In this paper, we propose a phenomenological developmental model
based on a stochastic evolutionary neuron migration process
(SENMP)
. Employing a spatial encoding scheme with lateral
interaction of neurons for artificial neural networks representing
candidate solutions within a neural network
ensemble
1, neurons of the ensemble form problem-specific
geometrical structures as they migrate under selective pressure.
The SENMP is applied to evolve purposeful behaviors for autonomous
robots and to gain new insights into the development, adaptation and
plasticity in artificial neural networks. We demonstrate the
feasibility and advantages of the approach by evolving a robust
navigation behavior for a mobile robot. We also present some
preliminary results regarding the behavior of the adapting neural
network ensemble and, particularly, a phenomenon exhibiting Hebbian
dynamics.