Litcius/Paper detail

Demonstration-Efficient Guided Policy Search via Imitation of Robust Tube MPC

Andrea Tagliabue, Dong Ki Kim, Michael Everett, Jonathan P. How

20222022 International Conference on Robotics and Automation (ICRA)21 citationsDOI

Abstract

We propose a demonstration-efficient strategy to compress a computationally expensive Model Predictive Controller (MPC) into a more computationally efficient representation based on a deep neural network and Imitation Learning (IL). By generating a Robust Tube variant (RTMPC) of the MPC and leveraging properties from the tube, we introduce a data augmentation method that enables high demonstration-efficiency, capable of compensating the distribution shifts typically encountered in IL. Our approach opens the possibility of zero-shot transfer from a single demonstration collected in a nominal domain, such as a simulation or a robot in a lab/controlled environment, to a domain with bounded model errors/perturbations. Numerical and experimental evaluations performed on a trajectory tracking MPC for a multirotor show that our method outperforms strategies commonly employed in IL, such as DAgger and Domain Randomization, in terms of demonstration-efficiency and robustness to perturbations unseen during training.

Topics & Concepts

Computer scienceRobustness (evolution)Model predictive controlBounded functionControl theory (sociology)Domain (mathematical analysis)Artificial intelligenceTrajectoryPID controllerAlgorithmControl engineeringMathematicsEngineeringControl (management)ChemistryTemperature controlGeneMathematical analysisPhysicsBiochemistryAstronomyAdvanced Control Systems OptimizationFuel Cells and Related MaterialsReinforcement Learning in Robotics