Litcius/Paper detail

Event-Based Extended Dissipative State Estimation for Memristor-Based Markovian Neural Networks With Hybrid Time-Varying Delays

Ting Wang, Baoyong Zhang, Deming Yuan, Yijun Zhang

2021IEEE Transactions on Circuits and Systems I Regular Papers30 citationsDOI

Abstract

This paper aims to investigate the event-based extended dissipative state estimation problem for memristor-based Markovian neural networks in the presence of hybrid time-varying delays and sensor nonlinearity. To tackle the effect caused by information latching, sudden interference and environmental variation, the Markov jump model is employed to describe the memristor-based neural network. Besides, an event-triggered scheme is introduced to economize the cost of communication. Then some novel conditions are presented, which guarantee that the augmented error system is stochastically stable with an extended dissipative performance. The existence criterion of the desired mode-dependent estimator is also obtained in terms of linear matrix inequalities. Finally, simulation results are provided to show the effectiveness of the proposed method.

Topics & Concepts

Dissipative systemMemristorArtificial neural networkComputer scienceControl theory (sociology)EstimatorNonlinear systemJumpEvent (particle physics)Markov chainMathematicsArtificial intelligenceEngineeringPhysicsElectronic engineeringMachine learningControl (management)StatisticsQuantum mechanicsNeural Networks Stability and SynchronizationAdvanced Memory and Neural ComputingDistributed Control Multi-Agent Systems