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Generalized reconfigurable memristive dynamical system (MDS) for neuromorphic applications

机译:适用于神经形态应用的广义可重构忆阻动力学系统(MDS)

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摘要

This study firstly presents (i) a novel general cellular mapping scheme for two dimensional neuromorphic dynamical systems such as bio-inspired neuron models, and (ii) an efficient mixed analog-digital circuit, which can be conveniently implemented on a hybrid memristor-crossbar/CMOS platform, for hardware implementation of the scheme. This approach employs 4n memristors and no switch for implementing an n-cell system in comparison with 2n2 memristors and 2n switches of a Cellular Memristive Dynamical System (CMDS). Moreover, this approach allows for dynamical variables with both analog and one-hot digital values opening a wide range of choices for interconnections and networking schemes. Dynamical response analyses show that this circuit exhibits various responses based on the underlying bifurcation scenarios which determine the main characteristics of the neuromorphic dynamical systems. Due to high programmability of the circuit, it can be applied to a variety of learning systems, real-time applications, and analytically indescribable dynamical systems. We simulate the FitzHugh-Nagumo (FHN), Adaptive Exponential (AdEx) integrate and fire, and Izhikevich neuron models on our platform, and investigate the dynamical behaviors of these circuits as case studies. Moreover, error analysis shows that our approach is suitably accurate. We also develop a simple hardware prototype for experimental demonstration of our approach.
机译:这项研究首先提出(i)用于二维神经形态动力学系统(如生物启发的神经元模型)的新型通用细胞映射方案,以及(ii)可以在混合忆阻器-交叉开关上方便实现的高效混合模拟-数字电路/ CMOS平台,用于该方案的硬件实现。与蜂窝式忆阻动态系统(CMDS)的2n2忆阻器和2n开关相比,此方法采用4n忆阻器且没有用于实现n单元系统的开关。此外,这种方法允许动态变量具有模拟值和一键式数字值,从而为互连和联网方案提供了广泛的选择。动力响应分析表明,该电路根据潜在的分叉场景表现出各种响应,这些情况决定了神经形态动力系统的主要特征。由于电路的高度可编程性,它可以应用于各种学习系统,实时应用程序以及分析上难以描述的动态系统。我们在平台上模拟FitzHugh-Nagumo(FHN),自适应指数(AdEx)集成和触发以及Izhikevich神经元模型,并以案例研究的形式研究这些电路的动力学行为。此外,错误分析表明我们的方法是正确的。我们还开发了一个简单的硬件原型,用于我们方法的实验演示。

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