AI Article Synopsis

  • - The article investigates stability issues in memristor-based neural network (MNN) systems that experience time-varying delays, introducing new mathematical approaches to address these challenges.
  • - A novel matrix-separation Legendre inequality is developed to create a tighter bound on integral terms, while several delay-dependent matrices are employed to resolve complications related to time delays.
  • - The authors propose a new Lyapunov-Krasovskii functional that integrates advanced mathematical concepts, leading to improved stability conditions that show less conservatism, backed by numerical examples and simulations.

Article Abstract

This article studies the issue of stability in memristor-based neural network (MNN) systems with time-varying delays. First, a novel matrix-separation Legendre inequality is proposed to achieve a tight hierarchical bound on augmented-type integral terms. To derive implementable inequality conditions, several delay-dependent matrices are introduced to eliminate the reciprocal terms associated with time-varying delay. Furthermore, a new Lyapunov-Krasovskii (L-K) functional is proposed by incorporating augmented-type double integrals and delay-product terms. A series of free-weighting matrices are introduced into the L-K functional, leveraging the zero-sum equations and the S-procedure pertaining to both the delay and its derivative. Based on the proposed matrix-separation Legendre inequality and L-K functional, the derived stability conditions exhibit reduced conservatism, as validated by three numerical cases and simulation results.

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http://dx.doi.org/10.1109/TNNLS.2024.3477432DOI Listing

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Article Synopsis
  • - The article investigates stability issues in memristor-based neural network (MNN) systems that experience time-varying delays, introducing new mathematical approaches to address these challenges.
  • - A novel matrix-separation Legendre inequality is developed to create a tighter bound on integral terms, while several delay-dependent matrices are employed to resolve complications related to time delays.
  • - The authors propose a new Lyapunov-Krasovskii functional that integrates advanced mathematical concepts, leading to improved stability conditions that show less conservatism, backed by numerical examples and simulations.
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