Recurrent neural robot controllers: feedback mechanisms for identifying environmental motion dynamics

作者:Stephen Paul McKibbin, Bala Amavasai, Arul N. Selvan, Fabio Caparrelli, W. A. F. W. Othman

摘要

In this paper a series of recurrent controllers for mobile robots have been developed. The system combines the iterative learning capability of neural controllers and the optimisation ability of particle swarms. In particular, three controllers have been developed: an Exo-sensing, an Ego-sensing and a Composite controller which is the hybrid of the latter two. The task for each controller is to learn to follow a moving target and identify its trajectory using only local information. We show how the learned behaviours of each architecture rely on different sensory representations, although good results are obtained in all cases.

论文关键词:Dynamic Neural Networks, Particle Swarm Optimisation, Sensory-Motor Coordination

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论文官网地址:https://doi.org/10.1007/s10462-008-9087-0