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Safe model‐based reinforcement learning for nonlinear optimal control with state and input constraints

Yeonsoo Kim, Jong Woo Kim

2022AIChE Journal25 citationsDOI

Abstract

Abstract Safety is a critical factor in reinforcement learning (RL) in chemical processes. In our previous work, we had proposed a new stability‐guaranteed RL for unconstrained nonlinear control‐affine systems. In the approximate policy iteration algorithm, a Lyapunov neural network (LNN) was updated while being restricted to the control Lyapunov function, and a policy was updated using a variation of Sontag's formula. In this study, we additionally consider state and input constraints by introducing a barrier function, and we extend the applicable type to general nonlinear systems. We augment the constraints into the objective function and use the LNN added with a Lyapunov barrier function to approximate the augmented value function. Sontag's formula input with this approximate function brings the states into its lower level set, thereby guaranteeing the constraints satisfaction and stability. We prove the practical asymptotic stability and forward invariance. The effectiveness is validated using four tank system simulations.

Topics & Concepts

Reinforcement learningLyapunov functionNonlinear systemControl theory (sociology)Control-Lyapunov functionLyapunov redesignFunction (biology)Artificial neural networkAffine transformationMathematical optimizationStability (learning theory)Computer scienceState (computer science)MathematicsApplied mathematicsControl (management)AlgorithmArtificial intelligenceMachine learningPure mathematicsBiologyPhysicsQuantum mechanicsEvolutionary biologyAdaptive Dynamic Programming ControlReinforcement Learning in RoboticsAdvanced Control Systems Optimization
Safe model‐based reinforcement learning for nonlinear optimal control with state and input constraints | Litcius