Title: Summary of lecture 7
1Summary of lecture 7
- Error detection schemes arise in a range of
different places, such as - Travelers Checks
- airline tickets
- bank account numbers
- universal product codes (barcodes)
- ISBNs
- Zip codes.
- In these cases, check digits are used to ensure
that codes are correct. - If an error arises we are able to correct the
error manually.
2MAT199 Math Alive Birth, Growth, Death and Chaos
Ian Griffiths
Mathematical Institute, University of
Oxford, Department of Mathematics, Princeton
University
3Birth, Growth, Death and Chaos
- Dynamical systems are mathematical models for
phenomena that change over time. -
4Birth, Growth, Death and Chaos
- Dynamical systems are mathematical models for
phenomena that change over time. - Examples include population dynamics
- How do epidemics arise?
- How does human intervention change natural
cycles? e.g., how can we safely harvest fish
without causing extinction? what are the
best measures to take to combat illness
outbreaks?
5Birth, Growth, Death and Chaos
- Dynamical systems are mathematical models for
phenomena that change over time. - Examples include population dynamics
- How do epidemics arise?
- How does human intervention change natural
cycles? e.g., how can we safely harvest fish
without causing extinction? what are the
best measures to take to combat illness
outbreaks? - In this topic we will study mathematical
modelling rather than making the world fit
into our mathematical construction we use
mathematics to describe the world around us.
6Investment strategies
1. Bury your money
Savings ()
Number of years
- If P0 is originally invested then
- Investment after year n, Pn P0
7Investment strategies
2. Simple interest
- Each year the bank pays you a fixed fraction, r,
of your original investment.
Savings ()
Number of years
- If P0 is originally invested then
- Investment after year n, Pn (1nr)
P0
8Investment strategies
3. Compound interest
- Each year the bank pays you a fraction, r, of the
investment you have that year.
Savings ()
Number of years
- If P0 is originally invested then
- Investment after year n, Pn (1r)n
P0
9Investment strategies
3. Compound interest
- Each year the bank pays you a fraction, r, of the
investment you have that year.
Savings ()
Number of years
- If P0 is originally invested then
- Investment after year n, Pn (1r)n
P0
10Investment strategies
4. Compound interest and saving each year
- Each year the bank pays you a fraction, r, of the
investment you have that year and you save S
dollars each year too. - If P0 is originally invested then
- Investment after year n, Pn (1r)n
P0 ( 1(1r)(1r)2 (1r) 3) S
11Investment strategies
4. Compound interest and saving each year
- Each year the bank pays you a fraction, r, of the
investment you have that year and you save S
dollars each year too. - If P0 is originally invested then
- Investment after year n, Pn (1r)n
P0 ( 1(1r)(1r)2 (1r) 3) S
How can we write this more compactly?
12Summary of lecture 8
- Mathematical modelling is used to describe and
understand the world around us. - Dynamical systems are mathematical models for
phenomena that change over time. - We can write down rules that tell us what state
we are in at any given time, e.g., the amount of
savings we have in a bank account at any given
time. - It is easy to work out the state we will be in at
the next step (e.g., the money we have in our
account next year) given the current state. - It is helpful if we can obtain expressions for
the state we will be in at any time in terms of
the original state.
13Carl Friedrich Gauss
1777 1855
14Geometric progressions
15Geometric progressions
16Geometric progressions
- If -1ltalt1 this result tells us that
which means that we can add an infinite number of
terms and get a finite answer.
17Summary of lecture 9
- We can use our ideas for investment strategies to
write down mathematical models to describe and
understand population growth. - A model Pn1 (1r) Pn tells us the population
at time n1 given the population at time n.
18Summary of lecture 9
- We can use our ideas for investment strategies to
write down mathematical models to describe and
understand population growth. - A model Pn1 (1r) Pn tells us the population
at time n1 given the population at time n. - If rgt0 we get exponential population growth
(e.g., bacteria). - If rlt0 the population will die out.
19Summary of lecture 9
- We can use our ideas for investment strategies to
write down mathematical models to describe and
understand population growth. - A model Pn1 (1r) Pn tells us the population
at time n1 given the population at time n. - If rgt0 we get exponential population growth
(e.g., bacteria). - If rlt0 the population will die out.
- This model is not so realistic as it does not
account for additional effects such as food
resources. A better model has a growth rate that
depends on the population. - This leads to the logistic map
20Models for population growth
1. No limits on growth
- Malthus Pn1 (1r) x Pn
Pn (1r)n x P0
Thomas Malthus FRS 1766 1834
21Models for population growth
1. No limits on growth
- Malthus Pn1 (1r) x Pn
Pn (1r)n x P0
22Models for population growth
1. No limits on growth
- Malthus Pn1 (1r) x Pn
Pn (1r)n x P0
P
n
P01, r2
P01, r2
23Models for population growth
1. No limits on growth
- Malthus Pn1 (1r) x Pn
Pn (1r)n x P0
P
P
n
n
P01, r-0.5
P01, r2
24Models for population growth
1. No limits on growth
- Malthus Pn1 (1r) x Pn
Pn (1r)n x P0
P
P
n
n
P01, r-0.5
P01, r2
- In general if rgt0 population grows unboundedly
if rlt0 population dies out.
25Easter Island
26Population models 2. Limits on growth
- Food resources finite so growth rate depends on
number of species
Rate,
27Population models 2. Limits on growth
- Food resources finite so growth rate depends on
number of species
Rate,
- This is called the logistic map.
28Population models 2. Limits on growth
29Population models 2. Limits on growth
30Population models 2. Limits on growth
31Population models 2. Limits on growth
32Population models 2. Limits on growth
33Population models 2. Limits on growth
This is a stable equilibrium point
This is an unstable equilibrium point
34Population models 2. Limits on growth
35Population models 2. Limits on growth
36Population models 2. Limits on growth
This is a stable equilibrium point
37Population models 2. Limits on growth
This is a limit cycle
381.58
Summary of lecture 10
- We had a lot of snow.
- We found that for the logistic map the only way
to calculate the population evolution was to
substitute in manually which is boring. - But we found a nice graphical way of visualizing
this.
- We saw the Fibonacci number sequence 1, 1, 2,
3, 5, 8, 13, 21, - As we take the ratio of any number with the
previous one we get closer and closer to the
number 1.61803 - This is called the Golden Ratio.
- We saw how beautiful people had ratios of their
features that were close to the Golden Ratio.
39Models for population growth
The tent map
pn 1
pn
2pn if 0 pn
½pn 2(1-pn ) if ½
pn 1
40Question Is a limit cycle in the tent map stable,
unstable or neutrally stable? (Hint think
about the gradient of the graph)
pn 1
pn
2pn if 0 pn
½pn 2(1-pn ) if ½
pn 1
41The tent map
- Since the steepness of the tent map exceeds 1,
any limit cycle or equilibrium point will
be unstable.
pn 1
pn
2pn if 0 pn
½pn 2(1-pn ) if ½
pn 1
42Summary of lecture 11
Stability of equilibrium points
- If the steepness (positive or negative) of the
population graph is less than 1 at an equilibrium
point then the equilibrium point is stable. - If the steepness (positive or negative) of the
population graph exceeds 1 at an equilibrium
point then the equilibrium point is unstable. - We can have limit cycles when the steepness
(positive or negative) of the population graph
equals 1. - We can change variables to express a dynamical
system in a different way.e.g., instead of
population of animals, the cost of looking after
the animals.
43Ingredients of Chaos
Chaos is defined by three features
- Sensitive dependence on initial conditions.
- Dense number of possible places to visit.
- Dense number of actual places available to visit.
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