Title: Demography and Population Dynamics
1Demography and Population Dynamics
- Peter B. McEvoy
- Oregon State University
2Outline
- Construct a model of intergeneration change
- Develop a sampling program and estimate number of
individuals passing through each stage in life
cycle - Construct a life table, calculate and interpret
lx, mx, rm, Ro, ? - Compare k-factor analysis and Life Table Response
Experiments (LTREs) as ways to discover factors
causing population change - Distinguish major mortality factors, key factors,
density-regulating factors - Distinguish direct density dependence
(over-compensating, perfectly compensating, or
under-compensating), inverse density dependence,
delayed density dependence, density independence - Critically evaluate methods for assessing role of
density-dependent and density-independent factors
in population dynamics
3Changes in Species Abundance
- External and internal causes. Fluctuations in
abundance may have both external and internal
causes - Density dependent (DD) and density independent
(DI) factors. All abundances reflect both
density-dependent and density-independent
factors, but the relative importance and
frequency of action of the two can vary greatly - Evidence of DD or DI. Disagreement persists about
the relative strength and frequency of DD or DI,
and on the reliability of techniques for
detecting DD. Requires data that is structured
in space as well as time - Scales of observation. Description of density
relations depends on the scale of observation.
Close to equilibrium ? DI, farther from
equilibrium ?DD
4Case study of k-factor analysis
- Focal species. Colorado potato beetle
Leptinotarsa decemlineata (Col Chrysomelidae) - Investigator. Harcourt (1964, 1971) reviewed in
Begon et al. 1996 - Aims of exercise
- Distinction between determination and regulation
of insect abundance - Modeling changes in abundance in terms of changes
in so-called viatal rates (age-specific
survivorship, fecundity, and migration)
5Colorado Potato BeetleLeptinotarsa decemlineata
(Coleoptera Chrysomelidae)
- Life History
- Univoltine in Ontario
- Spring adults emerge from hibernacula in mid
June - Oviposition peaks in early July
- 4 Larval instars and Pupa
- Emergence of summer adults from puparia
6Myiopharus doryphorae Diptera
TachinidaeParasitoid of Colorado Potato Beetle
Life Cycle
7Classical Approach Key Factor Analysis
- Study life history and develop methods of census
for each stage - Construct a life table that is as complete as
possible, expressing the "killing power" of
mortality factors as k-values - Accumulate many life tables
- Plot generation curves and mortalities
- Assess the key-factors which make the biggest
contribution to change in generation mortality - Determine the relationship of component
mortalities to density - Follow up with intensive studies of key factors
- Make predictions using the model
8Concept Alert!
- Major mortality factor makes a large
contribution to mortality within a generation
(large k) - Key factors contribute to changes in abundance
between generations (component k most correlated
with generation Ktotal) - Density-regulating factors are those k-values
that increase with density of the stage on which
they act. - Population regulation. A regulated population
is one that tends to return to equilibrium
density or cycle when perturbed from this level
or cycle. Precise DD requires that DD factors
not be too strong or too weak.
9Step 1 Study Life History and Develop Methods of
Census for Each Stage
- Life History
- Adult emergence from hibernacula
- Oviposition
- Larvae and Pupae
- Emergence of adults from puparia
- Sampling decisions
- Subdivision of the habitat
- Selection of the sampling unit
- Number of samples
- Placement of samples
- Timing of sampling
10Step 2 Construct a Life Table That Is As
Complete As Possiblerefer to handout
- Designate stage intervals how?
- Estimate mortality assuming factors act
sequentially, not simultaneously what are the
implications? - Estimate k-values as difference between
logarithms of the population before and after
mortality acts
11Life Table for Colorado Potato Beetle
major mortality factor is emigration of summer
adults
Tachinid parasite, Myiopharus (Dorpyphorophaga)
doryphorae
12Step 4 Accumulate Many Life Tables
- Major mortality factors make a large
contribution to generation mortality - In this example, major mortality factor is
emigration of summer adults - How can emigration regulate a local population?
What is the fate of emigrating insects? What are
the implications for an ensemble of local
populations in a region?
13Step 4 Plot Generation Curves and Mortalities
- Key factors contribute to changes in abundance
from generation to generation - Assess key factor by inspection
- Assess key factor by regressionbut beware
14Step 4 Plot Generation Curves and Mortalities
k6 adult emigration k3 larval starvation k4
parasitism
ktotal
k6
k3
k4
Site 1 Site 2 Site 3 Year
15Summary of Life-table Analysismajor mortality
factors and key factors
16Step 5. Test for Density Dependence1.
Strength2. Sign3. Time Delay
(Population sizes for each time are serially
linked)
17Population regulation
- Equilibrium Line crosses x-axis where growth
rate is zero - Direct DD Negative slope
Royama 1992
18Step 5 Plotting K-value Against Density of Stage
on Which the Mortality Acts
nonlinear
19Summary of Life-table Analysismajor mortality
factors, key factors, and density-dependent
factors
20Problem of Scale
- If local population is regulated by
density-dependent emigration, what is the fate of
emigrants? - Do they form new populations or augment existing
ones? - How is the ensemble of populations in the region
(Metapopulation) regulated?
21Another Case study Winter MothOperophtera
brumataGeometridae
22Step 6 Follow up With Intensive Study of Key
Factors (winter moth)
- How often does it happen that the key factor is
the least well known, least managable? Winter
disappearance (WM)? Adult emigration (CPB)?
23Step 7 Comparing Observed and Predicted
Population Sizes
24Critique of Key Factor Analysis
- May fail to detect factors acting irregularly in
time - Factors are actually transitions in the life
cycle (not abiotic or biotic factors) - Limited range of organisms to which technique can
be applied (univoltine insects with
non-overlapping generations) - May fail to detect DD when densities are variable
in space and time