Unraveling Intricate Animal Patterns
There is a scene in the animated blockbuster "Finding Nemo" when a school of fish makes a rapid string of complicated patternsan arrow, a portrait of young Nemo and other intricate designs. While the detailed shapes might be a bit outlandish for fish to form, the premise isnt far off. But how does a school of fish or a flock of birds know how to move from one configuration to another and then reorganize as a unit, without knowing what the entire group is doing? New research by University of Alberta researchers shows that one movement started by a single individual ripples through the entire groupa finding that helps unravel the mystery that has plagued researchers for years.
"It is known that there is a correlation between the signals animals use to communicate with each other and their behaviour," said Raluca Eftimie, a graduate student in the U of As Centre for Mathematical Biology. "But until now, the correlation between the complex spatial group patterns that we can see in nature and the different ways animals communicate, has not been stated explicitly".
For decades people have puzzled about how animalsfish schools, locust swarms, large flocks of birds--form large complex dynamical groups. It is clear individuals in the group are only communicating with nearby neighbours, but then the groups somehow emerge spontaneously with complicated patterns of their own. Eftimie and her co-authorsDr. Mark Lewis and Dr. Gerda de Vries, also from the Centre for Mathematical Biology housed in the U of As Department of Mathematical and Statistical Sciences--used a one-dimensional mathematical model to describe the formation and movement of animal groups. The work is reported in the prestigious journal, "Proceedings of the National Academy of Sciences".
"Every individual in the group is influenced by movement of the individuals in its neighbourhood," said de Vries. On the other hand, the individuals movement can influence the movement of the entire group.
"It turns out that the entire group can respond indirectly to a single individual, as each individual's movement response is a signal to its next neighbour," said Lewis, the Canada Research Chair in Mathematical Biology. "By this method, signals are passed quickly from individual to individual. So for example, one fish turns, causing the next one to turn, then the next one, and so on. This produces the complex collective behaviours--swarm formation, zig-zag group movements--that emerge from the bottom up, simply based on interactions between neighbors".
Until Eftimies work, these complex emergent patterns could not be connected clearly to simple rules for the small scale communication between individuals.
People have had some success in proposing rather complex and detailed explanations for how specific species form into groups, says Lewis. "What Raluca's work does is show that very simple and straightforward sets of rules can produce the complex kinds of patterns seen in nature," says Lewis, also from the Department of Biological Sciences. "Her work has stripped out the unnecessary detail to the core elements of communication that give rise to the patterns found in large scale groups".
In particular, the scientists looked at the direction from which animals can receive signals from their neighbors. "For example, some species of birds use directional communication, and therefore, we may assume that in this case the behaviour of an individual will be influenced by the signals received from those con-specifics that face towards this individual," said Eftimie. "Based on these observations, we come up with some simple rules that can describe the different ways animals communicate. Then we incorporate these rules into the mathematical model, and check what kind of movement patterns we get".
The team came up with 10 complex patterns. Some are classical, such as stationary pulses, ripples or traveling trains but they also describe new patterns that have not been reported before such as zigzag pulses, feathers and traveling breathers.
This model doesnt apply to specific species, says Eftimie. "However, we can think of those flocks of birds that fly in one direction, and then suddenly change direction 180 degrees, and compare this with the zigzagging type of pattern shown by the numerical simulations. Or we can think about the anti-predatory behaviour exhibited by some schools of fish--when a predator is nearby, the school contracts in a tight aggregation, to expand again when the predator is gone. And we can try to compare this behaviour with the breather pattern described in our paper".
The results of the model suggest that if we want to better understand the aggregations we see in nature, says Eftimie, we should take a look at how these animals communicate.
Posted by: Kelly Source