Online Observer-Based Inverse Reinforcement Learning
Ryan Self, Kevin Coleman, He Bai, Rushikesh Kamalapurkar
Abstract
In this letter, a novel approach to the output-feedback inverse reinforcement learning (IRL) problem is developed by casting the IRL problem, for linear systems with quadratic cost functions, as a state estimation problem. Two observer-based techniques for IRL are developed, including a novel observer method that re-uses previous state estimates via history stacks. Theoretical guarantees for convergence and robustness are established under appropriate excitation conditions. Simulations demonstrate the performance of the developed observers and filters under noisy and noise-free measurements.
Topics & Concepts
Robustness (evolution)Observer (physics)Control theory (sociology)Computer scienceConvergence (economics)Reinforcement learningInverse problemQuadratic equationInverseMathematical optimizationArtificial intelligenceMathematicsQuantum mechanicsMathematical analysisBiochemistryControl (management)EconomicsPhysicsGeometryChemistryGeneEconomic growthAdaptive Dynamic Programming ControlAdaptive Control of Nonlinear SystemsIterative Learning Control Systems