TBan-IV: Difference between revisions

From Disordered Systems Wiki
Jump to navigation Jump to search
(Created page with "== Bienaymé Galton Watson process== A time <math> t=0 </math> appears as infected individual which dies with a rate <math> a </math> and branches with a rate <math> b </math>. On average, each infection generates in average <math> R_0 = b/a </math> new ones. Real epidemics corresponds to <math> R_0>1 </math>. At time <math> t </math>, the infected population is <math> n(t) </math>, while the total infected population is <center> <math> N(t) = \int_0^t n(t') d t'...")
 
 
(One intermediate revision by the same user not shown)
Line 17: Line 17:
<center> <math> \frac{d Q_s(t)}{d t}= -(a+b+s) Q_s(t)+a+ b Q_s^2(t) </math></center>
<center> <math> \frac{d Q_s(t)}{d t}= -(a+b+s) Q_s(t)+a+ b Q_s^2(t) </math></center>


* <Strong> Critical case: the stationary solution</Strong>:  Let's set <math> b=a</math> and <math> a=1</math> to recover the results of the mean field cellular automata. In the limit <math> t \to \infty</math> the total population coincides with the avalanche size<math> N(t\to \infty) =S</math>. The Laplace transform of <math> P(S)</math> is  
* <Strong> Critical case: the stationary solution</Strong>:  Let's set <math> b=a</math> and <math> a=1</math> to recover the results of the mean field cellular automata. In the limit <math> t \to \infty</math> we are interested to  the total population size   <math> S= N(t\to \infty) </math>. The Laplace transform of <math> P(S)</math> is  
<center> <math> 0= -(2+s) Q_s^{\text{stat}}+1+ (Q_s^{\text{stat}})^2 </math></center>
<center> <math> 0= -(2+s) Q_s^{\text{stat}}+1+ (Q_s^{\text{stat}})^2 </math></center>
which gives
which gives
Line 24: Line 24:
<center> <math>\int_0^\infty d S P(S) e^{-sS}= Q_s^{\text{stat}} </math></center>
<center> <math>\int_0^\infty d S P(S) e^{-sS}= Q_s^{\text{stat}} </math></center>


* <Strong> Critical case: Asymptotics</Strong>: We want to predict the power law tail of the avalanche distribution <math> P(S) \sim A \cdot S^{-\tau} </math>. Taking the derivative with respect to  <math> s </math> we have
* <Strong> Critical case: Asymptotics</Strong>: We want to predict the power law tail of the distribution <math> P(S) \sim A \cdot S^{-\tau} </math>. Taking the derivative with respect to  <math> s </math> we have
<center> <math>  A  \int_0^\infty d S S^{1-\tau} e^{-sS}=\frac{1}{2 \sqrt{s}} </math></center>
<center> <math>  A  \int_0^\infty d S S^{1-\tau} e^{-sS}=\frac{1}{2 \sqrt{s}} </math></center>


and conclude that <math> \tau=3/2 </math> and
and conclude that <math> \tau=3/2 </math> and
<center> <math>  A =\frac{1}{2 \int_0^\infty d z e^{-z}/\sqrt{z}}= \frac{1}{2 \sqrt{\pi}} </math></center>
<center> <math>  A =\frac{1}{2 \int_0^\infty d z e^{-z}/\sqrt{z}}= \frac{1}{2 \sqrt{\pi}} </math></center>
Hence we find back our previous result
We find the result
<center><math>  P(S) \sim  \frac{1}{2 \sqrt{\pi}}\frac{1}{S^{3/2}} </math> </center>
<center><math>  P(S) \sim  \frac{1}{2 \sqrt{\pi}}\frac{1}{S^{3/2}} </math> </center>

Latest revision as of 15:37, 16 September 2025

Bienaymé Galton Watson process

A time appears as infected individual which dies with a rate and branches with a rate . On average, each infection generates in average new ones. Real epidemics corresponds to .


At time , the infected population is , while the total infected population is

Our goal is to compute and we introduce its Laplace Transform:

. Note that the normalization imposes .

  • Evolution equation: Consider the evolution up to the time as a first evolution from to and a following evolution from to . Derive the following equation for

which gives

  • Critical case: the stationary solution: Let's set and to recover the results of the mean field cellular automata. In the limit we are interested to the total population size . The Laplace transform of is

which gives

with

  • Critical case: Asymptotics: We want to predict the power law tail of the distribution . Taking the derivative with respect to we have

and conclude that and

We find the result