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首页> 外文期刊>International Journal of Parallel, Emergent and Distributed Systems >The mise en scene of memristive networks: effective memory, dynamics and learning
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The mise en scene of memristive networks: effective memory, dynamics and learning

机译:忆阻网络的场景:有效的记忆,动态和学习

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摘要

We discuss the properties of the dynamics of purely memristive circuits using a recently derived consistent equation for the internal memory variables of the involved memristors. In particular, we showthatthe number of independent memory states in a memristive circuit is constrained by the circuit conservation laws, and that the dynamics preserves these symmetry by means of a projection on the physical subspace. Moreover, we discuss other symmetries of the dynamics under various transformations of the involved variables, and study the weak and strong non-linear regimes of the dynamics. In the strong regime, we derive a conservation law for the internal memory variable. We also provide a condition on the reality of the eigenvalues of Lyapunov matrices. The Lyapunov matrix describes the dynamics close to a fixed point, for which show that the eigenvalues can be imaginary only for mixtures of passive and active components. Our last result concerns the weak non-linear regime, showing that the internal memory dynamics can be interpreted as a constrained gradient descent, and provide the functional being minimized. This latter result provides another direct connection between memristors and learning.
机译:我们使用最近推导的有关忆阻器内部存储器变量的一致方程,讨论了纯忆阻电路的动力学特性。特别是,我们证明了忆阻电路中独立记忆状态的数量受电路守恒律的约束,并且动力学通过在物理子空间上的投影来保持这些对称性。此外,我们讨论了在所涉及变量的各种变换下动力学的其他对称性,并研究了动力学的弱和强非线性机制。在强体制下,我们导出了内部记忆变量的守恒律。我们还为Lyapunov矩阵的特征值的存在提供了条件。李雅普诺夫矩阵描述的动力学接近固定点,这表明仅对于无源和有源分量的混合,本征值才是虚构的。我们的最后一个结果涉及弱的非线性机制,表明内部记忆动力学可以解释为约束梯度下降,并且提供的功能被最小化。后一个结果提供了忆阻器和学习之间的另一个直接联系。

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