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Fault Tolerance Research of Visual Convolutional Neural Networks Based on Soft Errors

机译:基于软错误的视觉卷积神经网络容错研究

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Injecting faults to the system architecture layer and studying the upper neural network for fault tolerancehe is difficult and time-consuming. This paper proposes an automatic method covering time and space, which can inject faults into the processor on the Simics simulation platform, simulating soft errors, and then collect the time sequence data of the system architecture layer and the observed node data of visual convolutional neural networks program layer. At the same time, combined with the relevant standards, the GAN classifier is used to calibrate the different fault models after converting time sequence data into time sequence images. Finally, the Bayesian network is used to form the path of fault propagation from the architecture layer to the program layer and the result layer. After intensive fault injection into critical registers, the probability of neural network failure caused by soft errors is effectively stimulated.
机译:向系统架构层注入故障并研究上层神经网络的容错性既困难又耗时。本文提出了一种涵盖时间和空间的自动方法,该方法可以将故障注入Simics仿真平台上的处理器中,模拟软错误,然后收集系统架构层的时序数据和可视卷积神经网络的观测节点数据。程序层。同时,结合相关标准,将时间序列数据转换为时间序列图像后,使用GAN分类器对不同的故障模型进行标定。最后,贝叶斯网络用于形成从体系结构层到程序层以及结果层的故障传播路径。在将严重的故障注入到关键寄存器后,可以有效地激发由软错误引起的神经网络故障的可能性。

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