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Learning How to Walk: Warm-starting Optimal Control Solver with Memory of Motion

31 January 2020
Teguh Santoso Lembono
Carlos Mastalli
Pierre Fernbach
Nicolas Mansard
Sylvain Calinon
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Abstract

In this paper, we propose a framework to build a memory of motion for warm-starting an optimal control solver for the locomotion task of a humanoid robot. We use HPP Loco3D, a versatile locomotion planner, to generate offline a set of dynamically consistent whole-body trajectory to be stored as the memory of motion. The learning problem is formulated as a regression problem to predict a single-step motion given the desired contact locations, which is used as a building block for producing multi-step motions. The predicted motion is then used as a warm-start for the fast optimal control solver Crocoddyl. We have shown that the approach manages to reduce the required number of iterations to reach the convergence from ∼\sim∼9.5 to only ∼\sim∼3.0 iterations for the single-step motion and from ∼\sim∼6.2 to ∼\sim∼4.5 iterations for the multi-step motion, while maintaining the solution's quality.

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