Automatic Snake Gait Generation Using Model Predictive Control

ICRA(2020)

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摘要
In this paper, we propose a method for generating undulatory gaits for snake robots. Instead of starting from a pre-defined movement pattern such as a serpenoid curve, we use a Model Predictive Control approach to automatically generate effective locomotion gaits via trajectory optimization. An important advantage of this approach is that the resulting gaits are automatically adapted to the environment that is being modeled as part of the snake dynamics. To illustrate this, we use a novel model for anisotropic dry friction, along with existing models for viscous friction and fluid dynamic effects such as drag and added mass. For each of these models, gaits generated without any change in the method or its parameters are as efficient as Pareto-optimal serpenoid gaits tuned individually for each environment. Furthermore, the proposed method can also produce more complex or irregular gaits, e.g. for obstacle avoidance or executing sharp turns.
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关键词
automatic snake gait generation,undulatory gaits,snake robots,movement pattern,serpenoid curve,model predictive control,locomotion gaits,trajectory optimization,snake dynamics,anisotropic dry friction,viscous friction,fluid dynamic effects,Pareto-optimal serpenoid gaits,drag
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