Abstract

Evolutionary robotics relies upon techniques involving the evolution of artificial neural networks to synthesize sensorimotor control systems for actual or physically simulated robots. This paper is a comparative study of three principal types of artificial neural networks; the Continuous Time Recurrent Neural Network (CTRNN), the Plastic Neural Network (PNN) and the GasNet. An attempt is made to evolve networks capable of achieving locomotion with a physically simulated biped. Of the 14 distinct networks tested, GasNets were the only network to achieve cyclical locomotion, although CTRNNs were able to attain a higher level of average fitness.

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