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A New Method of the Pattern Storage and Recognition in Oscillatory Neural Networks Based on Resistive Switches

机译:基于电阻开关的振荡神经网络模式存储和识别的新方法

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摘要

Development of neuromorphic systems based on new nanoelectronics materials and devices is of immediate interest for solving the problems of cognitive technology and cybernetics. Computational modeling of two- and three-oscillator schemes with thermally coupled VO 2 -switches is used to demonstrate a novel method of pattern storage and recognition in an impulse oscillator neural network (ONN), based on the high-order synchronization effect. The method allows storage of many patterns, and their number depends on the number of synchronous states N s . The modeling demonstrates attainment of N s of several orders both for a three-oscillator scheme N s ~ 650 and for a two-oscillator scheme N s ~ 260. A number of regularities are obtained, in particular, an optimal strength of oscillator coupling is revealed when N s has a maximum. Algorithms of vector storage, network training, and test vector recognition are suggested, where the parameter of synchronization effectiveness is used as a degree of match. It is shown that, to reduce the ambiguity of recognition, the number coordinated in each vector should be at least one unit less than the number of oscillators. The demonstrated results are of a general character, and they may be applied in ONNs with various mechanisms and oscillator coupling topology.
机译:基于新型纳米电子材料和设备的神经形态系统的开发对于解决认知技术和控制论的问题具有紧迫的意义。具有热耦合VO 2开关的两振子和三振子方案的计算模型被用来证明基于高阶同步效应的脉冲振荡器神经网络(ONN)中的模式存储和识别的新方法。该方法允许存储许多模式,并且它们的数量取决于同步状态N s的数量。该模型表明,对于三振子方案N s〜650和两振子方案N s〜260,都达到了几个数量级的N s。获得了许多规律性,特别是振荡器耦合的最佳强度为在N s达到最大值时显示提出了向量存储,网络训练和测试向量识别的算法,其中将同步有效性的参数用作匹配度。结果表明,为了减少识别的歧义,每个向量中协调的数目应该比振荡器的数目至少少一个单位。证明的结果具有一般性,可以应用于具有各种机制和振荡器耦合拓扑的ONN。

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