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The competitive Lotka–Volterra equations are a simple model of the
population dynamics Population dynamics is the type of mathematics used to model and study the size and age composition of populations as dynamical systems. History Population dynamics has traditionally been the dominant branch of mathematical biology, which has a ...
of species competing for some common resource. They can be further generalised to the Generalized Lotka–Volterra equation to include trophic interactions.


Overview

The form is similar to the
Lotka–Volterra equations The Lotka–Volterra equations, also known as the predator–prey equations, are a pair of first-order nonlinear differential equations, frequently used to describe the dynamics of biological systems in which two species interact, one as a pre ...
for predation in that the equation for each species has one term for self-interaction and one term for the interaction with other species. In the equations for predation, the base population model is
exponential Exponential may refer to any of several mathematical topics related to exponentiation, including: *Exponential function, also: **Matrix exponential, the matrix analogue to the above *Exponential decay, decrease at a rate proportional to value *Expo ...
. For the competition equations, the
logistic equation A logistic function or logistic curve is a common S-shaped curve (sigmoid curve) with equation f(x) = \frac, where For values of x in the domain of real numbers from -\infty to +\infty, the S-curve shown on the right is obtained, with the ...
is the basis. The logistic population model, when used by
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often takes the following form: = rx\left(1-\right). Here is the size of the population at a given time, is inherent per-capita growth rate, and is the carrying capacity.


Two species

Given two populations, and , with logistic dynamics, the Lotka–Volterra formulation adds an additional term to account for the species' interactions. Thus the competitive Lotka–Volterra equations are: = r_1x_1\left(1-\left(\right) \right) = r_2x_2\left(1-\left(\right) \right). Here, represents the effect species 2 has on the population of species 1 and represents the effect species 1 has on the population of species 2. These values do not have to be equal. Because this is the competitive version of the model, all interactions must be harmful (competition) and therefore all ''α''-values are positive. Also, note that each species can have its own growth rate and carrying capacity. A complete classification of this dynamics, even for all sign patterns of above coefficients, is available, which is based upon equivalence to the 3-type
replicator equation In mathematics, the replicator equation is a deterministic monotone non-linear and non-innovative game dynamic used in evolutionary game theory. The replicator equation differs from other equations used to model replication, such as the quasispecie ...
.


''N'' species

This model can be generalized to any number of species competing against each other. One can think of the populations and growth rates as vectors, 's as a matrix. Then the equation for any species becomes \frac = r_i x_i \left(1- \frac \right) or, if the carrying capacity is pulled into the interaction matrix (this doesn't actually change the equations, only how the interaction matrix is defined), \frac = r_i x_i \left( 1 - \sum_^N \alpha_x_j \right) where is the total number of interacting species. For simplicity all self-interacting terms are often set to 1.


Possible dynamics

The definition of a competitive Lotka–Volterra system assumes that all values in the interaction matrix are positive or 0 ( for all , ). If it is also assumed that the population of any species will increase in the absence of competition unless the population is already at the carrying capacity ( for all ), then some definite statements can be made about the behavior of the system. # The populations of all species will be bounded between 0 and 1 at all times (, for all ) as long as the populations started out positive. # Smale showed that Lotka–Volterra systems that meet the above conditions and have five or more species (''N'' ≥ 5) can exhibit any asymptotic behavior, including a fixed point, a
limit cycle In mathematics, in the study of dynamical systems with two-dimensional phase space, a limit cycle is a closed trajectory in phase space having the property that at least one other trajectory spirals into it either as time approaches infinity o ...
, an ''n''-torus, or attractors. # Hirsch proved that all of the dynamics of the attractor occur on a manifold of dimension ''N''−1. This essentially says that the attractor cannot have
dimension In physics and mathematics, the dimension of a mathematical space (or object) is informally defined as the minimum number of coordinates needed to specify any point within it. Thus, a line has a dimension of one (1D) because only one coor ...
greater than ''N''−1. This is important because a limit cycle cannot exist in fewer than two dimensions, an ''n''-torus cannot exist in less than ''n'' dimensions, and chaos cannot occur in less than three dimensions. So, Hirsch proved that competitive Lotka–Volterra systems cannot exhibit a limit cycle for ''N'' < 3, or any
torus In geometry, a torus (plural tori, colloquially donut or doughnut) is a surface of revolution generated by revolving a circle in three-dimensional space about an axis that is coplanar with the circle. If the axis of revolution does not tou ...
or chaos for ''N'' < 4. This is still in agreement with Smale that any dynamics can occur for ''N'' ≥ 5. #*More specifically, Hirsch showed there is an invariant set ''C'' that is homeomorphic to the (''N''−1)-dimensional simplex \Delta_ = \left \ and is a global attractor of every point excluding the origin. This carrying simplex contains all of the asymptotic dynamics of the system. # To create a stable ecosystem the αij matrix must have all positive eigenvalues. For large-''N'' systems Lotka–Volterra models are either unstable or have low connectivity. Kondoh and Ackland and Gallagher have independently shown that large, stable Lotka–Volterra systems arise if the elements of (i.e. the features of the species) can evolve in accordance with natural selection.


4-dimensional example

A simple 4-dimensional example of a competitive Lotka–Volterra system has been characterized by Vano ''et al.'' Here the growth rates and interaction matrix have been set to r = \begin 1 \\ 0.72 \\ 1.53 \\ 1.27 \end \quad \alpha = \begin 1 & 1.09 & 1.52 & 0 \\ 0 & 1 & 0.44 & 1.36 \\ 2.33 & 0 & 1 & 0.47 \\ 1.21 & 0.51 & 0.35 & 1 \end with K_i=1 for all i. This system is chaotic and has a largest Lyapunov exponent of 0.0203. From the theorems by Hirsch, it is one of the lowest-dimensional chaotic competitive Lotka–Volterra systems. The Kaplan–Yorke dimension, a measure of the dimensionality of the attractor, is 2.074. This value is not a whole number, indicative of the fractal structure inherent in a strange attractor. The coexisting
equilibrium point In mathematics, specifically in differential equations, an equilibrium point is a constant solution to a differential equation. Formal definition The point \tilde\in \mathbb^n is an equilibrium point for the differential equation :\frac = \ ...
, the point at which all derivatives are equal to zero but that is not the
origin Origin(s) or The Origin may refer to: Arts, entertainment, and media Comics and manga * ''Origin'' (comics), a Wolverine comic book mini-series published by Marvel Comics in 2002 * ''The Origin'' (Buffy comic), a 1999 ''Buffy the Vampire Sl ...
, can be found by inverting the interaction matrix and multiplying by the unit
column vector In linear algebra, a column vector with m elements is an m \times 1 matrix consisting of a single column of m entries, for example, \boldsymbol = \begin x_1 \\ x_2 \\ \vdots \\ x_m \end. Similarly, a row vector is a 1 \times n matrix for some n, c ...
, and is equal to \overline = \left ( \alpha \right )^ \begin 1 \\ 1 \\ 1 \\ 1 \end = \begin 0.3013 \\ 0.4586 \\ 0.1307 \\ 0.3557 \end. Note that there are always equilibrium points, but all others have at least one species' population equal to zero. The eigenvalues of the system at this point are 0.0414±0.1903''i'', −0.3342, and −1.0319. This point is unstable due to the positive value of the real part of the
complex Complex commonly refers to: * Complexity, the behaviour of a system whose components interact in multiple ways so possible interactions are difficult to describe ** Complex system, a system composed of many components which may interact with each ...
eigenvalue pair. If the real part were negative, this point would be stable and the orbit would attract asymptotically. The transition between these two states, where the real part of the complex eigenvalue pair is equal to zero, is called a
Hopf bifurcation In the bifurcation theory, mathematical theory of bifurcations, a Hopf bifurcation is a Critical point (mathematics), critical point where a system's stability switches and a Periodic function, periodic solution arises. More accurately, it is a lo ...
. A detailed study of the parameter dependence of the dynamics was performed by Roques and Chekroun in. The authors observed that interaction and growth parameters leading respectively to extinction of three species, or coexistence of two, three or four species, are for the most part arranged in large regions with clear boundaries. As predicted by the theory, chaos was also found; taking place however over much smaller islands of the parameter space which causes difficulties in the identification of their location by a random search algorithm. These regions where chaos occurs are, in the three cases analyzed in, situated at the interface between a non-chaotic four species region and a region where extinction occurs. This implies a high sensitivity of biodiversity with respect to parameter variations in the chaotic regions. Additionally, in regions where extinction occurs which are adjacent to chaotic regions, the computation of local Lyapunov exponents revealed that a possible cause of extinction is the overly strong fluctuations in species abundances induced by local chaos.


Spatial arrangements


Background

There are many situations where the strength of species' interactions depends on the physical distance of separation. Imagine bee colonies in a field. They will compete for food strongly with the colonies located near to them, weakly with further colonies, and not at all with colonies that are far away. This doesn't mean, however, that those far colonies can be ignored. There is a transitive effect that permeates through the system. If colony ''A'' interacts with colony ''B'', and ''B'' with ''C'', then ''C'' affects ''A'' through ''B''. Therefore, if the competitive Lotka–Volterra equations are to be used for modeling such a system, they must incorporate this spatial structure.


Matrix organization

One possible way to incorporate this spatial structure is to modify the nature of the Lotka–Volterra equations to something like a
reaction–diffusion system Reaction–diffusion systems are mathematical models which correspond to several physical phenomena. The most common is the change in space and time of the concentration of one or more chemical substances: local chemical reactions in which the s ...
. It is much easier, however, to keep the format of the equations the same and instead modify the interaction matrix. For simplicity, consider a five species example where all of the species are aligned on a circle, and each interacts only with the two neighbors on either side with strength and respectively. Thus, species 3 interacts only with species 2 and 4, species 1 interacts only with species 2 and 5, etc. The interaction matrix will now be \alpha_ = \begin1 & \alpha_1 & 0 & 0 & \alpha_ \\ \alpha_ & 1 & \alpha_1 & 0 & 0 \\ 0 & \alpha_ & 1 & \alpha_1 & 0 \\ 0 & 0 & \alpha_ & 1 & \alpha_1 \\ \alpha_1 & 0 & 0 & \alpha_ & 1 \end. If each species is identical in its interactions with neighboring species, then each row of the matrix is just a permutation of the first row. A simple, but non-realistic, example of this type of system has been characterized by Sprott ''et al.'' The coexisting
equilibrium point In mathematics, specifically in differential equations, an equilibrium point is a constant solution to a differential equation. Formal definition The point \tilde\in \mathbb^n is an equilibrium point for the differential equation :\frac = \ ...
for these systems has a very simple form given by the inverse of the sum of the row \overline_i = \frac = \frac.


Lyapunov functions

A
Lyapunov function In the theory of ordinary differential equations (ODEs), Lyapunov functions, named after Aleksandr Lyapunov, are scalar functions that may be used to prove the stability of an equilibrium of an ODE. Lyapunov functions (also called Lyapunov’s s ...
is a
function Function or functionality may refer to: Computing * Function key, a type of key on computer keyboards * Function model, a structured representation of processes in a system * Function object or functor or functionoid, a concept of object-oriente ...
of the system whose existence in a system demonstrates
stability Stability may refer to: Mathematics *Stability theory, the study of the stability of solutions to differential equations and dynamical systems ** Asymptotic stability ** Linear stability ** Lyapunov stability ** Orbital stability ** Structural sta ...
. It is often useful to imagine a Lyapunov function as the energy of the system. If the derivative of the function is equal to zero for some
orbit In celestial mechanics, an orbit is the curved trajectory of an object such as the trajectory of a planet around a star, or of a natural satellite around a planet, or of an artificial satellite around an object or position in space such as ...
not including the
equilibrium point In mathematics, specifically in differential equations, an equilibrium point is a constant solution to a differential equation. Formal definition The point \tilde\in \mathbb^n is an equilibrium point for the differential equation :\frac = \ ...
, then that orbit is a stable
attractor In the mathematical field of dynamical systems, an attractor is a set of states toward which a system tends to evolve, for a wide variety of starting conditions of the system. System values that get close enough to the attractor values remain ...
, but it must be either a limit cycle or ''n''-torus - but not a strange attractor (this is because the largest Lyapunov exponent of a limit cycle and ''n''-torus are zero while that of a strange attractor is positive). If the derivative is less than zero everywhere except the equilibrium point, then the equilibrium point is a stable fixed point attractor. When searching a
dynamical system In mathematics, a dynamical system is a system in which a function describes the time dependence of a point in an ambient space. Examples include the mathematical models that describe the swinging of a clock pendulum, the flow of water in ...
for non-fixed point attractors, the existence of a Lyapunov function can help eliminate regions of parameter space where these dynamics are impossible. The spatial system introduced above has a Lyapunov function that has been explored by Wildenberg ''et al.'' If all species are identical in their spatial interactions, then the interaction matrix is circulant. The eigenvalues of a circulant matrix are given byHofbauer, J., Sigmund, K., 1988. The Theory of Evolution and Dynamical Systems. Cambridge University Press, Cambridge, U.K, p. 352. \lambda_k = \sum_^ c_j\gamma^ for and where \gamma = e^ the ''N''th
root of unity In mathematics, a root of unity, occasionally called a de Moivre number, is any complex number that yields 1 when raised to some positive integer power . Roots of unity are used in many branches of mathematics, and are especially important ...
. Here is the ''j''th value in the first row of the circulant matrix. The Lyapunov function exists if the real part of the eigenvalues are positive ( for ). Consider the system where , , , and . The Lyapunov function exists if \begin \operatorname(\lambda_k) &= \operatorname \left ( 1+\alpha_e^ + \alpha_e^ + \alpha_1e^ + \alpha_2e^ \right ) \\ &= 1+(\alpha_+\alpha_2)\cos \left ( \frac \right ) + (\alpha_+\alpha_1)\cos \left ( \frac \right ) > 0 \end for . Now, instead of having to integrate the system over thousands of time steps to see if any dynamics other than a fixed point attractor exist, one need only determine if the Lyapunov function exists (note: the absence of the Lyapunov function doesn't guarantee a limit cycle, torus, or chaos). Example: Let , , and . If then all eigenvalues are negative and the only attractor is a fixed point. If then the real part of one of the complex eigenvalue pair becomes positive and there is a strange attractor. The disappearance of this Lyapunov function coincides with a
Hopf bifurcation In the bifurcation theory, mathematical theory of bifurcations, a Hopf bifurcation is a Critical point (mathematics), critical point where a system's stability switches and a Periodic function, periodic solution arises. More accurately, it is a lo ...
.


Line systems and eigenvalues

It is also possible to arrange the species into a line. The interaction matrix for this system is very similar to that of a circle except the interaction terms in the lower left and upper right of the matrix are deleted (those that describe the interactions between species 1 and ''N'', etc.). \alpha_ = \begin1 & \alpha_1 & 0 & 0 & 0 \\ \alpha_ & 1 & \alpha_1 & 0 & 0 \\ 0 & \alpha_ & 1 & \alpha_1 & 0 \\ 0 & 0 & \alpha_ & 1 & \alpha_1 \\ 0 & 0 & 0 & \alpha_ & 1 \end This change eliminates the Lyapunov function described above for the system on a circle, but most likely there are other Lyapunov functions that have not been discovered. The eigenvalues of the circle system plotted in the complex plane form a
trefoil A trefoil () is a graphic form composed of the outline of three overlapping rings, used in architecture and Christian symbolism, among other areas. The term is also applied to other symbols with a threefold shape. A similar shape with four ring ...
shape. The eigenvalues from a short line form a sideways Y, but those of a long line begin to resemble the trefoil shape of the circle. This could be due to the fact that a long line is indistinguishable from a circle to those species far from the ends.


Notes

{{DEFAULTSORT:Competitive Lotka-Volterra equations Chaotic maps Equations Population ecology Community ecology Population models