"Networks of neurons create complex dynamics: Statistical physics and a simple model for the control of breathing"

“Cogito ergo sum.”  In the physical sciences, there is a long history of thinking about thinking, going back at least as far as René Descartes' famous pronouncement. Much more recently, a combination of neuroscientists and physicists have realized that it is possible to explore the dynamics of interacting neurons using ideas borrowed from nonlinear dynamics and statistical mechanics. The nervous system contains many reasonably small collections of neurons that collectively generate a well-defined pattern of electrical activity, which continues even when those collections of cells are removed from the animal. These functional groups of neurons are now termed central pattern generators. While understanding such restricted systems does not necessarily elucidate such sublime questions as those regarding the nature of consciousness, these studies do provide an intriguing example of an application of statistical mechanics to biology. They also admit quantitative comparisons to experiment!

In this talk I present a minimal model for one such central pattern generator, based on the interaction of nonlinear dynamical systems interacting on a quenched random network. No biological background will be assumed and, fortunately, very little will be required for exploring how a simple model of coupled excitatory neurons can produce collective and metronomic bursts of activity that control the breathing rhythm in mammals. I will focus on how topological properties of the random network of neuronal connections controls the collective dynamical phase diagram of the system.  I will conclude with some new extensions of this work to the building of similarly simple models of the global and rhythmic dynamics of the neocortex, the seat of consciousness and the paragon of complexity that produced “Cogito ergo sum.”

Event Details

Date/Time:

  • Date: 
    Wednesday, November 2, 2011 - 11:00am

Location:
Marcus Nanotech Conf.