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首页> 外文期刊>Journal of computer sciences >Efficient Implementation of Stochastic Computing Based Deep Neural Network on Low Cost Hardware with Saturation Arithmetic
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Efficient Implementation of Stochastic Computing Based Deep Neural Network on Low Cost Hardware with Saturation Arithmetic

机译:用饱和算术高效实现低成本硬件的随机计算深神经网络

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摘要

This study presents an efficient and rapid implementation of Stochastic Computing (SC) based Deep Neural Network (DNN) on a low-cost hardware platform. The proposed technique uses bipolar signal encoding in stochastic computing which relatively gives low hardware footprint compared to binary computing. Thereinafter, stochastic max function is presented and subsequently used to approximate the hyperbolic tangent activation function in SC. In addition, saturation arithmetic is proposed to reduce down scaling parameters that can further affect precision in computation. In this study, we demonstrate our SC-based DNN feasibility through a hardware accelerator prototype with the AXI Stream interface on a PYNQ Z2 board which is equipped with a XILINX ZYNQ XC7Z020-1CLG400C. The validity of this study is demonstrated through a MNIST handwritten digit recognition task. The experimental result shows our SC-based DNN model can be easily deployed on the embedded devices. The SC-based accelerator with AXI Stream interface performs at 1.877 GOP/s processing throughput, achieves higher accuracy with minimum area and energy consumption, consuming only 0.61 mm2 area and 1.89W power.
机译:本研究介绍了低成本硬件平台上基于随机计算(SC)的深度神经网络(DNN)的高效和快速实现。所提出的技术使用随机计算中的双极信号编码,与二进制计算相比,相对给出了低硬件足迹。因此,提出了随机最大功能,随后用于近似SC中的双曲线切除激活功能。此外,提出了饱和算术,以减少可以进一步影响计算精度的缩放参数。在本研究中,我们通过使用Xilinx Zynq XC7Z020-1CLG400C的Pynq Z2板上的AXI流接口,通过硬件加速器原型来展示基于SC的DNN可行性。通过Mnist手写的数字识别任务证明了本研究的有效性。实验结果表明我们的SC基DNN模型可以轻松部署在嵌入式设备上。具有AXI流接口的基于SC的加速器执行1.877 GOP / S处理吞吐量,达到最小面积和能耗的更高精度,仅消耗0.61 mm2区域和1.89W电源。

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