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Real-Time Spiking Neural Network: An Adaptive Cerebellar Model

机译:实时尖峰神经网络:自适应小脑模型

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A spiking neural network modeling the cerebellum is presented. The model, consisting of more than 2000 conductance-based neurons and more than 50 000 synapses, runs in real-time on a dual-processor computer. The model is implemented on an event-driven spiking neural network simulator with table-based conductance and voltage computations. The cerebellar model interacts every millisecond with a time-driven simulation of a simple environment in which adaptation experiments are setup. Learning is achieved in real-time using spike time dependent plasticity rules, which drive synaptic weight changes depending on the neurons activity and the timing in the spiking representation of an error signal. The cerebellar model is tested on learning to continuously predict a target position moving along periodical trajectories. This setup reproduces experiments with primates learning the smooth pursuit of visual targets on a screen. The model learns effectively and concurrently different target trajectories. This is true even though the spiking rate of the error representation is very low, reproducing physiological conditions. Hence, we present a complete physiologically relevant spiking cerebellar model that runs and learns in real-time in realistic conditions reproducing psychophysical experiments. This work was funded in part by the EC SpikeFORCE project (IST-2001-35271, www.spikeforce.org).
机译:提出了一种尖峰神经网络,建模小脑。该模型由2000多个基于电导基的神经元和超过50 000个突触组成,在双处理器计算机上实时运行。该模型在事件驱动的尖峰神经网络模拟器上实现,具有基于表的电导和电压计算。大脑模型每毫秒交互,并且具有时间驱动的仿真,其简单的环境,其中适应实验是设置的。使用Spike时间依赖性可塑性规则实时地实现学习,这使得突触重量根据神经元活动和误差信号的尖峰表示中的时序而变化。在学习中测试小脑模型以连续地预测沿期周期轨迹移动的目标位置。此设置再现了灵长类动物的实验,了解屏幕上的视觉目标的顺利追求。该模型有效和同时学习不同的目标轨迹。即使误差表示的尖峰率非常低,又再现生理条件,这也是如此。因此,我们提出了一种完整的生理相关的尖刺小脑模型,在再现心理物理实验的现实条件下实时运行和学习。这项工作部分由EC SpikeForce项目资助(IST-2001-35271,www.spikeforce.org)。

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