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? Population Growth

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Title: ? Population Growth


1
?Population Growth
  • Exponential and Logistic
  • IB Environmental Studies
  • 2004 Darrel Holnes

2
Population Growth
  • What is a population? Very simply, a population
    is a group of organisms of the same species that
    live in a particular area. The number of
    organisms in a population changes over time
    because of the following births, deaths,
    immigration, and emigration.
  • The increase in the number of organisms in a
    population is referred to as population growth.
    There are factors that can help populations grow
    and others than can slow down and even prevent
    populations from growing. Factors that limit
    population growth are called limiting factors.
    However, before we go into the limiting factors,
    let's talk about the biotic potential of a
    population.

3
Breaking It Down to Exponential
  • If things were perfect for a population and all
    the individuals in the population survived and
    reproduced at the maximum rate, that growth rate
    is called the biotic potential. The biotic
    potential is used as a reference when looking at
    growth rates of populations. Are the growth rates
    close to the biotic potential or far from it and
    how far? That type of analysis helps population
    ecologists understand if the conditions for the
    population are adequate.
  • It is certainly not common for a population to
    grow at its biotic potential for a considerable
    period of time however, there are situations
    where this can happen. For example, when fish are
    introduced into a lake where there is plenty of
    food and space and there are no predators, the
    fish can reproduce at their biotic potential, but
    not for a long time. Another example is when a
    scientist grows E. coli2 on a petri dish with
    ideal nutrients. The bacteria will reproduce and
    grow at its biotic potential, which for E. coli
    means that the population doubles in size every
    20 minutes!. The graph of a population growing at
    its biotic potential, which is called
    exponential, can be very steep.

4
  • For all populations, there are factors that will
    limit their growth. Some of these factors depend
    on the population density. The most common
    density-dependent factors that limit population
    growth are
  • Food and water supplies - A given supply of food
    and water might be enough for a small population
    density. However, that same supply might not be
    enough for a high-density population, and
    competition among the individuals of the
    population would develop.
  • Light - Light is a very common resource needed by
    plants. A plant density increases those plants
    that don't get enough light will not grow strong
    enough and might even die.
  • Space - This is an obvious limiting factor,
    especially if you think of fish in a lake,
    bacteria in a petri dish, or plants in a forest.
  • Predators - Higher densities of a prey population
    attract more predators and as the number of prey
    increases, so does the number of predators. On
    the other hand, if the number of prey decreases,
    so does the number of predators.
  • Diseases - Diseases can certainly have an impact
    on birth rate and thus affect growth rate. Since
    many diseases are contagious, they are therefore
    dependent on density.
  • Parasitism - Parasitism is a relationship where
    one organism (the parasite) feeds on the tissues
    or body fluids of another organism (the host). In
    this type of relationship the parasite benefits
    and the host is harmed, sometimes to the point of
    killing the host. Like diseases, since parasites
    spread easier in a high-density host, their
    impact depends on the density.

5
Breaking It Down to Logistic
  • There are also limiting factors that don't depend
    on the population density. These
    density-independent factors are abiotic factors
    such as weather storms, fires, earthquakes, or
    floods. Any of these factors can have a severe
    impact on population sizes regardless of density.
  • To conclude this section, we will describe the
    carrying capacity of an ecosystem. The area
    occupied by a population does not have unlimited
    resources such as food, water, and supplies to
    build and keep a dwelling. These factors limit
    the population growth and many times bring about
    death rates that equal the birth rates. When this
    happens, the population size reaches a stable
    balance. So one could say that there is a certain
    number of individuals of the population that can
    be supported by the environmental resources in a
    given ecosystem. That is called the carrying
    capacity of that ecosystem. The graph of a
    population that grows until it reaches a stable
    size based on the carrying capacity of the
    ecosystem is called an S-shaped curve. - Logistic

6
It is divided into two groups
  • The logistic curve, sometimes referred to as an
    "S-shaped" curve, initially follows a similar
    pattern as the exponential growth curve that is,
    population growth is slow initially, then enters
    into a point where growth is rising rapidly.
  • The logistic model is useful in describing
    populations which exhibit exponential growth at
    small populations but who live in environments
    which enforce an upper limit on population size.
    The logistic population is usually written
  • Exponential
  • Formula 1
  • Formula 2

7
Formula Key
  • Formula 1
  • dN/dt refers to the population growth rate,
  • rm refers to the maximum instantaneous per capita
    rate of population growth,
  • r refers to the instantaneous per capita rate of
    population growth,
  • N refers to the population size,
  • K refers to the carrying capacity,
  • t refers to a specific time,
  • tau refers to the length of a time
  • lag, and theta can be used to create a model in
    which the response of per capita population
    growth decreases non-linearly with population
    size.
  • Formula 2
  • Parameter r in the exponential model can be
    interpreted as a difference between the birth
    (reproduction) rate and the death rate
  • where b is the birth rate and m is the death
    rate. Birth rate is the number of offspring
    organisms produced per one existing organism in
    the population per unit time. Death rate is the
    probability of dying per one organism. The rate
    of population growth (r) is equal to birth rate
    (b) minus death rate (m).

8
Exponential model
  • Applications of the exponential model
  • microbiology (growth of bacteria),
  • conservation biology (restoration of disturbed
    populations),
  • insect rearing (prediction of yield),
  • plant or insect quarantine (population growth of
    introduced species),
  • fishery (prediction of fish dynamics
  • Assumptions of Exponential Model
  • Continuous reproduction (e.g., no seasonality)
  • All organisms are identical (e.g., no age
    structure)
  • Environment is constant in space and time (e.g.,
    resources are unlimited
  • Graphical unchecked or nonregulated growth is
    commonly represented by the exponential growth
    curve

9
Exponential Model
  • Exponential model is associated with the name of
    Thomas Robert Malthus (1766-1834) who first
    realized that any species can potentially
    increase in numbers according to a geometric
    series. For example, if a species has
    non-overlapping populations (e.g., annual
    plants), and each organism produces R offspring,
    then, population numbers N in generations
    t0,1,2,... is equal to
  • When t is large, then this equation can be
    approximated by an exponential function
  • There are 3 possible model outcomes
  • Population exponentially declines (r lt 0)
  • Population exponentially increases (r gt 0)
  • Population does not change (r 0)
  • Parameter r is called
  • Malthusian parameter
  • Intrinsic rate of increase
  • Instantaneous rate of natural increase
  • Population growth rate

10
Logistic Model
  • Logistic model was developed by Belgian
    mathematician Pierre Verhulst (1838) who
    suggested that the rate of population increase
    may be limited, i.e., it may depend on population
    density
  • At low densities (N lt lt K), the population growth
    rate is maximal and equals to ro. Parameter ro
    can be interpreted as population growth rate in
    the absence of intra-specific competition.

11
Logistic Formula
  • Population growth rate declines with population
    numbers, N, and reaches 0 when N K. Parameter K
    is the upper limit of population growth and it is
    called carrying capacity. It is usually
    interpreted as the amount of resources expressed
    in the number of organisms that can be supported
    by these resources. If population numbers exceed
    K, then population growth rate becomes negative
    and population numbers decline. The dynamics of
    the population is described by the differential
    equation

12
After Thoughts
  • Eventually the population stops increasing and
    reaches its maximum level or "carrying capacity."
    The maximum population size that can be reached
    is based on the availability of light, in the
    case of plants, or food, shelter, etc. Most
    populations never approach the "carrying
    capacity" but instead remain at lower levels
    because of the regulating effects of both abiotic
    and biotic factors.
  •  
  • Note that populations do not typically remain at
    a steady state continually but instead tend to
    fluctuate or oscillate around some characteristic
    density.
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