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Solution of the linear quadratic regulator problem of black box linear systems using reinforcement learning

Adolfo Perrusquía

2022Information Sciences22 citationsDOIOpen Access PDF

Abstract

In this paper, a Q-learning algorithm is proposed to solve the linear quadratic regulator problem of black box linear systems. The algorithm only has access to input and output measurements. A Luenberger observer parametrization is constructed using the control input and a new output obtained from a factorization of the utility function. An integral reinforcement learning approach is used to develop the Q-learning approximator structure. A gradient descent update rule is used to estimate on-line the parameters of the Q-function. Stability and convergence of the Q-learning algorithm under the Luenberger observer parametrization is assessed using Lyapunov stability theory. Simulation studies are carried out to verify the proposed approach.

Topics & Concepts

Parametrization (atmospheric modeling)Reinforcement learningLyapunov functionLinear-quadratic regulatorConvergence (economics)MathematicsControl theory (sociology)Observer (physics)Black boxLinear systemMathematical optimizationStability (learning theory)Function (biology)Gradient descentComputer scienceOptimal controlNonlinear systemArtificial intelligenceControl (management)Artificial neural networkMachine learningMathematical analysisEconomic growthPhysicsRadiative transferEconomicsEvolutionary biologyQuantum mechanicsBiologyAdaptive Dynamic Programming ControlAdaptive Control of Nonlinear SystemsDistributed Control Multi-Agent Systems
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