LBan-1: Difference between revisions

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=Part II=
=Part II=
==Random Energy Model==
==Random Energy Model==
This model simplifies the problem by neglecting correlations between the <math>M=2^N</math> configurations and assuming that the energies <math>E_{\alpha}</math> are independent and identically distributed (i.i.d.) random variables. Here, "independent" means that the energy of one configuration does not influence the energy of another, e.g., a configuration identical to the previous one except for a spin flip. "Identically distributed" indicates that all configurations follow the same probability distribution.
This model simplifies the problem by neglecting correlations between the <math>M=2^N</math> configurations and assuming that the energies <math>E_{\alpha}</math> are(i.i.d.) Gaussian variables with zero mean and variance <math>E_N</math>.  
 
'''Number of states'''  is given by: <center><math> p(E_\alpha) = \frac{1}{\sqrt{2 \pi N}} \exp\left(-\frac{E_{\alpha}^2}{2 N}\right) </math></center>
'''The Energy Distribution'''  is given by: <center><math> p(E_\alpha) = \frac{1}{\sqrt{2 \pi N}} \exp\left(-\frac{E_{\alpha}^2}{2 N}\right) </math></center>

Revision as of 22:14, 3 August 2025


Overview

This lesson is structured in three parts:

  • Self-averaging and disorder in statistical systems

Disordered systems are characterized by a random energy landscape, where the microscopic details vary from sample to sample. However, in the thermodynamic limit, physical observables become deterministic. This property is known as self-averaging. This is in general not the case for the partition function:

  • The Random Energy Model

We study the Random Energy Model (REM) introduced by Bernard Derrida. In this model at each configuration is assigned an independent energy drawn from a Gaussian distribution. The model exhibits a freezing transition at a critical temperature​, below which the free energy becomes dominated by the lowest energy states.

  • Extreme value statistics and saddle-point analysis

The results obtained from a saddle-point approximation can be recovered using the tools of extreme value statistics. In the REM, the low-temperature phase is governed by the minimum of a large set of independent energy values.

Part I

Random energy landascape

In a system with degrees of freedom, the number of configurations grows exponentially with . For simplicity, consider Ising spins that take two values, , located on a lattice of size in dimensions. In this case, and the number of configurations is .

In the presence of disorder, the energy associated with a given configuration becomes a random quantity. For instance, in the Edwards-Anderson model:

where the sum runs over nearest neighbors , and the couplings are independent and identically distributed (i.i.d.) Gaussian random variables with zero mean and unit variance.

The energy of a given configuration is a random quantity because each system corresponds to a different realization of the disorder. In an experiment, this means that each of us has a different physical sample; in a numerical simulation, it means that each of us has generated a different set of couplings .


To illustrate this, consider a single configuration, for example the one where all spins are up. The energy of this configuration is given by the sum of all the couplings between neighboring spins:

Since the the couplings are random, the energy associated with this particular configuration is itself a Gaussian random variable, with zero mean and a variance proportional to the number of terms in the sum — that is, of order . The same reasoning applies to each of the configurations. So, in a disordered system, the entire energy landscape is random and sample-dependent.


Self-averaging observables

A crucial question is whether the physical properties measured on a given sample are themselves random or not. Our everyday experience suggests that they are not: materials like glass, ceramics, or bronze have well-defined, reproducible physical properties that can be reliably controlled for industrial applications.

From a more mathematical point of view, it means tha physical observables — such as the free energy and its derivatives (magnetization, specific heat, susceptibility, etc.) — are self-averaging. This means that, in the limit , the distribution of the observable concentrates around its average:

Hence macroscopic observables become effectively deterministic and their fluctuations from sample to sample vanish in relative terms:

Part II

Random Energy Model

This model simplifies the problem by neglecting correlations between the configurations and assuming that the energies are(i.i.d.) Gaussian variables with zero mean and variance .

Number of states is given by: