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首页> 外文期刊>IEICE Transactions on fundamentals of electronics, communications & computer sciences >Efficient Hybrid CMOS-Nano Circuit Design for Spiking Neurons and Memristive Synapses with STDP
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Efficient Hybrid CMOS-Nano Circuit Design for Spiking Neurons and Memristive Synapses with STDP

机译:用于STDP的神经元和忆阻突触的高效混合CMOS纳米电路设计

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This paper introduces a new hybrid CMOS-Nano circuit for efficient implementation of spiking neurons and spike-timing dependent plasticity (STDP) rule. In our spiking neural architecture, the STDP rule has been implemented by using neuron circuits which generate two-part spikes and send them in both forward and backward directions along their axons and dendrites, simultaneously. The two-part spikes form STDP windows and also they carry temporal information relating to neuronal activities. However, to reduce power consumption, we take the circuitry of two-part spike generation out of the neuron circuit and use the regular shaped pulses, after the training has been performed. Furthermore, the performance of the rule as spike-timing correlation learning and character recognition in a two layer winner-take-all (WTA) network of integrate-and-fire neurons and memristive synapses is demonstrated as a case example.
机译:本文介绍了一种新型混合CMOS-Nano电路,可有效实现尖峰神经元和依赖尖峰时序的可塑性(STDP)规则。在我们尖峰的神经体系结构中,STDP规则是通过使用神经元电路来实现的,该电路生成两部分的尖峰,并沿着它们的轴突和树突同时向前后方向发送它们。由两部分组成的尖峰形成STDP窗口,它们还携带与神经元活动有关的时间信息。但是,为减少功耗,在执行训练后,我们将两部分尖峰产生的电路从神经元电路中取出,并使用规则形状的脉冲。此外,作为一个例子,证明了该规则在整合和解雇神经元和忆阻突触的两层赢家通吃(WTA)网络中作为尖峰时序相关学习和字符识别的性能。

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