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 substances are transformed into each other, and diffusion which causes the substances to spread out over a surface in space.
Reaction–diffusion systems are naturally applied in chemistry. However, the system can also describe dynamical processes of non-chemical nature. Examples are found in biology, geology and physics (neutron diffusion theory) and ecology. Mathematically, reaction–diffusion systems take the form of semi-linear parabolic partial differential equations. They can be represented in the general form
where q(x, t) represents the unknown vector function, D is a diagonal matrix of diffusion coefficients, and R accounts for all local reactions. The solutions of reaction–diffusion equations display a wide range of behaviours, including the formation of travelling waves and wave-like phenomena as well as other self-organized patterns like stripes, hexagons or more intricate structure like dissipative solitons. Such patterns have been dubbed "Turing patterns".[1] Each function, for which a reaction diffusion differential equation holds, represents in fact a concentration variable.
Contents
- 1 One-component reaction–diffusion equations
- 2 Two-component reaction–diffusion equations
- 3 Three- and more-component reaction–diffusion equations
- 4 Applications and universality
- 5 Experiments
- 6 Numerical treatments
- 7 See also
- 8 Some examples of reaction-diffusion equations
- 9 References
- 10 External links
One-component reaction–diffusion equations[edit]
The simplest reaction–diffusion equation is in one spatial dimension in plane geometry,
is also referred to as the Kolmogorov–Petrovsky–Piskunov equation.[2] If the reaction term vanishes, then the equation represents a pure diffusion process. The corresponding equation is Fick's second law. The choice R(u) = u(1 − u) yields Fisher's equation that was originally used to describe the spreading of biological populations,[3] the Newell–Whitehead-Segel equation with R(u) = u(1 − u2) to describe Rayleigh–Bénard convection,[4][5] the more general Zeldovich equation with R(u) = u(1 − u)(u − α) and 0 < α < 1 that arises in combustion theory,[6] and its particular degenerate case with R(u) = u2 − u3 that is sometimes referred to as the Zeldovich equation as well.[7]
The dynamics of one-component systems is subject to certain restrictions as the evolution equation can also be written in the variational form
and therefore describes a permanent decrease of the "free energy" given by the functional
with a potential V(u) such that R(u) = dV(u)/du.
In systems with more than one stationary homogeneous solution, a typical solution is given by travelling fronts connecting the homogeneous states. These solutions move with constant speed without changing their shape and are of the form u(x, t) = û(ξ) with ξ = x − ct, where c is the speed of the travelling wave. Note that while travelling waves are generically stable structures, all non-monotonous stationary solutions (e.g. localized domains composed of a front-antifront pair) are unstable. For c = 0, there is a simple proof for this statement:[8] if u0(x) is a stationary solution and u = u0(x) + ũ(x, t) is an infinitesimally perturbed solution, linear stability analysis yields the equation
With the ansatz ũ = ψ(x)exp(−λt) we arrive at the eigenvalue problem
of Schrödinger type where negative eigenvalues result in the instability of the solution. Due to translational invariance ψ = ∂x u0(x) is a neutral eigenfunction with the eigenvalue λ = 0, and all other eigenfunctions can be sorted according to an increasing number of knots with the magnitude of the corresponding real eigenvalue increases monotonically with the number of zeros. The eigenfunction ψ = ∂x u0(x) should have at least one zero, and for a non-monotonic stationary solution the corresponding eigenvalue λ = 0 cannot be the lowest one, thereby implying instability.
To determine the velocity c of a moving front, one may go to a moving coordinate system and look at stationary solutions:
This equation has a nice mechanical analogue as the motion of a mass D with position û in the course of the "time" ξ under the force R with the damping coefficient c which allows for a rather illustrative access to the construction of different types of solutions and the determination of c.
When going from one to more space dimensions, a number of statements from one-dimensional systems can still be applied. Planar or curved wave fronts are typical structures, and a new effect arises as the local velocity of a curved front becomes dependent on the local radius of curvature (this can be seen by going to polar coordinates). This phenomenon leads to the so-called curvature-driven instability.[9]
Two-component reaction–diffusion equations[edit]
Two-component systems allow for a much larger range of possible phenomena than their one-component counterparts. An important idea that was first proposed by Alan Turing is that a state that is stable in the local system can become unstable in the presence of diffusion.[10]
A linear stability analysis however shows that when linearizing the general two-component system
a plane wave perturbation
of the stationary homogeneous solution will satisfy
Turing's idea can only be realized in four equivalence classes of systems characterized by the signs of the Jacobian R′ of the reaction function. In particular, if a finite wave vector k is supposed to be the most unstable one, the Jacobian must have the signs
This class of systems is named activator-inhibitor system after its first representative: close to the ground state, one component stimulates the production of both components while the other one inhibits their growth. Its most prominent representative is the FitzHugh–Nagumo equation
with f (u) = λu − u3 − κ which describes how an action potential travels through a nerve.[11][12] Here, du, dv, τ, σ and λ are positive constants.
When an activator-inhibitor system undergoes a change of parameters, one may pass from conditions under which a homogeneous ground state is stable to conditions under which it is linearly unstable. The corresponding bifurcation may be either a Hopf bifurcation to a globally oscillating homogeneous state with a dominant wave number k = 0 or a Turing bifurcation to a globally patterned state with a dominant finite wave number. The latter in two spatial dimensions typically leads to stripe or hexagonal patterns.
For the Fitzhugh–Nagumo example, the neutral stability curves marking the boundary of the linearly stable region for the Turing and Hopf bifurcation are given by
If the bifurcation is subcritical, often localized structures (dissipative solitons) can be observed in the hysteretic region where the pattern coexists with the ground state. Other frequently encountered structures comprise pulse trains (also known as periodic travelling waves), spiral waves and target patterns. These three solution types are also generic features of two- (or more-) component reaction-diffusion equations in which the local dynamics have a stable limit cycle[13]
Three- and more-component reaction–diffusion equations[edit]
For a variety of systems, reaction-diffusion equations with more than two components have been proposed, e.g. as models for the regulation of lymphangiogenesis by VEGFC, MMP2, and collagen I[14]; the Belousov–Zhabotinsky reaction,[15] for blood clotting[16] or planar gas discharge systems.[17]
It is known that systems with more components allow for a variety of phenomena not possible in systems with one or two components (e.g. stable running pulses in more than one spatial dimension without global feedback),.[18] An introduction and systematic overview of the possible phenomena in dependence on the properties of the underlying system is given in.[19]
The challenges posed by multi-component systems are rooted in their analytically intractable nature; one solution is to explore the parametric space of such a model one point at a time and then solve the model numerically, as was done in a theoretical study about lymphangiogenesis [20].
Applications and universality[edit]
In recent times, reaction–diffusion systems have attracted much interest as a prototype model for pattern formation. The above-mentioned patterns (fronts, spirals, targets, hexagons, stripes and dissipative solitons) can be found in various types of reaction-diffusion systems in spite of large discrepancies e.g. in the local reaction terms. It has also been argued that reaction-diffusion processes are an essential basis for processes connected to morphogenesis in biology[21] and may even be related to animal coats and skin pigmentation.[22][23] Other applications of reaction-diffusion equations include ecological invasions,[24] spread of epidemics,[25] tumour growth[26][27][28] and wound healing.[29] Another reason for the interest in reaction-diffusion systems is that although they are nonlinear partial differential equations, there are often possibilities for an analytical treatment.[8][9][30][31][32]
Experiments[edit]
Well-controllable experiments in chemical reaction-diffusion systems have up to now been realized in three ways. First, gel reactors[33] or filled capillary tubes[34] may be used. Second, temperature pulses on catalytic surfaces have been investigated.[35][36] Third, the propagation of running nerve pulses is modelled using reaction-diffusion systems.[11][37]
Aside from these generic examples, it has turned out that under appropriate circumstances electric transport systems like plasmas[38] or semiconductors[39] can be described in a reaction-diffusion approach. For these systems various experiments on pattern formation have been carried out.
Numerical treatments[edit]
A reaction-diffusion system can be solved by using methods of numerical mathematics. There are existing several numerical treatments in research literature.[40] Also for complex geometries numerical solution methods are proposed.[41][42]
See also[edit]
- Autowave
- Diffusion-controlled reaction
- Chemical kinetics
- Phase space method
- Autocatalytic reactions and order creation
- Pattern formation
- Patterns in nature
- Periodic travelling wave
- Stochastic geometry
- MClone
- The Chemical Basis of Morphogenesis
- Turing pattern
Some examples of reaction-diffusion equations[edit]
References[edit]
- ^ Wooley, T. E., Baker, R. E. Maini, P. K., Chapter 34, Turing's theory of morphogenesis. In Copeland, B. Jack; Bowen, Jonathan P.; Wilson, Robin; Sprevak, Mark (2017). The Turing Guide. Oxford University Press. ISBN 978-0198747826.
- ^ A. Kolmogorov et al., Moscow Univ. Bull. Math. A 1 (1937): 1[full citation needed]
- ^ R. A. Fisher, Ann. Eug. 7 (1937): 355
- ^ A. C. Newell and J. A. Whitehead, J. Fluid Mech. 38 (1969): 279
- ^ L. A. Segel, J. Fluid Mech. 38 (1969): 203
- ^ Y. B. Zeldovich and D. A. Frank-Kamenetsky, Acta Physicochim. 9 (1938): 341
- ^ B. H. Gilding and R. Kersner, Travelling Waves in Nonlinear Diffusion Convection Reaction, Birkhäuser (2004)
- ^ a b P. C. Fife, Mathematical Aspects of Reacting and Diffusing Systems, Springer (1979)
- ^ a b A. S. Mikhailov, Foundations of Synergetics I. Distributed Active Systems, Springer (1990)
- ^ A. M. Turing, Phil. Transact. Royal Soc. B 237 (1952): 37
- ^ a b R. FitzHugh, Biophys. J. 1 (1961): 445
- ^ J. Nagumo et al., Proc. Inst. Radio Engin. Electr. 50 (1962): 2061
- ^ N. Kopell and L. N. Howard, Stud. Appl. Math. 52 (1973): 291
- ^ Roose, Tiina; Wertheim, Kenneth Y. (2019-01-03). "Can VEGFC Form Turing Patterns in the Zebrafish Embryo?". Bulletin of Mathematical Biology: 1–37. doi:10.1007/s11538-018-00560-2. ISSN 1522-9602.
- ^ V. K. Vanag and I. R. Epstein, Phys. Rev. Lett. 92 (2004): 128301
- ^ E. S. Lobanova and F. I. Ataullakhanov, Phys. Rev. Lett. 93 (2004): 098303
- ^ H.-G. Purwins et al. in: Dissipative Solitons, Lectures Notes in Physics, Ed. N. Akhmediev and A. Ankiewicz, Springer (2005)
- ^ C. P. Schenk et al., Phys. Rev. Lett. 78 (1997): 3781
- ^ A. W. Liehr: Dissipative Solitons in Reaction Diffusion Systems. Mechanism, Dynamics, Interaction. Volume 70 of Springer Series in Synergetics, Springer, Berlin Heidelberg 2013, ISBN 978-3-642-31250-2
- ^ Roose, Tiina; Wertheim, Kenneth Y. (2019-01-03). "Can VEGFC Form Turing Patterns in the Zebrafish Embryo?". Bulletin of Mathematical Biology: 1–37. doi:10.1007/s11538-018-00560-2. ISSN 1522-9602.
- ^ L.G. Harrison, Kinetic Theory of Living Pattern, Cambridge University Press (1993)
- ^ H. Meinhardt, Models of Biological Pattern Formation, Academic Press (1982)
- ^ Murray, James D. (9 March 2013). Mathematical Biology. Springer Science & Business Media. pp. 436–450. ISBN 978-3-662-08539-4.
- ^ E.E. Holmes et al, Ecology 75 (1994): 17
- ^ J.D. Murray et al, Proc. R. Soc. Lond. B 229 (1986: 111
- ^ M.A.J. Chaplain J. Bio. Systems 3 (1995): 929
- ^ J.A. Sherratt and M.A. Nowak, Proc. R. Soc. Lond. B 248 (1992): 261
- ^ R.A. Gatenby and E.T. Gawlinski, Cancer Res. 56 (1996): 5745
- ^ J.A. Sherratt and J.D. Murray, Proc. R. Soc. Lond. B 241 (1990): 29
- ^ P. Grindrod, Patterns and Waves: The Theory and Applications of Reaction-Diffusion Equations, Clarendon Press (1991)
- ^ J. Smoller, Shock Waves and Reaction Diffusion Equations, Springer (1994)
- ^ B. S. Kerner and V. V. Osipov, Autosolitons. A New Approach to Problems of Self-Organization and Turbulence, Kluwer Academic Publishers (1994)
- ^ K.-J. Lee et al., Nature 369 (1994): 215
- ^ C. T. Hamik and O. Steinbock, New J. Phys. 5 (2003): 58
- ^ H. H. Rotermund et al., Phys. Rev. Lett. 66 (1991): 3083
- ^ M. D. Graham et al., J. Phys. Chem. 97 (1993): 7564
- ^ A. L. Hodgkin and A. F. Huxley, J. Physiol. 117 (1952): 500
- ^ M. Bode and H.-G. Purwins, Physica D 86 (1995): 53
- ^ E. Schöll, Nonlinear Spatio-Temporal Dynamics and Chaos in Semiconductors, Cambridge University Press (2001)
- ^ S.Tang et al., J.Austral.Math.Soc. Ser.B 35(1993): 223–243
- ^ Isaacson, Samuel A.; Peskin, Charles S. (2006). "Incorporating Diffusion in Complex Geometries into Stochastic Chemical Kinetics Simulations". SIAM J. Sci. Comput. 28 (1): 47–74. CiteSeerX 10.1.1.105.2369. doi:10.1137/040605060.
- ^ Linker, Patrick (2016). "Numerical methods for solving the reactive diffusion equation in complex geometries". The Winnower.
External links[edit]
- Reaction–Diffusion by the Gray–Scott Model: Pearson's parameterization a visual map of the parameter space of Gray–Scott reaction diffusion.
- A Thesis on reaction-diffusion patterns with an overview of the field