IPAB Workshop-24/02/2022

 

 

Title: Convex strategies for trajectory optimisation: application to the Polytope Traversal Problem

 

Abstract: Non-linear Trajectory Optimisation (TO) methods require good initial guesses to converge to a locally optimal solution.

Assuming that the total duration of the trajectory is given (ie time is a constant rather than a variable)  is well-known to reduce significantly the complexity of the problem: a feasible guess can often be obtained by allocating an arbitrary large amount of time for the trajectory to complete.  However for unstable dynamical systems such as humanoid robots, this ``quasi-static'' assumption does not always hold: sometimes only a dynamic motion can efficiently solve the problem. We propose a conservative formulation of the TO problem that simultaneously computes a feasible path and its time allocation. The problem is solved as an efficient convex optimisation problem guaranteed to converge to a locally optimal solution. The interest of the approach is illustrated with the computation of feasible trajectories that traverse sequentially a sequence of polytopes that represent the linear constraints that apply on the problem.

I will detail the simplifying assumptions that led to this efficient formulation and discuss how the approach advances the state of the art.

Feb 24 2022 -

IPAB Workshop-24/02/2022

Steve Tonneau

Online: Zoom