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Anti-periodic dynamics on high-order inertial Hopfield neural networks involving time-varying delays

Qian Cao, Xiaojin Guo

2020AIMS Mathematics24 citationsDOIOpen Access PDF

Abstract

Taking into accounting time-varying delays and anti-periodic environments, this paper deals with the global convergence dynamics on a class of anti-periodic high-order inertial Hopfield neural networks. First of all, with the help of Lyapunov function method, we prove that the global solutions are exponentially attractive to each other. Secondly, by using analytical techniques in uniform convergence functions sequence, the existence of the anti-periodic solution and its global exponential stability are established. Finally, two examples are arranged to illustrate the effectiveness and feasibility of the obtained results.

Topics & Concepts

Hopfield networkConvergence (economics)Inertial frame of referenceArtificial neural networkLyapunov functionSequence (biology)Control theory (sociology)Applied mathematicsComputer scienceStability (learning theory)Dynamics (music)Function (biology)MathematicsMathematical optimizationPhysicsArtificial intelligenceNonlinear systemBiologyControl (management)GeneticsMachine learningQuantum mechanicsEconomicsEvolutionary biologyEconomic growthAcousticsNeural Networks Stability and SynchronizationNeural Networks and ApplicationsChaos control and synchronization