Litcius/Paper detail

On-Line Learning for Planning and Control of Underactuated Robots With Uncertain Dynamics

Giulio Turrisi, Marco Capotondi, Claudio Gaz, Valerio Modugno, Giuseppe Oriolo, Alessandro De Luca

2021IEEE Robotics and Automation Letters18 citationsDOIOpen Access PDF

Abstract

We present an iterative approach for planning and controlling motions of underactuated robots with uncertain dynamics. At its core, there is a learning process which estimates the perturbations induced by the model uncertainty on the active and passive degrees of freedom. The generic iteration of the algorithm makes use of the learned data in both the planning phase, which is based on optimization, and the control phase, where partial feedback linearization of the active dofs is performed on the model updated on-line. The performance of the proposed approach is shown by comparative simulations and experiments on a Pendubot executing various types of swing-up maneuvers. Very few iterations are typically needed to generate dynamically feasible trajectories and the tracking control that guarantees their accurate execution, even in the presence of large model uncertainties.

Topics & Concepts

UnderactuationIterative learning controlControl theory (sociology)Computer scienceRobotLinearizationProcess (computing)Degrees of freedom (physics and chemistry)Control (management)Tracking (education)Control engineeringMathematical optimizationArtificial intelligenceEngineeringMathematicsNonlinear systemOperating systemPedagogyQuantum mechanicsPhysicsPsychologyAdaptive Control of Nonlinear SystemsHydraulic and Pneumatic SystemsControl Systems and Identification