TBan-I: Difference between revisions
| Line 28: | Line 28: | ||
* '''Scaling Form:''' <math> \exp(z)\,\exp(-e^{z}) </math> | * '''Scaling Form:''' <math> \exp(z)\,\exp(-e^{z}) </math> | ||
== Exercise 3: The Weakest Link and the Weibull Distribution == | |||
Consider a chain of length <math>L</math> subjected to a tensile force <math>F</math>. | |||
Define <math>F_c</math> as the force required to break the chain. | |||
The goal of this exercise is to determine how <math>F_c</math> depends on <math>L</math> and to characterize its sample-to-sample fluctuations. | |||
Throughout the exercise, you work in the limit of large <math>L</math>. | |||
=Exercise 3: number of states above the minimum= | =Exercise 3: number of states above the minimum= | ||
Revision as of 15:09, 31 August 2025
In the following exercises, we will use the notation from extreme value statistics as introduced in the course.
Exercise 1: The Gumbel Distribution
Let's go back to the end of Lecture 1. In the Gaussian case, expand around :
Show that by setting
you find
Therefore, the variable is distributed according to an M-independent distribution.
It is possible to generalize this result and classify the scaling forms into the Gumbel universality class:
- Characteristics:
- Applies when the tails of decay faster than any power law.
- Examples: the Gaussian case discussed here or exponential distributions .
- Scaling Form:
Exercise 3: The Weakest Link and the Weibull Distribution
Consider a chain of length subjected to a tensile force . Define as the force required to break the chain. The goal of this exercise is to determine how depends on and to characterize its sample-to-sample fluctuations. Throughout the exercise, you work in the limit of large .
Exercise 3: number of states above the minimum
Definition of :Given a realization of the random energies , define
that is, the number of random variables lying above the minimum
but less than
. This is itself a random variable. We are interested in its mean value:
The Final goal is to show that, for large M (when the extremes are described by the Gumbel distribution), you have:
Step 1: Exact manipulations: You start from the exact expression for the probability of states in the interval:
To compute , you must sum over . Use the identity
to arrive at the form:
where .
Step 2: the Gumbel limit So far, no approximations have been made. To proceed, we use and its asymptotics Gumbel form:
where .
The main contribution to the integral comes from the region near , where .
Compute the integral and verify that you obtain: