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Comprehensive Analysis of a New Varying Parameter Zeroing Neural Network for Time Varying Matrix Inversion

Lin Xiao, Yongsheng Zhang, Jianhua Dai, Qiuyue Zuo, Shoujin Wang

2020IEEE Transactions on Industrial Informatics37 citationsDOI

Abstract

The matrix inversion problem plays a very important role in mathematics as well as practical engineering applications. In this article, unlike the traditional fixed-parameter zeroing neural network (ZNN) model, on the basis of the original varying-parameter ZNN (VPZNN) model, an improved VPZNN (IVPZNN) model is established and researched to solve time-varying matrix inversion (TVMI). Specifically, the value of the proposed novel time-varying parameter in the IVPZNN model can grow rapidly over time, which can better meet the needs of ZNN in hardware implementation. In addition, theoretical analyses of the novel time varying parameter and the proposed IVPZNN model are given to guarantee the global superexponential convergence and finite-time convergence. Numerical calculation results verify the superior property of the established IVPZNN model for addressing the TVMI problem, as compared with the existing fixed-parameter ZNN and VPZNN models.

Topics & Concepts

Inversion (geology)Artificial neural networkComputer scienceConvergence (economics)Property (philosophy)Model parameterMatrix (chemical analysis)Applied mathematicsRecurrent neural networkMathematical optimizationControl theory (sociology)MathematicsAlgorithmArtificial intelligenceControl (management)EconomicsComposite materialEpistemologyEconomic growthPaleontologyBiologyPhilosophyStructural basinMaterials scienceRobotic Mechanisms and DynamicsPiezoelectric Actuators and ControlSensorless Control of Electric Motors
Comprehensive Analysis of a New Varying Parameter Zeroing Neural Network for Time Varying Matrix Inversion | Litcius