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Percolation

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consider a 2 dimensional lattice where the sites are occupied with probability p ... d=1 Chain. Probability that a site belongs to a cluster of size s is nss ... – PowerPoint PPT presentation

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Title: Percolation


1
Percolation
  • Percolation is a purely geometric problem which
    exhibits a phase transition
  • consider a 2 dimensional lattice where the sites
    are occupied with probability p and unoccupied
    with probability (1-p)
  • clusters are defined in terms of nearest
    neighbour sites that are both occupied
  • For p lt pc all clusters are finite
  • for p gt pc there exists an infinite cluster
  • when ppc, infinite cluster first appears

2
Percolation
  • As p increases, larger and larger clusters form
    until at pc there is one infinite cluster of
    connected sites
  • for pgt pc there are many such connected paths
  • the value of pc depends on the lattice as well as
    the dimension
  • in d1, pc 1
  • for d2 square lattice, pc.59

3
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4
d1 Clusters
1-p
p2
1-p
p5
p
Probability of 5-cluster is (1-p)2p5
5
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6
d2
7
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8
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9
Percolation
  • A spanning cluster is present for p?pc
  • the probability that an occupied site belongs to
    the spanning cluster
  • ??(p) number of sites in spanning cluster
    total number of occupied sites
  • ??(p) plays the role of an order parameter
  • ??(p) 0 for p0
    ??(p) 1 for p1
  • behaves nonanalytically at ppc
  • similar to the magnetization in a ferromagnet

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11
Clusters
  • cluster size distribution ns(p)
  • ns(p) number of clusters of size s
    total number of lattice sites(NL2)
  • For p lt pc all clusters are finite
    ??(p) 0
  • For p ? pc ??(p)? 0
  • the spanning cluster is not included in ns(p)
  • Nsns is the number of sites in finite clusters
    of size s
  • the probability that a site chosen at random
    belongs to an s-site cluster is
  • ws sns
    ?s(sns)

12
Percolation
  • mean finite cluster size S(p) ?s(s2ns)
    ?s(sns)
  • ??(p) and S(p) display critical behaviour at
    ppc
  • very similar to a thermodynamic phase transition
  • long ranged correlations play an important role

13
Exact Solution in d1
  • Probability of each site occupied is p
  • probability of 5 sites occupied is p5 since they
    are independent events
  • probability of an empty neighbour is 1-p
  • probability/site of a 5-cluster is (1-p)2p5
  • probability/site of an s-cluster is ns(p)
    (1-p)2ps

14
d1 Chain
  • Probability that a site belongs to a cluster of
    size s is nss
  • probability that a site belongs to any cluster is
    ?sns p where sum is from s1 to ?
  • average cluster size S(p) ?s ws
    (1p)/(1-p)
  • mean cluster size diverges as pgt1
  • pc 1
  • for dgt1 we have pc lt 1

15
Correlation Function
  • Define g(r) as probability that a site a distance
    r from an occupied site belongs to the same
    cluster
  • obviously g(0)1
  • for r1, neighbouring site belongs to the cluster
    if it is occupied gt g(1)p
  • for site at distance r, g(r)pr
  • for p lt 1, g(r) goes to zero exponentially at
    large r
  • g(r) exp(-r/?)
  • where ?(p) -1/ln(p) 1/(pc - p) for p near
    pc 1
  • ?(p) is a correlation length that diverges at pc

16
Percolation transition
  • 1-d exact solution indicates that certain
    quantities diverge at the percolation threshold
  • divergence can be described by simple power
    laws such as 1/(pc-p)
  • both S and ? have counterparts in thermal phase
    transitions
  • susceptibility and correlation length

Run site
17
Critical Exponents andFinite size scaling
  • Essential physics near the percolation threshold
    is associated with large but finite clusters
  • clusters on all length scales up to the size of
    the system L are present at ppc
  • the linear dimension ?(p) of the finite clusters
    increases rapidly at pc

18
In the limit L gt ? ?(p) diverges as
19
Critical Properties
  • In the limit Lgt ?, the behaviour of ??(p) and
    S(p) is described as follows

20
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21
Finite Size Effects
  • Simulations are restricted to finite L and direct
    measurements of ??(p) ,S(p) and ?(p) do not yield
    good estimates for the critical exponents
  • close to pc the largest cluster is the same size
    as the lattice and is affected by the finite size
  • hence both S(p) and ?(p) only reach a finite
    maximum at ppc(L)
  • finite size effects important when

22
Distance from the critical point at which finite
size effects occur
Measure these quantities at pc and estimate
critical exponents using the size dependence
Finite size scaling
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