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A generalised conductance-based silicon neuron for large-scale spiking neural networks

机译:基于大规模电导的基于电导的硅神经元

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We present an analogue Very Large Scale Integration (aVLSI) implementation that uses first-order log-domain low-pass filters to implement a generalised conductance-based silicon neuron. It consists of a single synapse, which is capable of linearly summing both the excitatory and inhibitory post-synaptic currents (EPSC and IPSC) generated by the spikes arriving from different sources, a soma with a positive feedback circuit, a refractory period and spike-frequency adaptation circuit, and a high-speed synchronous Address Event Representation (AER) handshaking circuit. To increase programmability, the inputs to the neuron are digital spikes, the durations of which are modulated according to their weights. The proposed neuron is a compact design (∼170 µm2 in the IBM 130nm process). Our aVLSI generalised conductance-based neuron is therefore practical for large-scale reconfigurable spiking neural networks running in real time. Circuit simulations show that this neuron can emulate different spiking behaviours observed in biological neurons.
机译:我们提出了一种模拟超大规模集成(aVLSI)实现,该实现使用一阶对数域低通滤波器来实现基于广义电导的硅神经元。它由单个突触组成,该突触能够线性汇总由来自不同来源的尖峰产生的兴奋性和抑制性突触后电流(EPSC和IPSC),具有正反馈电路的躯体,不应期和尖峰。频率自适应电路和高速同步地址事件表示(AER)握手电路。为了增加可编程性,神经元的输入是数字尖峰,其持续时间根据其权重进行调制。提出的神经元是一种紧凑的设计(在IBM 130nm工艺中约为170 µm2)。因此,我们的基于aVLSI广义电导的神经元对于实时运行的大规模可重构尖峰神经网络非常实用。电路仿真表明,该神经元可以模拟在生物神经元中观察到的不同的尖峰行为。

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