abbreviated in various ways:
 
:<math>\nabla_i \equiv \partial_i \equiv \frac{\partial}{\partial x_i} </math>
 
This operator acts on a scalar field Φ to obtain the vector field directed in the maximum rate of increase of Φ:
 
:<math>\left(\nabla\Phi\right)_i = \nabla_i \Phi </math>
 
The index notation for the dot and cross products carries over to the differential operators of vector calculus.<ref>{{cite book|edition=2nd| author=M. R. Spiegel, S. Lipcshutz, D. Spellman| title=Vector analysis| series=Schaum’s Outlines|publisher=McGraw Hill |page=197| year=2009 | isbn=978-0-07-161545-7}}</ref>
 
The [[directional derivative]] of a scalar field Φ is the rate of change of Φ along some direction vector '''a''' (not necessarily a [[unit vector]]), formed out of the components of '''a''' and the gradient:
 
:<math>\mathbf{a}\cdot(\nabla\Phi) = a_j (\nabla\Phi)_j </math>
 
The [[divergence]] of a vector field '''A''' is:
 
:<math>\nabla\cdot\mathbf{A} = \nabla_i A_i </math>
 
Note the interchange of the components of the gradient and vector field yields a different differential operator
 
:<math>\mathbf{A}\cdot\nabla =  A_i \nabla_i </math>
 
which could act on scalar or vector fields. In fact, if '''A''' is replaced by the [[velocity field]] '''u'''('''r''', ''t'') of a fluid, this is a term in the [[material derivative]] (with many other names) of [[continuum mechanics]], with another term being the partial time derivative:
 
:<math> \frac{D}{D t} = \frac{\partial}{\partial t} + \mathbf{u}\cdot\nabla</math>
 
which usually acts on the velocity field leading to the non-linearity in the [[Navier-Stokes equations]].
 
As for the [[Curl (mathematics)|curl]] of a vector field '''A''', this can be defined as a pseudovector field by means of the ''ε'' symbol:
 
:<math>\left(\nabla\times\mathbf{A}\right)_i = \varepsilon_{ijk} \nabla_j A_k </math>
 
which is only valid in three dimensions, or an antisymmetric tensor field of second order via antisymmetrization of indices, indicated by delimiting the antisymmetrized indices by square brackets (see [[Ricci calculus]]):
 
:<math>\left(\nabla\times\mathbf{A}\right)_{ij} = \nabla_i A_j - \nabla_j A_i = 2\nabla_{[i} A_{j]}</math>
 
which is valid in any number of dimensions. In each case, the order of the gradient and vector field components should not be interchanged as this would result in a different differential operator:
 
:<math> \varepsilon_{ijk} A_j \nabla_k </math>
:<math>A_i \nabla_j - A_j \nabla_i = 2 A_{[i} \nabla_{j]} </math>
 
which could act on scalar or vector fields.
 
Finally, the [[Laplacian operator]] is defined in two ways, the divergence of the gradient of a scalar field Φ:
 
:<math>\nabla\cdot(\nabla \Phi) = \nabla_i (\nabla_i \Phi) </math>
 
or the square of the gradient operator, which acts on a scalar field Φ or a vector field '''A''':
 
:<math>(\nabla\cdot\nabla) \Phi = (\nabla_i \nabla_i) \Phi </math>
:<math>(\nabla\cdot\nabla) \mathbf{A} = (\nabla_i \nabla_i) \mathbf{A} </math>
 
In physics and engineering, the gradient, divergence, curl, and Laplacian operator arise inevitably in [[fluid mechanics]], [[Newtonian gravitation]], [[electromagnetism]], [[heat conduction]], and even [[quantum mechanics]].
 
Vector calculus identities can be derived in a similar way to those of vector dot and cross products and combinations. For example, in three dimensions, the curl of a cross product of two vector fields '''A''' and '''B''':
 
:<math>\begin{align}
\left[\nabla\times(\mathbf{A}\times\mathbf{B})\right]_i & = \varepsilon_{ijk} \nabla_j (\varepsilon_{k\ell m} A_\ell B_m) \\
& = (\varepsilon_{ijk} \varepsilon_{\ell m k} ) \nabla_j (A_\ell B_m) \\
& = (\delta_{i\ell}\delta_{jm} - \delta_{im}\delta_{j\ell}) (B_m \nabla_j A_\ell + A_\ell \nabla_j B_m ) \\
& = (B_j \nabla_j A_i + A_i \nabla_j B_j ) - (B_i \nabla_j A_j + A_j \nabla_j B_i ) \\
& = (B_j \nabla_j)A_i  + A_i(\nabla_j B_j ) - B_i (\nabla_j A_j ) - (A_j \nabla_j) B_i \\
& = \left[(\mathbf{B} \cdot \nabla)\mathbf{A}  + \mathbf{A}(\nabla\cdot \mathbf{B}) - \mathbf{B}(\nabla\cdot \mathbf{A} ) - (\mathbf{A}\cdot \nabla) \mathbf{B} \right]_i \\
\end{align}</math>
 
where the [[product rule]] was used, and throughout the differential operator was not interchanged with '''A''' or '''B'''. Thus:
 
:<math>\nabla\times(\mathbf{A}\times\mathbf{B}) = (\mathbf{B} \cdot \nabla)\mathbf{A}  + \mathbf{A}(\nabla\cdot \mathbf{B}) - \mathbf{B}(\nabla\cdot \mathbf{A} ) - (\mathbf{A}\cdot \nabla) \mathbf{B} </math>
 
===Tensor calculus===
 
One can continue the operations on tensors of higher order. Let '''T''' = '''T'''('''r''', ''t'') denote a second order tensor field, again dependent on the position vector '''r''' and time ''t''.
 
For instance, the gradient of a vector field in two equivalent notations ("dyadic" and "tensor", respectively) is:
 
:<math>(\nabla \mathbf{A})_{ij} \equiv (\nabla \otimes \mathbf{A})_{ij} = \nabla_i A_j </math>
 
which is a tensor field of second order.
 
The divergence of a tensor is:
 
:<math>(\nabla \cdot \mathbf{T})_j = \nabla_i T_{ij} </math>
 
which is a vector field. This arises in continuum mechanics in [[Continuum mechanics#Governing equations|Cauchy's laws of motion]] - the divergence of the Cauchy stress tensor '''σ''' is a vector field, related to [[body force]]s acting on the fluid.
 
==Difference from the standard tensor calculus==
 
Cartesian tensors are as in [[tensor algebra]], but [[Euclidean space#Euclidean structure|Euclidean structure]] of and restriction of the basis brings some simplifications compared to the general theory.
 
The general tensor algebra consists of general [[mixed tensor]]s of type (''p'', ''q''):
 
:<math>\mathbf{T} = T_{j_1 j_2 \cdots j_q}^{i_1 i_2 \cdots i_p} \mathbf{e}_{i_1 i_2 \cdots i_p}^{j_1 j_2 \cdots j_q} </math>
 
with basis elements:
 
:<math>\mathbf{e}_{i_1 i_2 \cdots i_p}^{j_1 j_2 \cdots j_q} = \mathbf{e}_{i_1}\otimes\mathbf{e}_{i_2}\otimes\cdots\mathbf{e}_{i_p}\otimes\mathbf{e}^{j_1}\otimes\mathbf{e}^{j_2}\otimes\cdots\mathbf{e}^{j_q}</math>
 
the components transform according to:
 
:<math>\bar{T}_{\ell_1 \ell_2 \cdots \ell_q}^{k_1 k_2 \cdots k_p} = \mathsf{L}_{i_1}{}^{k_1} \mathsf{L}_{i_2}{}^{k_2} \cdots \mathsf{L}_{i_p}{}^{k_p} (\boldsymbol{\mathsf{L}}^{-1})_{\ell_1}{}^{j_1}(\boldsymbol{\mathsf{L}}^{-1})_{\ell_2}{}^{j_2} \cdots (\boldsymbol{\mathsf{L}}^{-1})_{\ell_q}{}^{j_q} T_{j_1 j_2 \cdots j_q}^{i_1 i_2 \cdots i_p}</math>
 
as for the bases:
 
:<math>\bar{\mathbf{e}}_{k_1 k_2 \cdots k_p}^{\ell_1 \ell_2 \cdots \ell_q} = (\boldsymbol{\mathsf{L}}^{-1})_{k_1}{}^{i_1} (\boldsymbol{\mathsf{L}}^{-1})_{k_2}{}^{i_2} \cdots (\boldsymbol{\mathsf{L}}^{-1})_{k_p}{}^{i_p} \mathsf{L}_{j_1}{}^{\ell_1} \mathsf{L}_{j_2}{}^{\ell_2} \cdots \mathsf{L}_{j_q}{}^{\ell_q} \mathbf{e}_{i_1 i_2 \cdots i_p}^{j_1 j_2 \cdots j_q}</math>
 
For Cartesian tensors, only the order {{nowrap|''p'' + ''q''}} of the tensor matters in a Euclidean space with an orthonormal basis, and all {{nowrap|''p'' + ''q''}} indices can be lowered.  A Cartesian basis does not exist unless the vector space has a positive-definite metric, and thus cannot be used in [[special relativity|relativistic]] contexts.
 
==History==
 
[[Dyadic tensor]]s were historically the first approach to formulating second-order tensors, similarly triadic tensors for third-order tensors, and so on. Cartesian tensors use [[tensor index notation]], in which the [[Covariance and contravariance of vectors|variance]] may be glossed over and is often ignored, since the components remain unchanged by [[raising and lowering indices]].
 
==See also==
 
*[[Tensor algebra]]
*[[Tensor calculus]]
*[[Tensors in curvilinear coordinates]]
*[[Rotation group]]
 
==References==
 
{{reflist}}
 
===Notes===
 
*{{cite book| author=D. C. Kay| title=Tensor Calculus| series=Schaum’s Outlines|publisher=McGraw Hill|pages=18–19, 31–32| year=1988 | isbn=0-07-033484-6}}
 
*{{cite book|edition=2nd| author=M. R. Spiegel, S. Lipcshutz, D. Spellman| title=Vector analysis| series=Schaum’s Outlines|publisher=McGraw Hill |page=227| year=2009 | isbn=978-0-07-161545-7}}
 
*{{cite book|title=An introduction to tensor analysis for engineers and applied scientists
|author=J.R. Tyldesley|volume=|publisher=Longman|pages=5–13|year=1975|series=|isbn=0-582-44355-5|url=http://books.google.co.uk/books/about/An_introduction_to_tensor_analysis_for_e.html?id=PODXAAAAMAAJ&redir_esc=y}}
 
===Further reading and applications===
 
*{{cite book|edition=4th| author=S. Lipcshutz, M. Lipson| title=Linear Algebra| series=Schaum’s Outlines|publisher=McGraw Hill |page=| year=2009 | isbn=978-0-07-154352-1}}
 
*{{cite book|title=Elasticity: Tensor, Dyadic, and Engineering Approaches|author=Pei Chi Chou|page=|volume=|publisher=Courier Dover Publications|year=1992|series=|isbn=048-666-958-0|url=http://books.google.co.uk/books?id=9-pJ7Kg5XmAC&printsec=frontcover&dq=cartesian+tensor&hl=en&sa=X&ei=JjawUd6BO6qb0wWExYDIBA&ved=0CDAQ6AEwADgK#v=onepage&q=cartesian%20tensor&f=false}}
 
*{{cite book|title=Vectors, Pure and Applied: A General Introduction to Linear Algebra|author=T. W. Körner|page=216|volume=|publisher=Cambridge University Press|year=2012|series=|isbn=11070-3356-X|url=http://books.google.co.uk/books?id=RO_TMc7ETPEC&dq=cartesian+tensor&source=gbs_navlinks_s}}
 
*{{cite book|title=Relativity and Geometry|author=R. Torretti|publisher=Courier Dover Publications|year=1996 |page=103|isbn=0-4866-90466|url=http://books.google.co.uk/books?id=vpW_sBxwr88C&pg=PA103&dq=cartesian+tensor&hl=en&sa=X&ei=qDGwUau2K8KlO9S7gegF&ved=0CFMQ6AEwBg#v=onepage&q=cartesian%20tensor&f=false}}
 
*{{cite book|title=Tensor Calculus|author=J. J. L. Synge, A. Schild|page=128|volume=|publisher=Courier Dover Publications|year=1978|series=|isbn=0-4861-4139-X|url=http://books.google.co.uk/books?id=8vlGhlxqZjsC&pg=PA127&dq=cartesian+tensor&hl=en&sa=X&ei=qDGwUau2K8KlO9S7gegF&ved=0CEwQ6AEwBQ#v=onepage&q=cartesian%20tensor&f=false}}
 
*{{cite book|title=Dynamic Analysis of Robot Manipulators: A Cartesian Tensor Approach|author=C. A. Balafoutis, R. V. Patel|volume=131|publisher=Springer|year=1991|series=The Kluwer International Series in Engineering and Computer Science: Robotics: vision, manipulation and sensors|isbn=0792-391-454|url=http://books.google.co.uk/books?id=7BcpyUjmLpUC&printsec=frontcover&dq=cartesian+tensor&hl=en&sa=X&ei=qDGwUau2K8KlO9S7gegF&ved=0CDEQ6AEwAA#v=onepage&q=cartesian%20tensor&f=false}}
 
*{{cite book|title=Robotic systems: advanced techniques and applications|author=S. G. Tzafestas|volume=|publisher=Springer|year=1992|series=|isbn=0-792-317-491|url=http://books.google.co.uk/books?id=iG5W9IQhjd4C&pg=PA45&dq=cartesian+tensor&hl=en&sa=X&ei=JjawUd6BO6qb0wWExYDIBA&ved=0CFQQ6AEwBjgK#v=onepage&q=cartesian%20tensor&f=false}}
 
*{{cite book|title=Mathematical Methods In Classical And Quantum Physics|author=T. Dass, S. K. Sharma|volume=|publisher=Universities Press|page=144|year=1998|series=|isbn=817-371-0899|url=http://books.google.co.uk/books?id=AQCsAxpZ7ToC&pg=PA144&dq=cartesian+tensor&hl=en&sa=X&ei=JjawUd6BO6qb0wWExYDIBA&ved=0CFgQ6AEwBzgK#v=onepage&q=cartesian%20tensor&f=false}}
 
*{{cite book|title=Cartesian Tensors: An Introduction|author=G. F. J. Temple|volume=|publisher=DOVER PUBN Incorporated|page=|year=2004|series=Dover Books on Mathematics Series|isbn=0-4864-3908-9|url=http://books.google.co.uk/books?id=56WqzKbTMtMC&dq=Cartesian+Tensors:+An+Introduction+temple&hl=en&sa=X&ei=2aW0UYkYxIDQBen9gPAI&ved=0CDQQ6AEwAA}}
 
*{{cite book|title=Cartesian Tensors|author=Sir H. Jeffreys|authorlink=Harold Jeffreys|volume=|publisher=The University Press|page=|year=1961|series=|isbn=|url=http://books.google.co.uk/books?id=oOYIAQAAIAAJ&q=cartesian+tensors&dq=cartesian+tensors&hl=en&sa=X&ei=0jSyUeSaJOyS0QW95YD4DA&ved=0CDkQ6AEwAQ}}
 
==External links==
*[http://www.mso.anu.edu.au/~geoff/HEA/A1_Tensors.pdf ''Cartesian Tensors'']
*[http://www.ce.udel.edu/faculty/kaliakin/appendix_tensors.pdf V. N. Kaliakin, ''Brief Review of Tensors'', University of Delaware]
*[http://www.damtp.cam.ac.uk/user/reh10/lectures/nst-mmii-chapter3.pdf R. E. Hunt, ''Cartesian Tensors'', University of Cambridge]
 
{{tensor}}
 
[[Category:Linear algebra]]
[[Category:Tensors]]
[[Category:Applied mathematics]]

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