Yang Shuangming, Wang Jiang, Deng Bin, Liu Chen, Li Huiyan, Fietkiewicz Chris, Loparo Kenneth A
IEEE Trans Cybern. 2019 Jul;49(7):2490-2503. doi: 10.1109/TCYB.2018.2823730. Epub 2018 Apr 19.
The investigation of the human intelligence, cognitive systems and functional complexity of human brain is significantly facilitated by high-performance computational platforms. In this paper, we present a real-time digital neuromorphic system for the simulation of large-scale conductance-based spiking neural networks (LaCSNN), which has the advantages of both high biological realism and large network scale. Using this system, a detailed large-scale cortico-basal ganglia-thalamocortical loop is simulated using a scalable 3-D network-on-chip (NoC) topology with six Altera Stratix III field-programmable gate arrays simulate 1 million neurons. Novel router architecture is presented to deal with the communication of multiple data flows in the multinuclei neural network, which has not been solved in previous NoC studies. At the single neuron level, cost-efficient conductance-based neuron models are proposed, resulting in the average utilization of 95% less memory resources and 100% less DSP resources for multiplier-less realization, which is the foundation of the large-scale realization. An analysis of the modified models is conducted, including investigation of bifurcation behaviors and ionic dynamics, demonstrating the required range of dynamics with a more reduced resource cost. The proposed LaCSNN system is shown to outperform the alternative state-of-the-art approaches previously used to implement the large-scale spiking neural network, and enables a broad range of potential applications due to its real-time computational power.
高性能计算平台极大地推动了对人类智力、认知系统以及人类大脑功能复杂性的研究。在本文中,我们提出了一种用于模拟大规模基于电导的脉冲神经网络(LaCSNN)的实时数字神经形态系统,该系统兼具高度的生物真实性和大规模网络规模的优势。利用该系统,我们使用具有六个Altera Stratix III现场可编程门阵列的可扩展三维片上网络(NoC)拓扑结构模拟了一个详细的大规模皮质-基底神经节-丘脑皮质环路,可模拟100万个神经元。提出了新颖的路由器架构来处理多核神经网络中多个数据流的通信,这在以往的NoC研究中尚未得到解决。在单个神经元层面,提出了基于电导的具有成本效益的神经元模型,在无乘法器实现的情况下,平均可减少95%的内存资源利用和100%的DSP资源利用,这是大规模实现的基础。对改进后的模型进行了分析,包括对分岔行为和离子动力学的研究,证明了在资源成本更低的情况下所需的动力学范围。所提出的LaCSNN系统表现优于先前用于实现大规模脉冲神经网络的其他先进方法,并且由于其实时计算能力而具有广泛的潜在应用。