Goal: we will introduce the Anderson model, discuss the behaviour as a function of the dimension. In 1d localization can be connected to the product of random matrices.
Anderson model (tight bindind model)
We consider disordered non-interacting particles hopping between nearest neighbors sites on a lattice. The hamiltonian reads:
The single particle hamiltonian in 1d reads
For simplicity we set the hopping
. The disorder are iid random variables drawn, uniformly from the box
.
The final goal is to study the statistical properties of eigensystem
Density of states
In 1d and in absence of disorder, the dispersion relation is
. From the dispersion relation it is simple to compute the density of states (DOS) :
In presence of disorder the DOS becomes larger, and display sample to sample fluctuations. One can consider the mean value, avergaed over disorder realization.
Eigenstates
In absence of disorder the eigenstates are plane waves delocalized along all the system. In presence of disorder, three situations can occur and to distinguish them it is useful to introduce the inverse participation ratio, IPR
The normalization imposes
and
.
- Delocalized eigenstates In this case,
. Hence, we expect
- Localized eigenstates In this case,
for
sites and zero elsewhere. Hence, we expect
- Multifractal eigenstates At the transition, namely at the mobility edge, an anomalous scaling is observed elsewhere. Hence, we expect
Here
is q-dependent fractal dimension, smaller than
.
Transfer matrices and Lyapunov exponents
Central limit theorem and log-normal distribution
Consider a set of positive iid random variables
with finite mean and variance. Consider the multiplicative variable
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In the large N limit, the CLT applies and its logarithm is a Gaussian variable of the form:
Here,
is a Gaussian number of zero mean and unit variance,
are constant that we can determine. Show that
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