aggregated dispersion of chinch bugs (an agricultural pest of cereal crops) in space and time; light...

Post on 31-Mar-2015

223 Views

Category:

Documents

7 Downloads

Preview:

Click to see full reader

TRANSCRIPT

Aggregated dispersion of chinch bugs (an agricultural pest of cereal crops) in space and time; light green = low density, blue = high density

Chinch bug example illustrates typical case of population variation in time

Population size changes as function of birth, death processes (i.e., demography), and by immigration & emigration

Immigration and emigration create complications in terms of spatial-temporal dynamics… (Metapopulation considerations)

Emi-gration

Birth

Death

Immi-gration

Population Size

++ -

-

Life table provides simple way to track how population grows and changes Look at pop structure also originally invented by insurance industry, calculate

odds of people’s living to particular ages. Two kinds of life tables in nature:

Best type generally is cohort life table = dynamic life table; (cohort = all individuals within an area born/germinated in population in same time interval)

BUT What about long-lived, or highly mobile animals (like sequoia tree, whale, grizzly bear) that can’t be tracked easily from cradle to grave? Ecologists use a second approach, static life table = time-specific life table; this gives a snapshot in time, based on population’s age-distribution

Diagramatic illustration of dynamic versus static life table

Time since origin of cohort

Age

t0 t1 t2 t3Birth

Static life table from one time period

Cohort life table based on one cohort

Each individual represented by a diagonal line segment

Some life-table assumptions: For all life tables, the sample of individuals must

be representative of population’s age-structure In cohort life table, cohort needs to be

representative (or multiple cohorts studied); cohorts often differ, e.g., some fish cohorts survive much longer than others

Ideally in static life-table, population is neither increasing nor decreasing; population that is increasing or decreasing will have skewed age-distributions

Life tables represent local ecological conditions, which may or may not be representative (e.g., population density)

“Cohort effect”, i.e., dominance of

population dynamics by

particular cohorts--in this case, resulting from excellent

Lake Erie whitefish

spawning in 1944

Typical life table parameters x = Age interval nx = the number alive at start of age interval x (in

cemetery lab l’x used for nx)

lx = survivorship, the number still living at the start of age interval x, expressed either as a proportion of the number at the start of first interval, n0, or standardized to cohort of 1000. Thus lx /1000 = nx/n0; and then lx = 1000*(nx /n0).

dx = nx - nx+1 (d = dead)

qx = dx/ nx; This is age-specific mortality rate, the probability of dying during age interval x, i.e., the proportion of those living that die during interval x. Note: lab defines qx = (dx/ nx)*1000 (=no. diex/1000)

Life table parameters, cont. sx = 1 - qx ; sx = survival rate, the proportion of

remaining individuals that will still be alive at the end of age interval x

bx = fecundity, the average number of offspring produced by a female during age interval x (sometimes represented as mx! Think of bx as births)

Lx = (nx + nx+1)/2 = average number alive in age x

Tx = x-->∞ Lx ; This is the sum of all individuals living in age interval x plus all future ages--an intermediate step in calculating ex.

ex = Tx/ nx = life expectancy at time interval x, i.e., the average number of additional age classes an individual can expect to reach at each age

Whew, that’s a heck of a lot of math! What’s it good for?

These parameters allow one to do lots of cool stuff Compare survivorship patterns directly (n0 = 1000)

using survivorship curve: log(lx) as function of age Age-specific mortality risk, fecundity, life expectancy,

etc. We can calculate population growth rates (next lecture)

Some factors that influence life tables Age affects demography dramatically in many species

(in plants stage often more impt. than age) Life tables can also vary by year (e.g., climate & cohort

effect), sex, and certainly by species Life tables are partially heritable, under natural selection

Example: Dall mountain sheep studied on Mt. Denali, n0 = 608 sheep dying before 1937; age at death based on horn size used to estimate age-structure of population (static life table)

See overheads (StilingText, Table 6.1; Fig. 6.2)

Survivorship curve for Dall Mountain Sheep

Three different types of idealized survivorship curve may be recognized:

Age

Log

10 n

umbe

r of

sur

vivo

rs

0.1

1

10

100

1000

Type I; e.g., many mammalsType II; e.g., many

birds, small mammals, lizards, turtles

Type III; e.g., many invertebrates, anadromous fish

Type II survivorship curve, 1978 cohort of Daphne Island (Galapagos) cactus finch, showing annual variation

Conclusions: Spatial structure of populations can tell us much

about the ecological mechanisms involved Temporal structure of populations can be

summarized and compared using a variety of parameters taken from life tables, i.e., from patterns of birth and death (demography)

Idealized patterns of mortality can be recognized, but most real populations are more complicated, because of cohort effects, variable ecological conditions, and complicated changes in age- (and sex-specific) ecological patterns

Population growth: lecture content

What is population growth? Simplest kind of population growth conceptually:

Each reproducing individual independent of others, and produces some average number of offspring per lifetime.

New population given by old population multiplied by each individual’s contribution to population next generation (e.g., this contribution = 1 if individual just replaces itself on average)

Thus, population growth is multiplicative process, not additive & not incremental Thus, population change over time depends just on

population size at particular time, and on each individual’s contribution to population size in its lifetime

Organisms with discrete, seasonal reproduction, described best by Geometric model of population growth

Geometric model of population growth Assumptions of model (difference equation):

Constant environment-->constant growth rate Unlimited resources-->continual population growth Reproduction in discrete time periods (seasonal)

Model: N(t+1) = N(t)*= rate of pop. change, per capita; t = time N(1) = N(0)N(0) = initial population size N(2) = N(1)N(0)N(0)2

And in general, by inductive reasoning, N(t) = N(0)t

The beauty of this model (and other population models) is that it allows us to project population into future!

Example: Geometric population growth of Ringed neck pheasants introduced on Protection Island, Washington State, an environment free of predators (from G.E. Hutchinson, 1978, An Introduction to Population Ecology, Yale University Press.)

Exponential population model What about species like humans that grow and reproduce

continually??? Assumptions of model (differential equation, based on

calculus) Constant environment-->constant growth rate Unlimited resources, so that population not limited Growth, Reproduction continuous

dN/dt = r*N = (b-d)*N r = per capita rate of population growth: dN/dt*(1/N) = r r = b-d; thus, dN/dt = (b-d)*N Solution of differential equation (I won’t do derivation

here): (I.e. to get the population SIZE at any particular time t)

N(t) = N(0)*ert ; e = base of natural logarithms

Yeast begin growing exponentially...

Is human population growing exponentially?

Exponential growth of coffee consumption (TP, 9/13/97)

Populations growing exponentially (or geometrically) double in fixed time To calculate doubling time, start with N(t) = N(0)*ert

Divide both sides by N(0), we get N(t)/N(0) = ert

Population that is doubling fits relationship N(t)/N(0) = 2…why? Thus, we can write 2 = ert, and solve for t as function of r Taking log of both sides, loge(2) = loge(er*t) = r*t

Solving for t, we get t = loge(2)/r = 0.69315/r Human population is doubling now roughly every 40 years!

Given that we reached 6 billion on October 12th, 1999, this means we will reach 12 billion in 2039, assuming growth rate remains constant!

Also seen in invasives, colonizers, recently conserved orgs.

Geometric growth closely related to exponential growth

Let N(t) = N(t) in both models to see exactly how the two models are related (because each model calculates N(t) as a function of other entities including N(0) = initial population size)

Then models are identical if and only if N(0)t = N(0)*ert

By algebraic simplification (divide both sides by N(0)), er; Alternatively, r = loge()

Both models give “J-shaped” curves

Geometric (left) and exponential (right) models are equivalent (superimposable) for particular values of r; here = 1.6, r = 0.47

Population grows when >1, r > 0; declines when <1, r < 0

On log scale, Geometric (& exponential) models are linear

If population size in geometric model is expressed on log scale, we get straight line relationship, with slope = population growth rate

Proof of this relationship Take geometric equation, N(t) = N(0)*t

Take logs of both sides-->equation for a line Left side of equation gives loge(N(t)) = Y

Right side gives loge(N(0)t) = loge(N(0)) + t* loge(); this simplifies to Y-intercept + r*t; recall that loge() = r

Rate of population growth (r, ) can be calculated from life-table!

estimated by R0

R0 = xlx*mx = net reproductive rate In words, net reproductive rate is the number of offspring an

individual produces over its lifetime Note: mx same as bx--i.e.,age-specific fecundity. Also note that lx

here is a PROPORTION, i.e., l0 = 1.0 rm is the intrinsic rate of increase, or Malthusian parameter, after

Thomas Malthus rm approximately equal to ln(R0)/Tc

Tc = generation time of population = xlx*mx/(lx*mx) Generation time, in words, is the age-weighted reproductive effort,

divided by the total reproductive effort, which gives the average age of reproduction!

rm thus larger with big reproductive effort, and/or with short generation time

Example: calculation of net reproductive rate, generation time from hypothetical life-table; ra is approximate estimate

Euler’s equation provides more precise way to calculate r, 1 = e-rxlxbx

or (discrete form): 1 = -xlxbx

Note: These different forms of the Euler equation are solved by trial-and-error, recursively, i.e., by plugging in values for r, or (depending on model); & checking fit of right hand side of the equation to the value on the left (“1”)

Population growth rate depends on ecological conditions--e.g., two grain beetle species (imp later, competition!)

Conclusions: Simplest conceptual models of population growth

(geometric, exponential) are multiplicative processes, depending just on population size, population growth rate

These two models are closely related, but apply to different kinds of populations (in seasonal, versus non-seasonal environments, respectively)

These conceptual models can be related back explicitly to nature, via life-tables

Modeling is a powerful process in ecology (and science in general): process of abstracting essential aspects of system Allows projection of system into future, exploration

Acknowledgements: Most illustrations for this lecture from R.E. Ricklefs. 2001. The Economy of Nature, 5th Edition. W.H. Freeman and Company, New York.

Acknowledgements: Illustrations for this lecture from R.E. Ricklefs. 2001. The Economy of Nature, 5th Edition. W.H. Freeman and Company, New York.

top related