Optimal-Horizon Model-Predictive Control with Differential Dynamic Programming

Kyle Stachowicz, Evangelos Theodorou1

  • 1Georgia Institute of Technology

Details

10:25 - 10:30 | Tue 24 May | Room 123 | TuA17.06

Session: Optimization and Optimal Control I

Abstract

We present an algorithm, based on the Differential Dynamic Programming framework, to handle trajectory optimization problems in which the horizon is determined online rather than fixed a priori. This algorithm exhibits exact one-step convergence for linear, quadratic, time-invariant problems and is fast enough for real-time nonlinear model-predictive control. We show derivations for the nonlinear algorithm in the discrete-time case, and apply this algorithm to a variety of nonlinear problems. Finally, we show the efficacy of the optimal-horizon model-predictive control scheme compared to a standard MPC controller, on an obstacle-avoidance problem with planar robots.