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Robust control under worst‐case uncertainty for unknown nonlinear systems using modified reinforcement learning

Adolfo Perrusquía, Wen Yu

2020International Journal of Robust and Nonlinear Control41 citationsDOI

Abstract

Summary Reinforcement learning (RL) is an effective method for the design of robust controllers of unknown nonlinear systems. Normal RLs for robust control, such as actor‐critic (AC) algorithms, depend on the estimation accuracy. Uncertainty in the worst case requires a large state‐action space, this causes overestimation and computational problems. In this article, the RL method is modified with the k ‐nearest neighbor and the double Q‐learning algorithm. The modified RL does not need the neural estimator as AC and can stabilize the unknown nonlinear system under the worst‐case uncertainty. The convergence property of the proposed RL method is analyzed. The simulations and the experimental results show that our modified RLs are much more robust compared with the classic controllers, such as the proportional‐integral‐derivative, the sliding mode, and the optimal linear quadratic regulator controllers.

Topics & Concepts

Control theory (sociology)Reinforcement learningNonlinear systemRobust controlEstimatorConvergence (economics)Computer scienceLinear-quadratic regulatorMathematicsMathematical optimizationState spaceQuadratic equationOptimal controlControl (management)Artificial intelligencePhysicsEconomic growthQuantum mechanicsStatisticsEconomicsGeometryAdaptive Dynamic Programming ControlReinforcement Learning in RoboticsAdaptive Control of Nonlinear Systems