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Title: Lecture Outline: Introduction


1
Lecture Outline Introduction
Density-Independent Growth
  • What is a population?
  • What is population ecology about?
  • General approaches in population ecology
  • Role of mathematical models
  • Density-independent population growth
  • Exponential and geometric models
  • Assumptions limitations
  • Values

2
What is a population?
Gotelli (2001). A population is a group of
individuals, all of the same species, that live
in the same place. Although it is difficult to
define the physical boundaries of a population,
the individuals within the population have the
potential to reproduce with one another during
the course of their lifetimes.
Akcakaya et al. (1999). a collection of
individuals that are sufficiently close
geographically that they can find each other and
reproduce Thus, it rests on the biological
species concept In practice, a population is
any collection of individuals of the same species
distributed more or less contiguously.
Begon et al. (1996). A group of individuals of
one species in an area, though the size and
nature of the area is defined, often arbitrarily,
for the purposes of the study being undertaken.
3
What is population ecology?
  • The study of how and why the distribution,
    abundance, and composition of populations change
    over time and space.
  • Historical focus on changes in abundance over
    time
  • (e.g., population growth models, population
    cycles).
  • Current focus includes aspects of spatial
    structure and dynamics (e.g., dispersal and
    metapopulations).
  • Bridge between individual ecology and community
    ecology, and typically includes two-species
    interactions (competition, predation, parasitism).

4
Wildlife Population Ecology
Application of principles of population ecology
to conserve, restore, manage or control
non-domesticated vertebrate species.
5
Some relevant questions of Wildlife Population
Ecology
  • How does demographic and environmental
    stochasticity affect our ability to predict the
    future number of deer based on present number of
    individuals?
  • Given data on survival, reproduction, and age
    structure, what are the chances that a population
    of an endangered songbird species persists for
    100 years? What processes are important to
    persistence?
  • How does patch structure, dispersal ability, and
    environmental correlation affect extinction
    patterns within a metapopulation?
  • 4. Do source-sink dynamics affect our ability to
    evaluate and manage habitat quality for wildlife
    species?
  • 5. How does detectability of individuals
    influence field estimates of population size or
    survival?

6
General Approaches to Population Ecology
Experimentation
Observational
Modeling
  • Observationalincludes statistical analysis of
    time-series data
  • Modelingmathematical models of mechanisms
  • Experimentationmanipulative field studies with
    controls replication

7
Why use models?
  • Nature is complex so we need to use simplified,
    abstractions of reality.
  • Provide a framework for organizing observations
    and ideas. Alternative is loose collection of
    isolated facts and case studies.
  • Generate testable predictions that help us to
    identify mechanisms responsible for observed
    patterns.
  • Expose faulty assumptions. That is, many models
    are wrong but the reasons for model failure are
    informative.
  • Highlight gaps in field data. Help to direct
    future sampling efforts.

8
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9
  • Historically, mathematical models and modelers
    were viewed with skepticism by many traditional
    field ecologists (Kingsland 1995).
  • Many of the modelers were not ecologists, or
    even biologists (e.g., human demographers,
    theoretical physicists). Relevance of the models
    to practical questions was not initially obvious.
  • In contrast, other ecologists welcomed
    mathematical approach and hoped it would help to
    solidify ecology as a hard science
  • (aka Physics Envy).
  • Today, most ecologists agree that studies in
    population ecology ideally should integrate
    different approaches (strengths weaknesses).

10
But tension among ecologists continues
Charles Krebs-Avoid mathematical models. They
are more seductive than useful at this stage of
the subject. If you are addicted to models, at
least do not believe them until all of the
assumptions can be tested and their predictions
verified. There is no such thing in population
dynamics as a reasonable assumption without
data.
11
Turchins Approach
Time-series analysis
  • Initial stages of investigation
  • Quantitative description of patterns of
    population fluctuations
  • Potential to reduce number of viable alternatives

12
My background and biases
13
Density-independent Population Growth
  • Simplest model of population growth
  • Population processes are not affected by current
    density of population.
  • Constant fraction is added to population each
    time step.

MULTIPLICATIVE PROCESS
  • Deterministic models (vs. stochastic models)
  • Parameters are constant do not vary
    unpredictably over time
  • No uncertaintygiven starting conditions, models
    always produce the same predictions

14
Discrete vs. Continuous Growth Models
  • Discrete
  • Species with non-overlapping generations (some
    insects)
  • Species with pulsed reproduction (many wildlife
    species in seasonal environments)
  • Time is modeled in discrete steps (often 1 year)
  • Fits well with annual censuses of wildlife
    populations
  • Difference equations are used to model population
    growth.
  • Continuous
  • Species that grow continuously without pulsed
    births deaths (humans, some wildlife species in
    relatively stable environments)
  • Time is modeled as a continuous, smooth curve
  • Analytically tractable so you can find solutions
    using calculus
  • Differential equations are used to model
    population growth.

For density-independent growth, discrete and
continuous models produce qualitatively similar
predictions.
15
The BIDE Equation
Nt1 Nt B I - D - E
B number of births per time period D number
of deaths per time period I number of
immigrants per time period E number of
emigrants per time period
16
Geometric Growth (discrete model)
  • Assume population increases or decreases each
    year by a constant proportion (z)
  • If population increases by 25 between years,
    then z 0.25.

Nt 1 Nt zNt
Nt 1 (1 z) Nt
Let 1 z ?.
Lambda is the finite rate of increase.
Nt 1 ? Nt

  • If ? 1.25, then population increases 25 per
    year

17
Finite rate of increase
Nt 1 ? Nt
Dimensionless ratio, no units
? Nt 1/Nt
  • For example, if population size of coyotes in a
    study area is 150 this year and size is 200 next
    year, then lambda equals 1.33
  • (200/150).
  • If ? 1.33, then population increases 33 per
    time step (year)

? gt 1, exponential increase ? 1, no
changestationary population ? lt 1, exponential
decline
18
How do we predict total population size at some
particular time?
For example, how about for two years in the
future?
Nt 2 ? Nt 1
Nt 1 ? Nt
19
Note Akcakaya et al. use big R instead of ?
for the Finite Rate of Increase in discrete
models.
Nt Rt N0
20
Exponential Growth (continuous model)
  • Continuous model is equivalent to a discrete
    difference equation with an infinitely small time
    step.
  • We treat time as being continuous so change in
    population size is described by a differential
    equation

r gt 0, exponential increase r 0, no
changestationary population r lt 0, exponential
decline
21
How do we predict total population size at some
particular time?
We integrate the differential equation
dN/dt rN
Nt N0ert
where e is 2.718
22
Population sizes of muskox on Nunivak Island
23
Linear
N
Semi-log
Slope r (intrinsic rate of increase)
ln(N)
(from Gotelli)
Time (t)
24
Two predictive equations for population size
Continuous
Discrete
Nt N0ert
Nt ?t N0
Hence,
? er
ln(?) r
25
Doubling Time
How long will it take a population to double in
size?
Nt ?t N0
?t Nt/N0
If Nt/N0 2, what is t?
?t 2
t ln(?) ln(2)
t ln(2)/r
t ln(2)/ln(?)
(continuous growth)
26
Assumptions of Exponential Model
  • Birth and death rates are constant over time
  • No competition for limiting resources (no
    density-dependence)
  • No random changes over time

2. No age or size structure, and no differences
in birth and death rates among individuals.
3. Population is closed. No emigration or
immigration.
4. No time lags (for continuous model).
5. No genetic structure.
27
Where might the exponential model apply?
  • In the lab.
  • In nature, but typically for relatively short
    time periods.
  • Newly established populations, especially with
    few predators.
  • Invasive species, pest outbreaks
  • Populations recovering from catastrophic
    declines.
  • Humans (ability to raise carrying capacity over
    time).

Wildlife populations do not increase without
bound for very long.
28
What is the value of exponential growth model?
Gotelli Exponential growth model is the
cornerstone of population biology.
Turchin Exponential growth is the first law of
population dynamics. Exponential law is similar
to laws of physics, such as Newtons law of
inertia.
All populations have the potential for
exponential increase.
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