Litcius/Paper detail

Reinforcement Learning for Adaptive Optimal Stationary Control of Linear Stochastic Systems

Bo Pang, Zhong‐Ping Jiang

2022IEEE Transactions on Automatic Control49 citationsDOI

Abstract

This article studies the adaptive optimal stationary control of continuous-time linear stochastic systems with both additive and multiplicative noises, using reinforcement learning techniques. Based on policy iteration, a novel off-policy reinforcement learning algorithm, named optimistic least-squares-based policy iteration, is proposed, which is able to find iteratively near-optimal policies of the adaptive optimal stationary control problem directly from input/state data without explicitly identifying any system matrices, starting from an initial admissible control policy. The solutions given by the proposed optimistic least-squares-based policy iteration are proved to converge to a small neighborhood of the optimal solution with probability one, under mild conditions. The application of the proposed algorithm to a triple inverted pendulum example validates its feasibility and effectiveness.

Topics & Concepts

Reinforcement learningOptimal controlMultiplicative functionStochastic controlAdaptive controlMathematical optimizationInverted pendulumMarkov decision processComputer scienceControl theory (sociology)State (computer science)MathematicsMultiplicative noiseControl (management)Nonlinear systemAlgorithmMarkov processArtificial intelligenceMathematical analysisDigital signal processingStatisticsQuantum mechanicsSignal transfer functionComputer hardwarePhysicsAnalog signalAdaptive Dynamic Programming ControlReinforcement Learning in RoboticsMechanical Circulatory Support Devices