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Reduced-Order Model-Based Gait Generation for Snake Robot Locomotion Using NMPC

Adarsh Salagame, Eric Sihite, Milad Ramezani, Alireza Ramezani

Year
2025
Citations
2

Abstract

This paper presents an optimization-based motion planning methodology for snake robots operating in constrained environments. By using a reduced-order model, the proposed approach simplifies the planning process, enabling the optimizer to autonomously generate gaits while constraining the robot's footprint within tight spaces. The method is validated through high-fidelity simulations that accurately model contact dynamics and the robot's motion. Key locomotion strategies are identified and further demonstrated through hardware experiments, including successful navigation through narrow corridors.

Keywords

GaitRobot locomotionRobotComputer scienceGait analysisSimulationMobile robotPhysical medicine and rehabilitationArtificial intelligenceRobot control

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