Optimal Trajectory Planning in a Vertically Undulating Snake Locomotion using Contact-implicit Optimization
By: Adarsh Salagame, Eric Sihite, Alireza Ramezani
Potential Business Impact:
Robots move like snakes without getting stuck.
Contact-rich problems, such as snake robot locomotion, offer unexplored yet rich opportunities for optimization-based trajectory and acyclic contact planning. So far, a substantial body of control research has focused on emulating snake locomotion and replicating its distinctive movement patterns using shape functions that either ignore the complexity of interactions or focus on complex interactions with matter (e.g., burrowing movements). However, models and control frameworks that lie in between these two paradigms and are based on simple, fundamental rigid body dynamics, which alleviate the challenging contact and control allocation problems in snake locomotion, remain absent. This work makes meaningful contributions, substantiated by simulations and experiments, in the following directions: 1) introducing a reduced-order model based on Moreau's stepping-forward approach from differential inclusion mathematics, 2) verifying model accuracy, 3) experimental validation.
Similar Papers
Contact-Implicit Modeling and Simulation of a Snake Robot on Compliant and Granular Terrain
Robotics
Helps snake robots move better on any ground.
Simultaneous Contact Sequence and Patch Planning for Dynamic Locomotion
Robotics
Robots learn to walk and climb tricky places.
Dynamically-Consistent Trajectory Optimization for Legged Robots via Contact Point Decomposition
Robotics
Makes robot legs walk without falling over.