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Proportional-Integral Observer-Based State Estimation for Markov Memristive Neural Networks With Sensor Saturations

Jun Cheng, Lidan Liang, Huaicheng Yan, Jinde Cao, Shengda Tang, Kaibo Shi

2022IEEE Transactions on Neural Networks and Learning Systems83 citationsDOI

Abstract

This article investigates the resilient proportional-integral observer (PIO) problem for Markov switching memristive neural networks (MSMNNs) with randomly occurring sensor saturation within a finite-time interval. The Markov switching of memristive neural networks is regulated by a higher level deterministic switching signal, whose transition probabilities are piecewise time-varying and can be depicted by the average dwell-time strategy. Meanwhile, a Bernoulli stochastic process associated with an uncertain packet arriving rate is adopted to describe the randomly occurring sensor saturation. The aim is to design a resilient PIO such that the augmented dynamic has the property of stochastic finite-time boundedness while meeting the desired performance index. By applying the Lyapunov method and the average dwell-time scheme, sufficient criteria are established for MSMNNs, and a unified design method is presented for the existence of the PIO. Lastly, the attained theoretical results are validated via a numerical simulation.

Topics & Concepts

Artificial neural networkObserver (physics)Markov chainComputer scienceState (computer science)EstimationControl theory (sociology)Markov processArtificial intelligenceMathematicsEngineeringAlgorithmMachine learningStatisticsPhysicsControl (management)Systems engineeringQuantum mechanicsAdvanced Memory and Neural ComputingNeural Networks Stability and SynchronizationNeural Networks and Applications
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