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Conversion of Artificial Neural Network to Spiking Neural Network for Hardware Implementation

机译:将人工神经网络转换为尖峰神经网络以实现硬件

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Spiking neural networks (SNNs) are potentially an efficient way to reduce the computation load as well as the power consumption on edge devices because of the sparsely activated neurons and event-driven behavior. In this paper, a continuous-valued artificial neural network (ANN) with fully connections is equivalently converted into spiking operations and the parameters are quantized to low resolution. With the proposed method, data bandwidth can be reduced and the algorithm is proved to be more useful and hardware-amenable on FPGAs. From the simulation results, the ANN with 8- and 4-bit weights received accuracy drop of 0.3% and 0.6%, respectively. The conversion of the quantized ANN to SNN received acceptable error drop within 0.15%.
机译:由于稀疏激活的神经元和事件驱动的行为,尖峰神经网络(SNN)可能是减少计算负载以及边缘设备功耗的有效方法。在本文中,具有完全连接的连续值人工神经网络(ANN)被等效地转换为尖峰操作,并且将参数量化为低分辨率。利用所提出的方法,可以减少数据带宽,并且该算法被证明在FPGA上更有用并且更适合硬件。从仿真结果来看,具有8位和4位权重的ANN的准确度分别下降了0.3%和0.6%。量化的ANN到SNN的转换在0.15%以内的可接受误差下降。

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