Divergence
In
vector calculus, the
divergence is an operator that measures a
vector field's tendency to originate from or converge upon a given point. For instance, in a
vector field that denotes the velocity of water flowing in a draining bathtub, the divergence would have a negative value over the drain because the water vanishes there (if we only consider two dimensions); away from the drain the divergence would be zero, since there are no other sinks or sources.
A vector field which has zero divergence everywhere is called
solenoidal.
Definition
Let x, y, z be a system of Cartesian coordinates on a 3-dimensional Euclidean space, and let i, j, k be the corresponding basis of unit vectors.
The divergence of a continuously differentiable vector field
- F = Fx i + Fy j + Fz k
is defined to be the
scalar-valued function
-
Another common notation for the divergence is

·
F, a convenient mnemonic, where the dot denotes something just reminiscent of the
dot product: take the components of

(see
del), apply them to the components of
F, and sum the results.
Physical interpretation
In physical terms, the divergence of a vector field is the extent to which the vector field flow behaves like a source or a sink at a given point. Indeed, an alternative, but logically equivalent definition, gives the divergence as the derivative of the net flow of the vector field across the surface of a small sphere relative to the volume of the sphere. To wit,
-
where S(r) denotes the sphere of radius r about a point p in R3, and the integral is a surface integral taken with respect to N, the normal to that sphere.
In light of the physical interpretation, a vector field with constant zero divergence is called incompressible – in this case, no net flow can occur across any closed surface.
The intuition that the sum of all sources minus the sum of all sinks should give the net flow outwards of a region is made precise by the divergence theorem.
Facts
The following facts can all be derived from the ordinary differentiation rules of calculus. Most importantly, the divergence is a
linear operator, i.e.
-
for all vector fields
F and
G and all real numbers
a and
b.
There is a
product rule of the following type: if φ is a scalar valued function and
F is a vector field, then
-
or in more suggestive notation
-
Another product rule for the
cross product of two vector fields
F and
G in three dimensions involves the
curl and reads as follows:
-
The
Laplacian of a scalar field is the divergence of the field's gradient.
The divergence of the curl of any vector field (in three dimensions) is constant zero. Conversely, if you have a vector field
F with zero divergence defined on a ball in
R3, say, then there exists some vector field
G on the ball with
F = curl(
G). For regions in
R3 more complicated then balls, this latter statement is not true anymore. Indeed, the degree of
failure of the truth of the statement, measured by the
homology of the
chain complex
- \n::\n:::\n::::
(where the first map is the gradient, the second is the curl, the third is the divergence) serves as a nice quantification of the complicatedness of the underlying region
U. These are the beginnings and main motivations of
de Rham cohomology.
Related articles
\n*Gradient\n*
Curl\n*
Vector calculus\n*
Sink\n*
Nabla in cylindrical and spherical coordinates
See also
\n* point of divergence\n* divergent series\n*
convergence
Category:Multivariate calculus
\n