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A Novel Memristive Chaotic Neuron Circuit and Its Application in Chaotic Neural Networks for Associative Memory

机译:一种新型椎间盘混沌神经电路及其在联想记忆混沌神经网络中的应用

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摘要

In this article, we propose a novel chaotic neuron circuit with memristive neural synapses, construct an architecture of memristive chaotic neural network (MCNN) and implement associative memory application of bipolar images. The proposed neuron circuit mainly consists of synapse module and neuron module with chaotic dynamics characteristics. The synapse module is composed of memristors which represent synaptic weights. The neuron module employs voltage feedback operational amplifiers to accomplish integral operation and output function. MCNN utilizes a memristor crossbar array to perform matrix operations and can process the information in parallel. In addition, the proposed circuit of MCNN can accomplish continuous recursive operations and meet different applications due to the programmability of the memristor. The ex-situ method is utilized to train the memristor crossbar array. Furthermore, the associative memory applications of bipolar images are carried out based on the constructed circuits of MCNN with three and nine neurons. The simulation results in PSPICE software testify the functions of the MCNN circuit.
机译:在本文中,我们提出了一种具有忆内神经突触的新型混沌神经元电路,构成忆阻神经网络(MCNN)的架构并实现双极图像的关联存储器应用。所提出的神经元电路主要由Synapse模块和具有混沌动力学特性的神经元模块组成。 Synapse模块由代忆函数组成,该映射表示突触权重。神经元模块采用电压反馈运算放大器来完成积分操作和输出功能。 MCNN利用Memristor CrossBar阵列执行矩阵操作,并可以并行处理信息。另外,由于忆阻器的可编程性,所提出的MCNN电路可以实现连续递归操作并满足不同的应用。使用ex-situ方法训练Memristor CrossBar阵列。此外,基于具有三个和九个神经元的MCNN的构造电路来执行双极图像的关联存储器应用。 PSPICE软件的仿真结果证明了MCNN电路的功能。

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