Home /Research /Optimization and learning for rough terrain legged locomotion
LOCOMOTION

Optimization and learning for rough terrain legged locomotion

Matt Zucker, Nathan Ratliff, Martin Stolle, Joel Chestnutt, J. Andrew Bagnell, Christopher G. Atkeson, James Kuffner

Year
2011
Citations
122

Abstract

We present a novel approach to legged locomotion over rough terrain that is thoroughly rooted in optimization. This approach relies on a hierarchy of fast, anytime algorithms to plan a set of footholds, along with the dynamic body motions required to execute them. Components within the planning framework coordinate to exchange plans, cost-to-go estimates, and ‘certificates’ that ensure the output of an abstract high-level planner can be realized by lower layers of the hierarchy. The burden of careful engineering of cost functions to achieve desired performance is substantially mitigated by a simple inverse optimal control technique. Robustness is achieved by real-time re-planning of the full trajectory, augmented by reflexes and feedback control. We demonstrate the successful application of our approach in guiding the LittleDog quadruped robot over a variety of types of rough terrain. Other novel aspects of our past research efforts include a variety of pioneering inverse optimal control techniques as well as a system for planning using arbitrary pre-recorded robot behavior.

Keywords

TerrainRobustness (evolution)PlannerComputer scienceVariety (cybernetics)RobotHierarchyPlan (archaeology)Motion planningControl engineering

Related papers

Browse all LOCOMOTION papers