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Nonlinear Networks With Mem-Elements: Complex Dynamics via Flux–Charge Analysis Method

机译:具有MEMORENCE的非线性网络:通过通量充电分析方法复杂动态

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Nonlinear dynamic memory elements, as memristors, memcapacitors, and meminductors (also known as mem-elements), are of paramount importance in conceiving the neural networks, mem-computing machines, and reservoir computing systems with advanced computational primitives. This paper aims to develop a systematic methodology for analyzing complex dynamics in nonlinear networks with such emerging nanoscale mem-elements. The technique extends the flux-charge analysis method (FCAM) for nonlinear circuits with memristors to a broader class of nonlinear networks N containing also memcapacitors and meminductors. After deriving the constitutive relation and equivalent circuit in the flux-charge domain of each two-terminal element in N, this paper focuses on relevant subclasses of N for which a state equation description can be obtained. On this basis, salient features of the dynamics are highlighted and studied analytically: 1) the presence of invariant manifolds in the autonomous networks; 2) the coexistence of infinitely many different reduced-order dynamics on manifolds; and 3) the presence of bifurcations due to changing the initial conditions for a fixed set of parameters (also known as bifurcations without parameters). Analytic formulas are also given to design nonautonomous networks subject to pulses that drive trajectories through different manifolds and nonlinear reduced-order dynamics. The results, in this paper, provide a method for a comprehensive understanding of complex dynamical features and computational capabilities in nonlinear networks with mem-elements, which is fundamental for a holistic approach in neuromorphic systems with such emerging nanoscale devices.
机译:非线性动态存储器元件,作为存储器,麦克风,和MEMININUCER(也称为MEMORENCE),在构思具有高级计算基元的神经网络,MEM计算机器和库计算系统时具有至关重要的重要性。本文旨在开发一种系统方法,用于分析具有这种新出现的纳米级Mem-engion的非线性网络中的复杂动态。该技术将具有忆阻器的非线性电路(FCAM)扩展到具有忆阻器的更广泛的非线性网络N的非线性电路,所述非线性网络也包含忆阻器和忆阻器。在N中的每个双端子元件的磁通电荷域中导出构成关系和等效电路之后,本文重点介断了可以获得状态等式描述的N的相关子类。在此基础上,突出显示和研究了动态的显着特征:1)自主网络中的不变歧管的存在; 2)在歧管上的无限许多不同的减少动态的共存; 3)由于改变固定参数集的初始条件而导致的分叉存在(也称为没有参数的分叉)。还提供分析公式,用于设计通过不同歧管和非线性减少的动态驱动轨迹的脉冲的非自治网络。在本文中,结果提供了一种用于全面了解非线性网络中的复杂动态特征和计算能力的方法,该方法是具有这种具有这种新出现的纳米级器件的神经形态系统中的整体方法的基础。

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