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Decentralized Control of Insect Walking – a simple neural network explains a wide range of behavioral and neurophysiological results

Malte Schilling, Holk Cruse

Year
2019
Citations
3
Access
Open access

Abstract

Abstract Control of walking with six or more legs in an unpredictable environment is a challenging task, as many degrees of freedom have to be coordinated. Generally, solutions are proposed that rely on (sensory-modulated) CPGs, mainly based on data from neurophysiological studies. Here, we are introducing a sensor based controller operating on artificial neurons, being applied to a (simulated) hexapod robot with a morphology adapted to Carausius morosus . We show that such a decentralized solution leads to adaptive behavior when facing uncertain environments which we demonstrate for a large range of behaviors – slow and fast walking, forward and backward walking, negotiation of curves and walking on a treadmill with various treatment of individual legs. This approach can as well account for these neurophysiological results without relying on explicit CPG-like structures, but can be complemented with these for very fast walking.

Keywords

NeurophysiologyComputer scienceHexapodTask (project management)Sensory systemCentral pattern generatorController (irrigation)RobotRange (aeronautics)Gait

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