Litcius/Paper detail

Zeroing Neural Network With Fuzzy Parameter for Computing Pseudoinverse of Arbitrary Matrix

Vasilios N. Katsikis, Predrag S. Stanimirović, Spyridon D. Mourtas, Lin Xiao, Darjan Karabašević, Dragiša Stanujkić

2021IEEE Transactions on Fuzzy Systems80 citationsDOI

Abstract

A correlation between fuzzy logic systems (FLS) and zeroing neural networks (ZNN) design is investigated. It is shown that the gain parameter included in ZNN design can be dynamically adjusted over time by means of an appropriate value derived as the output of a properly defined FLS, which includes appropriately defined membership functions and fuzzy logic rules. Dynamical systems which are applicable to time-varying rank-deficient matrices are proposed. Convergence properties are investigated and illustrative simulation experiments are performed. Presented simulation experiments confirm the superiority of the FLS proposed in this article with respect to previously proposed FLS for dynamic adjustment of gain parameters. Furthermore, the superiority of the FLS-based ZNN model over the corresponding ZNN models based on the classical approach in defining the varying-gain parameter is demonstrated.

Topics & Concepts

Moore–Penrose pseudoinverseConvergence (economics)Artificial neural networkFuzzy logicRank (graph theory)Matrix (chemical analysis)Computer scienceMathematicsControl theory (sociology)Artificial intelligenceInverseCombinatoricsComposite materialControl (management)Economic growthMaterials scienceEconomicsGeometryNeural Networks and ApplicationsFuzzy Logic and Control SystemsControl Systems and Identification