36
4
Evolution
New genomic epidemiological modelling tools have been developed for infectious
disease research. 22
4.2
Evolutionary Systems
Equilibrium models, which are traditionally often used to model systems, are char-
acterized by the following assumptions (Allen 2007):
1. Entities of a given type are identical, or their characteristics are normally dis-
tributed around a well-defined mean
2. Microscopic events occur at their average rate
3. The system will move rapidly to a stationary (equilibrium) state (this movement
is enhanced if all agents are assumed to perfectly anticipate what the others will
do).
Hence, only simultaneous, not dynamical, equations need be considered, and the
effect of any change can be evaluated by comparing the stationary states before and
after the change.
The next level in sophistication is reached by abandoning Assumption 3. Now,
several stationary states may be possible, including cyclical and chaotic ones (strange
attractors).
If Assumption 2 is abandoned, nonaverage fluctuations are permitted, and
behaviour becomes much richer. In particular, external noise may allow the system
to cross separatrices. The system is then enabled to adopt new régimes of behaviour,
exploring regions of phase space inaccessible to the lower-level systems, 23 which
can be seen as a kind of collective adaptive response, requiring noise, to changing
external conditions.
The fourth and most sophisticated level is achieved by abandoning the remaining
Assumption 1. Local dynamics cause the microdiversity of the entities themselves to
change. Certain attributes may be selected by the system and others may disappear.
These systems are called evolutionary. Their structures reorganize, and the equa-
tions themselves may change. Most natural systems seem to belong to this category.
Rational prediction of their future is extremely difficult.
The evolutionary process is often analysed as a game, in which alternative strate-
gies invade an extant one. Ferrière and Gatto (1995) have shown how the Lyapunov
exponent (Sect. 12.3) can be useful for tracking invasion. To properly understand
invasion, however, spatial organization must also be taken into account, and this
requires modelling; cellular automata (Sect. 12.1.2) are useful. 24
22 Cárdenas et al. (2022).
23 This type of behaviour is sometimes called “self-organization”; cf. Érdi and Barna (1984).
24 Galam et al. (1998).