神经形态计算系统的可扩展互连体系结构

Ayut Ghosh, Aneek Jash, Ramapati Patra, Hemanta Kumar Mondal
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引用次数: 1

摘要

巨大的计算量和巨大的内存需求对当今系统的计算效率提出了挑战。因此,神经形态系统已经成为研究模拟大脑能量效率和计算速度的热门课题。传统架构中一直存在某些主要的瓶颈。在本文中,我们开发了一种基于片上网络的脉冲神经网络(nosnn),它具有高度并行的神经形态计算系统架构。在可伸缩性、延迟和速度方面,它还受益于使用NoC。我们提出的SNN模型中的神经元通过NoC架构进行通信。我们提出的模型由64个神经元组成,在28nm技术节点上合成,功耗为29.22 mW,芯片面积为1.61 mm2。NoC模型还在延迟、吞吐量和能量方面进行了探索。
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NoCSNN: A Scalable Interconnect Architecture for Neuromorphic Computing Systems
The immense computation and huge memory requirement are challenging the computation efficiency of today’s systems. Consequently, neuromorphic systems have become a topical subject in research to mimic the brain’s power efficiency and computational speed. There have always been certain major bottlenecks in the conventional architectures. In this paper, we develop a Network-on-Chip based Spiking Neural Network (NoCSNN), having a highly parallel architecture for the neuromorphic computing systems. It also benefits from the use of NoC in terms of scalability, latency and speed. The neurons in our proposed SNN model communicates through NoC architecture. Our proposed model consisting of 64 neurons is synthesized in 28nm technology node achieving a power dissipation of 29.22 mW and a die area of 1.61 mm2. The NoC model is also explored in terms of latency, throughput and energy.
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