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Control of a legged rover for planetary exploration using embedded and evolved dynamical recurrent artificial neural networks

Alessandro Bursi, Marco Di Perna, Mauro Massari, G. Sangiovanni

Year
2006
Citations
4

Abstract

This paper presents a new method for realizing the control system of a legged rover for planetary exploration. The controller is realized using a class of dynamical recurrent artificial neural networks called CTRNN, and evolutionary algorithms. The proposed approach allows realizing the design of the controller in a modular way, decomposing the global problem into a collection of low-level tasks to be reached. The embodied dynamical neural network realized has been tested on a virtual legged hexapod called N.E.Me.Sys. The neural-controller has a high degree of robustness facing sensors noises and errors, tolerates a certain amount of degradation, but above all it allows the robot performing complex reactive behaviors, as overcoming hills and narrow valleys

Keywords

HexapodRobustness (evolution)Artificial neural networkModular designComputer scienceRobotRecurrent neural networkArtificial intelligenceDynamical systems theoryControl engineering

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