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Norm‐based zeroing neural dynamics for time‐variant non‐linear equations

Linyan Dai, Hanyi Xu, Yinyan Zhang, Bolin Liao

2024CAAI Transactions on Intelligence Technology26 citationsDOIOpen Access PDF

Abstract

Abstract Zeroing neural dynamic (ZND) model is widely deployed for time‐variant non‐linear equations (TVNE). Various element‐wise non‐linear activation functions and integration operations are investigated to enhance the convergence performance and robustness in most proposed ZND models for solving TVNE, leading to a huge cost of hardware implementation and model complexity. To overcome these problems, the authors develop a new norm‐based ZND (NBZND) model with strong robustness for solving TVNE, not applying element‐wise non‐linear activated functions but introducing a two‐norm operation to achieve finite‐time convergence. Moreover, the authors develop a discrete‐time NBZND model for the potential deployment of the model on digital computers. Rigorous theoretical analysis for the NBZND is provided. Simulation results substantiate the advantages of the NBZND model for solving TVNE.

Topics & Concepts

Robustness (evolution)Computer scienceFinite element methodNorm (philosophy)Artificial neural networkSoftware deploymentApplied mathematicsConvergence (economics)Mathematical optimizationControl theory (sociology)MathematicsEngineeringArtificial intelligenceBiochemistryGeneStructural engineeringOperating systemControl (management)Political scienceLawEconomic growthChemistryEconomicsNeural Networks and ApplicationsModel Reduction and Neural NetworksRobotic Mechanisms and Dynamics
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