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Predation Community Level Effects Predation  Functional Responses  As prey density increases, each predator can consume more prey  Numerical Responses  As prey density increases, predators increase in number, and that larger number of predators consumes more prey. Predation  As an example, consider the work of Holling in 1959.     Studied 3 species of small mammal: Peromyscus leucopus Blarina brevicauda Sorex cinereus Predation   These 3 species all consume saw-fly larvae, and each does it in such a way that it is possible to determine who consumed what. Holling sampled his study site to determine prey (saw-fly larva) density, and estimated small mammal density. Predation    Notice, the number of Blarina and Peromyscus was basically constant regardless of pupae density. Blarina and Peromyscus appear to have a relatively small numerical response to increased prey density. Sorex appears to have a relatively large numerical response. Predation   We could also look at number of pupae consumed by each species relative to density of pupae. This gives us an index of the functional response. Predation    Here we note that the relationships are opposite of what we saw before. Blarina has a large functional response, Peromyscus is intermediate, and Sorex has the smallest functional response. What does this tell you about these predators? Predation   We can combine these relationships into a single graph, by looking at precent predation relative to prey density. This is done by multiplying number of pupae eaten by number of predators present, and dividing by density of the pupae (=proportion of pupae eaten). Predation   Notice that the proportion of prey eaten by each species peaks at a different pupal density. Therefore, as sawfly density increases, it encounters first significant Blarina predation, then Sorex predation, then Peromyscus predation. This is very different than if all peaked at the same density. Predation   The functional response is a consequence of the coevolutionary interaction between predator and prey, and the reproductive biology of the predator. Holling predicted 3 forms of the functional response. Functional Responses    Type I: a linear response between number of prey consumed and prey density. Type II: prey consumption is asymptotic. Type III: prey consumption is logistic. Functional Response   The asymptotic behavior of Type I and Type II functional responses is a consequence of satiation of the predator, or increased handling time as prey are consumed at a high rate. This is important in terms of the effect the predator has on the prey population. Functional Response  Look at the proportion of prey eaten over the range of prey densities, for each kind of functional response. Functional Response    The Type I response is density independent. Type II response is density dependent, with, but it is decreasing with increased prey density. Type III is density dependent, but in different directions depending on prey density. Functional Response   Only the Type III functional response is density dependent in a way that promotes population regulation. The Type III functional response is the one most likely to regulate prey populations. Functional Response  What causes a Type III functional response?  Factors that cause low hunting efficiency at low prey density.   Failure to develop an appropriate search image without positive reinforcement. Presence of prey refugia at low densities. Functional Response   Clearly, it is highly unlikely that a predator will cause the extinction of its prey. Just as in parasites, killing your ‘host’ will be selected against. Predator Prey Coexistence.   Under what conditions will we see stable coexistence of a predator and its prey? This is very similar to what we did with 2 competing species. Predator Prey Coexistence  Our basic strategy is to    1) write simple differential equations describing the growth of the 2 populations 2) define equilibrium as the point where the populations do not change. 3) do a phase plane analysis using the isoclines for the 2 species. Predator Prey Coexistence  Model for the predator population: dP dt  apHP  dP Predator Prey Coexistence    Here, dP/dt is the growth rate of the predator. a = production efficiency of the predator (proportion of energy assimilated by predator that is converted into new predator biomass. p=ingestion efficiency of the predator (proportion of available prey actually consumed). Predator Prey Coexistence   H = density of the prey. d = death rate of the predator. Notice, in the absence of prey, the predator population must certainly decrease. Predator Prey Coexistence  For the prey population, we have: dH dt  rH  pHP Predator Prey Coexistence    dH/dt = growth rate of the prey population. p, H, and P are as in the previous equation. r is the birth rate of the prey. Predator Prey Coexistence   Note, the births of prey are decreased by deaths (pHP). Note also, that encounters between predator and prey is the product of their numbers. This is a ‘brownian motion’ idea. Predator Prey Coexistence  At equilibrium, dP dH dt dt  0  apHP  dP  0  rH  pHP Equilibrium apHP  dP rH  pHP Equilibrium  Predator isocline: d H aP Equilibrium  Prey isocline: r P p Equilibrium   As in the case of competing species, these differential equations have no explicit solutions. So we simply plot the isoclines. This produces the following graph: Equilibrium    The behavior of this system is very intuitive, and very pleasing. It produces exactly the type of behavior we see in the moose and wolves of Isle Royale. We see this behavior in lynx/showshoe hare systems. From another view, we could plot it as: Equilibrium    The lags make sense. It takes time for the predator population to catch up with they prey. Predators do not produce new predators instantaneously. Nor do they stop reproducing instantaneously. Equilibrium    We can make the model more realistic. We know that there will be a carrying capacity for the prey population, and probably for the predator as well. There will aslo be an Allee effect: some minimum population size necessary to sustain the population. Equilibrium   New the system becomes much more interesting. The exact position of the predator isocline will be very important. The results will be different for systems in which the predator isocline is to the left or right of the ‘hump’ in the prey isocline. Unstable equilibrium  In this first scenario, once the system is perturbed from the equilibrium point, the systems spirals out of bounds and extinction results. Why? Unstable equilibrium   Here, the hump is to the right of the predator isocline, and we get an unstable system. Why? The predator population is capable of growing even at very low prey density the predator is an efficient humter. As the predator becomes less efficient, the predator isocline shifts to the right. Stable equilibrium   When the ‘hump’ is to the left, the region in which the predator population does not grow is larger. Very high prey densities are necessary for the predator to increase. This might be the result of crypsis, or inefficient foraging by the predator. An interesting twist   There was a wonderful paper by Rosenzweig in Science quite a few years ago, titled: the paradox of the plankton. In the paper, Rosenzweig showed that zoo plankton did not follow the predictions. A twist   The predator isocline was to the left, but the system persisted and did not cycle to extinction. It did cycle, but not to extinction. What happened? A twist  If prey have a refugia, or an escape from predation, the isocline will look different: Equilibrium  The phytoplankton had a refugia, and consequently the zooplankton were unable to exploit the entire prey population. The result was a cyclical system as shown. An important point  What are the assumptions of these models?    First, there is a type I functional response. Second, there are no stochastic effects. Nevertheless, the models give us a basic understanding of how the system work.