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A new model of Hopfield network with fractional-order neurons for parameter estimation

S. Fazzino, Riccardo Caponetto, Luca Patané

2021Nonlinear Dynamics27 citationsDOIOpen Access PDF

Abstract

In this work, we study an application of fractional-order Hopfield neural networks for optimization problem solving. The proposed network was simulated using a semi-analytical method based on Adomian decomposition,, and it was applied to the on-line estimation of time-varying parameters of nonlinear dynamical systems. Through simulations, it was demonstrated how fractional-order neurons influence the convergence of the Hopfield network, improving the performance of the parameter identification process if compared with integer-order implementations. Two different approaches for computing fractional derivatives were considered and compared as a function of the fractional-order of the derivatives: the Caputo and the Caputo-Fabrizio definitions. Simulation results related to different benchmarks commonly adopted in the literature are reported to demonstrate the suitability of the proposed architecture in the field of on-line parameter estimation.

Topics & Concepts

Hopfield networkOrder (exchange)Artificial neural networkApplied mathematicsEstimationMathematicsComputer scienceControl theory (sociology)Artificial intelligenceEconomicsControl (management)ManagementFinanceNeural Networks and ApplicationsChaos control and synchronizationNeural Networks Stability and Synchronization
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