
In
statistical mechanics, the radial distribution function, (or pair correlation function)
in a system of
particles (atoms, molecules, colloids, etc.), describes how density varies as a function of distance from a reference particle.
If a given particle is taken to be at the origin O, and if
is the average number density of particles, then the local time-averaged density at a distance
from O is
. This simplified definition holds for a
homogeneous
Homogeneity and heterogeneity are concepts often used in the sciences and statistics relating to the uniformity of a substance or organism. A material or image that is homogeneous is uniform in composition or character (i.e. color, shape, siz ...
and
isotropic system. A more general case will be considered below.
In simplest terms it is a measure of the probability of finding a particle at a distance of
away from a given reference particle, relative to that for an ideal gas. The general algorithm involves determining how many particles are within a distance of
and
away from a particle. This general theme is depicted to the right, where the red particle is our reference particle, and blue particles are those whose centers are within the circular shell, dotted in orange.
The radial distribution function is usually determined by calculating the distance between all particle pairs and binning them into a histogram. The histogram is then normalized with respect to an ideal gas, where particle histograms are completely uncorrelated. For three dimensions, this normalization is the number density of the system
multiplied by the volume of the spherical shell, which symbolically can be expressed as
.
Given a
potential energy
In physics, potential energy is the energy held by an object because of its position relative to other objects, stresses within itself, its electric charge, or other factors.
Common types of potential energy include the gravitational potentia ...
function, the radial distribution function can be computed either via computer simulation methods like the
Monte Carlo method
Monte Carlo methods, or Monte Carlo experiments, are a broad class of computational algorithms that rely on repeated random sampling to obtain numerical results. The underlying concept is to use randomness to solve problems that might be deter ...
, or via the
Ornstein-Zernike equation, using approximative closure relations like the
Percus-Yevick approximation or the
Hypernetted Chain Theory. It can also be determined experimentally, by radiation scattering techniques or by direct visualization for large enough (micrometer-sized) particles via traditional or confocal microscopy.
The radial distribution function is of fundamental importance since it can be used, using the
Kirkwood–Buff solution theory, to link the microscopic details to macroscopic properties. Moreover, by the reversion of the Kirkwood-Buff theory, it is possible to attain the microscopic details of the radial distribution function from the macroscopic properties.
Definition
Consider a system of
particles in a volume
(for an average number density
) and at a temperature
(let us also define
). The particle coordinates are
, with
. The
potential energy
In physics, potential energy is the energy held by an object because of its position relative to other objects, stresses within itself, its electric charge, or other factors.
Common types of potential energy include the gravitational potentia ...
due to the interaction between particles is
and we do not consider the case of an externally applied field.
The appropriate
averages are taken in the
canonical ensemble , with
the configurational integral, taken over all possible combinations of particle positions. The probability of an elementary configuration, namely finding particle 1 in
, particle 2 in
, etc. is given by
The total number of particles is huge, so that
in itself is not very useful. However, one can also obtain the probability of a reduced configuration, where the positions of only
particles are fixed, in
, with no constraints on the remaining
particles. To this end, one has to integrate () over the remaining coordinates
:
:
.
If the particles are non-interacting, in the sense that the potential energy of each particle does not depend on any of the other particles,
, then the partition function factorizes, and the probability of an elementary configuration decomposes with independent arguments to a product of single particle probabilities,
Note how for non-interacting particles the probability is symmetric in its arguments. This is not true in general, and the order in which the positions occupy the argument slots of
matters. Given a set of positions, the way that the
particles can occupy those positions is
The probability that those positions ARE occupied is found by summing over all configurations in which a particle is at each of those locations. This can be done by taking every
permutation
In mathematics, a permutation of a set is, loosely speaking, an arrangement of its members into a sequence or linear order, or if the set is already ordered, a rearrangement of its elements. The word "permutation" also refers to the act or p ...
,
, in the
symmetric group
In abstract algebra, the symmetric group defined over any set is the group whose elements are all the bijections from the set to itself, and whose group operation is the composition of functions. In particular, the finite symmetric group ...
on
objects,
, to write
. For fewer positions, we integrate over extraneous arguments, and include a correction factor to prevent overcounting,
This quantity is called the ''n-particle density'' function. For
indistinguishable particles, one could permute all the particle positions,
, without changing the probability of an elementary configuration,
, so that the n-particle density function reduces to
Integrating the n-particle density gives the
permutation factor , counting the number of ways one can sequentially pick particles to place at the
positions out of the total
particles. Now let's turn to how we interpret this functions for different values of
.
For
, we have the one-particle density. For a crystal it is a periodic function with sharp maxima at the lattice sites. For a non-interacting gas, it is independent of the position
and equal to the overall number density,
, of the system. To see this first note that
in the volume occupied by the gas, and infinite without. The partition function in this case is
:
from which the definition gives the desired result
:
In fact, for this special case every n-particle density is independent of coordinates, and can be computed explicitly
For
, the non-interacting n-particle density is approximately
. With this in hand, the ''n-point correlation'' function
is defined by factoring out the non-interacting contribution,
Explicitly, this definition reads
where it is clear that the n-point correlation function is dimensionless.
Relations involving ''g''(r)
The structure factor
The second-order correlation function
is of special importance, as it is directly related (via a
Fourier transform
A Fourier transform (FT) is a mathematical transform that decomposes functions into frequency components, which are represented by the output of the transform as a function of frequency. Most commonly functions of time or space are transformed, ...
) to the
structure factor of the system and can thus be determined experimentally using
X-ray diffraction or
neutron diffraction.
If the system consists of spherically symmetric particles,
depends only on the relative distance between them,
. We will drop the sub- and superscript:
. Taking particle 0 as fixed at the origin of the coordinates,
is the ''average'' number of particles (among the remaining
) to be found in the volume
around the position
.
We can formally count these particles and take the average via the expression
, with
the ensemble average, yielding:
where the second equality requires the equivalence of particles
. The formula above is useful for relating
to the static structure factor
, defined by
, since we have:
:
, and thus:
, proving the Fourier relation alluded to above.
This equation is only valid in the sense of
distributions, since
is not normalized:
, so that
diverges as the volume
, leading to a Dirac peak at the origin for the structure factor. Since this contribution is inaccessible experimentally we can subtract it from the equation above and redefine the structure factor as a regular function:
: