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Real-World-Time Simulation of Memory Consolidation in a Large-Scale Cerebellar Model

机译:大规模小脑模型中记忆整合的实时仿真

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摘要

We report development of a large-scale spiking network model of the cerebellum composed of more than 1 million neurons. The model is implemented on graphics processing units (GPUs), which are dedicated hardware for parallel computing. Using 4 GPUs simultaneously, we achieve realtime simulation, in which computer simulation of cerebellar activity for 1 s completes within 1 s in the real-world time, with temporal resolution of 1 ms. This allows us to carry out a very long-term computer simulation of cerebellar activity in a practical time with millisecond temporal resolution. Using the model, we carry out computer simulation of long-term gain adaptation of optokinetic response (OKR) eye movements for 5 days aimed to study the neural mechanisms of posttraining memory consolidation. The simulation results are consistent with animal experiments and our theory of posttraining memory consolidation. These results suggest that realtime computing provides a useful means to study a very slow neural process such as memory consolidation in the brain.
机译:我们报告了小脑的大型尖峰网络模型的发展,该模型由超过一百万个神经元组成。该模型在图形处理单元(GPU)上实现,图形处理单元是用于并行计算的专用硬件。同时使用4个GPU,我们实现了实时仿真,其中在真实世界的1 s内完成了1 s的小脑活动的计算机仿真,时间分辨率为1 ms。这使我们能够在实际时间内以毫秒时间分辨率对小脑活动进行非常长期的计算机模拟。使用该模型,我们对视动反应(OKR)眼动的长期增益适应进行了5天的计算机模拟,旨在研究训练后记忆巩固的神经机制。仿真结果与动物实验和我们的训练后记忆巩固理论相一致。这些结果表明,实时计算为研究非常缓慢的神经过程(例如大脑中的记忆巩固)提供了有用的手段。

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