Title: Chapter 15: Temporal and Spatial Dynamics of Populations
1Chapter 15 Temporal and Spatial Dynamics of
Populations
- Robert E. Ricklefs
- The Economy of Nature, Fifth Edition
2Some populations exhibit regular fluctuations.
- Charles Elton first called attention to regular
population cycles in 1924 - such cycles were known to earlier naturalists,
but Elton brought the matter more widely to the
attention of biologists - Elton also called attention to parallel
fluctuations in populations of predators and
their prey
3Evidence for Cycles in Natural Populations
- Records of the Hudsons Bay Company yield
important data on fluctuations of animals trapped
in northern Canada - data for the snowshoe hare (prey) and the lynx
(predator) have been particularly useful - thousand-fold fluctuations are evident in these
records - Records of gyrfalcons exported from Iceland in
the mid-eighteenth century also provide evidence
for dramatic natural population fluctuations.
4Fluctuations in Populations
- Populations are driven by density-dependent
factors toward equilibrium numbers. - However, populations also fluctuate about such
equilibria because - populations respond to changes in environmental
conditions - direct effects of temperature, moisture, etc.
- indirect environmental effects (on food supply,
for example) - populations may be inherently unstable
5Domestic sheep on Tasmania relatively stable
population after becoming established (variation
due to env. factors)
6Phytoplankton pop.
7Fluctuation is the rule for natural populations.
- Tasmanian sheep and Lake Erie phytoplankton both
exhibit different degrees of variability in
population size - the sheep population is inherently stable
- sheep are large and have greater capacity for
homeostasis - the sheep population consists of many overlapping
generations - phytoplankton populations are inherently
unstable - phytoplankton have reduced capacity for
homeostatic regulation - populations turn over rapidly
8Periodic cycles may or may not coincide for many
species.
- Periodic cycles period between successive highs
or lows is remarkably regular - Populations of similar species may not exhibit
synchrony in their fluctuations - four moth species feeding on the same plant
materials in a German forest showed little
synchrony in population fluctuations - 4-5 year population cycles of small mammals in
northern Finland were regular and synchronized
across species
9Temporal variation affects the age structure of
populations.
- Sizes of different age classes provide a history
of past population changes - a good year for spawning and recruitment may
result in a cohort that dominates progressively
older classes for years to come - The age structure in stands of forest trees may
reflect differences in recruitment patterns - some species (such as pine) recruit well only
after a disturbance - other species (such as beech) are shade-tolerant
and recruit almost continuously
10Commercial whitefish excellent spawning and
recruitment in 1944
11Population cycles result from time delays.
- A paradox
- environmental fluctuations occur randomly
- frequencies of intervals between peaks in
tree-ring width are distributed randomly (they
vary in direct proportion to temperature and
rainfall) - populations of many species cycle in a non-random
fashion - frequencies of intervals between population peaks
in red fox are distributed non-randomly
12A Mechanism for Population Cycles?
- Inherent dynamic properties associated with
density-dependent regulation of population size - Populations acquire momentum when high birth
rates at low densities cause the populations to
overshoot their carrying capacities. - Populations then overcompensate with low survival
rates and fall well below their carrying
capacities. - The main intrinsic causes of population cycling
are time delays in the responses of birth and
death rates to environmental change.
13Time Delays and Oscillations Discrete-Time Models
- Discrete-time models of population dynamics have
a built-in time delay - response of population to conditions at one time
is not expressed until the next time interval - continuous readjustment to changing conditions is
not possible - population will thus oscillate as it continually
over- and undershoots its carrying capacity
14Oscillation Patterns - Discrete Models
- Populations with discrete growth can exhibit one
of three patterns - r0 small
- population approaches K and stabilizes
- r0 exceeds 1 but is less than 2
- population exhibits damped oscillations
- r0 exceeds 2
- population may exhibit limit cycles or (for high
r0) chaos
153 oscillation patterns
16Time Delays and Oscillations Continuous-Time
Models
- Continuous-time models have no built-in time
delays - time delays result from the developmental period
that separates reproductive episodes between
generations - a population thus responds to its density at some
time in the past, rather than the present - the explicit time delay term added to the
logistic equation is tau (t)
17Oscillation Patterns - Continuous Models
- Populations with continuous growth can exhibit
one of three patterns, depending on the product
of r and t - rt lt e-1 (about 0.37)
- population approaches K and stabilizes
- rt lt p/2 (about 1.6)
- population exhibits damped oscillations
- rt gt p/2
- population exhibits limits cycles, with period 4t
- 5t
18Cycles in Laboratory Populations
- Water fleas, Daphnia, can be induced to cycle
- at higher temperature (25oC), Daphnia magna
exhibits oscillations - period of oscillation is 60 days, suggesting a
time delay of 12-15 days - this is explained as follows when the
population approaches high density, reproduction
ceases the population declines, leaving mostly
senescent individuals a new cycle requires
recruitment of young, fecund individuals - at lower temperature (18oC), the population fails
to cycle, because of little or no time delay of
responses
19Storage can promote time delays.
- The water flea Daphnia galeata stores lipid
droplets and can transfer these to offspring - stored energy introduces a delay in response to
reduced food supplies at high densities - Daphnia galeata exhibits pronounced limit cycles
with a period of 15-20 days - another water flea, Bosmina longirostris, stores
smaller amount of lipids and does not exhibit
oscillations under similar conditions
20Overview of Cyclic Behavior
- Density dependent effects may be delayed by
development time and by storage of nutrients. - Density-dependent effects can act with little
delay when adults produce eggs quickly from
resources stored over short periods. - Once displaced from an equilibrium at K, behavior
of any population will depend on the nature of
time delay in its response.
21Metapopulations are discrete subpopulations.
- Some definitions
- areas of habitat with necessary resources and
conditions for population persistence are called
habitat patches, or simply patches - individuals living in a habitat patch constitute
a subpopulation - a set of subpopulations interconnected by
occasional movement between them is called a
metapopulation
22Metapopulation models help managers.
- As natural populations become increasingly
fragmented by human activities, ecologists have
turned increasingly to the metapopulation
concept. - Two kinds of processes contribute to dynamics of
metapopulations - growth and regulation of subpopulations within
patches - colonization to form new subpopulations and
extinction of existing subpopulations
23Connectivity determines metapopulation dynamics.
- When individuals move frequently between
subpopulations, local fluctuations are damped
out. - At intermediate levels of movement
- the metapopulation behaves as a shifting mosaic
of occupied and unoccupied patches - At low levels of movement
- the subpopulations behave independently
- as small subpopulations go extinct, they cannot
be reestablished, and the entire population
eventually goes extinct
24The Basic Model of Metapopulation Dynamics
- The basic model of metapopulation dynamics
predicts the equilibrium proportion of occupied
patches, s - s 1 - e/c
- where e probability of a subpopulation going
extinct - c rate constant for colonization
- The model predicts a stable equilibrium because
when p (proportion of patches occupied) is below
the equilibrium point, colonization exceeds
extinction, and vice versa.
25Is the metapopulation model realistic?
- Several unrealistic assumptions are made
- all patches are equal
- rates of colonization and extinction for all
patches are the same - In natural settings
- patches vary in size, habitat quality, and degree
of isolation - larger subpopulations have lower probabilities of
extinction
26The Rescue Effect
- Immigration from a large, productive
subpopulation can keep a declining subpopulation
from going extinct - this is known as the rescue effect
- the rescue effect is incorporated into
metapopulation models by making the rate of
extinction (e) decline as the fraction of
occupied patches increases - the rescue effect can produce positive density
dependence, in which survival of subpopulations
increases with more numerous subpopulations
27Chance events may cause small populations to go
extinct.
- Deterministic models assume large populations and
no variation in the average values of birth and
death rates. - Randomness may affect populations in the real
world, however - populations may be subjected to catastrophes
- other factors may exert continual influences on
rates of population growth and carrying capacity - stochastic (random sampling) processes can also
result in variation, even in a constant
environment
28Understanding Stochasticity
- Consider a coin-tossing experiment
- on average, a coin tossed 10 times will turn up 5
heads and 5 tails, but other possibilities exist - a run with all heads occurs 1 in 1,024 trials
- if we equate a tail as a death in a population
where each individual has a 0.5 chance of dying,
there is a 1 in 1,024 chance of the population
going extinct - for a population of 5 individuals, the
probability of going extinct is 1 in 32
29Stochastic Extinction of Small Populations
- Theoretical models exist for predicting the
probability of extinction of populations because
of stochastic events. - For a simple model in which birth and death rates
are equal, the probability of extinction
increases with - smaller population size
- larger b (and d)
- time
30Probability of extinction increases over time (t)
but decreases as a f of initial population size
(N)
31Stochastic Extinction with Density Dependence
- Most stochastic models do not include
density-dependent changes in birth and death
rates. Is this reasonable? - density-dependence of birth and death rates would
greatly improve the probability that a population
would persist - however, density-independent stochastic models
may be realistic for several reasons...
32Density-independent stochastic models are
relevant.
- The more conservative density-independent
stochastic models are relevant to present-day
fragmented populations for several reasons - most subpopulations are now severely isolated
- changing environments are likely to reduce
fecundity - when populations are low, the individuals still
compete for resources with larger populations of
other species - small populations may exhibit positive
density-dependence because of inbreeding effects
and problems in locating mates
33Size and Extinction of Natural Populations
- Evidence for the relationship between population
size and the likelihood of extinction comes from
studies of avifauna on the California Channel
Islands - smaller islands lost a greater proportion of
species than larger islands over a 51-year period - proportions of populations disappearing over this
interval were also related to population size
34Summary 1
- Populations of most species fluctuate over time,
although the degree of fluctuation varies
considerably by species. Some species exhibit
regular cyclic fluctuations. - Both discrete and continuous population models
show how species populations may oscillate.
35Summary 2
- Population oscillations predicted by models are
caused by time delays in the responses of
individuals to density. Such delays are also
responsible for oscillations in natural
populations. - Metapopulations are divided into discrete
subpopulations, whose dynamics depend in part on
migration of individuals between patches. - The dynamics of small populations depend to a
large degree on stochastic events.