Percolation critical exponents


In the context of the physical and mathematical theory of percolation, a percolation transition is characterized by a set of universal critical exponents, which describe the fractal properties of the percolating medium at large scales and sufficiently close to the transition. The exponents are universal in the sense that they only depend on the type of percolation model and on the space dimension. They are expected to not depend on microscopic details such as the lattice structure, or whether site or bond percolation is considered. This article deals with the critical exponents of random percolation.
Percolating systems have a parameter which controls the occupancy of sites or bonds in the system. At a critical value, the mean cluster size goes to infinity and the percolation transition takes place. As one approaches, various quantities either diverge or go to a constant value by a power law in, and the exponent of that power law is the critical exponent. While the exponent of that power law is generally the same on both sides of the threshold, the coefficient or "amplitude" is generally different, leading to a universal amplitude ratio.

Description

Thermodynamic or configurational systems near a critical point or a continuous phase transition become fractal, and the behavior of many quantities in such circumstances is described by universal critical exponents. Percolation theory is a particularly simple and fundamental model in statistical mechanics which has a critical point, and a great deal of work has been done in finding its critical exponents, both theoretically and numerically.
Critical exponents exist for a variety of observables, but most of them are linked to each other by exponent relations. Only a few of them are independent, and the choice of the fundamental exponents depends on the focus of the study at hand. One choice is the set motivated by the cluster size distribution, another choice is motivated by the structure of the infinite cluster. So-called correction exponents extend these sets, they refer to higher orders of the asymptotic expansion around the critical point.

Definitions of exponents

Self-similarity at the percolation threshold

Percolation clusters become self-similar precisely at the threshold density for sufficiently large length scales, entailing the following asymptotic power laws:
The fractal dimension relates how the mass of the incipient infinite cluster depends on the radius or another length measure, at and for large probe sizes,. Other notation: magnetic exponent and co-dimension.
The Fisher exponent characterizes the cluster-size distribution, which is often determined in computer simulations. The latter counts the number of clusters with a given size , normalized by the total volume. The distribution obeys a power law at the threshold, asymptotically as.
The probability for two sites separated by a distance to belong to the same cluster decays as or for large distances, which introduces the anomalous dimension. Also, and.
The exponent is connected with the leading correction to scaling, which appears, e.g., in the asymptotic expansion of the cluster-size distribution,
for. Also,.
For quantities like the mean cluster size, the corrections are controlled by the exponent.
The minimum or chemical distance or shortest-path exponent describes how the average minimum distance relates to the Euclidean distance, namely Note, it is more appropriate and practical to measure average, <> for a given. The elastic backbone has the same fractal dimension as the shortest path. A related quantity is the spreading dimension, which describes the scaling of the mass M of a critical cluster within a chemical distance as, and is related to the fractal dimension of the cluster by. The chemical distance can also be thought of as a time in an epidemic growth process, and one also defines where, and is the dynamical exponent. One also writes.
Also related to the minimum dimension is the simultaneous growth of two nearby clusters. The probability that the two clusters coalesce exactly in time scales as with.
The dimension of the backbone, which is defined as the subset of cluster sites
carrying the current when a voltage difference is applied between two sites far apart, is .
The fractal dimension of the random walk on an infinite incipient percolation cluster is given by.
The spectral dimension such that the average number of distinct sites visited in an -step random walk scales as.

Critical behavior close to the percolation threshold

The approach to the percolation threshold is governed by power laws again, which hold asymptotically close to :
The exponent describes the divergence of the correlation length as the percolation transition is approached,. The infinite cluster becomes homogeneous at length scales beyond the correlation length; further, it is a measure for the linear extent of the largest finite cluster. Other notation: Thermal exponent and dimension.
Off criticality, only finite clusters exist up to a largest cluster size, and the cluster-size distribution is smoothly cut off by a rapidly decaying function,. The exponent characterizes the divergence of the cutoff parameter,. From the fractal relation we have, yielding.
The density of clusters is continuous at the threshold but its third derivative goes to infinity as determined by the exponent :, where represents the coefficient above and below the transition point.
The strength or weight of the percolating cluster, or, is the probability that a site belongs to an infinite cluster. is zero below the transition and is non-analytic. Just above the transition,, defining the exponent. plays the role of an order parameter.
The divergence of the mean cluster size introduces the exponent.
The gap exponent Δ is defined as Δ = 1/ = 1/σ and represents the "gap" in critical exponent values from one moment to the next for.
The conductivity exponent describes how the electrical conductivity goes to zero in a conductor-insulator mixture,. Also,

Surface critical exponents

The probability a point at a surface belongs to the percolating or infinite cluster is
The surface fractal dimension is given by

Scaling relations

Hyperscaling relations

Relations based on \{\sigma, \tau\}

Relations based on \{d_\text{f}, \nu\}

Conductivity scaling relations

Exponents for standard percolation

For higher-order terms in the expansions, see

Exponents for standard percolation on a non-trivial planar lattice ([Weighted planar stochastic lattice (WPSL)])

WPSLExponents

Note that it has been claimed that the numerical values of exponents of percolation depend only on the dimension of lattice. However, percolation on WPSL is an exception in the sense that albeit it is two dimensional yet it does not belong to the same universality where all the planar lattices belong.

Exponents for directed percolation

Directed percolation refers to percolation in which the fluid can flow only in one direction along bonds—such as only in the downward direction on a square lattice rotated by 45 degrees. This system is referred to as "1 + 1 dimensional DP" where the two dimensions are thought of as space and time.
and are the transverse and longitudinal correlation length exponents, respectively. Also.
is the exponent corresponding to the behavior of the survival probability as a function of time:.
The d+1 dimensional exponents are given below.
0.276486
0.276 7
0.5834
0.580
0.813
0.818
0.82205
1
0.159464
0.15944
0.4505
0.451
0.4509
0.4510

0.460
0.732
0.7398
0.73717
1
0.313686
0.31370
0.2303
0.2307
0.2295

0.229

0.214
0.1057
0.114
0.12084
1.733847
1.7355
1.73
1.16
1.287
1.295
1.106
1.11
1.10571
1.096854
1.0979
0.7333
0.729
0.584
0.582
0.58360
1.580745
1.5807
1.1325

1.133

1.134
1.7660
1.765
1.766
1.7665
1.7666
1.88746
1.8990
1.901
2
2.277730 = 41/18?, 2.2781.595
1.237
1

Scaling relations for directed percolation

Exponents for percolation on networks

The percolation critical exponents of Erdos Reyni networks are the same as for mean field or as for d=6 and above. However, for scale free networks they are very different because of breaking their structural symmetry
. Nodes with low degrees have different neighborhood compared to high degree nodes. Percolation of networks composed of communities can be mapped to percolation or magnetism under external field.