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Deep Learning of Koopman Representation for Control

Yiqiang Han, Wenjian Hao, Umesh Vaidya

202093 citationsDOI

Abstract

We develop a data-driven, model-free approach for the optimal control of the dynamical system. The proposed approach relies on the Deep Neural Network (DNN) based learning of Koopman operator for the purpose of control. In particular, DNN is employed for the data-driven identification of basis function used in the linear lifting of nonlinear control system dynamics. The controller synthesis is purely data-driven and does not rely on a priori domain knowledge. The OpenAI Gym environment, employed for Reinforcement Learning-based control design, is used for data generation and learning of Koopman operator in control setting. The method is applied to two classic dynamical systems on OpenAI Gym environment to demonstrate the capability.

Topics & Concepts

A priori and a posterioriComputer scienceReinforcement learningRepresentation (politics)Controller (irrigation)Artificial intelligenceArtificial neural networkNonlinear system identificationOperator (biology)System identificationDomain (mathematical analysis)Dynamical systems theoryControl engineeringControl (management)Control theory (sociology)Data modelingMathematicsEngineeringBiochemistryAgronomyLawQuantum mechanicsDatabasePhilosophyPhysicsMathematical analysisPolitical scienceChemistryRepressorPoliticsBiologyGeneEpistemologyTranscription factorModel Reduction and Neural NetworksFluid Dynamics and Turbulent FlowsNuclear Engineering Thermal-Hydraulics
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