Litcius/Paper detail

A Dynamic Gain Fixed-Time Robust ZNN Model for Time-Variant Equality Constrained Quaternion Least Squares Problem With Applications to Multiagent Systems

Penglin Cao, Lin Xiao, Yongjun He, Jichun Li

2023IEEE Transactions on Neural Networks and Learning Systems18 citationsDOI

Abstract

A dynamic gain fixed-time (FXT) robust zeroing neural network (DFTRZNN) model is proposed to effectively solve time-variant equality constrained quaternion least squares problem (TV-EQLS). The proposed approach surmounts the shortcomings of conventional numerical algorithms which fail to address time-variant problems. The DFTRZNN model is constructed with a novel dynamic gain parameter and a novel activation function (NAF), which differs from previous zeroing neural network (ZNN) models. Moreover, the comprehensive theoretical derivation of the FXT stability and robustness of the DFTRZNN model is presented in detail. Simulation results further confirm the availability and superiority of the DFTRZNN model for solving TV-EQLS. Finally, the consensus protocols of multiagent systems are presented by utilizing the design scheme of the DFTRZNN model, which further demonstrates its practical application value.

Topics & Concepts

QuaternionRobustness (evolution)Computer scienceArtificial neural networkControl theory (sociology)Mathematical optimizationMathematicsArtificial intelligenceBiochemistryGeometryGeneControl (management)ChemistryNeural Networks and ApplicationsImage and Video StabilizationAdvanced Algorithms and Applications
A Dynamic Gain Fixed-Time Robust ZNN Model for Time-Variant Equality Constrained Quaternion Least Squares Problem With Applications to Multiagent Systems | Litcius