A study of autonomous robot behavior using the LAPART neural architecture

Presents an experimental study on the effects of sensorial representations, sensor fusion, control arbitration, and environmental configurations on the learning of a coupled simulated/physical robotic system using the LAPART-2 neural architecture.

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