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I've often heard that a population, human or otherwise, will continue to grow as long as there is food available (assuming nothing else is killing them off). It makes sense: if you have food you can live, and if nothing is hunting you you'll survive to reproduce.

I recently designed a piece of software to simulate an ecosystem, with groups of creatures of different species eating and hunting and reproducing alongside each other. It was very simplified (each animal had simple attack/defense/speed/stealth values, etc), but something became rapidly apparent: in every simulation the predators overwhelmed the prey, reproducing until their numbers could not be sustained by the herbivores, and leading to an inevitable die-off of both groups. I could delay the die-off by adjusting different values and initial population counts, but it would always happen eventually. The predators would eat and breed and eat and breed until the entire system collapsed.

At first I thought it was just the product of my over-simplified system, but it got me thinking: what prevents predators from overpopulating in real life?

It seems like the natural tendency would be for (for example) the sharks to continue breeding and eating until all the fish are gone, or the wolves to eat all the deer, etc. Obviously some predators have predators of their own, but that's just putting off the question: if the hyenas don't overpopulate because the lions eat them, then what's keeping the lions from overpopulating? I can't come up with anything that would prevent the apex predators from growing too numerous, then fighting each other over a dwindling prey population, then dying off entirely when there was no more food to find.

Do predator populations self-regulate to prevent putting undo stress on their prey populations? Or is there some other mechanism to keep the predator hierarchy from becoming top-heavy?

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    $\begingroup$ As a supplement to Remis answer, here's a link to the Nature Knowledge Project page on population dynamics: nature.com/scitable/knowledge/library/… $\endgroup$
    – jarlemag
    Commented Mar 5, 2014 at 23:08
  • $\begingroup$ In history, there are also mass extinctions very well outlined by this video: youtube.com/watch?v=FlUes_NPa6M. They "reset" the world and allow everything to start over again. $\endgroup$ Commented Mar 6, 2014 at 0:28
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    $\begingroup$ aka - they tend to starve to death when there are too many $\endgroup$
    – shigeta
    Commented Mar 6, 2014 at 20:34
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    $\begingroup$ Starvation, diseases and bigger predators. $\endgroup$
    – inf3rno
    Commented Nov 4, 2014 at 22:59
  • $\begingroup$ Can you be more specific regarding your model? Did the prey reproduce with its offspring possessing the same abilities as the parent(s)? You said you could "delay." What marked the time? $\endgroup$
    – sterid
    Commented Apr 23, 2017 at 4:45

7 Answers 7

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No, I don't think auto-regulation explain much in the population sizes of predators. Group selection may explain such auto-regulation but I don't think it is of any considerable importance for this discussion.

The short answer is, as @shigeta said

[predators] tend to starve to death as they are too many!

To have a better understanding of what @shigeta said, you'll be interested in understanding various model of prey-predator or of consumer-resource interactions. For example the famous Lotka-Volterra equations describe the population dynamics of two co-existing species where one is the prey and the other is a predator. Let's first define some variables…

  • $x$ : Number of preys
  • $y$ : number of predators
  • $t$ : time
  • $\alpha$, $\beta$, $\xi$ and $\gamma$ are parameters describing how one species influence the population size of the other one.

The Lotka-Voltera equations are:

$$\frac{dx}{dt} = x(\alpha - \beta y)$$ $$\frac{dy}{dt} = -y(\gamma - \xi x)$$

You can show that for some parameters the matrix for these equations have a complex eigenvalue meaning that the long term behavior of this system is cyclic (periodic behavior). If you simulate such systems you'll see that the population sizes of the two species fluctuate like this:

enter image description here

where the blue line represents the predators and the red line represents the preys.

Representing the same data in phase space, meaning with the population size of the two species on axes $x$ and $y$ you get:

enter image description here

where the arrows shows the direction toward which the system moves. If the population size of the predators ($y$) reaches 0 (extinction), then $\frac{dx}{dt} = x(\alpha - \beta y)\space$ becomes $\frac{dx}{dt} = x\alpha \space$ (which general solution is $x_t = e^{\alpha t}x_0$) and therefore the populations of preys will grow exponentially. If the population size of preys ($x$) reaches 0 (extinction), then $\frac{dy}{dt} = -y(\gamma - \xi x)\space$ becomes $\frac{dy}{dt} = -y\gamma \space$, and therefore the population of predators will decrease exponentially.

Following this model, your question is actually: Why are the parameters $\alpha$, $\beta$, $\xi$ and $\gamma$ not "set" in a way that predators cause the extinction of preys (and therefore their own extinction)? One might equivalently ask the opposite question? Why don't preys evolve in order to escape predators so that the population of predators crushes?

As showed, you don't need a complex model to allow the co-existence of predators and preys. You could describe your model a bit more accurately in another post and ask why in your model the preys always get extinct. But there are tons of possibilities to render your model more realistic such as adding spatial heterogeneities (places to hide for example as suggested by @AudriusMeškauskas). One can also consider other trophic levels, stochastic effects, varying selection pressure through time (and other types of balancing selection), age, sex or health-specific mortality rate due to predation (e.g. predators may target preferentially young ones or diseased ones), several competing species, etc..


I would also like to talk about other things that might be of interest in your model (two of them need you to allow evolutionary processes in your model):

1) lineage selection: predators that eat too much end up disappearing because they caused their preys to get extinct. This hypothesis has nothing to do with some kind of auto-regulation for the good of species. Of course you'd need several species of predators and preys in your model. This kind of hypothesis are usually considered as very unlikely to have any explanatory power.

2) Life-dinner principle. While the wolf runs for its dinner, the rabbit runs for its life. Therefore, there is higher selection pressure on the rabbits which yield the rabbits to run in average slightly faster than wolves. This evolutionary process protects the rabbits from extinction.

3) You may consider..

  • more than one species of preys or predators
  • environmental heterogeneity
  • partial overlapping of distribution ranges between predators and preys
  • When one species is absent, the model behave just like an exponential model. You might want to make a model of logistic growth for each species by including $K_x$ and $K_y$ the carrying capacity for each species.
  • Adding a predator (or parasite) to the predator species of interest

    ... and you might get very different results.

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    $\begingroup$ Another factor that the asker's model might not have considered is predator-against-predator action. Territorial conflicts would become more common as the predator-prey ratio increases. Another possible factor might be reduced hunting ability from malnutrition. $\endgroup$
    – user1858
    Commented Mar 6, 2014 at 16:20
  • $\begingroup$ This is a great answer, another key factor (perhaps even more important than some mentioned) is - "handling time". Your simulation likely allows a predator to eat a prey infinitely quickly when there are lots of prey around. But even if prey are hitting the predator in the face, it still takes time to eat, and while you are eating one you aren't eating another. Look up Rosenzweig-MacArthur predator-prey model - this modification of Lotka-Voltera which includes handling time prevents your die off problem! $\endgroup$ Commented Dec 3, 2018 at 3:24
  • $\begingroup$ @cell0 please don't edit correct american english spellings to british english variants. Either are correct, but one shouldn't be edited to the other. $\endgroup$
    – De Novo
    Commented Mar 18, 2019 at 23:38
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Remi.b's answer is an excellent one, and this should be taken as a supplement to it:

It's possible your simulation is correct

The Lotka-Volterra equations are what is known as a deterministic model, and it describes the behavior of predator-prey systems (in a somewhat simplified fashion) in large populations. Small populations are subject to what is known as stochastic extinction - as the predator and prey curves approach their minimums, they may predict populations less than 1, which in reality are either 0 or 1, and when they're 0...well, someone's gone extinct.

Odds are your simulation is on a small population, and if its a simulation, rather than calculus, you should be seeing those stochastic effects (to be sure - if your simulation keeps track of integer animals, rather than continuous animals, and random chance is involved, this is going to be something you have to worry about).

In a similar model I've been working with, that's a pretty simple adaptation of a L-V model that should, deterministically, result in a stable system like in Remi.b's picture, the predators go extinct 20% of the time, and the prey 80% of the time.

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  • $\begingroup$ What does a continuous animal look like? $\endgroup$
    – JAB
    Commented Mar 16, 2017 at 18:11
  • $\begingroup$ @JAB Usually proportions of a population $\endgroup$
    – Fomite
    Commented Mar 16, 2017 at 18:47
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One of the possible adjustments of these mathematical models is to introduce a "place to hide", making some (small) percent of the prey population not accessible (or much more difficult to access) for predators. After the number of predators decreases from starvation, prey individuals are relatively safer outside the "place to hide" and can grow over this limit before the number of predators increases again.

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  • $\begingroup$ An excellent notion! $\endgroup$
    – Nerrolken
    Commented Mar 13, 2014 at 5:25
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You need to add Bell curves to your simulation. The most important curve to simulate is the nutritional quality of the prey though there are plenty more thing to curve like speed and virility for prey and predators both. Nature uses lots of Bell curves so they must be good for something, such as softening the harsh effects of pure exponential growth. I suspect that the more Bell curves you implement the more stable your populations will become.

If the food value of your prey is all equal then there's no reason for your predators to not eat every last one. That's what I do with a plate full of foodstuffs, all equally delicious and with enough surplus that all the bad food can be thrown in the trash. Problems arise when you are forced to eat the trash because there's nothing else to eat.

Let's eat our prey from all 3 sides of the curve. If we eat from the weakest and easiest to catch on the left this makes the prey population stronger and more resistant to the predator. If we eat from the most common on the top the prey rebound more rapidly. If we eat from the most desirable on the right the rapid quality (but not the virility) reduction of the prey population has serious negative health consequences for the predators. Notice how each direction we eat has the necessary corrective action against the predator as a response. Due to the wild randomness of genetics the weak population can always rebound in quality when the predatory pressure eases. Looks like Nature didn't screw that one up either.

An easy example is seen in the human vs plant food supply. Population should rise with no detriment as we produce more and more food, and it would if the quality could stay the same. The population does rise but because the nutritional quality keeps dropping, the detriment is rapidly increasing on numerous health and population charts.

When plants are forced to make do with what little they have, you are forced to make do with what little they provide.

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This boils down to one main reason: competition.

Animals, in general, don’t like sharing resources with direct competitors, but this violence over food, territory, and in the case of intraspecific relations, breeding rights seems to be more extreme the higher up you go on the food chain.

An excellent example of this regards cougars. A dominant tom cat in Montana, for instance, rules over a domain that can easily exceed a hundred square miles. This territory is several times larger than what he’d require just to feed himself, so why is it so large? It’s quite simple: breeding rights. Within the borders of his, hundred or so square miles of territory are lands also used by two or three females and the cubs he’s fathered with them. Other tom cougars enter at their own risk, as he’d be more than happy to run them out or kill them. The same fate befalls any of his sons who reach maturity, so they either disperse to lands unknown or die trying. Dispersing males naturally die frequently in most species as a result.

Females also defend their territories, but since it’s not advantageous for them to have multiple potential breeding partners, their lands aren’t near as large (maybe forty square miles or smaller), just big enough to keep them and their offspring safe and well fed with all the deer, elk, coyotes, and/or bighorns they need, in addition to smaller prey. Female offspring who disperse have an easier time finding territories than their brothers and are less likely to disperse widely because of this fact.

To answer your question, predators self regulate their populations, often violently. In a stable ecosystem, there’s enough of them to keep their prey in check, but due to factors of real estate, breeding rights, and interactions with other predatory species, they simply don’t overpopulate.

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  • $\begingroup$ I think self-regulating is a confusing term in this case. The individuals absolutely do not self-regulate, it is only at the species level that it occurs. $\endgroup$ Commented Sep 10, 2018 at 15:59
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What you are missing is that not all prey are equally easy to catch. The old, sick animals living in exposed places are much easier to catch than animals that are young, healthy and living in well-protected places. As the predator catches the easy meat, it becomes progressively harder and harder for the predator to get a meal.

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If I missed seeing this in one of the other answers, I apologize, but I don't believe anyone has mentioned a very relevant fact about some predators that directly affects their populations at any given time. The fact is that wolves and probably other predators living in a pack-style grouping, allow only the alpha male and female to mate. This obviously severely limits the number of offspring born each year as well as leaving the pack vulnerable to catastrophe when something happens to either or both alphas. This mode of self-regulation is independent of food availability so works in years of abundance as well as famine.

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    $\begingroup$ Welcome and +1 for this answer. However, we do ask for any answers to be accompanied by the appropriate references to allow other users to background read on your material. $\endgroup$
    – AliceD
    Commented May 13, 2018 at 18:51
  • $\begingroup$ @Deborah Stephenson , it is not "obvious" that restricting mating to the alpha male and female limits the number of offspring born because the limiting factor in offspring production is commonly the food available to support those offspring. As long as the group's other members can still hunt, the same food that was available for all offspring would be available for the offspring of the alpha individuals. $\endgroup$
    – sterid
    Commented May 13, 2018 at 21:50

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