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A Novel Chaotic Neural Network Using Memristive Synapse with Applications in Associative Memory

机译:使用忆阻突触的新型混沌神经网络及其在联想记忆中的应用

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Chaotic Neural Network, also denoted by the acronym CNN, has rich dynamical behaviors that can be harnessed in promising engineering applications. However, due to its complex synapse learning rules and network structure, it is difficult to update its synaptic weights quickly and implement its large scale physical circuit. This paper addresses an implementation scheme of a novel CNN with memristive neural synapses that may provide a feasible solution for further development of CNN. Memristor, widely known as the fourth fundamental circuit element, was theoretically predicted by Chua in 1971 and has been developed in 2008 by the researchers in Hewlett-Packard Laboratory. Memristor based hybrid nanoscale CMOS technology is expected to revolutionize the digital and neuromorphic computation. The proposed memristive CNN has four significant features: (1) nanoscale memristors can simplify the synaptic circuit greatly and enable the synaptic weights update easily; (2) it can separate stored patterns from superimposed input; (3) it can deal with one-to-many associative memory; (4) it can deal with many-to-many associative memory. Simulation results are provided to illustrate the effectiveness of the proposed scheme.
机译:混沌神经网络,也用CNN的缩写表示,具有丰富的动力学行为,可以在有前途的工程应用中加以利用。然而,由于其复杂的突触学习规则和网络结构,难以快速更新其突触权重并实现其大规模物理电路。本文提出了一种具有忆阻性神经突触的新型CNN的实现方案,该方案可能为CNN的进一步发展提供可行的解决方案。忆阻器,被广泛称为第四基本电路元件,在1971年由Chua在理论上进行了预测,并由惠普实验室的研究人员在2008年开发。基于忆阻器的混合纳米级CMOS技术有望彻底改变数字和神经形态计算。提出的忆阻性CNN具有四个显着特征:(1)纳米级忆阻器可以大大简化突触电路,并使突触权重易于更新; (2)可以将存储的模式与叠加的输入分开; (3)可以处理一对多的联想记忆; (4)它可以处理多对多的联想记忆。仿真结果表明了该方案的有效性。

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