A Rapid Evaluation Technology for SEU in Convolutional Neural Network Circuits

Kai Chen, Xin Chen, Ying Zhang, Zhiwei Zhang
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引用次数: 1

Abstract

This paper proposes a rapid Single Event Upset (SEU) evaluation platform that can perform fault injection at the algorithm level in Convolutional Neural Network (CNN), which is designed by software and hardware co-design. This proposed platform analyzes the layer structure and input parameters of CNN, generates the corresponding fault list and then performs fault injection at the algorithm-level in software side and mapped to the registers of hardware acceleration. Finally, the operation results of CNN after fault injection is analyzed to evaluate the robustness of CNN against SEU, and identify the sensitive areas of SEU. In this paper, SEU fault injection experiments are carried out on YOLOv2 neural network. Experimental results show that fault injection and sensitivity evaluation based on this method can analyze the overall robustness of CNN against SEU quickly and effectively. From the analysis of experimental results, the algorithmic nodes which are sensitive to SEU are located, and the efficiency of this rapid evaluation technology is also verified.
卷积神经网络电路中SEU的快速评估技术
本文提出了一种基于卷积神经网络(CNN)的单事件干扰(SEU)快速评估平台,该平台采用软硬件协同设计的方法,可在算法层面进行故障注入。该平台通过分析CNN的层结构和输入参数,生成相应的故障列表,然后在软件端进行算法级故障注入,并映射到硬件加速寄存器。最后,分析了故障注入后CNN的运行结果,评估了CNN对SEU的鲁棒性,并识别了SEU的敏感区域。本文在YOLOv2神经网络上进行了SEU故障注入实验。实验结果表明,基于该方法的故障注入和灵敏度评估可以快速有效地分析CNN对SEU的整体鲁棒性。通过对实验结果的分析,找到了对SEU敏感的算法节点,验证了该快速评价技术的有效性。
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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