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Global Exponential Stability of Impulsive Delayed Neural Networks on Time Scales Based on Convex Combination Method

Peng Wan, Zhigang Zeng

2021IEEE Transactions on Systems Man and Cybernetics Systems21 citationsDOI

Abstract

The published stability criteria for impulsive neural networks are scale-free on time line, which is only appropriate for discrete or continuous ones. The issue of global exponential stability for impulsive delayed neural networks on time scales is analyzed by employing the convex combination method in this article. Several algebraic and linear matrix inequality conditions are proved by constructing impulse-dependent Lyapunov functionals and using timescale inequality techniques. Unlike the published works, impulsive control strategies can be designed by utilizing our theoretical results to stabilize delayed neural networks on time scales if they are unstable before introducing impulses. Sufficient criteria for global exponential stability in this article are derived based on the timescale theory, and they are applicable to discrete-time impulsive neural networks, their continuous-time analogues, and neural networks whose states are discrete at one time and continuous at another time. Four numerical examples are offered to demonstrate the effectiveness and superiority of our new theoretical results in the end.

Topics & Concepts

Exponential stabilityArtificial neural networkDiscrete time and continuous timeLinear matrix inequalityImpulse (physics)Control theory (sociology)Convex combinationMathematicsRegular polygonLyapunov functionApplied mathematicsAlgebraic numberComputer scienceStability (learning theory)Cellular neural networkConvex optimizationMathematical optimizationControl (management)Mathematical analysisArtificial intelligenceNonlinear systemPhysicsGeometryMachine learningStatisticsQuantum mechanicsNeural Networks Stability and Synchronizationstochastic dynamics and bifurcationChaos control and synchronization
Global Exponential Stability of Impulsive Delayed Neural Networks on Time Scales Based on Convex Combination Method | Litcius