Litcius/Paper detail

Nonseparation Method-Based Finite/Fixed-Time Synchronization of Fully Complex-Valued Discontinuous Neural Networks

Feng Liang, Juan Yu, Cheng Hu, Chengdong Yang, Haijun Jiang

2020IEEE Transactions on Cybernetics118 citationsDOI

Abstract

This article mainly focuses on the problem of synchronization in finite and fixed time for fully complex-variable delayed neural networks involving discontinuous activations and time-varying delays without dividing the original complex-variable neural networks into two subsystems in the real domain. To avoid the separation method, a complex-valued sign function is proposed and its properties are established. By means of the introduced sign function, two discontinuous control strategies are developed under the quadratic norm and a new norm based on absolute values of real and imaginary parts. By applying nonsmooth analysis and some novel inequality techniques in the complex field, several synchronization criteria and the estimates of the settling time are derived. In particular, under the new norm framework, a unified control strategy is designed and it is revealed that a parameter value in the controller completely decides the networks are synchronized whether in finite time or in fixed time. Finally, some numerical results for an example are provided to support the established theoretical results.

Topics & Concepts

Sign functionSettling timeArtificial neural networkNorm (philosophy)Synchronization (alternating current)Computer scienceComplex networkControl theory (sociology)Sign (mathematics)MathematicsQuadratic equationMathematical optimizationTopology (electrical circuits)Control (management)Artificial intelligenceMathematical analysisControl engineeringCombinatoricsLawPolitical scienceEngineeringWorld Wide WebStep responseGeometryNeural Networks Stability and SynchronizationAdvanced Memory and Neural Computingstochastic dynamics and bifurcation