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Observer-based adaptive neural network control design for projective synchronization of uncertain chaotic systems

Ahsene Boubakir, Salim Labiod

2022Journal of Vibration and Control19 citationsDOI

Abstract

This paper addresses the design of an observer-based adaptive neural network chaos synchronization scheme for a general class of uncertain chaotic systems. The controller consists of an adaptive neural network control law and an extended state observer. The parameterization of the designed extended observer and the sufficient stability conditions are derived in the light of the singular perturbation theory. The extended observer is incorporated into the controller to reconstruct the synchronization error vector as well as to estimate the error between an ideal control law and the actual control. These estimated error signals are utilized in the adaptation mechanism of the neural network weight vector. In the presented chaos synchronization method, the knowledge of the models of the master–slave systems is not required and the controller only needs the projective synchronization error for its implementation. Numerical simulations are performed along with a comparative study to demonstrate the efficiency and effectiveness of the suggested chaos synchronization approach.

Topics & Concepts

Control theory (sociology)Synchronization of chaosObserver (physics)Computer scienceSynchronization (alternating current)Artificial neural networkState observerAdaptive controlController (irrigation)ChaoticMathematicsNonlinear systemControl (management)Artificial intelligenceBiologyQuantum mechanicsChannel (broadcasting)AgronomyPhysicsComputer networkChaos control and synchronizationNeural Networks Stability and SynchronizationNonlinear Dynamics and Pattern Formation
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