Optimization of Snake-like Robot Locomotion Using GA: Serpenoid Design
Tomáš Hůlka, Radomil Matoušek, Ladislav Dobrovský, Monika Dosoudilová, Lars Nolle
- Year
- 2020
- Citations
- 8
- Access
- Open access
Abstract
This work investigates the locomotion efficiency of snake-like robots through evolutionary optimization using the simulation framework PhysX (NVIDIA). The Genetic Algorithm (GA) is used to find the optimal forward head serpentine gait parameters, and the snake speed is taken into consideration in the optimization. A fitness function covering robot speed is based on a complex physics simulation in PhysX. A general serpenoid form is applied to each joint. Optimal gait parameters are calculated for a virtual model in a simulation environment. The fitness function evaluation uses the Simulation In the Loop (SIL) technique, where the virtual model is an approximation of a real snake-like robot. Experiments were performed using an 8-link snake robot with a given mass and a different body friction. The aim of the optimization was speed and length of the trace.
Keywords
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