M. Drew LaMar
April 22, 2020
A unique solution to a discrete map is an infinite sequence of points:
\[ P_{0}, P_{1}, P_{2}, P_{3}, \ldots \]
Let's simulate the equation using Desmos:
\[ P_{t} \ll K \ \ \textrm{(much smaller than)} \]
\[ \frac{P_{t}}{K} \ll 1 \]
\[ \left(1-\frac{P_{t}}{K}\right) \approx 1 \]
\[ P_{t+1} \approx (1+r)P_{t} \ \ (\textrm{Exponential growth}) \]
\[ \begin{align} P_{t+1} & = (1+r)P_{t} \\ & = (1+r)(1+r)P_{t-1}, \ \textrm{since} \ P_{t} = (1+r)P_{t-1} \\ & = (1+r)^2P_{t-1} \\ & = (1+r)^3P_{t-2}, \ \textrm{since} \ P_{t-1} = (1+r)P_{t-2} \\ & = (1+r)^?P_{0} \\ & = (1+r)^{t+1}P_{0} \end{align} \]
We have an explicit solution (exponential function)!!!
\[ P_{t} = F(t,P_{0}) = (1+r)^tP_{0} \]
What happens when \( t \rightarrow \infty \)? Depends on \( r \)!
Exponential decay when \( r < 0 \) and exponential growth when \( r > 0 \). What about \( r = 0 \)?
\[ P_{t} \approx \frac{K}{2} \Longrightarrow \left(1-\frac{P_{t}}{K}\right) \approx \frac{1}{2} \]
\[ P_{t+1} \approx P_{t} + \frac{r}{2}P_{t} = \left(1+\frac{r}{2}\right)P_{t} \]
\[ P_{t} \approx K \Longrightarrow \left(1-\frac{P_{t}}{K}\right) \approx 0 \]
\[ P_{t+1} \approx P_{t} + rP_{t}\cdot 0 = P_{t} = K \]
\( K \) is called a fixed point.
There are a few ways to study a discrete map like this.
For the discrete logistic model, even though it is relatively simple, there does not exist an explicit solution!
We've simulated using a computer - what about exploring behavior of solutions?? Dynamical Systems Theory!!
In dynamical systems theory, one of the most important questions is:
Question: What happens to solutions as \( t \rightarrow \infty \)?
We saw this in the simulations - there is a transient period (\( t < \infty \)) where the solution seems to converge to an equilibrium (\( t \rightarrow \infty \)).
The simplest example of equilibrium solutions are known as fixed points. Let's explore this idea through the simulations.
Definition:
Fixed points of a discrete map are denoted by \( P_{\infty} \) and satisfy the relation
\[ P_{t} = P_{\infty}, \ \textrm{for all $t$} \]
This also means \( P_{t+1} = P_{t} = P_{\infty} \). So how do we find fixed points for a discrete map?
If the discrete map is given by
\[ P_{t+1} = F(P_{t}) \]
then fixed points satisfy the equation
\[ P_{t+1} = {\bf F(P_{t}) = P_{t}} \Rightarrow F(P_{t})-P_{t} = 0 \]
In other words, fixed points simultaneously solve (algebraically) the two equations:
\[ \begin{align} P_{t+1} & = F(P_{t}) \\ P_{t+1} & = P_{t} \end{align} \]
We can visual the dynamics AND these two equations in a cobweb plot.
To do this, we will (graphically) assign \( y = P_{t+1} \) and \( x = P_{t} \) to give
\[ \begin{align} y & = F(x) \\ y & = x \end{align} \]
Let's plot these two equations.
\[ \begin{align} P_{t+1} & = P_{t} + rP_{t}\left(1 - \frac{P_{t}}{K}\right) \\ P_{t+1} & = P_{t} \end{align} \]
\( \Longrightarrow \)
\[ \begin{align} P_{t} & = P_{t} + rP_{t}\left(1 - \frac{P_{t}}{K}\right) \\ 0 & = rP_{t}\left(1 - \frac{P_{t}}{K}\right) \\ \end{align} \]
\( \Longrightarrow \ P_{t} = 0 \ \) (or) \( \ 1 - \frac{P_{t}}{K} = 0 \ \Longrightarrow \ P_{t} = 0 \ \) (or) \( \ P_{t} = K \).
Question: How do we determine the stability of fixed points?