Author:
Wei Jinsong,Wang Zhibin,Li Ye,Lu Jikai,Jiang Hao,An Junjie,Li Yiqi,Gao Lili,Zhang Xumeng,Shi Tuo,Liu Qi
Abstract
Realization of spiking neural network (SNN) hardware with high energy efficiency and high integration may provide a promising solution to data processing challenges in future internet of things (IoT) and artificial intelligence (AI). Recently, design of multi-core reconfigurable SNN chip based on resistive random-access memory (RRAM) is drawing great attention, owing to the unique properties of RRAM, e.g., high integration density, low power consumption, and processing-in-memory (PIM). Therefore, RRAM-based SNN chip may have further improvements in integration and energy efficiency. The design of such a chip will face the following problems: significant delay in pulse transmission due to complex logic control and inter-core communication; high risk of digital, analog, and RRAM hybrid design; and non-ideal characteristics of analog circuit and RRAM. In order to effectively bridge the gap between device, circuit, algorithm, and architecture, this paper proposes a simulation model—FangTianSim, which covers analog neuron circuit, RRAM model and multi-core architecture and its accuracy is at the clock level. This model can be used to verify the functionalities, delay, and power consumption of SNN chip. This information cannot only be used to verify the rationality of the architecture but also guide the chip design. In order to map different network topologies on the chip, SNN representation format, interpreter, and instruction generator are designed. Finally, the function of FangTianSim is verified on liquid state machine (LSM), fully connected neural network (FCNN), and convolutional neural network (CNN).
Funder
National Key Research and Development Program of China
National Natural Science Foundation of China
Reference30 articles.
1. Lapicque’s introduction of the integrate-and-fire model neuron (1907).;Abbott;Brain Res. Bull.,1999
2. Truenorth: design and tool flow of a 65 mw 1 million neuron programmable neurosynaptic chip.;Akopyan;IEEE Trans. Comput. Aided design Integr. Circuits Syst.,2015
3. Benchmarking keyword spotting efficiency on neuromorphic hardware;Blouw;Proceedings of the 7th Annual Neuro-Inspired Computational Elements Workshop,2019
4. Neurogrid: emulating a million neurons in the cortex;Boahen;Proceedings of the International Conference of the IEEE Engineering in Medicine and Biology Society,2006
5. Noxim: an open, extensible and cycle-accurate network on chip simulator;Catania;Proceedings of the 2015 IEEE 26th International Conference on Application-Specific Systems, Architectures and Processors (ASAP),2015
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