Yang Shuangming, Wang Jiang, Zhang Nan, Deng Bin, Pang Yanwei, Azghadi Mostafa Rahimi
IEEE Trans Neural Netw Learn Syst. 2022 Sep;33(9):4398-4412. doi: 10.1109/TNNLS.2021.3057070. Epub 2022 Aug 31.
The cerebellum plays a vital role in motor learning and control with supervised learning capability, while neuromorphic engineering devises diverse approaches to high-performance computation inspired by biological neural systems. This article presents a large-scale cerebellar network model for supervised learning, as well as a cerebellum-inspired neuromorphic architecture to map the cerebellar anatomical structure into the large-scale model. Our multinucleus model and its underpinning architecture contain approximately 3.5 million neurons, upscaling state-of-the-art neuromorphic designs by over 34 times. Besides, the proposed model and architecture incorporate 3411k granule cells, introducing a 284 times increase compared to a previous study including only 12k cells. This large scaling induces more biologically plausible cerebellar divergence/convergence ratios, which results in better mimicking biology. In order to verify the functionality of our proposed model and demonstrate its strong biomimicry, a reconfigurable neuromorphic system is used, on which our developed architecture is realized to replicate cerebellar dynamics during the optokinetic response. In addition, our neuromorphic architecture is used to analyze the dynamical synchronization within the Purkinje cells, revealing the effects of firing rates of mossy fibers on the resonance dynamics of Purkinje cells. Our experiments show that real-time operation can be realized, with a system throughput of up to 4.70 times larger than previous works with high synaptic event rate. These results suggest that the proposed work provides both a theoretical basis and a neuromorphic engineering perspective for brain-inspired computing and the further exploration of cerebellar learning.
小脑在具有监督学习能力的运动学习和控制中起着至关重要的作用,而神经形态工程则设计了受生物神经系统启发的各种高性能计算方法。本文提出了一种用于监督学习的大规模小脑网络模型,以及一种受小脑启发的神经形态架构,将小脑的解剖结构映射到大规模模型中。我们的多核模型及其基础架构包含约350万个神经元,比最先进的神经形态设计扩大了34倍以上。此外,所提出的模型和架构纳入了341.1万个颗粒细胞,与之前仅包含1.2万个细胞的研究相比增加了284倍。这种大规模扩展诱导了更符合生物学原理的小脑发散/收敛比率,从而更好地模仿生物学。为了验证我们提出的模型的功能并展示其强大的生物模拟能力,使用了一个可重构的神经形态系统,在该系统上实现了我们开发的架构,以复制视动反应期间的小脑动力学。此外,我们的神经形态架构用于分析浦肯野细胞内的动态同步,揭示苔藓纤维的放电率对浦肯野细胞共振动力学的影响。我们的实验表明,可以实现实时操作,系统吞吐量比之前具有高突触事件率的工作高出4.70倍。这些结果表明,所提出工作为受脑启发的计算和小脑学习的进一步探索提供了理论基础和神经形态工程视角。