We have now seen the differential equation
and its solutions
in many contexts. One of these contexts was that of population growth.
Although we arrived at it by looking originally at a doubling process
involving bacterial
growth, it is tempting to use similar ideas to model human
populations.
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The behaviour of the exponentially growing function and its
implications for the population growth of humans made for shocking
and sensational controversy two hundred years ago, when it was
described by Thomas R. Malthus in his 1798 publication,
An essay on the principle of population as it affects the
future improvement of society .
Malthus predicted that unless disasters or plagues limit the
population on earth, simple exponential growth would result in
unlimited population density whereas food supply could at best
increase linearly. He concluded that mass-starvation, strife, and
wars would be the lot of mankind. |
A
simple calculation, below convinces us that this scenario is certainly
consistent with the predictions of the exponential growth equation.
Human population under unlimited growth:
the Malthus equation
For
your consideration:
- (1) Carry out the calculations required to arrive at the above
results.
- (2) Do you believe this prediction ? Is there a problem with the way
we arrived at it?
Changing the Model
The lack of realism of unlimited growth was evident
soon after Malthus spread his message of doom and gloom. In 1838, the
Belgian Pierre-Francois Verhulst suggested a revised model which would
eliminate the undesirable effect of unlimited growth.
He suggested that when the population gets high, there is a tendency
for individuals to spend more time interfereing with each other - fighting
for food, or for scarce resources, killing each other over wars for land
claims, or somehow increasing the rate of death. Since interference should
be low when the density is low, and get more significant for a large
population, Verhulst suggested modifying the previous model to read:
The term containing the constant (read "mu" for the Greek symbol) is the
mortality. Note that it contributes negatively to the
rate of change of the population - it tends to make the population
decrease. We also comment that this term would be small when is small, but would grow and dominate over the other term
when is large. We will see below that this has the desired
effect of preventing population explosion.
Logistic Growth
Verhulst's equation
has come to be known as the Logistic Growth Equation. It
was noted that the same equation can be written in a variety of forms
which are essentially the same but carry slightly different
interpretations. One of these alternate forms is obtained by taking out a
factor of from both terms above. We get:
or, letting , the equivalent version obtained by plugging in this new
constant,
The latter is the most commonly used varient in the biological
literature. In fact, the constants in this equation are named the basic
reproductive rate of the population, , and the carrying capacity of the
environment, , by biologists. The first stands for the innate
birthrate of the population, under optimal conditions. The second
constant, as we shall see below, represents the level of the population
that can be sustained by the given environment.
The Logistic equation is used as a fundamental yardstick with which to
understand population behaviour, and biologists talk about "r-selection"
and "K-selection" to refer to various strategies that species adopt to
outwit their competitors.
But before getting carried away with the terminology and the multiple
ways of writing the same basic model for growth, let us make a few
observations about its behaviour:
We notice that the population
does not grow whenever
This occurs under two circumstances, either:
We also notice that the population grows whenever the
sign of is positive, whereas the population decreases
when the sign of this derivative is negative.
Qualitative analysis
How would we
understand the behaviour of this new, more complicated differential
equation? We have no recourse to functions that automatically satisfy this
new relationship between derivative and quadratic expression, but we can
use the qualitative ideas that have been developed in the previous page.
Let us first summarize how the slope of tangent lines to the solutions
of this equation would behave. Again we can do this by tabulating values
of y and the associated values of the slope of the tangent line, . Now, however, we will refrain from using numerical
values, and express only the sizes and signs of the entries in the table.
Value of |
0 |
|
K |
|
Sign of |
0 |
+ |
0 |
- |
We notice that decreases and thus the slope of the tangent lines to be
drawn is negative whenever but that whenever , the slopes are positive, and thus increases. We show this behaviour in the picture below.
For
your consideration:
- (1) Experiment with the initial value of
by moving the red dot. What do you notice about the
behaviour of the solution for various initial values?
- (2) Under what circumstances does this model predict that there will
be no population ?
- (3) From the information we have discussed, and the labels on this
diagram, can you tell what value of the constant
was used to prepare the diagram ?
- (4) Is it also easy to figure out the value of the constant
just by looking at the diagram ? can you try to
estimate this value? (Hint: place the red dot on the value y=1, and try
to estimate the slope of the tangent line there.)
- (5) Suppose you start with a positive value of y which is quite
small. If we look at the behaviour of the solution over a very short
time span, we might think that it is growing exponentially. Can you
explain why this might be true?
We might summarize
out discoveries on this page as follows:
The Logistic Equation
predicts that a population will grow only up to some limited
level, , called the Carrying Capacity. Quantitative
analysis using the idea of the direction field can give us insight
about the behaviour of this (and other) models for which we have no
knowlege of the detailed solution of the differential equation.
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Other Sources you may want to consult:
International
Society of Malthus
Pierre
Francois Verhulst
Applications
of Differential Equations San Joaquin Delta College,
Population
Dynamics University of South Alabama
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