A Large Scale Digital Simulation of Spiking Neural Networks (SNN) on Fast SystemC Simulator

H. Soleimani, A. Ahmadi, Mohammad Bavandpour, A. Amirsoleimani, Mark Zwolinski
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引用次数: 1

Abstract

Since biological neural systems contain big number of neurons working in parallel, simulation of such dynamic system is a real challenge. The main objective of this paper is to speed up the simulation performance of SystemC designs at the RTL abstraction level using the high degree of parallelism afforded by graphics processors (GPUs) for large scale SNN with proposed structure in pattern classification field. Simulation results show 100 times speedup for the proposed SNN structure on the GPU compared with the CPU version. In addition, CPU memory has problems when trained for more than 120K cells but GPU can simulate up to 40 million neurons.
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基于Fast SystemC模拟器的脉冲神经网络(SNN)大规模数字仿真
由于生物神经系统包含大量并行工作的神经元,因此对这种动态系统的仿真是一个真正的挑战。本文的主要目的是利用图形处理器(gpu)提供的高度并行性,在RTL抽象层加速SystemC设计的仿真性能,用于模式分类领域中具有所提出结构的大规模SNN。仿真结果表明,与CPU版本相比,所提出的SNN结构在GPU上的速度提高了100倍。此外,CPU内存在训练超过12万个细胞时存在问题,但GPU可以模拟多达4000万个神经元。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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