Title: Urban Population Dynamics
1Urban Population Dynamics
- Cliff Bowmen
- Scott Fulton
- Gary Reynolds
- Mike Wells
2Population Modeling
- Planners at the city, state, and national level
forecast population to plan for future needs - Housing
- Schools
- Care for elderly
- Jobs
- Utilities
- Businesses predict how the portions of the
population that use their product will be
changing.
3Population Modeling
- Ecologists study ecological systems, especially
endangered species. - Medical researchers study growth of microorganism
and virus populations.
4Human Population Dynamics
- Normal to measure in intervals of 10 years as the
census is taken every 10 years. - Age groups would be 0-9,10-19,11-20 etc.
- The survival fractions would then show the
fraction of "newborns" (0-9) who survive to age
10, the fraction of 10 to 19 year olds who
survive to 20 etc.
5Basic Equations
- The basic equations we begin with are
- x(k1) Ax(k) k0,1,2,. . . and x(0) given
- With solution found iteratively to be
- x(k) Akx(0)
6Leslie Matrices
- First described by P. H. Leslie in 1945
- Used to describe the population dynamics of a
wide variety of organisms including humans
7Leslie Matrix Assumptions
- Only females in the population are considered
- The population is divided into age groups. (0-9,
10-19, 20-29, 30-39, 40-49, 50-59, 60). - The survival rate Pt for each age group is known.
- The reproduction rate Ft for each age group is
known. - The initial age distribution is known.
8Part 1 Our Leslie Matrix
Average number of females Ft born to a single
female in that age group
- (0-9) (10-19) (20-29) (30-39) (40-49) (50-59) (6
0-69) - .2 1.2 1.1 .9 .1 0 0
- .7 0 0 0 0 0 0
- 0 .82 0 0 0 0 0
- A 0 0 .97 0 0 0 0
- 0 0 0 .97 0 0 0
- 0 0 0 0 .90 0 0
- 0 0 0 0 0 .87 0
Percent of females in one age class Pt who
survive to move on to the next age group Pt1
9Part 1 Effecting these Factors
- Affecting the birth rate
- Social (i.e. popularity of having children)
- Economical (i.e. ability to support offspring)
- Political (i.e. limiting number of births)
- Environmental (i.e. environmental estrogens)
- Effecting the survival rate
- War
- Disease
- Health Care (Accessibility and Quality)
10Part 2 Predictions
11Part 2 Predictions
12Part 2 Largest Positive Eigenvalue
- Using Mat-Lab software, the largest positive
eigenvalue of A 1.3658
13Part 3 Determine Stability
- Although some age classes change at different
rates than others, the overall population for
this model grows by a constantly increasing
margin at each simulation. Therefore, the
population growth is unstable. - However, if the calculations are performed long
enough, the proportions of the population
stabilize after twelve simulations. That is, the
proportionality factors for years 2120 and 2130,
(and for the following years as well ), are equal
if they are calculated to one decimal place.
14Part 3 Unstable Population
- We have decided it is unstable
- We simulate it long enough that the column
matrices for two successive populations are
proportional to one another. - Calculating that proportionality factor to one
decimal place gives us
15Part 3 Growth Rate
- The growth rate stabilized at 1.366
- This also happens to be our eigenvalue that we
found earlier (A 1.3658)
16Part 4 With Birth Rates For Second Age Class
Reduced by 25
17Part 4 Stability
- The system is still unstable.
- Proportions still stabilize after year 2120
- Our growth rate found here is 1.3037 which we
know to also be the eigenvalue
18Part 5 Adding in Immigration
- We assume that a constant number of immigrants
are added to each age group during each time
interval - The new basic equations are
- x(k1) Ax(k) B
- k0,1,2,. . .
- x(0) given
- B is a 7 x 1 matrix where Mij i (the amount of
immigration in each period), for all i and j - With solution found iteratively to be
- x(k) (Ak) x(0) kB
19Part 5 20,000 Immigrants Entering Each Age Group
Each 10 Year Period
20Part 5 Comparisons