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Tensors in curvilinear coordinates
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Curvilinear coordinates can be formulated in tensor calculus, with important applications in physics and engineering, particularly for describing transportation of physical quantities and deformation of matter in fluid mechanics and continuum mechanics.
Vector and tensor algebra in three-dimensional curvilinear coordinates
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Perspective
Elementary vector and tensor algebra in curvilinear coordinates is used in some of the older scientific literature in mechanics and physics and can be indispensable to understanding work from the early and mid 1900s, for example the text by Green and Zerna.[1] Some useful relations in the algebra of vectors and second-order tensors in curvilinear coordinates are given in this section. The notation and contents are primarily from Ogden,[2] Naghdi,[3] Simmonds,[4] Green and Zerna,[1] Basar and Weichert,[5] and Ciarlet.[6]
Coordinate transformations
Consider two coordinate systems with coordinate variables and , which we shall represent in short as just and respectively and always assume our index runs from 1 through 3. We shall assume that these coordinates systems are embedded in the three-dimensional euclidean space. Coordinates and may be used to explain each other, because as we move along the coordinate line in one coordinate system we can use the other to describe our position. In this way Coordinates and are functions of each other
for
which can be written as
for
These three equations together are also called a coordinate transformation from to . Let us denote this transformation by . We will therefore represent the transformation from the coordinate system with coordinate variables to the coordinate system with coordinates as:
Similarly we can represent as a function of as follows:
for
and we can write the free equations more compactly as
for
These three equations together are also called a coordinate transformation from to . Let us denote this transformation by . We will represent the transformation from the coordinate system with coordinate variables to the coordinate system with coordinates as:
If the transformation is bijective then we call the image of the transformation, namely , a set of admissible coordinates for . If is linear the coordinate system will be called an affine coordinate system, otherwise is called a curvilinear coordinate system.
The Jacobian
As we now see that the Coordinates and are functions of each other, we can take the derivative of the coordinate variable with respect to the coordinate variable .
Consider
for , these derivatives can be arranged in a matrix, say , in which is the element in the -th row and -th column
The resultant matrix is called the Jacobian matrix.
Vectors in curvilinear coordinates
Let be an arbitrary basis for three-dimensional Euclidean space. In general, the basis vectors are neither unit vectors nor mutually orthogonal. However, they are required to be linearly independent. Then a vector can be expressed as[4]: 27 The components are the contravariant components of the vector .
The reciprocal basis is defined by the relation [4]: 28–29 where is the Kronecker delta.
The vector can also be expressed in terms of the reciprocal basis: The components are the covariant components of the vector .
Second-order tensors in curvilinear coordinates
A second-order tensor can be expressed as The components are called the contravariant components, the mixed right-covariant components, the mixed left-covariant components, and the covariant components of the second-order tensor.
Metric tensor and relations between components
The quantities , are defined as[4]: 39
From the above equations we have
The components of a vector are related by[4]: 30–32 Also,
The components of the second-order tensor are related by
The alternating tensor
In an orthonormal right-handed basis, the third-order alternating tensor is defined as In a general curvilinear basis the same tensor may be expressed as It can be shown that Now, Hence, Similarly, we can show that
Vector operations
Identity map
The identity map defined by can be shown to be:[4]: 39
Scalar (dot) product
The scalar product of two vectors in curvilinear coordinates is[4]: 32
Vector (cross) product
The cross product of two vectors is given by:[4]: 32–34
where is the permutation symbol and is a Cartesian basis vector. In curvilinear coordinates, the equivalent expression is:
where is the third-order alternating tensor. The cross product of two vectors is given by:
where is the permutation symbol and is a Cartesian basis vector. Therefore,
and
Hence,
Returning to the vector product and using the relations:
gives us:
Tensor operations
Identity map
The identity map defined by can be shown to be[4]: 39
Action of a second-order tensor on a vector
The action can be expressed in curvilinear coordinates as
Inner product of two second-order tensors
The inner product of two second-order tensors can be expressed in curvilinear coordinates as
Alternatively,
Determinant of a second-order tensor
If is a second-order tensor, then the determinant is defined by the relation
where are arbitrary vectors and
Relations between curvilinear and Cartesian basis vectors
Let be the usual Cartesian basis vectors for the Euclidean space of interest and let where is a second-order transformation tensor that maps to . Then, From this relation we can show that Let be the Jacobian of the transformation. Then, from the definition of the determinant, Since we have A number of interesting results can be derived using the above relations.
First, consider Then Similarly, we can show that Therefore, using the fact that ,
Another interesting relation is derived below. Recall that where is a, yet undetermined, constant. Then This observation leads to the relations In index notation, where is the usual permutation symbol.
We have not identified an explicit expression for the transformation tensor because an alternative form of the mapping between curvilinear and Cartesian bases is more useful. Assuming a sufficient degree of smoothness in the mapping (and a bit of abuse of notation), we have Similarly, From these results we have and
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Vector and tensor calculus in three-dimensional curvilinear coordinates
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Perspective
Simmonds,[4] in his book on tensor analysis, quotes Albert Einstein saying[7]
The magic of this theory will hardly fail to impose itself on anybody who has truly understood it; it represents a genuine triumph of the method of absolute differential calculus, founded by Gauss, Riemann, Ricci, and Levi-Civita.
Vector and tensor calculus in general curvilinear coordinates is used in tensor analysis on four-dimensional curvilinear manifolds in general relativity,[8] in the mechanics of curved shells,[6] in examining the invariance properties of Maxwell's equations which has been of interest in metamaterials[9][10] and in many other fields.
Some useful relations in the calculus of vectors and second-order tensors in curvilinear coordinates are given in this section. The notation and contents are primarily from Ogden,[2] Simmonds,[4] Green and Zerna,[1] Basar and Weichert,[5] and Ciarlet.[6]
Basic definitions
Let the position of a point in space be characterized by three coordinate variables .
The coordinate curve represents a curve on which and are constant. Let be the position vector of the point relative to some origin. Then, assuming that such a mapping and its inverse exist and are continuous, we can write [2]: 55 The fields are called the curvilinear coordinate functions of the curvilinear coordinate system .
The coordinate curves are defined by the one-parameter family of functions given by with , fixed.
Tangent vector to coordinate curves
The tangent vector to the curve at the point (or to the coordinate curve at the point ) is
Gradient
Scalar field
Let be a scalar field in space. Then The gradient of the field is defined by where is an arbitrary constant vector. If we define the components of are such that then
If we set , then since , we have which provides a means of extracting the contravariant component of a vector .
If is the covariant (or natural) basis at a point, and if is the contravariant (or reciprocal) basis at that point, then A brief rationale for this choice of basis is given in the next section.
Vector field
A similar process can be used to arrive at the gradient of a vector field . The gradient is given by If we consider the gradient of the position vector field , then we can show that The vector field is tangent to the coordinate curve and forms a natural basis at each point on the curve. This basis, as discussed at the beginning of this article, is also called the covariant curvilinear basis. We can also define a reciprocal basis, or contravariant curvilinear basis, . All the algebraic relations between the basis vectors, as discussed in the section on tensor algebra, apply for the natural basis and its reciprocal at each point .
Since is arbitrary, we can write
Note that the contravariant basis vector is perpendicular to the surface of constant and is given by
Christoffel symbols of the first kind
The Christoffel symbols of the first kind are defined as To express in terms of we note that Since we have . Using these to rearrange the above relations gives
Christoffel symbols of the second kind
The Christoffel symbols of the second kind are defined as in which
This implies that Other relations that follow are
Another particularly useful relation, which shows that the Christoffel symbol depends only on the metric tensor and its derivatives, is
Explicit expression for the gradient of a vector field
The following expressions for the gradient of a vector field in curvilinear coordinates are quite useful.
Representing a physical vector field
The vector field can be represented as where are the covariant components of the field, are the physical components, and (no summation) is the normalized contravariant basis vector.
Second-order tensor field
The gradient of a second order tensor field can similarly be expressed as
Explicit expressions for the gradient
If we consider the expression for the tensor in terms of a contravariant basis, then We may also write
Representing a physical second-order tensor field
The physical components of a second-order tensor field can be obtained by using a normalized contravariant basis, i.e., where the hatted basis vectors have been normalized. This implies that (again no summation)
Divergence
Vector field
The divergence of a vector field is defined as In terms of components with respect to a curvilinear basis
An alternative equation for the divergence of a vector field is frequently used. To derive this relation recall that Now, Noting that, due to the symmetry of , we have Recall that if is the matrix whose components are , then the inverse of the matrix is . The inverse of the matrix is given by where is the cofactor matrix of the components . From matrix algebra we have Hence, Plugging this relation into the expression for the divergence gives A little manipulation leads to the more compact form
Second-order tensor field
The divergence of a second-order tensor field is defined using where is an arbitrary constant vector. [11] In curvilinear coordinates,
Laplacian
Scalar field
The Laplacian of a scalar field is defined as Using the alternative expression for the divergence of a vector field gives us Now Therefore,
Curl of a vector field
The curl of a vector field in covariant curvilinear coordinates can be written as where
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Orthogonal curvilinear coordinates
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Assume, for the purposes of this section, that the curvilinear coordinate system is orthogonal, i.e., or equivalently, where . As before, are covariant basis vectors and , are contravariant basis vectors. Also, let be a background, fixed, Cartesian basis. A list of orthogonal curvilinear coordinates is given below.
Metric tensor in orthogonal curvilinear coordinates
Let be the position vector of the point with respect to the origin of the coordinate system. The notation can be simplified by noting that = . At each point we can construct a small line element . The square of the length of the line element is the scalar product and is called the metric of the space. Recall that the space of interest is assumed to be Euclidean when we talk of curvilinear coordinates. Let us express the position vector in terms of the background, fixed, Cartesian basis, i.e.,
Using the chain rule, we can then express in terms of three-dimensional orthogonal curvilinear coordinates as Therefore, the metric is given by
The symmetric quantity is called the fundamental (or metric) tensor of the Euclidean space in curvilinear coordinates.
Note also that where are the Lamé coefficients.
If we define the scale factors, , using we get a relation between the fundamental tensor and the Lamé coefficients.
Example: Polar coordinates
If we consider polar coordinates for , note that are the curvilinear coordinates, and the Jacobian determinant of the transformation is .
The orthogonal basis vectors are , . The normalized basis vectors are , and the scale factors are and . The fundamental tensor is , , .
Line and surface integrals
If we wish to use curvilinear coordinates for vector calculus calculations, adjustments need to be made in the calculation of line, surface and volume integrals. For simplicity, we again restrict the discussion to three dimensions and orthogonal curvilinear coordinates. However, the same arguments apply for -dimensional problems though there are some additional terms in the expressions when the coordinate system is not orthogonal.
Line integrals
Normally in the calculation of line integrals we are interested in calculating where parametrizes in Cartesian coordinates. In curvilinear coordinates, the term
by the chain rule. And from the definition of the Lamé coefficients,
and thus
Now, since when , we have and we can proceed normally.
Surface integrals
Likewise, if we are interested in a surface integral, the relevant calculation, with the parameterization of the surface in Cartesian coordinates is: Again, in curvilinear coordinates, we have and we make use of the definition of curvilinear coordinates again to yield
Therefore, where is the permutation symbol.
In determinant form, the cross product in terms of curvilinear coordinates will be:
Grad, curl, div, Laplacian
In orthogonal curvilinear coordinates of 3 dimensions, where one can express the gradient of a scalar or vector field as For an orthogonal basis The divergence of a vector field can then be written as Also, Therefore, We can get an expression for the Laplacian in a similar manner by noting that Then we have The expressions for the gradient, divergence, and Laplacian can be directly extended to -dimensions.
The curl of a vector field is given by where is the Levi-Civita symbol.
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Example: Cylindrical polar coordinates
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Perspective
For cylindrical coordinates we have and where
Then the covariant and contravariant basis vectors are where are the unit vectors in the directions.
Note that the components of the metric tensor are such that which shows that the basis is orthogonal.
The non-zero components of the Christoffel symbol of the second kind are
Representing a physical vector field
The normalized contravariant basis vectors in cylindrical polar coordinates are and the physical components of a vector are
Gradient of a scalar field
The gradient of a scalar field, , in cylindrical coordinates can now be computed from the general expression in curvilinear coordinates and has the form
Gradient of a vector field
Similarly, the gradient of a vector field, , in cylindrical coordinates can be shown to be
Divergence of a vector field
Using the equation for the divergence of a vector field in curvilinear coordinates, the divergence in cylindrical coordinates can be shown to be
Laplacian of a scalar field
The Laplacian is more easily computed by noting that . In cylindrical polar coordinates Hence,
Representing a physical second-order tensor field
The physical components of a second-order tensor field are those obtained when the tensor is expressed in terms of a normalized contravariant basis. In cylindrical polar coordinates these components are:
Gradient of a second-order tensor field
Using the above definitions we can show that the gradient of a second-order tensor field in cylindrical polar coordinates can be expressed as
Divergence of a second-order tensor field
The divergence of a second-order tensor field in cylindrical polar coordinates can be obtained from the expression for the gradient by collecting terms where the scalar product of the two outer vectors in the dyadic products is nonzero. Therefore,
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See also
References
External links
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