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Developments in exploring set invariance for Hopfield neural networks

机译:Hopfield神经网络探索集不变性的进展

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The paper considers the nonlinear dynamics of a large class of continuous-time Hopfield neural networks (abbreviated as HNNs). Our research proposes sufficient conditions for testing the existence of contractive invariant sets with general form, defined by p-norms, $ 1leq pleqinfty$, which are weighted by rectangular, full column rank, non-negative matrices. These sufficient conditions have algebraic form and use a test matrix built from the HNN coefficients. From the point of view of the mathematical constructions, this test matrix defines the dynamics of a comparison system (with linear form), whose trajectories ensure componentwise upper bounds for the HNN trajectories. These bounds play an intermediary role in proving that any HNN trajectory remains inside a contractive set, once initialized inside that set. Two theorems are stated for covering both the local and the global cases of invariance. The theoretical results are illustrated by numerical examples run in Matlab, which also offer a visual support for the invariance property.
机译:本文考虑了一大类连续时间Hopfield神经网络(简称为HNN)的非线性动力学。我们的研究提出了充分条件来测试具有一般形式的压缩不变集的存在,该集合由p范数$ 1 \ leq p \ leq \ infty $定义,并由矩形,全列秩,非负矩阵加权。这些充分的条件具有代数形式,并使用根据HNN系数构建的测试矩阵。从数学构造的角度来看,此测试矩阵定义了比较系统(具有线性形式)的动力学,该系统的轨迹确保了HNN轨迹的各个分量的上限。这些边界在证明任何HNN轨迹保留在可收缩集中之后,在该集中被初始化时起着中介作用。陈述了两个定理,它们涵盖了局部不变性和整体不变性。通过在Matlab中运行的数值示例来说明理论结果,这也为不变性提供了直观的支持。

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