Biologically-inspired adaptive obstacle negotiation behavior of hexapod robots

2014 | journal article. A publication with affiliation to the University of Göttingen.

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​Biologically-inspired adaptive obstacle negotiation behavior of hexapod robots​
Goldschmidt, D.; Manoonpong, P. & Wörgötter, F.​ (2014) 
Frontiers in Neurorobotics8 art. 3​.​ DOI: https://doi.org/10.3389/fnbot.2014.00003 

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Authors
Goldschmidt, Dennis; Manoonpong, Poramate; Wörgötter, Florentin
Abstract
Neurobiological studies have shown that insects are able to adapt leg movements and posture for obstacle negotiation in changing environments. Moreover, the distance to an obstacle where an insect begins to climb is found to be a major parameter for successful obstacle negotiation. Inspired by these findings, we present an adaptive neural control mechanism for obstacle negotiation behavior in hexapod robots. It combines locomotion control, backbone joint control, local leg reflexes, and neural learning. While the first three components generate locomotion including walking and climbing, the neural learning mechanism allows the robot to adapt its behavior for obstacle negotiation with respect to changing conditions, e.g., variable obstacle heights and different walking gaits. By successfully learning the association of an early, predictive signal (conditioned stimulus, CS) and a late, reflex signal (unconditioned stimulus, UCS), both provided by ultrasonic sensors at the front of the robot, the robot can autonomously find an appropriate distance from an obstacle to initiate climbing. The adaptive neural control was developed and tested first on a physical robot simulation, and was then successfully transferred to a real hexapod robot, called AMOS II. The results show that the robot can efficiently negotiate obstacles with a height up to 85% of the robot's leg length in simulation and 75% in a real environment.
Issue Date
2014
Status
published
Publisher
Frontiers Media S.A.
Journal
Frontiers in Neurorobotics 
Organization
Fakultät für Physik 
ISSN
1662-5218
eISSN
1662-5218
Language
English

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