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首页> 外文期刊>IEEE transactions on biomedical circuits and systems >Spike Counts Based Low Complexity SNN Architecture With Binary Synapse
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Spike Counts Based Low Complexity SNN Architecture With Binary Synapse

机译:基于Spike基于基于低复杂性SNN架构与二进制突触

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摘要

In this paper, we present an energy and area efficient spike neural network (SNN) processor based on novel spike counts based methods. For the low cost SNN design, we propose hardware-friendly complexity reduction techniques for both of learning and inferencing modes of operations. First, for the unsupervised learning process, we propose a spike counts based learning method. The novel learning approach utilizes pre- and post-synaptic spike counts to reduce the bit-width of synaptic weights as well as the number of weight updates. For the energy efficient inferencing operations, we propose an accumulation based computing scheme, where the number of input spikes for each input axon is accumulated without instant membrane updates until the pre-defined number of spikes are reached. In addition, the computation skip schemes identify meaningless computations and skip them to improve energy efficiency. Based on the proposed low complexity design techniques, we design and implement the SNN processor using 65 nm CMOS process. According to the implementation results, the SNN processor achieves 87.4 of recognition accuracy in MNIST dataset using only 1-bit 230 k synaptic weights with 400 excitatory neurons. The energy consumptions are 0.26 pJ/SOP and 0.31 J/inference in inferencing mode, and 1.42pJ/SOP and 2.63 J/learning in learning mode of operations.
机译:在本文中,我们介绍了一种基于新型尖峰计数的方法的能量和面积高效的尖峰神经网络(SNN)处理器。对于低成本的SNN设计,我们为学习和推理运营方式提出了硬件友好的复杂性减少技术。首先,对于无监督的学习过程,我们提出了一种基于尖峰计数的学习方法。新颖的学习方法利用突触后峰值和后突触后的峰值来降低突触权重的比特宽度以及重量更新的数量。对于能量有效的推理操作,我们提出了一种基于累积的计算方案,其中每个输入轴突的输入尖峰的数量在没有即时膜更新的情况下累积,直到达到预定数量的尖峰。此外,计算跳过方案识别无意义的计算并跳过它们以提高能效。基于所提出的低复杂性设计技术,我们使用65 nm CMOS工艺设计和实现SNN处理器。根据实施结果,SNN处理器使用仅使用400次兴奋神经元的1位230k突触重量在Mnist DataSet中实现87.4。能耗为0.26pj / sop和0.31 j /推断推断模式,1.42pj / sop和2.63 j /学习操作模式中的学习。

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