Litcius/Paper detail

Optimal Control of Nonlinear Systems Using Experience Inference Human-Behavior Learning

Adolfo Perrusquía, Weisi Guo

2023IEEE/CAA Journal of Automatica Sinica16 citationsDOIOpen Access PDF

Abstract

Safety critical control is often trained in a simulated environment to mitigate risk. Subsequent migration of the biased controller requires further adjustments. In this paper, an experience inference human-behavior learning is proposed to solve the migration problem of optimal controllers applied to real-world nonlinear systems. The approach is inspired in the complementary properties that exhibits the hippocampus, the neocortex, and the striatum learning systems located in the brain. The hippocampus defines a physics informed reference model of the real-world nonlinear system for experience inference and the neocortex is the adaptive dynamic programming (ADP) or reinforcement learning (RL) algorithm that ensures optimal performance of the reference model. This optimal performance is inferred to the real-world nonlinear system by means of an adaptive neocor-tex/striatum control policy that forces the nonlinear system to behave as the reference model. Stability and convergence of the proposed approach is analyzed using Lyapunov stability theory. Simulation studies are carried out to verify the approach.

Topics & Concepts

Nonlinear systemComputer scienceReinforcement learningControl theory (sociology)Convergence (economics)Controller (irrigation)Stability (learning theory)InferenceArtificial intelligenceMachine learningControl (management)BiologyEconomicsAgronomyEconomic growthQuantum mechanicsPhysicsAdaptive Dynamic Programming ControlReinforcement Learning in RoboticsOptimism, Hope, and Well-being