In this section we shall consider the vector space
over reals with the basis
.
We now wish to deal with some of the introductory concepts of vector calculus.
Let
, where
is a field. We say that
is a scalar field
In the physical world, examples of scalar fields are
(i) The electrostatic potential
in space
(ii) The distribution of temperature in a solid body,
Let
be a vector space. Let
, we say that
is a vector field; it associates a vector from
with every point of
.
In the physical world, examples of vector fields are
(i) The electric and magnetic fields in space
(ii) The velocity field in a fluid
Let
be a scalar field. We define the gradient as an "operator"
mapping the field
to a vector in
such that
, or as is commonly denoted
We shall encounter the physicist's notion of "operator" before defining it formally in the chapter Hilbert Spaces. It can be loosely thought of as "a function of functions"
Recall from multivariable calculus that the total derivative of a function
at
is defined as the linear transformation
that satisfies
In the usual basis, we can express as the row matrix
It is customary to denote vectors as column matrices. Thus we may write
The transpose of a matrix given by constituents
is the matrix with constituents
Thus, the gradient is the transpose of the total derivative.
Let
be a vector field and let
be differentiable.
We define the divergence as the operator
mapping
to a scalar such that
Let
be a vector field and let
be differentiable.
We define the curl as the operator
mapping
to a linear transformation from
onto itself such that the linear transformation can be expressed as the matrix
written in short as
. Here,
denote
and so on.
the curl can be explicitly given by the matrix:
this notation is also sometimes used to denote the vector exterior or cross product,