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Multistability of delayed neural networks with hard-limiter saturation nonlinearities

机译:具有硬极限饱和非线性的时滞神经网络的多重稳定性

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The paper considers a class of nonsmooth neural networks where hard-limiter saturation nonlinearities are used to constrain solutions of a linear system with concentrated and distributed delays to evolve within a closed hypercube of R-n. Such networks are termed delayed linear systems in saturated mode (D-LSSMs) and they are a generalization to the delayed case of a relevant class of neural networks previously introduced in the literature. The paper gives a rigorous foundation to the D-LSSM model and then it provides a fundamental result on convergence of solutions toward equilibrium points in the case where there are nonsymmetric cooperative (nonnegative) interconnections between neurons. The result ensures convergence for any finite value of the maximum delay and is physically robust with respect to perturbations of the interconnections. More importantly, it encompasses situations where there exist multiple stable equilibria, thus guaranteeing multistability of cooperative D-LSSMs. From an application viewpoint the delays in combination with the property of multistability make D-LSSMs potentially useful in the fields of associative memories, motion detection and processing of temporal patterns. (c) 2018 Elsevier B.V. All rights reserved.
机译:本文考虑了一类非光滑神经网络,其中使用硬限制器饱和非线性来约束具有集中和分布延迟的线性系统的解,以在R-n的封闭超立方体内演化。这样的网络被称为饱和模式下的延迟线性系统(D-LSSM),它们是先前文献中引入的相关类神经网络的延迟情况的概括。本文为D-LSSM模型提供了严格的基础,然后在神经元之间存在非对称协作(负)互连的情况下,向平衡点解收敛提供了基本结果。结果确保了最大延迟的任何有限值的收敛性,并且在互连的扰动方面具有物理鲁棒性。更重要的是,它涵盖了存在多个稳定平衡的情况,从而保证了协作D-LSSM的多重稳定性。从应用的角度来看,延迟与多稳定性的结合使D-LSSM在关联存储器,运动检测和时间模式处理领域中可能有用。 (c)2018 Elsevier B.V.保留所有权利。

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