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Topological mapping formation in a neural network with variations of device characteristics

机译:具有器件特性变化的神经网络中的拓扑映射形成

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The neural network of a human brain can well perform higher-order-information processing which could not be achieved by Neuman-type computers. In order to perform the processing, it is necessary to fabricate artificial neural systems which can form the topological mapping through learning. A new learning algorithm and a new network model have been proposed for fabrication by means of CMOS analog circuits with variations of device characteristics. The functions of those circuits were confirmed by means of SPICE simulations and the functions of PDM (pulse density modulator) were confirmed experimentally. The learning simulations of the network consisting of the circuits have also been carried out. The results show that the topological mapping is almost formed, even when variations of device characteristics exist in the neural network. The results also reveal that calculating the weighted sum of each neuron's potential and potentials of its surrounding neurons as the output of each neuron and adding proper number of redundant neurons to the output layer are effective mechanisms for the network with variations of device characteristics.
机译:人大脑的神经网络可以很好地执行高阶信息处理,这是Numan型计算机无法实现的。为了执行处理,有必要制造通过学习形成拓扑映射的人工神经系统。已经通过CMOS模拟电路提出了一种新的学习算法和新的网络模型,其具有包括器件特性的变化。通过香料模拟确认这些电路的功能,实验证实了PDM(脉冲密度调制器)的功能。也已经进行了由电路组成的网络的学习模拟。结果表明,即使在神经网络中存在装置特性的变化,拓扑映射几乎形成。结果还揭示了计算每个神经元的潜在和其周围神经元的电位的加权和作为每个神经元的输出并向输出层添加适当数量的冗余神经元是网络的有效机制,具有装置特性的变化。

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