Regeneration of Gamma Oscillations in Large-scale Neural Network with Complicated Structure Based on CUDA

Xiaochun Gu, Xia Peng, Fang Han, Zhijie Wang
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Abstract

Gamma oscillations have been not only found in many biology experiments but also regenerated in many small neural network models. However, whether gamma oscillations can be regenerated in large-scale neural network with complicated structure is still an open problem. In order to deal with this problem, this paper constructs a large-scale neural network model with multi-layer columns. Based on the existing CUDA parallel algorithm and a synapse optimization algorithm, we design a novel parallel algorithm for simulation of the large-scale complicated neural network with multi-layer column structure. The simulation results verify that gamma oscillations can be regenerated in large-scale neural network with complicated structure.
基于CUDA的复杂结构大型神经网络γ振荡再生
伽马振荡不仅在许多生物学实验中被发现,而且在许多小型神经网络模型中也被再生。然而,在结构复杂的大型神经网络中,伽马振荡能否再生仍然是一个有待解决的问题。为了解决这一问题,本文构建了一个具有多层列的大规模神经网络模型。在现有CUDA并行算法和突触优化算法的基础上,设计了一种新的并行算法,用于模拟具有多层柱结构的大型复杂神经网络。仿真结果验证了在结构复杂的大型神经网络中可以实现振荡的再生。
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