Note: The following is a modern component-based treatment of tensors (sometimes called the "classical treatment" of tensors). Read the article tensor for a simple description of tensors, or see the component-free treatment of tensors for a more abstract treatment.
Note that the word "tensor" is often used as a shorthand for "tensor field", a concept which defines a tensor value at every point in a manifold. To understand tensor fields, you need to first understand tensors.
A tensor is the mathematical idealization of a geometric or
physical quantity whose analytic description, relative to a fixed
frame of reference, consists of an array of numbers.
This way of viewing tensors, called tensor analysis, was used by Einstein and is generally preferred by physicists. It is very grossly a generalization of the concept of vectors and matrices and allows the writing of equations independently of any given coordinate system.
It should be noted that the array of numbers representation of a tensor is not the same thing as the tensor. An image and the
object represented by the image are not the same thing. The mass of
a stone is not a number. Rather the mass can be described by a
number relative to some specified unit mass. Similarly, a given numerical representation of a tensor only makes sense in a particular coordinate system.
Some well known examples of tensors in geometry are quadratic forms, and the curvature tensor. Examples of physical tensors are the energy-momentum tensor and the polarization tensor .
Geometric and physical quantities may be categorized by considering
the degrees of freedom inherent in their description. The scalar
quantities are those that can be represented by a single number ---
speed, mass, temperature, for example. There are also vector-like
quantities, such as force, that require a list of numbers for their
description. Finally, quantities such as quadratic forms
naturally require a multiply indexed array for their representation.
These latter quantities can only be conceived of as tensors.
Actually, the tensor notion is quite general, and applies to all of
the above examples; scalars and vectors are special kinds of
tensors. The feature that distinguishes a scalar from a vector, and
distinguishes both of those from a more general tensor quantity is
the number of indices in the representing array. This number is
called the rank of a tensor. Thus, scalars are rank zero tensors (no
indices at all), and vectors are rank one tensors.
It is also necessary to distinguish between two types of indices,
depending on whether the corresponding numbers transform covariantly
or contravariantly relative to a change in the frame of reference.
Contravariant indices are written as superscripts, while the
covariant indices are written as subscripts. The valence
of a tensor is the pair (p,q), where p is the number contravariant
and q the number of covariant indices, respectively.
It is customary to represent the actual tensor, as a stand-alone
entity, by a bold-face symbol such as
. The corresponding array
of numbers for a type (p,q) tensor is denoted by the symbol
where the superscripts and
subscripts are indices that vary from 1 to n. This number n, the
range of the indices, is called the dimension of the tensor. The
total degrees of freedom required for the specification of a
particular tensor is a power of the dimension; the exponent is the tensor's rank.
Again, it must be emphasized that the tensor
and the
representing array
are not the
same thing. The values of the representing array are given relative
to some frame of reference, and undergo a linear transformation when
the frame is changed.
Finally, it must be mentioned that most physical and geometric
applications are concerned with tensor fields, that is to say
tensor valued functions, rather than tensors themselves. Some care is
required, because it is common to see a tensor field called simply a
tensor. There is a difference, however; the entries of a tensor array
are numbers, whereas the entries
of a tensor field are functions. The present entry treats the purely
algebraic aspect of tensors. Tensor field concepts, which typically
involved derivatives of some kind, are discussed elsewhere.
Definition
The formal definition of a tensor quantity begins with a
finite-dimensional vector space
, which furnishes the uniform
"building blocks" for tensors of all valences. In typical
applications,
is the tangent space at a point of a manifold; the elements of
typically represent physical quantities such as velocities and forces. The space of
(p,q)-valent tensors, denoted here by
is obtained by
taking the tensor product of p copies of
and q copies of the dual vector space
. To wit,
In order to represent a tensor by a concrete array of numbers, we
require a frame of reference, which is essentially a basis of
,
say
Every vector in
can be
"measured" relative to this basis, meaning that for every
there exist unique scalars vi, such
that (note the use of the Einstein notation)
These scalars are called the components of
relative to the frame in question.
Let
be the corresponding dual basis, i.e.
where the latter is the Kronecker delta array. For every covector
there exists a unique array of components αi such
that
More generally, every tensor
has a unique representation in terms of components. That is to say, there exists a
unique array of scalars
such that
Transformation rules
Next, suppose that a change is made to a different frame of
reference, say
Any two frames are uniquely related by
an invertible transition matrix
, having the property that for
all values of j we have the frame transformation rule
Let
be a vector, and let vi
and
denote the corresponding component arrays relative to
the two frames. From
and from the frame transformation rule we infer the vector transformation rule
where
is the matrix inverse of
, i.e.
Thus, the
transformation rule for a vector's components is
contravariant to the transformation rule for the frame of reference. It is for this reason that the superscript indices of a vector are called contravariant.
To establish the transformation rule for vectors, we note that the transformation rule
for the dual basis takes the form
and that
while
The transformation rule for covector components is covariant. Let
be a given covector, and let αi and
be the corresponding component arrays. Then
The above relation is easily established. We need only remark that
and that
and then use the transformation rule for the frame of reference.
In light of the above discussion, we see that the transformation rule
for a general type (p,q) tensor takes the form
See also
Further reading
- Bernard Schutz, Geometrical methods of mathematical physics, Cambridge University Press, 1980.
- Schaum's Outline of Tensor Calculus
- Synge and Schild, Tensor Calculus, Toronto Press: Toronto, 1949
An earlier version of this article was adapted from the GFDL article on tensors at http://planetmath.org/encyclopedia/Tensor.html from PlanetMath, written by Robert Milson and others