Litcius/Paper detail

Multistability and Stabilization of Fractional-Order Competitive Neural Networks With Unbounded Time-Varying Delays

Fanghai Zhang, Zhigang Zeng

2021IEEE Transactions on Neural Networks and Learning Systems54 citationsDOI

Abstract

This article investigates the multistability and stabilization of fractional-order competitive neural networks (FOCNNs) with unbounded time-varying delays. By utilizing the monotone operator, several sufficient conditions of the coexistence of equilibrium points (EPs) are obtained for FOCNNs with concave-convex activation functions. And then, the multiple μ -stability of delayed FOCNNs is derived by the analytical method. Meanwhile, several comparisons with existing work are shown, which implies that the derived results cover the inverse-power stability and Mittag-Leffler stability as special cases. Moreover, the criteria on the stabilization of FOCNNs with uncertainty are established by designing a controller. Compared with the results of fractional-order neural networks, the obtained results in this article enrich and improve the previous results. Finally, three numerical examples are provided to show the effectiveness of the presented results.

Topics & Concepts

MultistabilityMonotone polygonStability (learning theory)Cover (algebra)Control theory (sociology)MathematicsInverseArtificial neural networkController (irrigation)Regular polygonPower (physics)Order (exchange)Equilibrium pointComputer scienceApplied mathematicsNonlinear systemMathematical analysisControl (management)Artificial intelligenceDifferential equationMechanical engineeringBiologyFinanceQuantum mechanicsEngineeringAgronomyGeometryPhysicsEconomicsMachine learningNeural Networks Stability and SynchronizationAdvanced Memory and Neural ComputingDistributed Control Multi-Agent Systems
Multistability and Stabilization of Fractional-Order Competitive Neural Networks With Unbounded Time-Varying Delays | Litcius